tf_cnn.py 4.1 KB

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  1. #!/usr/bin/env python
  2. # -*- coding:utf-8 -*-
  3. # @FileName :nn_bp.py
  4. # @Time :2025/2/12 10:41
  5. # @Author :David
  6. # @Company: shenyang JY
  7. from tensorflow.keras.layers import Input, Dense, LSTM, concatenate, Conv1D, Conv2D, MaxPooling1D, Reshape, Flatten
  8. from tensorflow.keras.models import Model, load_model
  9. from tensorflow.keras.callbacks import ModelCheckpoint, EarlyStopping, TensorBoard, ReduceLROnPlateau
  10. from tensorflow.keras import optimizers, regularizers
  11. from models_processing.model_tf.losses import region_loss
  12. from models_processing.model_tf.settings import set_deterministic
  13. import numpy as np
  14. from common.database_dml_koi import *
  15. from threading import Lock
  16. import argparse
  17. model_lock = Lock()
  18. set_deterministic(42)
  19. class CNNHandler(object):
  20. def __init__(self, logger, args):
  21. self.logger = logger
  22. self.opt = argparse.Namespace(**args)
  23. self.model = None
  24. def get_model(self, args):
  25. """
  26. 单例模式+线程锁,防止在异步加载时引发线程安全
  27. """
  28. try:
  29. with model_lock:
  30. loss = region_loss(self.opt)
  31. self.model = get_keras_model_from_mongo(args, {type(loss).__name__: loss})
  32. except Exception as e:
  33. self.logger.info("加载模型权重失败:{}".format(e.args))
  34. @staticmethod
  35. def get_keras_model(opt):
  36. loss = region_loss(opt)
  37. l1_reg = regularizers.l1(opt.Model['lambda_value_1'])
  38. l2_reg = regularizers.l2(opt.Model['lambda_value_2'])
  39. nwp_input = Input(shape=(opt.Model['time_step'], opt.Model['input_size']), name='nwp')
  40. con1 = Conv1D(filters=64, kernel_size=1, strides=1, padding='valid', activation='relu', kernel_regularizer=l2_reg)(nwp_input)
  41. d1 = Dense(32, activation='relu', name='d1', kernel_regularizer=l1_reg)(con1)
  42. nwp = Dense(8, activation='relu', name='d2', kernel_regularizer=l1_reg)(d1)
  43. output = Dense(1, name='d5')(nwp)
  44. output_f = Flatten()(output)
  45. model = Model(inputs=nwp_input, outputs=output_f)
  46. adam = optimizers.Adam(learning_rate=opt.Model['learning_rate'], beta_1=0.9, beta_2=0.999, epsilon=1e-7, amsgrad=True)
  47. reduce_lr = ReduceLROnPlateau(monitor='val_loss', factor=0.01, patience=5, verbose=1)
  48. model.compile(loss=loss, optimizer=adam)
  49. return model
  50. def train_init(self):
  51. try:
  52. if self.opt.Model['add_train']:
  53. # 进行加强训练,支持修模
  54. loss = region_loss(self.opt)
  55. base_train_model = get_keras_model_from_mongo(vars(self.opt), {type(loss).__name__: loss})
  56. base_train_model.summary()
  57. self.logger.info("已加载加强训练基础模型")
  58. else:
  59. base_train_model = self.get_keras_model(self.opt)
  60. return base_train_model
  61. except Exception as e:
  62. self.logger.info("加载模型权重失败:{}".format(e.args))
  63. def training(self, train_and_valid_data):
  64. model = self.train_init()
  65. # tf.reset_default_graph() # 清除默认图
  66. train_x, train_y, valid_x, valid_y = train_and_valid_data
  67. print("----------", np.array(train_x[0]).shape)
  68. print("++++++++++", np.array(train_x[1]).shape)
  69. model.summary()
  70. early_stop = EarlyStopping(monitor='val_loss', patience=self.opt.Model['patience'], mode='auto')
  71. history = model.fit(train_x, train_y, batch_size=self.opt.Model['batch_size'], epochs=self.opt.Model['epoch'], verbose=2, validation_data=(valid_x, valid_y), callbacks=[early_stop], shuffle=False)
  72. loss = np.round(history.history['loss'], decimals=5)
  73. val_loss = np.round(history.history['val_loss'], decimals=5)
  74. self.logger.info("-----模型训练经过{}轮迭代-----".format(len(loss)))
  75. self.logger.info("训练集损失函数为:{}".format(loss))
  76. self.logger.info("验证集损失函数为:{}".format(val_loss))
  77. return model
  78. def predict(self, test_x, batch_size=1):
  79. result = self.model.predict(test_x, batch_size=batch_size)
  80. self.logger.info("执行预测方法")
  81. return result
  82. if __name__ == "__main__":
  83. run_code = 0