示例#1
0
def getWeatherFeature():
    data = readData.loadResidentialData()
    
    sumLoad = np.zeros((35040,))
    #userLoad = readData.getUserData(data, 0)
    for i in range(144):
        sumLoad += readData.getUserData(data, i)
        
    load_1hr = changeInterval.From15minTo1hour(sumLoad)
    
    # load weather data
    #weather_data = pd.read_csv('F:/OneDrive/Load Forecast/residential/data/weather2013_Austin.csv')
    weather_data = pd.read_csv('F:/SkyDrive/Load Forecast/residential/data/weather2013_Austin.csv')
    # test correlations
    corr_temp = sp.pearsonr(load_1hr, np.array(weather_data['temperature']))[0]
    corr_humidity = sp.pearsonr(load_1hr, np.array(weather_data['humidity']))[0]
    corr_pressure = sp.pearsonr(load_1hr, np.array(weather_data['pressure']))[0]
    corr_precip = sp.pearsonr(load_1hr, np.array(weather_data['precip_intensity']))[0]
    
    print(corr_temp, corr_humidity, corr_pressure, corr_precip)
    
    # selected features: temperature, humidity, pressure
    temperature = np.array(weather_data['temperature'])
    temperature = normalize(temperature)
    
    humidity = np.array(weather_data['humidity'])
    humidity = normalize(humidity)
    
    pressure = np.array(weather_data['pressure'])
    pressure = normalize(pressure)
    
    return(temperature, humidity, pressure)
示例#2
0

if __name__ == "__main__":
    # import load data
    data = readData.loadResidentialData()
    sumLoad = np.zeros((35040, ))
    #userLoad = readData.getUserData(data, 0)
    for i in range(144):
        sumLoad += readData.getUserData(data, i)

    # import weather data
    (temperature, humidity, pressure) = load_weather_corr.getWeatherFeature()

    # import cycles data
    (dailycycle, weeklycycle) = cycles.getCycles()

    sumLoad = changeInterval.From15minTo1hour(sumLoad)

    MAPE_sum = 0.0
    RMSPR_sum = 0.0

    for curr_day in range(56, 364):
        print(curr_day)
        (mape, rmspe) = RNN_LSTM(sumLoad, curr_day)
        MAPE_sum += mape
        RMSPR_sum += rmspe

    days_sample = 365 - 1 - 56
    MAPE_sum = MAPE_sum / days_sample
    RMSPR_sum = RMSPR_sum / days_sample
    print('AVERAGE MAPE: %.2f, RMSPE: %.2f' % (MAPE_sum, RMSPR_sum))