#!/usr/bin/python # -*- coding: utf8 -*- import os import numpy as np import pandas as pd import matplotlib as plt import matplotlib.pyplot as plt from mpl_toolkits.mplot3d import Axes3D import datetime import pandas as pd from pyFTS.partitioners import Grid, CMeans, FCM, Entropy from pyFTS.common import FLR,FuzzySet,Membership,Transformations,Util from pyFTS import fts,sfts from pyFTS.models import msfts from pyFTS.benchmarks import benchmarks as bchmk from pyFTS.benchmarks import Measures os.chdir("/home/petronio/dados/Dropbox/Doutorado/Disciplinas/AdvancedFuzzyTimeSeriesModels/") sonda = pd.read_csv("DataSets/SONDA_BSB_MOD.csv", sep=";") sonda['data'] = pd.to_datetime(sonda['data']) sonda = sonda[:][527041:] sonda.index = np.arange(0,len(sonda.index)) sonda_treino = sonda[:1051200] sonda_teste = sonda[1051201:] #res = bchmk.simpleSearch_RMSE(sonda_treino, sonda_teste, # sfts.SeasonalFTS,np.arange(3,30),[1],parameters=1440, # tam=[15,8], plotforecasts=False,elev=45, azim=40, # save=False,file="pictures/sonda_sfts_error_surface", intervals=False) from pyFTS.common import Util from pyFTS.models import cmsfts partitions = ['grid', 'entropy'] indexers = ['m15', 'Mh', 'Mhm15'] for max_part in [40, 50]: for part in partitions: fs = Util.load_obj("models/sonda_fs_" + part + "_" + str(max_part) + ".pkl") for ind in indexers: ix = Util.load_obj("models/sonda_ix_" + ind + ".pkl") model = cmsfts.ContextualMultiSeasonalFTS(part + " " + ind, ix) model.train(sonda_treino, fs) Util.persist_obj(model, "models/sonda_cmsfts_" + part + "_" + str(max_part) + "_" + ind + ".pkl")