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Python

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import numpy as np
import pandas as pd
import torch
from torch import nn
from multiprocessing import Pool
import matplotlib.pyplot as plt
import os
os.environ["KMP_DUPLICATE_LIB_OK"]="TRUE"
DAYS_FOR_TRAIN = 10
torch.manual_seed(42)
class LSTM_Regression(nn.Module):
def __init__(self, input_size, hidden_size, output_size=1, num_layers=2):
super().__init__()
self.lstm = nn.LSTM(input_size, hidden_size, num_layers)
self.fc = nn.Linear(hidden_size, output_size)
def forward(self, _x):
x, _ = self.lstm(_x) # _x is input, size (seq_len, batch, input_size)
s, b, h = x.shape # x is output, size (seq_len, batch, hidden_size)
x = x.view(s * b, h)
x = self.fc(x)
x = x.view(s, b, -1) # 把形状改回来
return x
def create_dataset(data, days_for_train=5) -> (np.array, np.array):
dataset_x, dataset_y = [], []
for i in range(len(data) - days_for_train-5):
dataset_x.append(data[i:(i + days_for_train)])
dataset_y.append(data[i + days_for_train:i + days_for_train+5])
# print(dataset_x,dataset_y)
return (np.array(dataset_x), np.array(dataset_y))
def normal(nd):
high = nd.describe()['75%'] + 1.5*(nd.describe()['75%']-nd.describe()['25%'])
low = nd.describe()['25%'] - 1.5*(nd.describe()['75%']-nd.describe()['25%'])
return nd[(nd<high)&(nd>low)]
def data_preprocessing(data):
data.columns = data.columns.map(lambda x: x.strip())
data.index = data.index.map(lambda x:x.strip())
data.index = pd.to_datetime(data.index,format='%Y-%m-%d')
data.sort_index(inplace=True)
data = data.loc['2021-01':'2023-08']
data.drop(columns=[i for i in data.columns if (data[i] == 0).sum() / len(data) >= 0.5], inplace=True) # 去除0值列
data = data.astype(float)
for col in data.columns:
data[col] = normal(data[col])
return data
# 拼接数据集
# file_dir = r'C:\Users\user\Desktop\浙江各地市行业电量数据'
# excel = os.listdir(file_dir)[0]
# data = pd.read_excel(os.path.join(file_dir, excel), sheet_name=0, index_col='stat_date')
# data.drop(columns='地市',inplace=True)
# data = data_preprocessing(data)
#
# df = data[data.columns[0]]
# df.dropna(inplace = True)
# dataset_x, dataset_y = create_dataset(df, DAYS_FOR_TRAIN)
#
# for level in data.columns[1:]:
# df = data[level]
# df.dropna(inplace=True)
# x, y = create_dataset(df, DAYS_FOR_TRAIN)
# dataset_x = np.concatenate((dataset_x, x))
# dataset_y = np.concatenate((dataset_y, y))
#
#
# for excel in os.listdir(file_dir)[1:]:
#
# data = pd.read_excel(os.path.join(file_dir,excel), sheet_name=0,index_col='stat_date')
# data.drop(columns='地市', inplace=True)
# data = data_preprocessing(data)
#
# for level in data.columns:
# df = data[level]
# df.dropna(inplace=True)
# x,y = create_dataset(df,DAYS_FOR_TRAIN)
# dataset_x = np.concatenate((dataset_x,x))
# dataset_y = np.concatenate((dataset_y,y))
#
#
# print(dataset_x.shape,dataset_y.shape)
# # 训练
device = torch.device('cuda' if torch.cuda.is_available() else 'cpu')
#
# # 标准化到0~1
# max_value = np.max(dataset_x)
# min_value = np.min(dataset_x)
# dataset_x = (dataset_x - min_value) / (max_value - min_value)
# dataset_y = (dataset_y - min_value) / (max_value - min_value)
# print('max_value:',max_value,'min_value:',min_value)
# # 划分训练集和测试集
# train_size = int(len(dataset_x)*0.7)
# train_x = dataset_x[:train_size]
# train_y = dataset_y[:train_size]
#
# # 将数据改变形状RNN 读入的数据维度是 (seq_size, batch_size, feature_size)
# train_x = train_x.reshape(-1, 1, DAYS_FOR_TRAIN)
# train_y = train_y.reshape(-1, 1, 5)
#
# # 转为pytorch的tensor对象
# train_x = torch.from_numpy(train_x).to(device).type(torch.float32)
# train_y = torch.from_numpy(train_y).to(device).type(torch.float32)
#
model = LSTM_Regression(DAYS_FOR_TRAIN, 32, output_size=5, num_layers=2).to(device) # 导入模型并设置模型的参数输入输出层、隐藏层等
#
#
# # train_loss = []
# # loss_function = nn.MSELoss()
# # optimizer = torch.optim.Adam(model.parameters(), lr=0.005, betas=(0.9, 0.999), eps=1e-08, weight_decay=0)
# # for i in range(1500):
# # out = model(train_x)
# # loss = loss_function(out, train_y)
# # loss.backward()
# # optimizer.step()
# # optimizer.zero_grad()
# # train_loss.append(loss.item())
# # if i % 100 == 0:
# # print(f'epoch {i+1}: loss:{loss}')
#
# # 保存/读取模型
# # torch.save(model.state_dict(),'hy5.pth')
#
# model.load_state_dict(torch.load('hy5.pth'))
# # for test
# model = model.eval() # 转换成测试模式
# # model.load_state_dict(torch.load(os.path.join(model_save_dir,model_file))) # 读取参数
# dataset_x = dataset_x.reshape(-1, 1, DAYS_FOR_TRAIN) # (seq_size, batch_size, feature_size)
# dataset_x = torch.from_numpy(dataset_x).to(device).type(torch.float32)
#
# pred_test = model(dataset_x) # 全量训练集
# # 模型输出 (seq_size, batch_size, output_size)
# pred_test = pred_test.view(-1)
# pred_test = np.concatenate((np.zeros(DAYS_FOR_TRAIN), pred_test.cpu().detach().numpy()))
# plt.plot(pred_test.reshape(-1), 'r', label='prediction')
# plt.plot(dataset_y.reshape(-1), 'b', label='real')
# plt.plot((train_size*5, train_size*5), (0, 1), 'g--') # 分割线 左边是训练数据 右边是测试数据的输出
# plt.legend(loc='best')
# plt.show()
model.load_state_dict(torch.load('hy5.pth'))
max_value = 354024930.8
min_value = 0.0
# 创建测试集
df_eval = pd.read_excel(r'C:\Users\user\Desktop\浙江各地市行业电量数据\ 杭州 .xlsx',index_col='stat_date')
df_eval.columns = df_eval.columns.map(lambda x:x.strip())
df_eval.index = pd.to_datetime(df_eval.index)
x,y = create_dataset(df_eval.loc['2023-7']['第二产业'],10)
x = (x - min_value) / (max_value - min_value)
x = x.reshape(-1,1,10)
x = torch.from_numpy(x).type(torch.float32).to(device)
pred = model(x)
x2 = np.array([227964890.1,220189256.2,220189256.2,220189256.2,220189256.2,220189256.2,220189256.2,220189256.2,220189256.2,220189256.2])
x2 = (x2 - min_value) / (max_value - min_value)
x2 = x2.reshape(-1,1,10)
print(x2)
x2 = torch.from_numpy(x2).type(torch.float32).to(device)
pred2 = model(x2)
# 反归一化
pred = pred * (max_value - min_value) + min_value
pred2 = pred2 * (max_value - min_value) + min_value
print('pred2:',pred2.view(-1).cpu().detach().numpy())
# df = df * (max_value - min_value) + min_value
df = pd.DataFrame({'real':y.reshape(-1),'pred':pred.view(-1).cpu().detach().numpy()})
print(df)
df.to_csv('7月第二产业.csv',encoding='gbk')
# 反归一化
# pred = pred * (max_value - min_value) + min_value
# df = df * (max_value - min_value) + min_value
# # 打印指标
# print(abs(pred - df[-3:]).mean() / df[-3:].mean())
# result_eight = pd.DataFrame({'pred': np.round(pred,1),'real': df[-3:]})
# target = (result_eight['pred'].sum() - result_eight['real'].sum()) / df[-31:].sum()
# result_eight['loss_rate'] = round(target, 5)
# result_eight['level'] = level
# list_app.append(result_eight)
# print(target)
# print(result_eight)
# final_df = pd.concat(list_app,ignore_index=True)
# final_df.to_csv('市行业电量.csv',encoding='gbk')
# print(final_df)