Example #1
0
 def getfftparams(self):
     self.fftflag = True
     lowerf = (self.lowfreq.get())
     upperf = (self.highfreq.get())
     self.sr = (self.samprate.get())
     data = FFT(self.filename, lowerf, upperf, self.sr)
     self.tfdata, self.classes_fin = data.gettfdata()
Example #2
0
def main():
    spot = 100
    strikes = np.array([90, 100, 110])
    t = .5
    r = .008
    q = r
    is_call = True

    args = (spot, strikes, t, r, q, is_call)
    ls_pars = (1.3, .25)
    vg_pars = (.5, -1, .1)
    he_pars = (3, .005, .001, .3, .001)

    he_prices = he.price_heston(pars=he_pars, args=args)
    vg_prices = vg.price_vg(pars=vg_pars, args=args)
    ls_prices = ls.price_ls(pars=ls_pars, args=args)

    he_prices_fft = FFT(model='heston', args=args).price(he_pars)
    ls_prices_fft = FFT(model='ls', args=args).price(ls_pars)
    vg_prices_fft = FFT(model='vg', args=args).price(vg_pars)

    for prices, prices_fft in [[he_prices, he_prices_fft],
                               [vg_prices, vg_prices_fft],
                               [ls_prices, ls_prices_fft]]:
        print(prices)
        print(prices_fft)
        print()
        assert np.all(np.abs(prices_fft - prices) < 1e-2)
    pass
Example #3
0
def spectrum(x, sample_rate=8192, win_len=128):
    assert bin(win_len).count('1') == 1
    assert len(x) >= win_len

    def _next():
        for _p in range(0, len(x) - win_len + 1, win_len // 2):
            yield x[_p:_p + win_len]
        raise StopIteration()

    h = hamming_window(win_len)
    f = FFT()
    fbins = mel_bins(24)
    ibins = np.floor((win_len + 1) * fbins / sample_rate).astype(np.int)

    ret = []
    for win in _next():
        s = f.fft(win * h)
        p = np.square(np.abs(s)) / win_len
        temp = [None] * (len(ibins) - 2)
        for i in range(len(ibins) - 2):
            a, b, c = ibins[i], ibins[i + 1], ibins[i + 2]
            left = np.sum(p[a:b] * np.linspace(0, 1, b - a))
            right = np.sum(p[b:c] * np.linspace(1, 0, c - b))
            temp[i] = np.log(left + right + 1e-100)

        ret.append(dct(np.array(temp, dtype=np.float)))

    return np.array(ret)
def fft2(image):
    x = np.zeros_like(image)
    y = np.zeros_like(image)
    x = np.array(image)

    (N1, N2) = image.shape[:2]
    #print(N1, N2)
    #	print(image);
    t = 0
    b = 1024 - N2
    l = 0
    r = 1024 - N1

    np.pad(x, ((t, b), (l, r)), 'constant')

    #np.pad(x, ((1024-N1),(1024-N1)), 'constant', constant_values=(0, 0))

    print(x)
    for i in range(0, x.shape[0]):
        #print(x[i,:])
        x[i, :] = np.trim_zeros(FFT(x[i, :]))

    y = np.transpose(x)

    #np.pad(y, ((1024-N2),(1024-N2)), 'constant', constant_values=(0, 0))

    for i in range(0, y.shape[0]):
        x[:, i] = np.trim_zeros(FFT(y[:, i]))
    return x
Example #5
0
class MyModel(nn.Module):
    def __init__(self):
        super(MyModel, self).__init__()
        self.fft = FFT()

    def forward(self, x):
        y = self.fft.apply(x, False)
        y = y * 2
        y = self.fft.apply(y, True)
        return y
    def __init__(self,
                 size,
                 sample_rate=16000,
                 band_number=12,
                 window=[50, 8000]):
        self.size = 1 << math.frexp(size - 1)[1]
        self.sample_rate = float(sample_rate)
        self.resolution = self.sample_rate / self.size  # (sample_rate/2) / (band/2)

        self.set_band(band_number, window)

        self.fft = FFT(self.size)
Example #7
0
def profile_ls():
    sigma = .5
    alpha = 1.6
    p = (sigma, alpha)

    td_decorator(ls.price_ls, 'LS')(pars=p, args=a)
    td_decorator(FFT(model='ls', args=a).price, 'FFT LS')(p)
Example #8
0
def profile_vg():
    nu = .1
    theta = .1
    sigma = .05
    p = (nu, theta, sigma)

    td_decorator(vg.price_vg, 'VG')(pars=p, args=a)
    td_decorator(FFT(model='vg', args=a).price, 'FFT VG')(p)
Example #9
0
def profile_heston():
    kappa = 5
    theta = 1
    sigma = .5
    rho = .5
    v0 = .2
    p = (kappa, theta, sigma, rho, v0)

    td_decorator(he.price_heston, 'Heston')(pars=p, args=a)
    td_decorator(FFT(model='heston', args=a).price, 'FFT Heston')(p)
def main():
    builder = StreamBuilder(stream_type='file',
                            filename='data/speech/train/fadg0_sa1.wav')
    file_stream = builder.get_instance()
    vad_stream = Vad(file_stream)
    fft_stream = FFT(vad_stream, 32, 16)
    dic = StaticDict('data/debug/noise', 'data/debug/speech', rank=config.rank)
    enhancer_stream = NmfEnhancer(fft_stream, dic)
    wav_writer = WavWriter(enhancer_stream, 'out.wav')
    for _ in wav_writer:
        pass
Example #11
0
def pricing():
    times = 1000

    he_pars = (17.1602851582, 0.0592887994217, 3.69111708705, -0.788742440245, 0.0396629204273)
    vg_pars = (0.838288226409, -0.188041460262, 0.179096605713)
    ls_pars = (1.45807445595, 0.115510363099)
    bs_pars = (.2,)

    spot = 1200
    t = .76
    r = .008
    q = r
    is_call = True

    for n in [1, 10, 25, 50, 100, 200]:
        strikes = np.array([i * 50 + 500 for i in range(n)])
        args = (spot, strikes, t, r, q, is_call)
        unit = td_decorator(func=lambda p: price_bs(pars=p, args=args), times=times, seconds=False)(bs_pars)
        he_time = td_decorator(func=FFT(model='heston', args=args).price, times=times, seconds=False)(he_pars)
        vg_time = td_decorator(func=FFT(model='vg', args=args).price, times=times, seconds=False)(vg_pars)
        ls_time = td_decorator(func=FFT(model='ls', args=args).price, times=times, seconds=False)(ls_pars)
        print(f"For {n} strikes: bs: {unit} heston: {he_time}, vg: {vg_time}, ls: {ls_time}")
Example #12
0
class App():
    def __init__(self):
        self._fft = FFT()
        self._gui = GUI()

    def start(self):
        def call_back(audio_samples):
            self._microphone_update(audio_samples)

        microphone.start_stream(call_back)

    def _microphone_update(self, audio_samples):
        x, y, output_scroll, output_ennergy, output_spectrum, fft_result = self._fft.process(
            audio_samples)
        self._gui.run(audio_samples, x, y, output_scroll, output_ennergy,
                      output_spectrum, fft_result)
class SpectrumAnalyzer:
    def __init__(self,
                 size,
                 sample_rate=16000,
                 band_number=12,
                 window=[50, 8000]):
        self.size = 1 << math.frexp(size - 1)[1]
        self.sample_rate = float(sample_rate)
        self.resolution = self.sample_rate / self.size  # (sample_rate/2) / (band/2)

        self.set_band(band_number, window)

        self.fft = FFT(self.size)

    def set_band(self, n, window=[50, 8000]):
        self.band = n
        self.breakpoints = [0] * (n + 1)
        self.frequencies = [0.0] * (n + 1)
        self.strength = [0.0] * n

        delta = math.pow(float(window[1]) / window[0], 1.0 / n)
        for i in range(n + 1):
            self.frequencies[i] = math.pow(delta, i) * window[0]

        breakpoint = 0
        for i in range(1, self.size / 2):
            if self.resolution * i >= self.frequencies[breakpoint]:
                self.breakpoints[breakpoint] = i
                breakpoint += 1
                if breakpoint > n:
                    break

        self.breakpoints[n] = self.size / 2 + 1
        self.band_size = [
            self.breakpoints[i + 1] - self.breakpoints[i] for i in range(n)
        ]
        # print self.frequencies
        # print self.breakpoints

    def analyze(self, data):
        amplitude = self.fft.dft(data)
        for i in range(self.band):
            self.strength[i] = sum(
                amplitude[self.breakpoints[i]:self.
                          breakpoints[i + 1]])  # / self.band_size[i]

        return self.strength
Example #14
0
def tuning():
    times = 5
    metric = 'RMSE'
    optimizer = differential_evolution
    actual_puts = np.ndarray([])

    spot = 1200
    t = .76
    r = .008
    q = r
    is_call = True

    logfile = open(f'{root_dir}/params/time_benchmark_{datetime.now()}.log', 'w')

    for n in [1, 10, 25, 50, 100, 200]:
        strikes = np.array([i * 50 + 500 for i in range(n)])
        args = (spot, strikes, t, r, q, is_call)
        market = EvalArgs.from_tuple((spot, strikes, t, r, q, is_call))
        call_prices = FFT(model='vg', args=args).price((0.838288226409, -0.188041460262, 0.179096605713))

        def bs_func():
            GenPricer(model='bs', market=market, use_fft=False) \
                .optimize_pars(metric=metric, optimizer=optimizer, bounds=par_bounds['bs'],
                               actual_puts=actual_puts, actual_calls=call_prices,
                               polish=True)

        t0 = time()
        unit = td_decorator(func=bs_func, times=times, seconds=True, log_each=True)()
        hf.log_print(f'BS unit time for {n} strike(s): {unit}, real time: {(time() - t0) / times}', logfile)
        for model in ['heston', 'vg', 'ls']:
            def func():
                GenPricer(model=model, market=market, use_fft=True) \
                    .optimize_pars(metric=metric, optimizer=optimizer, bounds=par_bounds[model],
                                   actual_puts=actual_puts, actual_calls=call_prices,
                                   polish=True, disp=True, maxiter=50)
            t0 = time()
            hf.log_print(f"{model}: {td_decorator(func=func, times=times, seconds=True, log_each=True)() / unit}"
                         f" units, real time: {time() - t0}", logfile)
        hf.log_print("\n", logfile)

    logfile.close()
Example #15
0
    def __init__(self, builder):
        self.builder = builder
        self.cardstring = "front:CARD=CODEC,DEV=0"

        self.controller = LED_Controller(10, "192.168.4.1", 5555)

        self.fft_bars = [builder.get_object("fft_bar_" + str(i)) for i in range(40)]

        self.fft_timeout = GObject.timeout_add(50, self.fft_callback, None)
        self.state_timeout = GObject.timeout_add(30, self.state_update, None)

        self.fft_darea = self.builder.get_object("fft_drawing_area")
        self.state_darea = self.builder.get_object("state_drawing_area")
        self.chart = None
        self.strip_display = None

        self.provider = None

        self.relaxation_box = self.builder.get_object("relaxation_frame_count")

        self.pcm_chooser = builder.get_object("pcm_combo_box")
        for pcm in FFT.available_pcms():
            self.pcm_chooser.append_text(pcm)

        self.grouper = Grouper(self.controller.strips, self)

        self.strobes = [Strobe(self)]

        self.fft_effect_chooser = builder.get_object("fft_effect_combo")
        self.effects = {cls.__name__: cls for cls in ToStateProcessor.__subclasses__()}
        for effect in self.effects.keys():
            self.fft_effect_chooser.append_text(effect)
        self.fft_effect_chooser.set_entry_text_column(0)
        self.fft_effect_chooser.set_active(0)
        self.builder.get_object("fft_rescale_button").set_sensitive(False)
        self.builder.get_object("fft_channel_scale").set_sensitive(True)

        self.send_static()
Example #16
0
def filter2d_freq(inputImg, filter):
    print(inputImg.size)
    pxInput = inputImg.load()
    M, N = inputImg.size
    size = len(filter)
    fft = FFT()

    position = [i - i / 2 for i in range(size)]
    imgArray = np.zeros([M, N], dtype=np.complex)
    imgArray = fft.zeroPadding(imgArray)
    for x in range(M):
        for y in range(N):
            imgArray[x, y] = pxInput[x, y]

    M, N = imgArray.shape
    outputImg = Image.new('L', (M, N), 0)
    pxOutput = outputImg.load()
    filterArray = np.zeros([M, N], dtype=np.complex)
    for x in range(size):
        for y in range(size):
            filterArray[x, y] = filter[x][y]

    filterSpectrum = fft.fft2d(filterArray, -1)
    ans = np.fft.fft2(filterArray)
    print(np.allclose(filterSpectrum, ans))

    imgSpectrum = fft.fft2d(imgArray, -1)
    ans = np.fft.fft2(imgArray)
    print(np.allclose(imgSpectrum, ans))

    spectrum = np.zeros([M, N], dtype=np.complex)
    for x in range(M):
        for y in range(N):
            spectrum[x, y] = filterSpectrum[x, y] * imgSpectrum[x, y]
    spectrum = fft.fft2d(spectrum, 1)

    for x in range(M):
        for y in range(N):
            pxOutput[x, y] = (math.floor(spectrum[x, y].real / (M * N)), )
    return outputImg
Example #17
0
def generate_svmlight_file(folder):
    fft = FFT()
    files = glob.glob(folder + '.json')
    for f in files:
        json_file = open(f, 'r')
        marks = json.load(json_file)
        json_file.close()
        audio = fft.extract_audio(f.replace('.json', '.dat'))
        features = fft.spectrogram_energy(audio)[2]
        labels = {'friction': [0], 'negative': [1], 'footstep': [1]}
        X = []
        y = []
        for key, value in marks.items():
            label = labels[key]
            for start, end in value:
                start = fft.frame_index(start)
                end = fft.frame_index(end) + 1
                X.extend(features[start:end])
                y.extend(label * (end - start))
        dump_svmlight_file(np.array(X),
                           np.array(y),
                           f.replace('.json', '.svm'),
                           zero_based=False)
Example #18
0
 def __init__(self):
     self._fft = FFT()
     self._gui = GUI()
Example #19
0
	def augment_file_time_freq(self,fname): # per trial 3s, dropout and add noise
		data = pd.read_csv(fname)# include header !
		data.interpolate(method='linear', axis=0, inplace=True) # inplace=1 otherwise needs return val.
		data.fillna(0, inplace=True)
		nRow=data.shape[0]
		nCol=data.shape[1]
		pp = preProcessor(self.sampleRate, self.lowcut ,self.highcut,weight_decay=0.999, init_window_size=self.init_window_size)
		filt = FFT(N=self.nfft, sampleRate=self.sampleRate)
		for c in range(0,self.nFeatures):
			x=np.asarray(data.iloc[: , c])
			if if_notch_filter:
				x = pp.filter_not( x )
			x = pp.filter_high( x )
			if if_normalize:
				x = pp.normalize(x)
			if x.shape[0]==1:
				x=x[0]
			bad=-1
			if np.any(np.isnan(x)):
				bad=1
			if bad==1:
				print("nan! when convert_file")
				print(data.iloc[: , c])
				sys.exit(0)
			data.iloc[: , c] = x
			# print(x)
			# sys.exit(0)
		augtime = []
		augfreq = []
		auglabel = []
		# original signal first
		ind = 0
		dtime = []
		dfreq = []
		dlabel = []
		SampPerFrame = int(self.sampleRate * self.secondPerFrame)

		while ind+SampPerFrame <=nRow:
			timeStep = []
			freqStep = []
			label=-1
			for c in range(0,self.nFeatures):
				x=np.asarray(data.iloc[ind:ind+SampPerFrame , c]) # make copy
				timeStep.append(x)
				if if_sum_bands:
					filt.N_fft( x )
					y=filt.sum_freq_band(bands)
				else:
					y=filt.get_rfft_without_DC(x)
				freqStep.append(y)
				label=(data.iloc[ind,self.nFeatures])

			ind+=int(SampPerFrame * self.shiftRatio)
			dtime.append(timeStep)
			dfreq.append(freqStep)
			dlabel.append(label)
		
		if not (len(dtime)%self.stateStep==0):
			print(__file__.split("/")[-1],"bad len?",fname,len(dtime),nRow)
		# assert(len(dtime)%self.stateStep==0)
		augtime.append(dtime) # remain format of steps.
		augfreq.append(dfreq)
		auglabel.append(dlabel)
		# augment # times, increase to #+1 size: 
		for i in range(self.augmentTimes): 
			ind = 0
			dtime = []
			dfreq = []
			dlabel = []
			while ind+SampPerFrame <=nRow:
				timeStep = []
				freqStep = []
				label=-1
				for c in range(0,self.nFeatures):
					x=np.asarray(data.iloc[ind:ind+SampPerFrame , c]) # make copy

					x1=pp.add_noise(x,nr=0.01)
					x1=pp.drop_zero_sparse(x1,ratio=0.1) # reshaped(1,-1)
					timeStep.append(x1[0])
					
					x2 = pp.drop_zero_sparse(x,ratio=0.1)
					if if_sum_bands:
						filt.N_fft( x2 )
						y=filt.sum_freq_band(bands)
					else:
						y=filt.get_rfft_without_DC(x2)
					freqStep.append(y)
					label=(data.iloc[ind,self.nFeatures])

				ind+=int(SampPerFrame * self.shiftRatio)
				dtime.append(timeStep)
				dfreq.append(freqStep)
				dlabel.append(label)

			# assert(len(dtime)%self.stateStep==0)
			augtime.append(dtime) # remain format of steps.
			augfreq.append(dfreq)
			auglabel.append(dlabel)

		return augtime,augfreq,auglabel # [[ori],[aug],,],,
Example #20
0
fir_output_bits = fir.output_bit_width(input_bits)
set_env("FIR_OUTPUT_WIDTH", fir_output_bits)

# with open("coeff40_2.dat") as f:
#     taps = [float(line.rstrip("\n")) for line in f]
#     fir.taps = taps
#     fir.write_poly_taps_files(
#         ["../roms/fir/"], tap_bits, downsample_factor, True, False
#     )
#     fir_response("40_2_response.dat", taps=taps, fs=40e6)
#     set_env("FIR_TAP_WIDTH", tap_bits)
#     set_env("FIR_NORM_SHIFT", fir.tap_normalization_shift())
#     set_env("FIR_OUTPUT_WIDTH", fir.output_bit_width(input_bits))

# FFT roms
fft = FFT(1024, 4)
# fft_twiddle_bits = 10
fft_twiddle_bits = 18
fft.write_twiddle_roms(["src/roms/fft/"], fft_twiddle_bits)
set_env("FFT_TWIDDLE_WIDTH", fft_twiddle_bits)
set_env("FFT_OUTPUT_WIDTH", fft.output_bit_width(fir_output_bits))

# window roms
N = 1024
COEFF_PREC = 16

w = np.kaiser(N, 6)
w_int = [sub_integral_to_uint(i, COEFF_PREC) for i in w]

with open("src/roms/window/coeffs.hex", "w") as f:
    for coeff in w_int:
Example #21
0
#!/usr/bin/env python
# -*- coding: utf-8 -*-
'''
Measure the crosstalk between DAC0 and DAC1
'''

import numpy as np
import os
import time
import matplotlib.pyplot as plt
from fft import FFT
from koheron import connect

host = os.getenv('HOST', '192.168.1.16')
client = connect(host, 'fft', restart=False)
driver = FFT(client)

# Use Rectangular FFT window
driver.set_fft_window(0)

n_pts = driver.n_pts
fs = 250e6

fmin = 0.1e6
fmax = 120e6

freqs = np.linspace(fmin, fmax, num=100)
freqs = np.round(freqs / fs * n_pts) * fs / n_pts

crosstalk = np.zeros((2, np.size(freqs)))
from filter import FilterFFT
from low_pass_filter import LowPassFilter
from high_pass_filter import HighPassFilter
import numpy
import math

#class IntervalPassFilter(FilterFFT):
#    pass

if __name__ == "__main__":
    import sys

    low_cut_distance = int(sys.argv[2])
    high_cut_distance = int(sys.argv[3])

    l = LowPassFilter(sys.argv[1])
    low_filter = l.get_filter(low_cut_distance)

    m = HighPassFilter(sys.argv[1])
    high_filter = m.get_filter(high_cut_distance)

    applied_filter = low_filter * high_filter

    i = FFT(sys.argv[1])
    i.apply_inverse(applied_filter)
    i.save_to_file("output.png")

    l.apply()
    l.set(applied_filter * l.get())
    l.display_normalize()
    l.save_to_file("spectrum.png")
Example #23
0
#!/usr/bin/env python
# -*- coding: utf-8 -*-

import numpy as np
import os
import time
import matplotlib.pyplot as plt

from fft import FFT
from koheron import connect

host = os.getenv('HOST', '192.168.1.11')
client = connect(host, 'fft', restart=False)
driver = FFT(client)

print('Start test.py')

n_pts = driver.n_pts
fs = 250e6

psd = driver.read_psd()

#plt.plot(10*np.log10(psd))
plt.plot(psd)
plt.show()

#freqs = np.array([0.01, 0.02, 0.05, 0.1, 0.15, 0.2, 0.25, 0.3, 0.4, 0.5, 0.6, 0.7, 0.8, 0.9, 1, 1.5, 2, 3, 4, 5, 6, 7, 8, 9, 10, 11, 12, 13, 14, 15, 16, 17, 18, 19, 20, 22, 25, 27, 30, 33, 35, 37, 40, 43, 45, 47, 50, 53, 55, 57, 60, 63, 65, 67, 70, 73, 75, 77, 80, 83, 85, 87, 90, 93, 95, 97, 100, 103, 105, 107, 110, 113, 115, 117, 120, 123, 124]) * 1e6

freqs = np.linspace(0.01e6, 40e6,num=200)
freqs = np.round(freqs / fs * n_pts) * fs / n_pts
Example #24
0
GPIO.setmode(GPIO.BCM)
GPIO.setup(18, GPIO.IN, pull_up_down=GPIO.PUD_UP)

allIntents = [
    "只是打招呼", "打電話", "文字辨識", "景象辨識", "發簡訊", "罵人", "認人", "拍照", "查詢餘額", "掰掰",
    "None"
]

# run ls /dev/tty* before and after plugging in arduino to find out
ser = serial.Serial('/dev/ttyACM0', 9600)

# initilialize an Microsoft_ASR object

tts = TTS()
fft = FFT(time_gap=0.5)
ms_asr = Microsoft_ASR()

temperature_flag = False

while True:
    #st = time.time()
    print("\rPress to activate your voice assistant...", end='  ')
    input_state = GPIO.input(18)
    ret = None
    if input_state == True:
        # Button Pressed
        print()
        intent, entities = callLUIS(ms_asr.listen_for_speech())

        print('intent:', intent)
Example #25
0
'''
Measure the noise floor of the ADC and ADC + DAC
'''

import numpy as np
import os
import time
import matplotlib.pyplot as plt

from fft import FFT
from koheron import connect

host = os.getenv('HOST', '192.168.1.50')
client = connect(host, 'fft', restart=False)
driver = FFT(client)

Rload = 50 # Ohm

driver.set_fft_window(0)

driver.set_input_channel(0)
lpsd00 = np.sqrt(Rload * driver.read_psd(0)) # V/rtHz
lpsd10 = np.sqrt(Rload * driver.read_psd(1)) # V/rtHz

driver.set_input_channel(1)
lpsd01 = np.sqrt(Rload * driver.read_psd(0)) # V/rtHz
lpsd11 = np.sqrt(Rload * driver.read_psd(1)) # V/rtHz

fig = plt.figure(figsize=(6,6))
ax = fig.add_subplot(111)
Example #26
0
 def __init__(self):
     super(MyModel, self).__init__()
     self.fft = FFT()
Example #27
0
# -*- coding: utf-8 -*-

'''
Measure the crosstalk between ADC0 and ADC1
'''

import numpy as np
import os
import time
import matplotlib.pyplot as plt
from fft import FFT
from koheron import connect

host = os.getenv('HOST', '192.168.1.16')
client = connect(host, 'fft', restart=False)
driver = FFT(client)

# Use Rectangular FFT window
driver.set_fft_window(0)

n_pts = driver.n_pts
fs = 250e6

fmin = 0.1e6
fmax = 120e6

freqs = np.linspace(fmin, fmax ,num=100)
freqs = np.round(freqs / fs * n_pts) * fs / n_pts

crosstalk = np.zeros((2, np.size(freqs)))
Example #28
0
 def pcm_chooser_clicked(self, button):
     for pcm in FFT.available_pcms():
         self.pcm_chooser.append_text(pcm)
Example #29
0
Measure the noise floor of the ADC and ADC + DAC
'''

import numpy as np
import os
import time
import matplotlib.pyplot as plt

from fft import FFT

from koheron import connect
from koheron import Alpha250

host = os.getenv('HOST', '192.168.1.50')
client = connect(host, 'fft', restart=False)
driver = FFT(client)
alpha = Alpha250(client)

print(driver.get_fs())

# clk_200MHz = {'idx': 0, 'fs': 200E6}
# clk_250MHz = {'idx': 1, 'fs': 250E6}

# clock = clk_250MHz
# alpha.set_sampling_frequency(clock['idx'])

# for _ in range(300):
#     print("-----")
#     driver.read_psd_raw(0)
#     print (driver.get_acq_cycle_index(0))
#     driver.read_psd_raw(1)
Example #30
0
# -*- coding: utf-8 -*-
'''
Measure the noise floor of the ADC and ADC + DAC
'''

import numpy as np
import os
import time
import matplotlib.pyplot as plt

from fft import FFT
from koheron import connect

host = os.getenv('HOST', '192.168.1.16')
client = connect(host, 'fft', restart=False)
driver = FFT(client)

driver.set_fft_window(0)
driver.set_dds_freq(0, 0)
driver.set_dds_freq(1, 0)
driver.set_input_channel(0)

fig = plt.figure(figsize=(6, 6))
ax = fig.add_subplot(111)
ax.set_xlim([0, 125])
ax.set_ylim([0, 40])

freqs = np.arange(driver.n_pts / 2) * 250. / 8192

raw_input("Terminate ADC0 with 50 Ohm")
lpsd1 = np.sqrt(50 * driver.read_psd())  # V/rtHz
Example #31
0
 def a(contourStorage):
     for value in contourStorage:
         fft = FFT(value)
         fft.transform(NUM_OF_BINS)
         yield fft.getFFT()
# -*- coding: utf-8 -*-
'''
Measure the harmonic distortion (HD2 and HD3) of the DAC and ADC combined.
Connect DAC0 to ADC0 to perform the measurement.
'''

import numpy as np
import os
import time
import matplotlib.pyplot as plt
from fft import FFT
from koheron import connect

host = os.getenv('HOST', '192.168.1.16')
client = connect(host, 'fft', restart=False)
driver = FFT(client)

# Use Rectangular FFT window
driver.set_fft_window(0)

n_pts = driver.n_pts
fs = 250e6

fmin = 0.1e6
fmax = 40e6

freqs = np.linspace(fmin, fmax, num=500)
freqs = np.round(freqs / fs * n_pts) * fs / n_pts

hd1 = 0.0 * freqs
hd2 = 0.0 * freqs
Example #33
0
# -*- coding: utf-8 -*-

import numpy as np
import matplotlib
matplotlib.use('GTKAgg')
from matplotlib import pyplot as plt

from scipy import signal
import os, time
from koheron import connect
from fft import FFT

if __name__ == "__main__":
    host = os.getenv('HOST', '192.168.1.16')
    client = connect(host, 'fft')
    driver = FFT(client)

    driver.set_dds_freq(0, 50e6)

    n = 4096
    fs = 250e6
    cic_rate = 500

    ffft = np.fft.fftfreq(n) * fs / (cic_rate * 2)

    # Dynamic plot
    fig = plt.figure()
    ax = fig.add_subplot(111)
    x = np.arange(n)
    y = np.zeros(n)