import numpy as np
import tensorflow as tf
from tensorflow.contrib import rnn
# 加载matplotlib工具包,使用该工具包可以对预测的sin函数曲线进行绘图
import matplotlib as mpl
from tensorflow.contrib.learn.python.learn.estimators.estimator import SKCompat
mpl.use('Agg')
from matplotlib import pyplot as plt
learn = tf.contrib.learn
HIDDEN_SIZE = 30 # Lstm中隐藏节点的个数
NUM_LAYERS = 2 # LSTM的层数
TIMESTEPS = 10 # 循环神经网络的截断长度
TRAINING_STEPS = 10000 # 训练轮数
BATCH_SIZE = 32 # batch大小
TRAINING_EXAMPLES = 10000 # 训练数据个数
TESTING_EXAMPLES = 1000 # 测试数据个数
SAMPLE_GAP = 0.1 # 采样间隔
# 定义生成正弦数据的函数
def generate_data(seq):
X = []
Y = []
# 序列的第i项和后面的TIMESTEPS-1项合在一起作为输入;第i+TIMESTEPS项作为输出
# 即用sin函数前面的TIMESTPES个点的信息,预测第i+TIMESTEPS个点的函数值
for i in range(len(seq) - TIMESTEPS - 1):
X.append([seq[i:i + TIMESTEPS]])
Y.append([seq[i + TIMESTEPS]])
return np.array(X, dtype=np.float32), np.array(Y, dtype=np.float32)
def LstmCell():
lstm_cell = rnn.BasicLSTMCell(HIDDEN_SIZE,state_is_tuple=True)
return lstm_cell
# 定义lstm模型
def lstm_model(X, y):
cell = rnn.MultiRNNCell([LstmCell() for _ in range(NUM_LAYERS)])
output, _ = tf.nn.dynamic_rnn(cell, X, dtype=tf.float32)
output = tf.reshape(output, [-1, HIDDEN_SIZE])
# 通过无激活函数的全连接层计算线性回归,并将数据压缩成一维数组结构
predictions = tf.contrib.layers.fully_connected(output, 1, None)
# 将predictions和labels调整统一的shape
labels = tf.reshape(y, [-1])
predictions = tf.reshape(predictions, [-1])
loss = tf.losses.mean_squared_error(predictions, labels)
train_op = tf.contrib.layers.optimize_loss(loss, tf.contrib.framework.get_global_step(),
optimizer="Adagrad",
learning_rate=0.1)
return predictions, loss, train_op
# 进行训练
# 封装之前定义的lstm
regressor = SKCompat(learn.Estimator(model_fn=lstm_model, model_dir="Models/model_2"))
# 生成数据
test_start = TRAINING_EXAMPLES * SAMPLE_GAP
test_end = (TRAINING_EXAMPLES + TESTING_EXAMPLES) * SAMPLE_GAP
train_X, train_y = generate_data(np.sin(np.linspace(0, test_start, TRAINING_EXAMPLES, dtype=np.float32)))
test_X, test_y = generate_data(np.sin(np.linspace(test_start, test_end, TESTING_EXAMPLES, dtype=np.float32)))
# 拟合数据
regressor.fit(train_X, train_y, batch_size=BATCH_SIZE, steps=TRAINING_STEPS)
# 计算预测值
predicted = [[pred] for pred in regressor.predict(test_X)]
# 计算MSE
rmse = np.sqrt(((predicted - test_y) ** 2).mean(axis=0))
print("Mean Square Error is:%f" % rmse[0])
plot_predicted, = plt.plot(predicted, label='predicted')
plot_test, = plt.plot(test_y, label='real_sin')
plt.legend([plot_predicted, plot_test],['predicted', 'real_sin'])
plt.show()
pred = []
test1 = test_X[0:1,:,:]
for i in range(1000):
test1_pred = regressor.predict(test1)
pred.append(test1_pred[0])
test1 = np.reshape(test1,[-1])
test1 = list(test1)
test1.append(test1_pred[0])
test1 = test1[1:]
test1 = np.reshape(test1,[1,1,-1])
plt.plot(pred)
利用LSTM进行predict_sin
最后编辑于 :
©著作权归作者所有,转载或内容合作请联系作者
- 文/潘晓璐 我一进店门,熙熙楼的掌柜王于贵愁眉苦脸地迎上来,“玉大人,你说我怎么就摊上这事。” “怎么了?”我有些...
- 文/花漫 我一把揭开白布。 她就那样静静地躺着,像睡着了一般。 火红的嫁衣衬着肌肤如雪。 梳的纹丝不乱的头发上,一...
- 文/苍兰香墨 我猛地睁开眼,长吁一口气:“原来是场噩梦啊……” “哼!你这毒妇竟也来了?” 一声冷哼从身侧响起,我...