def generate_3mindata(self, am:ArrayManager, bar:BarData):
        offset = -self.offset
        offset_m = int(offset / 2)
        calc_nums = np.array(self.ma_tag[-offset:-1])
        # var_val = np.var(calc_nums)
        std_val = np.std(calc_nums)
        std_val2 = np.std(np.array(self.ma_tag[-10:-1]))
        std_val3 = np.std(np.array(am.range[-30:-10]))
        ma = self.ma_tag[-1]
        
        mean_val = np.mean(calc_nums)
        mean_val2 = np.mean(np.array(self.ma_tag[-5:-1]))
        mean_val3 = np.mean(np.array(self.ma_tag[-20:-1]))
        mean_val4 = np.mean(np.array(self.ma_tag[-30:-5]))
        kdj_val = am.kdj()

        deg1 = calc_regress_deg(am.close[offset : offset_m], False)
        deg2 = calc_regress_deg(am.close[offset_m :], False)
        deg3 = calc_regress_deg(am.close[-10 :], False)
        deg_full = calc_regress_deg(am.close[offset :], False)

        wave = self.wave(am.close[-30:])
        wave_r_sum = np.sum(wave["range"])
        macd=am.macd(20,40, 16)
        calc_data = (dict(
                kdj=[round(kdj_val["k"][-1],2),round(kdj_val["d"][-1],2),round(kdj_val["j"][-1],2)],
                cci_20=am.cci(20),rsi=am.rsi(20),adx=am.adx(20),boll=am.boll(20, 3.4),
                macd=[round(macd[0],2),round(macd[1],2),round(macd[2],2)],
                deg40_20=round(deg1,2), deg20_0=round(deg2,2), deg20_10=round(calc_regress_deg(am.close[-20:-10], False),2), deg10_0=round(deg3,2),
                deg30_15=round(calc_regress_deg(am.close[-30:-15], False),2), deg15_0=round(calc_regress_deg(am.close[-15:], False),2),deg_f=round(deg_full,2),
                atr=round(am.atr(10, length=15), 3), tr=round(am.atr(1, length=2), 3),atr_40=round(am.atr(40, length=42), 3),
                time=bar.datetime, price=bar.close_price, ma=round(ma, 2), 
                std_40=round(std_val, 2),mean40=round(mean_val,2), mean_std=np.mean(self.std_range.data[-5:]),
                std_10=round(std_val2,2), mean30_10=round(mean_val4,2), mean10=round(mean_val2,2),
                vol=am.volume[-1], std_range=self.std_range.data[-1:-5:-1], range=am.range[-1:-5:-1].tolist(),
                range_sum=np.sum(am.range[-5:]), 
                pattern=list(map(lambda x: KLINE_PATTERN_CHINESE[x], self.pattern_record.keys())),
                ma120t=self.ma120_track, 
                ma120t_list=self.ma120_track_list[-1:-10:-1], 
                ma120t_sort=sorted(self.ma120_track_list[-20:-1], key=abs),
                ma120t_sum=np.sum(self.ma120_track_list[-20:-1] + [self.ma120_track]), 
                ma120t_mean=np.mean(self.ma120_track_list[-20:-1] + [self.ma120_track]),
                ma120t_std=np.std(self.ma120_track_list[-20:-1] + [self.ma120_track]),
                ma_info=list(map(lambda x:x["std"], self.ma_info[-1:])),
                wave_cnt=len(wave), wave_r_sum=wave_r_sum, atr_mean=np.mean(am.atr(20, array=True,length=240)[-200:])
                ))

        return calc_data
Exemplo n.º 2
0
    def generate_data(self, am: ArrayManager, bar: BarData):
        offset = -self.offset
        offset_m = int(offset / 2)

        std_val3 = np.std(np.array(am.range[-30:-10]))

        kdj_val = am.kdj()
        has_kdj_recore = False
        k = kdj_val["k"]
        d = kdj_val["d"]
        j = kdj_val["j"]
        if (k[-1] > 75 and d[-1] > 75 and j[-1] > 75) or \
                (k[-1] < 25 and d[-1] < 25 and j[-1] < 75):
            if (j[-2] < k[-2] or j[-2] < d[-2]) and (j[-1] > k[-1] and j[-1] > d[-1]) \
                    or \
                    (j[-2] > k[-2] or j[-2] > d[-2]) and (j[-1] < k[-1] and j[-1] < d[-1]):
                has_kdj_recore = True
                t = bar.datetime
                self.kdj_record.append(
                    (t.strftime("%H:%M:%S"), round(k[-1], 3), round(d[-1], 3),
                     round(j[-1], 3)))

        deg1 = calc_regress_deg(am.close[offset:offset_m], False)
        deg2 = calc_regress_deg(am.close[offset_m:], False)
        deg3 = calc_regress_deg(am.close[-10:], False)
        deg_full = calc_regress_deg(am.close[offset:], False)

        macd = am.macd(20, 40, 16)

        calc_data = (dict(
            kdj=[
                round(kdj_val["k"][-1], 2),
                round(kdj_val["d"][-1], 2),
                round(kdj_val["j"][-1], 2)
            ],
            cci_20=am.cci(20),
            rsi=am.rsi(20),
            adx=am.adx(20),
            boll=am.boll(20, 3.4),
            macd=[round(macd[0], 2),
                  round(macd[1], 2),
                  round(macd[2], 2)],
            deg40_20=round(deg1, 2),
            deg20_0=round(deg2, 2),
            deg20_10=round(calc_regress_deg(am.close[-20:-10], False), 2),
            deg30_15=round(calc_regress_deg(am.close[-30:-15], False), 2),
            deg15_0=round(calc_regress_deg(am.close[-15:], False), 2),
            deg_f=round(deg_full, 2),
            deg30_10=round(calc_regress_deg(am.close[-30:-10], False), 2),
            deg10_0=round(deg3, 2),
            atr=round(am.atr(10, length=15), 3),
            tr=round(am.atr(1, length=2), 3),
            atr_40=round(am.atr(40, length=42), 3),
            time=bar.datetime,
            price=bar.close_price,
            mean_std=np.mean(self.std_range.data[-5:]),
            vol=am.volume[-1],
            std_range=self.std_range.data[-1:-5:-1],
            range=am.range[-1:-5:-1].tolist(),
            range_sum=np.sum(am.range[-5:]),
            pattern=list(
                map(lambda x: KLINE_PATTERN_CHINESE[x],
                    self.pattern_record.keys())),
            atr_mean=np.mean(am.atr(20, array=True, length=240)[-200:]),
        ))
        if self.ma_info.info.index.size >= 31:
            ma5 = self.ma_info.info[5][-31:]
            x = AnalyseWave(ma5)
            calc_data["ma5_info"] = x.optimize
            ma10 = self.ma_info.info[10][-31:]
            x = AnalyseWave(ma10)
            calc_data["ma10_info"] = x.optimize
        return calc_data
Exemplo n.º 3
0
class PatternScoreStrategy(CtaTemplate):
    author = "用Python的交易员"

    ma_level = [10, 20, 30, 60, 120]
    ma_tag = []
    bd = []
    fast_ma0 = 0.0
    fast_ma1 = 0.0

    slow_ma0 = 0.0
    slow_ma1 = 0.0
    request_order = []
    bar_identify = []

    score = Score()
    count = 0
    interval = 6

    parameters = ["ma_level"]
    variables = ["fast_ma0", "fast_ma1", "slow_ma0", "slow_ma1"]

    def __init__(self, cta_engine, strategy_name, vt_symbol, setting):
        """"""
        super(PatternScoreStrategy, self).__init__(cta_engine, strategy_name,
                                                   vt_symbol, setting)
        self.bg = BarGenerator(self.on_bar)
        self.am = ArrayManager(400)
        self.am3 = ArrayManager(150)
        self.bg3 = BarGenerator(self.on_bar, 3, self.on_3min_bar)
        self.am5 = ArrayManager(120)
        self.bg5 = BarGenerator(self.on_bar, 5, self.on_5min_bar)
        self.order_data = None
        self.positions = Position(self)
        self.std_range = IntervalGen(np.std, 5)
        self.std_range3 = IntervalGen(np.std, 5)
        self.std_range5 = IntervalGen(np.std, 5)
        self.pattern_record = PatternRecord()
        # self.pattern_record.set_expiry([KlinePattern.CDLEVENINGSTAR], 3)
        self.pattern_record.set_expiry(list(KlinePattern), 1)

        self.open_strategy = [self.open_kline1]
        self.offset = 40
        self.min = 0
        self.max = 0

    def on_init(self):
        """
        Callback when strategy is inited.
        """
        self.write_log("策略初始化")
        self.load_bar(10)

    def on_start(self):
        """
        Callback when strategy is started.
        """
        self.write_log("策略启动")
        self.put_event()

    def on_stop(self):
        """
        Callback when strategy is stopped.
        """
        self.write_log("策略停止")

        self.put_event()

    def on_tick(self, tick: TickData):
        """
        Callback of new tick data update.
        """
        self.bg.update_tick(tick)
        self.bg3.update_tick(tick)
        self.bg5.update_tick(tick)

    def on_3min_bar(self, bar: BarData):
        self.am3.update_bar(bar)
        self.std_range3.update(self.am3.range[-1])
        if not self.am.inited or not self.trading:
            return
            # deg = calc_regress_deg(self.am3.close[-20:])

    def calc_score(self):
        score = 0
        score += self.score.base

        for item in self.pattern_record.values():
            score += item["value"]

        return score

    def on_5min_bar(self, bar: BarData):

        self.std_range5.update(self.am5.range[-1])
        self.am5.update_bar(bar)
        if not self.am.inited or not self.trading:
            return
        diff_time = bar.datetime - self.am.time_array[-1]
        if diff_time.total_seconds() > 3600 or self.count > self.interval:
            self.count = 0
            self.score.base = calc_regress_deg(self.am.close[-self.interval:],
                                               False) * 1000
            print("score:", self.score.base, self.min, self.max)
        else:
            self.count += 1

        # pattern_list = [KlinePattern.CDLEVENINGSTAR, KlinePattern.CDL2CROWS, KlinePattern.CDLCONCEALBABYSWALL, KlinePattern.CDLEVENINGDOJISTAR]
        pattern = self.am5.pattern(list(KlinePattern))
        if len(pattern) > 0:
            print(
                list(
                    map(lambda x: (KLINE_PATTERN_CHINESE[x[0]], x[1]),
                        pattern)))
            self.pattern_record.add_pattern(pattern)
            deg_full = calc_regress_deg(self.am.close[-40:], False)
            print("deg:", deg_full)

        self.pattern_record.update()

    def open_kline1(self, bar: BarData, calc_data):

        score = self.calc_score()
        if score < self.min:
            self.min = score
        if score > self.max:
            self.max = score

        if abs(calc_data["range_sum"]) < 0.001 or abs(score) < 300:
            return

        # if std_val2 < 0.2:
        if score > 0 and calc_data["range_sum"] > 0:
            return self.buy(bar.close_price,
                            1,
                            type=OrderType.MARKET,
                            extra={
                                "reason":
                                "开多,score={}, rang_sum={}".format(
                                    score, calc_data["range_sum"])
                            })
        if score < 0 and calc_data["range_sum"] < 0:
            return self.short(bar.close_price,
                              1,
                              type=OrderType.MARKET,
                              extra={
                                  "reason":
                                  "开多,score={}, rang_sum={}".format(
                                      score, calc_data["range_sum"])
                              })

    def generate_data(self, bar: BarData):
        offset = -self.offset
        offset_m = int(offset / 2)
        calc_nums = np.array(self.ma_tag[-offset:-1])
        # var_val = np.var(calc_nums)
        std_val = np.std(calc_nums)
        std_val2 = np.std(np.array(self.ma_tag[-10:-1]))
        std_val3 = np.std(np.array(self.am.range[-30:-10]))
        ma = self.ma_tag[-1]

        mean_val = np.mean(calc_nums)
        mean_val2 = np.mean(np.array(self.ma_tag[-5:-1]))
        mean_val3 = np.mean(np.array(self.ma_tag[-20:-1]))
        mean_val4 = np.mean(np.array(self.ma_tag[-30:-5]))
        kdj_val = self.am.kdj()

        deg1 = calc_regress_deg(self.am.close[offset:offset_m], False)
        deg2 = calc_regress_deg(self.am.close[offset_m:], False)
        deg3 = calc_regress_deg(self.am.close[-10:], False)
        deg_full = calc_regress_deg(self.am.close[offset:], False)

        calc_data = (dict(kdj=[
            round(kdj_val["k"][-1], 2),
            round(kdj_val["d"][-1], 2),
            round(kdj_val["j"][-1], 2)
        ],
                          deg40_20=round(deg1, 2),
                          deg20=round(deg2, 2),
                          deg10=round(deg3, 2),
                          deg_f=round(deg_full, 2),
                          time=bar.datetime,
                          price=bar.close_price,
                          ma=round(ma, 2),
                          std_40=round(std_val, 2),
                          mean40=round(mean_val, 2),
                          std_10=round(std_val2, 2),
                          mean30_10=round(mean_val4, 2),
                          mean10=round(mean_val2, 2),
                          vol=self.am.volume[-1],
                          std_range=self.std_range.data[-1:-5:-1],
                          range=self.am.range[-1:-5:-1].tolist(),
                          range_sum=np.sum(self.am.range[-5:]),
                          atr=self.am.atr(10),
                          tr=self.am.atr(1, length=2),
                          pattern=list(
                              map(lambda x: KLINE_PATTERN_CHINESE[x],
                                  self.pattern_record.keys()))))

        return calc_data

    def on_strategy(self, bar: BarData):
        calc_data = self.generate_data(bar)

        order_id = None

        if self.pos == 0:
            for open_strategy in self.open_strategy:
                if order_id is not None:
                    break
                order_id = open_strategy(bar, calc_data)
        else:
            order_id = self.positions.on_strategy(bar, calc_data)

        if order_id is not None:
            offset = -self.offset
            offset_m = int(offset / 2)
            self.tracker["trade_info"].append(
                (self.am.time_array[offset], self.am.time_array[offset_m],
                 bar.datetime, calc_data["deg40_20"], calc_data["deg20"]))
            self.request_order.extend(order_id)

        if self.tracker is not None:
            self.tracker["ma_tag_ls"].append(calc_data)

    def on_bar(self, bar: BarData):
        """
        Callback of new bar data update.
        """
        self.bg3.update_bar(bar)
        self.bg5.update_bar(bar)
        am = self.am
        self.am.update_bar(bar)
        max_len = self.ma_level[-1] + 20
        data = self.am.close[-max_len:-1]
        ma_lvl = []
        for i in self.ma_level:
            ma = self.am.sma(i, True)[-1]
            ma_lvl.append(ma)

        l = len(ma_lvl)
        ma_lvl_tag = []
        now = bar.close_price
        direction = 1 if now > ma_lvl[0] else 0
        ma_lvl_tag.append(direction)
        for i in range(l - 1):
            val = 1 if ma_lvl[i] > ma_lvl[i + 1] else 0
            ma_lvl_tag.append(val)
        bincount_val = np.bincount(np.array(ma_lvl_tag))
        tag_val = 0
        if len(bincount_val) == 2:
            tag_val = bincount_val[1]

        if len(self.ma_tag) < 200:
            self.ma_tag.append(tag_val)
        else:
            self.ma_tag[:-1] = self.ma_tag[1:]
            self.ma_tag[-1] = tag_val
        if self.tracker is not None:
            self.tracker["bar_data"].append(bar)
        self.std_range.update(self.am.range[-1])

        if not self.am.inited or not self.trading:
            return

        self.on_strategy(bar)
        # median_val = np.median(calc_nums)

        self.put_event()

    # def init_order_data(self):
    #     self.order_data = np.array([])

    def on_order(self, order: OrderData):
        """
        Callback of new order data update.
        """
        print("{}产生了{},价格为{},交易{},".format(
            order.datetime.strftime("%m/%d %H:%M:%S"),
            order.offset.value + order.direction.value, order.price,
            order.status.value))

        if order.vt_orderid in self.request_order:
            self.positions.on_order(order)
            if order.status == Status.ALLTRADED or order.status == Status.CANCELLED or order.status == Status.REJECTED:
                self.request_order.remove(order.vt_orderid)
        # if order.status == Status.ALLTRADED or order.status == Status.PARTTRADED:
        #     if order.direction == Direction.LONG:
        #         if self.positions.volumn == 0:
        #             self.positions.close_price = round(order.price * 0.995)
        #         self.positions.volumn += order.volume
        #     elif order.direction == Direction.SHORT:
        #         self.positions.volumn -= order.volume
        #     elif order.direction == Direction.NET:
        #         self.positions.volumn = order.volume

    def on_trade(self, trade: TradeData):
        """
        Callback of new trade data update.
        """
        self.put_event()

    def on_stop_order(self, stop_order: StopOrder):
        """
        Callback of stop order update.
        """
        pass
Exemplo n.º 4
0
class FbbStrategy(CtaTemplate):
    """"""

    author = "feng.shao"

    boll_window = 20  #
    boll_dev = 2.0  #
    boll_bw_limit = 0.01
    fixed_size: float = 0.2  # 单笔buy 暂时固定为总资产的 千分之 1~4  (风险随之增加)
    limit_amt = 10.0  # 最小交易资金10 USDT -binance

    #BB
    boll_up = 0
    boll_down = 0
    boll_mid = 0
    boll_pb = 0
    boll_bw = 0

    #kdj

    k = 0
    d = 0
    j = 0

    last_boll_pb = 0

    parameters = [
        "boll_window",
        "boll_dev",
        # "boll_dev_2",
        # "boll_pb_sal",
        "boll_bw_limit",
        "fixed_size"
    ]
    variables = [
        # "boll_up",
        # "boll_down",
        # "boll_mid",
        "boll_pb",
        # "boll_bw",
        # "boll_up_2",
        # "boll_down_2",
        # "boll_mid_2",
        # "boll_pb_2",
        # "boll_bw_2",
    ]

    def __init__(self, cta_engine, strategy_name, vt_symbol, setting):
        """"""
        super().__init__(cta_engine, strategy_name, vt_symbol, setting)

        self.bg = BarGenerator(self.on_bar, 15, self.on_mins_bar)
        self.am = ArrayManager()

    def on_init(self):
        """
        Callback when strategy is inited.
        """
        self.write_log("策略初始化")
        self.load_bar(2)

    def on_start(self):
        """
        Callback when strategy is started.
        """
        self.write_log("策略启动")

    def on_stop(self):
        """
        Callback when strategy is stopped.
        """
        self.write_log("策略停止")

    def on_tick(self, tick: TickData):
        """
        Callback of new tick data update.
        """
        self.bg.update_tick(tick)

    def on_bar(self, bar: BarData):
        """
        Callback of new bar data update.
        """
        self.bg.update_bar(bar)

    def on_mins_bar(self, bar: BarData):
        """
        Callback of new bar data update.
        """
        self.cancel_all()

        am = self.am
        am.update_bar(bar)

        if not am.inited:
            return

        # start
        self.get_boll(bar)
        self.get_kdj()

        print(
            str(self.k) + "  -  " + str(self.d) + "  -  " + str(self.j) +
            "  -  " + bar.datetime.strftime("%Y-%m-%d %H:%M:%S"))

        # 低于 boll_down 并且width 不小于limit 买入
        if self.boll_pb <= 0 and self.boll_bw > self.boll_bw_limit:
            self.buy(bar.close_price,
                     self.check_minimum_size(bar.close_price, self.fixed_size),
                     False)

        if self.pos > 0:
            # 上穿 up 卖出信号
            if self.last_boll_pb < 1 <= self.boll_pb and self.boll_bw < self.boll_bw_limit:
                self.sell(bar.close_price, self.pos, False)
            # 未达up 而下穿 mid 卖出
            if self.last_boll_pb > 0.5 >= self.boll_pb and self.boll_bw < self.boll_bw_limit:
                self.sell(bar.close_price, self.pos, False)
            # down 下方 ,width 很小 卖出
            if self.boll_pb <= 0 and self.boll_bw <= self.boll_bw_limit:
                self.sell(bar.close_price, self.pos, False)

        self.last_boll_pb = self.boll_pb

        #     self.short(bar.close_price, self.fixed_size, False)

        #     self.cover(bar.close_price, self.pos, False)

        self.put_event()

    def check_minimum_size(self, price: float, order_size) -> float:
        min_size = self.size_by_limit_amt(self.limit_amt, price)
        return max(order_size, min_size)

    def kdj_signal(self):
        if self.d <= self.k < 20:
            return True

    def get_boll(self, bar: BarData):
        self.boll_up, self.boll_mid, self.boll_down = self.am.boll(
            self.boll_window, self.boll_dev)
        self.boll_pb = self.percentbeta(bar.close_price, self.boll_up,
                                        self.boll_down)
        self.boll_bw = self.bandwidth(self.boll_up, self.boll_mid,
                                      self.boll_down)

    def get_kdj(self):
        self.k, self.d, self.j = self.am.kdj()

    def on_order(self, order: OrderData):
        """
        Callback of new order data update.
        """
        pass

    def on_trade(self, trade: TradeData):
        """
        Callback of new trade data update.
        """
        self.put_event()

    def on_stop_order(self, stop_order: StopOrder):
        """
        Callback of stop order update.
        """
        pass

    def percentbeta(self, close: float, up: float, low: float) -> float:
        """
        %b of boll
        """
        pb = (close - low) / (up - low)

        return pb

    def bandwidth(self, up: float, mid: float, low: float) -> float:
        """
        bandwidth of boll
        """
        bw = (up - low) / mid

        return bw

    def size_by_limit_amt(self, limit_amt: float, price: float) -> float:

        return math.ceil(limit_amt / price * 1000000) / 1000000
Exemplo n.º 5
0
class MaLevelTrackStrategy(CtaTemplate):
    author = "用Python的交易员"

    ma_level = [5, 10, 20, 30, 120]
    ma_tag = []
    bd = []
    fast_ma0 = 0.0
    fast_ma1 = 0.0

    slow_ma0 = 0.0
    slow_ma1 = 0.0
    request_order = []
    bar_identify = []

    parameters = ["ma_level"]
    variables = ["fast_ma0", "fast_ma1", "slow_ma0", "slow_ma1"]

    def __init__(self, cta_engine, strategy_name, vt_symbol, setting):
        """"""
        super(MaLevelTrackStrategy, self).__init__(cta_engine, strategy_name,
                                                   vt_symbol, setting)
        self.bg = BarGenerator(self.on_bar, 15, self.on_1min_bar)
        self.am = ArrayManager(400)
        self.am3 = ArrayManager(150)
        self.bg3 = BarGenerator(self.on_bar, 3, self.on_3min_bar)
        self.am5 = ArrayManager(120)
        self.bg5 = BarGenerator(self.on_bar, 5, self.on_5min_bar)
        self.order_data = None
        self.positions = Position(self)
        self.std_range = IntervalGen(np.std, 5)
        self.std_range3 = IntervalGen(np.std, 5)
        self.std_range5 = IntervalGen(np.std, 5)
        self.pattern_record = PatternRecord()
        # self.pattern_record.set_expiry([KlinePattern.CDLEVENINGSTAR], 3)
        self.pattern_record.set_expiry(list(KlinePattern), 1)

        five_min_open_5 = partial(self.reverse_shape_strategy,
                                  setting={
                                      "atr": 10,
                                      "atr_valve": 0.8,
                                      "deg1": (10, 5),
                                      "deg2": 5
                                  })
        self.open_strategy = {
            "1": [self.reverse_shape_strategy],
            "5": [five_min_open_5],
        }
        self.offset = 40
        self.ma120_track = None
        self.ma120_track_list = []

    def on_init(self):
        """
        Callback when strategy is inited.
        """
        self.write_log("策略初始化")
        self.load_bar(10)

    def on_start(self):
        """
        Callback when strategy is started.
        """
        self.write_log("策略启动")
        self.put_event()

    def on_stop(self):
        """
        Callback when strategy is stopped.
        """
        self.write_log("策略停止")

        self.put_event()

    def on_tick(self, tick: TickData):
        """
        Callback of new tick data update.
        """
        self.bg.update_tick(tick)
        self.bg3.update_tick(tick)
        self.bg5.update_tick(tick)

    def on_3min_bar(self, bar: BarData):
        self.am3.update_bar(bar)
        self.std_range3.update(self.am3.range[-1])
        if not self.am.inited or not self.trading:
            return
        pattern = self.am3.pattern(
            [KlinePattern.CDLEVENINGSTAR, KlinePattern.CDL2CROWS])

        if len(pattern) > 0:
            print(pattern)
            self.pattern_record.add_pattern(pattern)
            # deg = calc_regress_deg(self.am3.close[-20:])

    def wave(self, data, window=0.0002):

        if len(data) <= 0:
            return
        # r = array[::-1]
        result = {"value": [], "range": [], "pos": [], "length": []}
        r = data
        l = len(data) - 1
        now = r[0]
        # v_list.append(now)
        # p_list.append(0)
        pos = 1

        vol = 0
        u_tag = None
        d_tag = None
        end_tag = None
        start_pos = 0
        while pos < l:
            if math.isnan(now):
                now = r[pos]
                pos += 1
                continue
            else:
                start_pos = pos - 1
                break

        while pos < l:

            if now < r[pos]:
                u_tag = pos
                if d_tag:
                    diff = r[start_pos] - r[d_tag]
                    if abs(diff /
                           r[start_pos]) > window and d_tag - start_pos > 1:
                        end_tag = d_tag

            elif now > r[pos]:
                d_tag = pos
                if u_tag:
                    diff = r[start_pos] - r[u_tag]
                    if abs(diff /
                           r[start_pos]) > window and d_tag - start_pos > 1:
                        end_tag = u_tag

            if end_tag is not None:
                result["range"].append(r[end_tag] / r[start_pos] - 1)
                result["length"].append(end_tag - start_pos)
                start_pos = end_tag
                result["value"].append(r[end_tag])
                result["pos"].append(end_tag)
                end_tag = None

            vol += r[pos] - now
            now = r[pos]
            pos += 1
        return pd.DataFrame(result)

    def mode_identify(self, bar: BarData):
        self.bar_identify = []
        hl_scale = round(bar.high_price / bar.low_price - 1, 4)
        if hl_scale > 0.001:
            diff = bar.high_price - bar.low_price
            diff_up = bar.low_price + diff / 2 * 1.20
            diff_down = bar.low_price + diff / 2 * 0.80
            close = bar.close_price
            if bar.open_price < diff_up and bar.open_price > diff_down and \
               bar.close_price < diff_up and bar.close_price > diff_down:
                if bar.close_price > bar.open_price:
                    print("绿十字星", bar.datetime, bar.high_price, bar.low_price,
                          diff, diff_up, diff_down, bar.open_price,
                          bar.close_price)
                else:
                    print("红十字星", bar.datetime, bar.high_price, bar.low_price,
                          diff, diff_up, diff_down, bar.open_price,
                          bar.close_price)

    def on_5min_bar(self, bar: BarData):
        self.std_range5.update(self.am5.range[-1])
        self.am5.update_bar(bar)
        if not self.am.inited or not self.trading:
            return

        self.on_strategy(self.am5, bar, self.open_strategy["5"])
        # pattern_list = [KlinePattern.CDLEVENINGSTAR, KlinePattern.CDL2CROWS, KlinePattern.CDLCONCEALBABYSWALL, KlinePattern.CDLEVENINGDOJISTAR]

    #     pattern = self.am5.pattern(list(KlinePattern))
    #     if len(pattern) > 0:
    #         print(list(map(lambda x: (KLINE_PATTERN_CHINESE[x[0]],x[1]), pattern)))
    #         self.pattern_record.add_pattern(pattern)
    #         deg_full = calc_regress_deg(self.am.close[-40 :], False)
    #         print("deg:",deg_full)

    #     self.pattern_record.update()

    def open_v3(self, am: ArrayManager, bar: BarData):
        std_val2 = np.std(np.array(self.ma_tag[-10:-1]))
        mean_val2 = np.mean(np.array(self.ma_tag[-10:-1]))
        mean = np.mean(np.array(self.ma_tag[-30:-10]))

        if std_val2 < 0.2:
            if mean_val2 > 3:
                if mean_val2 >= (mean + 1):
                    return self.buy(bar.close_price, 1, type=OrderType.MARKET)
            elif mean_val2 < 2:
                if mean_val2 <= (mean - 1):
                    return self.short(bar.close_price,
                                      1,
                                      type=OrderType.MARKET)

    def open_v1(self, am: ArrayManager, bar: BarData):
        offset = -40
        offset_m = int(offset / 2)
        calc_nums = np.array(self.ma_tag[-offset:-1])
        mean_val = np.mean(calc_nums)
        # var_val = np.var(calc_nums)
        std_val = np.std(calc_nums)
        if std_val < 1 and mean_val < 2 and self.ma_tag[-1] >= (mean_val + 2):
            return self.buy(bar.close_price, 1, type=OrderType.MARKET)
        elif std_val < 1 and mean_val > 3 and self.ma_tag[-1] <= (mean_val -
                                                                  2):
            return self.short(bar.close_price, 1, type=OrderType.MARKET)

    def open_v2(self, am: ArrayManager, bar: BarData):
        std_val2 = np.std(np.array(self.ma_tag[-10:-1]))
        mean_val2 = np.mean(np.array(self.ma_tag[-10:-1]))
        mean = np.mean(np.array(self.ma_tag[-30:-10]))

        if std_val2 < 0.2:
            if mean_val2 > 2.5:
                if mean_val2 >= (mean + 1):
                    return self.buy(bar.close_price, 1, type=OrderType.MARKET)
            elif mean_val2 < 2.5:
                if mean_val2 <= (mean - 1):
                    return self.short(bar.close_price,
                                      1,
                                      type=OrderType.MARKET)

    def open2(self, am: ArrayManager, bar: BarData, calc_data):
        deg = calc_data["deg20"]
        ma = self.ma_tag[-1]
        if deg > 0.5 and ma > 3 and self.am5.range[-1] > -0.002:
            return self.buy(bar.close_price, 1, type=OrderType.MARKET)
        elif deg < -0.5 and ma < 2 and self.am5.range[-1] < 0.002:
            return self.short(bar.close_price, 1, type=OrderType.MARKET)

    def open1(self, am: ArrayManager, bar: BarData, calc_data):

        mean = calc_data["mean30_10"]
        mean_val2 = calc_data["mean10"]
        # if std_val2 < 0.2:
        if mean_val2 > 3.5 and mean_val2 >= (mean + 2):
            return self.buy(bar.close_price, 1, type=OrderType.MARKET)
        elif mean_val2 < 1.5 and mean_val2 <= (mean - 2):
            return self.short(bar.close_price, 1, type=OrderType.MARKET)

    # v形反转捕获
    def reverse_shape_strategy(self,
                               am: ArrayManager,
                               bar: BarData,
                               calc_data,
                               setting={
                                   "atr": 40,
                                   "atr_valve": 0.8,
                                   "deg1": (40, 20),
                                   "deg2": (20, 0),
                               }):

        deg1 = calc_data["deg40_20"]
        deg2 = calc_data["deg20_0"]
        kdj = calc_data["kdj"]

        atr = self.am.atr(40)

        if atr < 0.08:
            return

        if deg1 > 0 and deg2 > 0 or \
           deg1 < 0 and deg2 < 0:
            return

        if not (abs(deg1) > 0.15 and abs(deg2) > 0.1 and
                (abs(deg1) + abs(deg2)) > 0.3):
            return

        close = am.close[-40:]
        min_val = np.min(close)
        max_val = np.max(close)
        mid_val = max_val if deg1 > 0 else min_val
        mid_pos = np.where(close == mid_val)[0][0]

        if mid_pos < 10 or mid_pos > 30:
            return

        start_val = np.min(close[:mid_pos]) if deg1 > 0 else np.max(
            close[:mid_pos])
        start_pos = np.where(close == start_val)[0][0]
        l = mid_pos - start_pos

        # pos2 = np.where(close == min_val)[0][0]

        x_fit = reg_util.regress_y_polynomial(close[:mid_pos], zoom=True)
        deg1_remake = calc_regress_deg(x_fit[:abs(mid_pos)], False)
        y_fit = reg_util.regress_y_polynomial(close[mid_pos:], zoom=True)
        deg2_remake = calc_regress_deg(y_fit[:abs(mid_pos)], False)
        print(start_pos, mid_pos, deg1, deg2, deg1_remake, deg2_remake, l,
              start_val, mid_val)
        if deg2 < 0:
            if kdj[0] < 20 and kdj[1] < 10 and kdj[2] < 10:
                # if kdj[2] < 10:
                return self.short(bar.close_price, 1, type=OrderType.MARKET)
        else:
            if kdj[0] > 80 and kdj[1] > 90 and kdj[2] > 90:
                # if kdj[2] > 90:
                return self.buy(bar.close_price, 1, type=OrderType.MARKET)

        # print("找到大v形:", deg1, deg2 )

    def open5(self, am: ArrayManager, bar: BarData, calc_data):

        ma = self.ma_tag[-1]
        mean = calc_data["mean30_10"]
        atr = self.am.atr(10, array=True, length=20)
        tr = self.am.atr(1, array=True, length=11)
        # self.ma120_track
        ma120 = self.am.sma(120)
        # if std_val2 < 0.2:
        mean_std = calc_data["mean_std"]
        if mean_std < 0.8 and tr[-1] > 0.1 and tr[-1] / tr[-10] > 3 and tr[
                -1] / atr[-1] >= 1.7 and tr[-10] / atr[-10] < 1:
            if np.sum(self.am.range[-10:]) > 0 and self.ma120_track > 0:
                return self.buy(bar.close_price, 1, type=OrderType.MARKET)
            elif self.ma120_track < 0:
                return self.short(bar.close_price, 1, type=OrderType.MARKET)

    def open_kline1(self, am: ArrayManager, bar: BarData, calc_data):

        if KlinePattern.CDLEVENINGSTAR not in self.pattern_record:
            return
        # if std_val2 < 0.2:
        deg = calc_regress_deg(self.am.close[-5:], False)
        print("kline_strategy", deg)
        if deg < -0.1:
            return self.short(bar.close_price, 1, type=OrderType.MARKET)

    def generate_data(self, bar: BarData):
        offset = -self.offset
        offset_m = int(offset / 2)
        calc_nums = np.array(self.ma_tag[-offset:-1])
        # var_val = np.var(calc_nums)
        std_val = np.std(calc_nums)
        std_val2 = np.std(np.array(self.ma_tag[-10:-1]))
        std_val3 = np.std(np.array(self.am.range[-30:-10]))
        ma = self.ma_tag[-1]

        mean_val = np.mean(calc_nums)
        mean_val2 = np.mean(np.array(self.ma_tag[-5:-1]))
        mean_val3 = np.mean(np.array(self.ma_tag[-20:-1]))
        mean_val4 = np.mean(np.array(self.ma_tag[-30:-5]))
        kdj_val = self.am.kdj()

        deg1 = calc_regress_deg(self.am.close[offset:offset_m], False)
        deg2 = calc_regress_deg(self.am.close[offset_m:], False)
        deg3 = calc_regress_deg(self.am.close[-10:], False)
        deg_full = calc_regress_deg(self.am.close[offset:], False)

        wave = self.wave(self.am.close[-30:])
        wave_r_sum = np.sum(wave["range"])
        macd = self.am.macd(20, 40, 16)
        calc_data = (dict(
            kdj=[
                round(kdj_val["k"][-1], 2),
                round(kdj_val["d"][-1], 2),
                round(kdj_val["j"][-1], 2)
            ],
            cci_20=self.am.cci(20),
            rsi=self.am.rsi(20),
            adx=self.am.adx(20),
            boll=self.am.boll(20, 3.4),
            macd=[round(macd[0], 2),
                  round(macd[1], 2),
                  round(macd[2], 2)],
            deg40_20=round(deg1, 2),
            deg20_0=round(deg2, 2),
            deg20_10=round(calc_regress_deg(self.am.close[-20:-10], False), 2),
            deg10_0=round(deg3, 2),
            deg30_15=round(calc_regress_deg(self.am.close[-30:-15], False), 2),
            deg15_0=round(calc_regress_deg(self.am.close[-15:], False), 2),
            deg_f=round(deg_full, 2),
            atr=round(self.am.atr(10, length=15), 3),
            tr=round(self.am.atr(1, length=2), 3),
            atr_40=round(self.am.atr(40, length=42), 3),
            time=bar.datetime,
            price=bar.close_price,
            ma=round(ma, 2),
            std_40=round(std_val, 2),
            mean40=round(mean_val, 2),
            mean_std=np.mean(self.std_range.data[-5:]),
            std_10=round(std_val2, 2),
            mean30_10=round(mean_val4, 2),
            mean10=round(mean_val2, 2),
            vol=self.am.volume[-1],
            std_range=self.std_range.data[-1:-5:-1],
            range=self.am.range[-1:-5:-1].tolist(),
            range_sum=np.sum(self.am.range[-5:]),
            pattern=list(
                map(lambda x: KLINE_PATTERN_CHINESE[x],
                    self.pattern_record.keys())),
            ma120t=self.ma120_track,
            ma120t_list=self.ma120_track_list[-1:-10:-1],
            ma120t_sort=sorted(self.ma120_track_list[-20:-1], key=abs),
            ma120t_sum=np.sum(self.ma120_track_list[-20:-1] +
                              [self.ma120_track]),
            ma120t_mean=np.mean(self.ma120_track_list[-20:-1] +
                                [self.ma120_track]),
            ma120t_std=np.std(self.ma120_track_list[-20:-1] +
                              [self.ma120_track]),
            wave_cnt=len(wave),
            wave_r_sum=wave_r_sum,
            atr_mean=np.mean(self.am.atr(20, array=True, length=240)[-200:])))

        return calc_data

    def on_strategy(self, am: ArrayManager, bar: BarData, strategy_list):
        calc_data = self.generate_data(bar)

        order_id = None
        if self.pos == 0:
            for open_strategy in strategy_list:
                if order_id is not None:
                    break
                order_id = open_strategy(am, bar, calc_data)
        else:
            order_id = self.positions.on_strategy(bar, calc_data)

        if order_id is not None:
            offset = -self.offset
            offset_m = int(offset / 2)
            self.tracker["trade_info"].append(
                (self.am.time_array[offset], self.am.time_array[offset_m],
                 bar.datetime, calc_data["deg40_20"], calc_data["deg20_0"]))
            self.request_order.extend(order_id)

        if self.tracker is not None:
            self.tracker["ma_tag_ls"].append(calc_data)

    def on_1min_bar(self, bar: BarData):
        self.am.update_bar(bar)
        am = self.am
        max_len = self.ma_level[-1] + 20
        data = self.am.close[-max_len:-1]
        ma_lvl = []
        for i in self.ma_level:
            ma = self.am.sma(i, True)[-1]
            ma_lvl.append(ma)

        l = len(ma_lvl)
        ma_lvl_tag = []
        now = bar.close_price
        direction = 1 if now > ma_lvl[0] else 0
        ma_lvl_tag.append(direction)
        for i in range(l - 1):
            val = 1 if ma_lvl[i] > ma_lvl[i + 1] else 0
            ma_lvl_tag.append(val)
        bincount_val = np.bincount(np.array(ma_lvl_tag))
        tag_val = 0
        if len(bincount_val) == 2:
            tag_val = bincount_val[1]

        if len(self.ma_tag) < 200:
            self.ma_tag.append(tag_val)
        else:
            self.ma_tag[:-1] = self.ma_tag[1:]
            self.ma_tag[-1] = tag_val
        if self.tracker is not None:
            self.tracker["bar_data"].append(bar)
        self.std_range.update(self.am.range[-1])

        ma120 = self.am.sma(120)

        if bar.close_price >= ma120:
            if self.ma120_track is None:
                self.ma120_track = 1
            elif self.ma120_track > 0:
                self.ma120_track += 1
            else:
                self.ma120_track_list.append(self.ma120_track)
                self.ma120_track = 1
        elif bar.close_price < ma120:
            if self.ma120_track is None:
                self.ma120_track = -1
            elif self.ma120_track < 0:
                self.ma120_track -= 1
            else:
                self.ma120_track_list.append(self.ma120_track)
                self.ma120_track = -1

        if not am.inited or not self.trading:
            return

        self.on_strategy(am, bar, self.open_strategy["1"])
        # median_val = np.median(calc_nums)

        self.put_event()

    def on_bar(self, bar: BarData):
        """
        Callback of new bar data update.
        """
        self.bg3.update_bar(bar)
        self.bg5.update_bar(bar)
        self.bg.update_bar(bar)

    # def init_order_data(self):
    #     self.order_data = np.array([])

    def on_order(self, order: OrderData):
        """
        Callback of new order data update.
        """
        print("{}产生了{},价格为{},笔数为{},交易{},pos={}".format(
            order.datetime.strftime("%m/%d %H:%M:%S"),
            order.offset.value + order.direction.value, order.price,
            order.volume, order.status.value, self.pos))

        if order.vt_orderid in self.request_order:
            self.positions.on_order(order)
            if order.status == Status.ALLTRADED or order.status == Status.CANCELLED or order.status == Status.REJECTED:
                self.request_order.remove(order.vt_orderid)
        # if order.status == Status.ALLTRADED or order.status == Status.PARTTRADED:
        #     if order.direction == Direction.LONG:
        #         if self.positions.volumn == 0:
        #             self.positions.close_price = round(order.price * 0.995)
        #         self.positions.volumn += order.volume
        #     elif order.direction == Direction.SHORT:
        #         self.positions.volumn -= order.volume
        #     elif order.direction == Direction.NET:
        #         self.positions.volumn = order.volume

    def on_trade(self, trade: TradeData):
        """
        Callback of new trade data update.
        """
        self.put_event()

    def on_stop_order(self, stop_order: StopOrder):
        """
        Callback of stop order update.
        """
        pass
    def generate_data(self, am:ArrayManager, bar:BarData):
        offset = -self.offset
        offset_m = int(offset / 2)
        calc_nums = np.array(self.ma_tag[-offset:-1])
        # var_val = np.var(calc_nums)
        std_val = np.std(calc_nums)
        std_val2 = np.std(np.array(self.ma_tag[-10:-1]))
        std_val3 = np.std(np.array(am.range[-30:-10]))
        ma = self.ma_tag[-1]
        
        mean_val = np.mean(calc_nums)
        mean_val2 = np.mean(np.array(self.ma_tag[-5:-1]))
        mean_val3 = np.mean(np.array(self.ma_tag[-20:-1]))
        mean_val4 = np.mean(np.array(self.ma_tag[-30:-5]))
        
        kdj_val = am.kdj()
        has_kdj_recore = False
        k = kdj_val["k"]
        d = kdj_val["d"]
        j = kdj_val["j"]
        if  (k[-1] > 75 and d[-1] > 75 and j[-1] > 75) or \
            (k[-1] < 25 and d[-1] < 25 and j[-1] < 75):
            if (j[-2] < k[-2] or j[-2] < d[-2]) and (j[-1] > k[-1] and j[-1] > d[-1]) \
                or \
            (j[-2] > k[-2] or j[-2] > d[-2]) and (j[-1] < k[-1] and j[-1] < d[-1]):
                has_kdj_recore = True
                t = local_to_eastern(bar.datetime.timestamp())
                self.kdj_record.append((t.strftime("%H:%M:%S"), round(k[-1], 3), round(d[-1], 3), round(j[-1], 3)))

        
        deg1 = calc_regress_deg(am.close[offset : offset_m], False)
        deg2 = calc_regress_deg(am.close[offset_m :], False)
        deg3 = calc_regress_deg(am.close[-10 :], False)
        deg_full = calc_regress_deg(am.close[offset :], False)

        wave = self.wave(am.close[-30:])
        wave_r_sum = np.sum(wave["range"])


        macd=am.macd(20,40, 16)
        calc_data = (dict(
                ma_info=self.ma_info[-1:],
                kdj=[round(kdj_val["k"][-1],2),round(kdj_val["d"][-1],2),round(kdj_val["j"][-1],2)],
                cci_20=am.cci(20),rsi=am.rsi(20),adx=am.adx(20),boll=am.boll(20, 3.4),
                macd=[round(macd[0],2),round(macd[1],2),round(macd[2],2)],
                deg40_20=round(deg1,2), deg20_0=round(deg2,2), deg20_10=round(calc_regress_deg(am.close[-20:-10], False),2), 
                deg30_10=round(calc_regress_deg(am.close[-30:-10], False),2),deg10_0=round(deg3,2),
                deg30_15=round(calc_regress_deg(am.close[-30:-15], False),2), deg15_0=round(calc_regress_deg(am.close[-15:], False),2),deg_f=round(deg_full,2),
                atr=round(am.atr(10, length=15), 3), tr=round(am.atr(1, length=2), 3),atr_40=round(am.atr(40, length=42), 3),
                time=bar.datetime, price=bar.close_price, ma=round(ma, 2), 
                std_40=round(std_val, 2),mean40=round(mean_val,2), mean_std=np.mean(self.std_range.data[-5:]),
                std_10=round(std_val2,2), mean30_10=round(mean_val4,2), mean10=round(mean_val2,2),
                vol=am.volume[-1], std_range=self.std_range.data[-1:-5:-1], range=am.range[-1:-5:-1].tolist(),
                range_sum=np.sum(am.range[-5:]), 
                pattern=list(map(lambda x: KLINE_PATTERN_CHINESE[x], self.pattern_record.keys())),
                ma120t=self.ma120_track, 
                ma120t_list=self.ma120_track_list[-1:-10:-1], 
                ma120t_sort=sorted(self.ma120_track_list[-20:-1], key=abs),
                ma120t_sum=np.sum(self.ma120_track_list[-20:-1] + [self.ma120_track]), 
                ma120t_mean=np.mean(self.ma120_track_list[-20:-1] + [self.ma120_track]),
                ma120t_std=np.std(self.ma120_track_list[-20:-1] + [self.ma120_track]),
                wave_cnt=len(wave), wave_r_sum=wave_r_sum, atr_mean=np.mean(am.atr(20, array=True,length=240)[-200:]),
                kdj_record=self.kdj_record[-10:],
                ))
        if self.ma_info[-1]["ma5"] <= 0.16:
            calc_data["kdj_key"] = True
        return calc_data
    def reverse2_strategy(self, am:ArrayManager, bar:BarData, calc_data, setting={"len":40, "atr":40, "atr_valve":0.09, "mid_sign":(10,30)}):
        length = 30
        offset1 = -30
        offset2 = int(-10)
        close = am.close
        deg1 = calc_regress_deg(close[-30:-8], False)
        deg2 = calc_regress_deg(close[-8:], False)
        

        if deg1 > 0 and deg2 > 0 or \
           deg1 < 0 and deg2 < 0:
            return
        
        if not (abs(deg1) > 0.15 and abs(deg2) > 0.15 and (abs(deg1) + abs(deg2)) > 0.35) :
            return

        close = am.close[-length:]
        min_val = np.min(close)
        max_val = np.max(close)
        mid_val =  max_val if deg1 > 0 else min_val
        mid_pos = np.where(close == mid_val)[0][0]

        if mid_pos < setting["mid_sign"][0] or mid_pos > setting["mid_sign"][1]:
            return

        start_val = np.min(close[:mid_pos]) if deg1 > 0 else np.max(close[:mid_pos])
        start_pos = np.where(close == start_val)[0][0]
        l = mid_pos - start_pos

        # pos2 = np.where(close == min_val)[0][0]
        kdj = am.kdj()
        k = kdj["k"][-1]
        d = kdj["d"][-1]
        j = kdj["j"][-1]
        x_fit = reg_util.regress_y_polynomial(close[:mid_pos], zoom=True)
        deg1_remake = calc_regress_deg(x_fit[:abs(mid_pos)], False)
        y_fit = reg_util.regress_y_polynomial(close[mid_pos:], zoom=True)
        deg2_remake = calc_regress_deg(y_fit[:abs(mid_pos)], False)
        # print(start_pos, mid_pos, deg1, deg2, deg1_remake, deg2_remake, l, start_val, mid_val)
        cci = am.cci(20)
        ma60 = am.sma(60)
        if deg2 < 0:
            # if k < 20 and d < 10 and j < 10:
            # if kdj[2] < 10:
            
            if cci < -100 and bar.close_price < ma60:
                if self.pos == 0:
                   calc_data["trade_open"] = "开空,deg={},cci={}".format(deg2, cci)
                   return self.short(bar.close_price, 1, type=OrderType.MARKET)
                elif self.pos > 0:
                   calc_data["trade_close"] = "平多后做空仓,deg={},cci={}".format(deg2, cci)
                   order_id_cover = self.sell(bar.close_price, abs(self.volumn), type=OrderType.MARKET)
                   order_id_buy = self.short(bar.close_price, 1, type=OrderType.MARKET)
                   return order_id_cover.extend(order_id_buy)
        else:
            # if k > 80 and d > 90 and j > 90:
            # if kdj[2] > 90:
            if cci > 100 and bar.close_price > ma60:
                
                if self.pos == 0:
                    calc_data["trade_open"] = "开多,deg={},cci={}".format(deg2, cci)
                    return self.buy(bar.close_price, 1, type=OrderType.MARKET)
                elif self.pos < 0:
                    calc_data["trade_close"] = "平空后多仓,deg={},cci={}".format(deg2, cci)
                    order_id_cover = self.cover(bar.close_price, abs(self.volumn), type=OrderType.MARKET)
                    order_id_buy = self.buy(bar.close_price, 1, type=OrderType.MARKET)
                    return order_id_cover.extend(order_id_buy)
Exemplo n.º 8
0
class Kdj120MaStrategy(CtaTemplate):
    author = "用Python的交易员"

    # fast_window = 10
    ma_window = 60
    wave_window = 0.0005
    bar_min = 5
    interval = 0
    # start_kdj = None
    # start_ma = None
    # last_ma = None
    bull = None
    base_wave = None

    report = {
        "gain": 0,
        "bull_count": 0,
        "bear_count": 0,
        "king_count": 0,
        "die_count": 0,
        "kdj_list": []
    }
    price = 0

    parameters = ["ma_window", "wave_window", "bar_min"]
    variables = ["bull", "base_wave"]

    def __init__(self, cta_engine, strategy_name, vt_symbol, setting):
        """"""
        super(Kdj120MaStrategy, self).__init__(cta_engine, strategy_name,
                                               vt_symbol, setting)

        self.bg = BarGenerator(self.on_bar, self.bar_min, self.on_x_min_bar)
        self.am = ArrayManager(200)

    def on_init(self):
        """
        Callback when strategy is inited.
        """
        self.write_log("策略初始化")
        self.load_bar(2)

    def on_start(self):
        """
        Callback when strategy is started.
        """
        self.write_log("策略启动")
        self.put_event()

    def on_stop(self):
        """
        Callback when strategy is stopped.
        """
        self.write_log("策略停止")

        self.put_event()

    def on_tick(self, tick: TickData):
        """
        Callback of new tick data update.
        """
        self.bg.update_tick(tick)

    def on_bar(self, bar: BarData):

        self.bg.update_bar(bar)

    def on_x_min_bar(self, bar: BarData):
        """
        Callback of new bar data update.
        """

        am = self.am
        am.update_bar(bar)
        if self.tracker is not None:
            self.tracker["bar_data"].append(bar)
        if not am.inited:
            return

        # 现在的价格
        now = bar.close_price

        # ma_data = am.sma(5, array=True)
        # w,w_pos = Algorithm.wave(ma_data, self.wave_window)
        w, w_pos = self.am.wave(self.wave_window)
        w = w[::-1]
        w_pos = w_pos[::-1]
        # 持仓的情况下,检查是否低于或者高于第1波浪,根据情况进行平仓
        # if self.pos != 0:
        #     print("收盘价", bar.close_price)

        if self.pos > 0:
            new_wave = bar.close_price - self.interval
            if now < self.base_wave:

                self.sell(bar.close_price, 1)
                # self.pos = 0
                gain = bar.close_price - self.price
                self.report["gain"] += gain
                print("平多仓,价格为{},盈利{}".format(bar.close_price, gain))
            elif self.base_wave < new_wave:
                if abs(self.base_wave - new_wave) > self.interval:
                    self.base_wave = new_wave
                    print("平仓价更新=", new_wave)
            # self.cover(bar.close_price, 1)
            # print("平仓", bar.close_price)
        elif self.pos < 0:
            new_wave = bar.close_price + self.interval
            if now > self.base_wave:
                # self.sell(bar.close_price, 1)
                self.cover(bar.close_price, 1)
                # self.pos = 0
                gain = -(bar.close_price - self.price)
                self.report["gain"] += gain
                print("平卖空仓,价格为{},盈利{}".format(bar.close_price, gain))
            elif self.base_wave > new_wave:
                if (self.base_wave - new_wave) > self.interval:
                    self.base_wave = new_wave
                    print("平仓价更新=", new_wave)
                    # print("更新wave, 新wave=", new_wave)

        if len(w) < 3:
            return

        total_interval = (w_pos[0] - w_pos[1]) + (w_pos[1] - w_pos[2])

        ma_window = am.sma(self.ma_window, array=True)

        # 现在的均线
        ma_price = ma_window[-1]

        # 计算均线,并保存
        self.bull = 1 if now > ma_price else 0

        kdj = self.am.kdj(5, 3, 3)

        k = kdj["k"][-1]
        d = kdj["d"][-1]
        j = kdj["j"][-1]
        trade_info = None
        # self.report["kdj_list"].append([k,d,j])
        # 均线之上,配合金叉进行
        if self.bull == 1:
            self.report["bull_count"] += 1
            # 金叉出现,且j值大于100时
            if k < 45 and k > d:
                self.report["king_count"] += 1
                if len(w) >= 3 and \
                   now  > w[0] and \
                   w[0] < w[1] and \
                   w[0] > w[2] and \
                   w[1] > w[2]:
                    wave_data = list(
                        map(lambda x, y: {self.am.time_array[x]: y},
                            w_pos[0:3], w))
                    trade_info = {
                        "k": k,
                        "d": d,
                        "direction": Direction.LONG,
                        "wave": wave_data,
                        "total_interval": total_interval,
                    }
                    if self.pos == 0:
                        self.interval = abs((w[0] - w[2]) * 0.8)
                        self.buy(bar.close_price, 1)
                        # self.pos += 1
                        self.base_wave = w[0]
                        self.price = bar.close_price
                        trade_info["price"] = bar.close_price
                        trade_info["interval"] = self.interval
                        trade_info["offset"] = Offset.OPEN
                    elif self.pos < 0:
                        self.interval = abs((w[0] - w[2]) * 0.8)
                        # self.pos += 1
                        gain = bar.close_price - self.price
                        self.report["gain"] += gain
                        self.cover(bar.close_price, 1)
                        self.buy(bar.close_price, 1)
                        self.base_wave = w[0]
                        self.price = bar.close_price
                        trade_info["price"] = bar.close_price
                        trade_info["interval"] = self.interval
                        trade_info["offset"] = Offset.CLOSE
        # 均线之下
        else:
            # 死叉出现,且j值小于10时
            self.report["bear_count"] += 1
            if k >= 55 and k < d:
                self.report["die_count"] += 1
                if len(w) >= 3 and \
                   now  < w[0] and \
                   w[0] > w[1] and \
                   w[0] < w[2] and \
                   w[1] < w[2]:
                    wave_data = list(
                        map(lambda x, y: {self.am.time_array[x]: y},
                            w_pos[0:3], w))
                    trade_info = {
                        "k": k,
                        "d": d,
                        "direction": Direction.SHORT,
                        "wave": wave_data,
                        "total_interval": total_interval,
                    }
                    if self.pos == 0:
                        self.interval = abs((w[0] - w[2]) * 10)
                        self.short(bar.close_price, 1)
                        # self.pos -= 1
                        self.base_wave = w[0]
                        self.price = bar.close_price
                        trade_info["price"] = bar.close_price
                        trade_info["interval"] = self.interval
                        trade_info["offset"] = Offset.OPEN
                    elif self.pos > 0:
                        self.interval = abs((w[0] - w[2]) * 10)
                        self.sell(bar.close_price, 1)
                        self.short(bar.close_price, 1)
                        # self.pos -= 1
                        self.base_wave = w[0]
                        gain = -(bar.close_price - self.price)
                        self.report["gain"] += gain
                        self.price = bar.close_price
                        trade_info["price"] = bar.close_price
                        trade_info["interval"] = self.interval
                        trade_info["offset"] = Offset.CLOSE
        if self.tracker is not None and trade_info is not None:
            self.tracker["trade_info"].append(trade_info)

        self.put_event()

    def on_order(self, order: OrderData):
        """
        Callback of new order data update.
        """
        pass

    def on_trade(self, trade: TradeData):
        """
        Callback of new trade data update.
        """
        self.put_event()

    def on_stop_order(self, stop_order: StopOrder):
        """
        Callback of stop order update.
        """
        pass