神经网络模型一般用来做分类,回归预测模型不常见,本文基于一个用来分类的BP神经网络,对它进行修改,实现了一个回归模型,用来做室内定位。模型主要变化是去掉了第三层的非线性转换,或者说把非线性激活函数Sigmoid换成f(x)=x函数。这样做的主要原因是Sigmoid函数的输出范围太小,在0-1之间,而回归模型的输出范围较大。模型修改如下:

python实现BP神经网络回归预测模型

python实现BP神经网络回归预测模型

代码如下:

#coding: utf8
''''
author: Huangyuliang
'''
import json
import random
import sys
import numpy as np
 
#### Define the quadratic and cross-entropy cost functions
class CrossEntropyCost(object):
 
  @staticmethod
  def fn(a, y):
    return np.sum(np.nan_to_num(-y*np.log(a)-(1-y)*np.log(1-a)))
 
  @staticmethod
  def delta(z, a, y):
    return (a-y)
 
#### Main Network class
class Network(object):
 
  def __init__(self, sizes, cost=CrossEntropyCost):
 
    self.num_layers = len(sizes)
    self.sizes = sizes
    self.default_weight_initializer()
    self.cost=cost
 
  def default_weight_initializer(self):
 
    self.biases = [np.random.randn(y, 1) for y in self.sizes[1:]]
    self.weights = [np.random.randn(y, x)/np.sqrt(x)
            for x, y in zip(self.sizes[:-1], self.sizes[1:])]
  def large_weight_initializer(self):
 
    self.biases = [np.random.randn(y, 1) for y in self.sizes[1:]]
    self.weights = [np.random.randn(y, x)
            for x, y in zip(self.sizes[:-1], self.sizes[1:])]
  def feedforward(self, a):
    """Return the output of the network if ``a`` is input."""
    for b, w in zip(self.biases[:-1], self.weights[:-1]): # 前n-1层
      a = sigmoid(np.dot(w, a)+b)
 
    b = self.biases[-1]  # 最后一层
    w = self.weights[-1]
    a = np.dot(w, a)+b
    return a
 
  def SGD(self, training_data, epochs, mini_batch_size, eta,
      lmbda = 0.0,
      evaluation_data=None,
      monitor_evaluation_accuracy=False): # 用随机梯度下降算法进行训练
 
    n = len(training_data)
 
    for j in xrange(epochs):
      random.shuffle(training_data)
      mini_batches = [training_data[k:k+mini_batch_size] for k in xrange(0, n, mini_batch_size)]
      
      for mini_batch in mini_batches:
        self.update_mini_batch(mini_batch, eta, lmbda, len(training_data))
      print ("Epoch %s training complete" % j)
      
      if monitor_evaluation_accuracy:
        print ("Accuracy on evaluation data: {} / {}".format(self.accuracy(evaluation_data), j))
     
  def update_mini_batch(self, mini_batch, eta, lmbda, n):
    """Update the network's weights and biases by applying gradient
    descent using backpropagation to a single mini batch. The
    ``mini_batch`` is a list of tuples ``(x, y)``, ``eta`` is the
    learning rate, ``lmbda`` is the regularization parameter, and
    ``n`` is the total size of the training data set.
    """
    nabla_b = [np.zeros(b.shape) for b in self.biases]
    nabla_w = [np.zeros(w.shape) for w in self.weights]
    for x, y in mini_batch:
      delta_nabla_b, delta_nabla_w = self.backprop(x, y)
      nabla_b = [nb+dnb for nb, dnb in zip(nabla_b, delta_nabla_b)]
      nabla_w = [nw+dnw for nw, dnw in zip(nabla_w, delta_nabla_w)]
    self.weights = [(1-eta*(lmbda/n))*w-(eta/len(mini_batch))*nw
            for w, nw in zip(self.weights, nabla_w)]
    self.biases = [b-(eta/len(mini_batch))*nb
            for b, nb in zip(self.biases, nabla_b)]
 
  def backprop(self, x, y):
    """Return a tuple ``(nabla_b, nabla_w)`` representing the
    gradient for the cost function C_x. ``nabla_b`` and
    ``nabla_w`` are layer-by-layer lists of numpy arrays, similar
    to ``self.biases`` and ``self.weights``."""
    nabla_b = [np.zeros(b.shape) for b in self.biases]
    nabla_w = [np.zeros(w.shape) for w in self.weights]
    # feedforward
    activation = x
    activations = [x] # list to store all the activations, layer by layer
    zs = [] # list to store all the z vectors, layer by layer
    for b, w in zip(self.biases[:-1], self.weights[:-1]):  # 正向传播 前n-1层
 
      z = np.dot(w, activation)+b
      zs.append(z)
      activation = sigmoid(z)
      activations.append(activation)
# 最后一层,不用非线性
    b = self.biases[-1]
    w = self.weights[-1]
    z = np.dot(w, activation)+b
    zs.append(z)
    activation = z
    activations.append(activation)
    # backward pass 反向传播
    delta = (self.cost).delta(zs[-1], activations[-1], y)  # 误差 Tj - Oj 
    nabla_b[-1] = delta
    nabla_w[-1] = np.dot(delta, activations[-2].transpose()) # (Tj - Oj) * O(j-1)
 
    for l in xrange(2, self.num_layers):
      z = zs[-l]  # w*a + b
      sp = sigmoid_prime(z) # z * (1-z)
      delta = np.dot(self.weights[-l+1].transpose(), delta) * sp # z*(1-z)*(Err*w) 隐藏层误差
      nabla_b[-l] = delta
      nabla_w[-l] = np.dot(delta, activations[-l-1].transpose()) # Errj * Oi
    return (nabla_b, nabla_w)
 
  def accuracy(self, data):
 
    results = [(self.feedforward(x), y) for (x, y) in data] 
    alist=[np.sqrt((x[0][0]-y[0])**2+(x[1][0]-y[1])**2) for (x,y) in results]
 
    return np.mean(alist)
 
  def save(self, filename):
    """Save the neural network to the file ``filename``."""
    data = {"sizes": self.sizes,
        "weights": [w.tolist() for w in self.weights],
        "biases": [b.tolist() for b in self.biases],
        "cost": str(self.cost.__name__)}
    f = open(filename, "w")
    json.dump(data, f)
    f.close()
 
#### Loading a Network
def load(filename):
  """Load a neural network from the file ``filename``. Returns an
  instance of Network.
  """
  f = open(filename, "r")
  data = json.load(f)
  f.close()
  cost = getattr(sys.modules[__name__], data["cost"])
  net = Network(data["sizes"], cost=cost)
  net.weights = [np.array(w) for w in data["weights"]]
  net.biases = [np.array(b) for b in data["biases"]]
  return net
 
def sigmoid(z):
  """The sigmoid function.""" 
  return 1.0/(1.0+np.exp(-z))
 
def sigmoid_prime(z):
  """Derivative of the sigmoid function."""
  return sigmoid(z)*(1-sigmoid(z))

调用神经网络进行训练并保存参数:

#coding: utf8
import my_datas_loader_1
import network_0
 
training_data,test_data = my_datas_loader_1.load_data_wrapper()
#### 训练网络,保存训练好的参数
net = network_0.Network([14,100,2],cost = network_0.CrossEntropyCost)
net.large_weight_initializer()
net.SGD(training_data,1000,316,0.005,lmbda =0.1,evaluation_data=test_data,monitor_evaluation_accuracy=True)
filename=r'C:\Users\hyl\Desktop\Second_158\Regression_Model\parameters.txt'
net.save(filename)

第190-199轮训练结果如下:

python实现BP神经网络回归预测模型

调用保存好的参数,进行定位预测:

#coding: utf8
import my_datas_loader_1
import network_0
import matplotlib.pyplot as plt
 
test_data = my_datas_loader_1.load_test_data()
#### 调用训练好的网络,用来进行预测
filename=r'D:\Workspase\Nerual_networks\parameters.txt'   ## 文件保存训练好的参数
net = network_0.load(filename)                ## 调用参数,形成网络
fig=plt.figure(1)
ax=fig.add_subplot(1,1,1)
ax.axis("equal") 
# plt.grid(color='b' , linewidth='0.5' ,linestyle='-')    # 添加网格
x=[-0.3,-0.3,-17.1,-17.1,-0.3]                ## 这是九楼地形的轮廓
y=[-0.3,26.4,26.4,-0.3,-0.3]
m=[1.5,1.5,-18.9,-18.9,1.5]
n=[-2.1,28.2,28.2,-2.1,-2.1]
ax.plot(x,y,m,n,c='k')
 
for i in range(len(test_data)):  
  pre = net.feedforward(test_data[i][0]) # pre 是预测出的坐标    
  bx=pre[0]
  by=pre[1]          
  ax.scatter(bx,by,s=4,lw=2,marker='.',alpha=1) #散点图  
  plt.pause(0.001)
plt.show() 

定位精度达到了1.5米左右。定位效果如下图所示:

python实现BP神经网络回归预测模型

真实路径为行人从原点绕环形走廊一圈。

以上就是本文的全部内容,希望对大家的学习有所帮助,也希望大家多多支持。

风云阁资源网 Design By www.bgabc.com
广告合作:本站广告合作请联系QQ:858582 申请时备注:广告合作(否则不回)
免责声明:本站资源来自互联网收集,仅供用于学习和交流,请遵循相关法律法规,本站一切资源不代表本站立场,如有侵权、后门、不妥请联系本站删除!
风云阁资源网 Design By www.bgabc.com

《魔兽世界》大逃杀!60人新游玩模式《强袭风暴》3月21日上线

暴雪近日发布了《魔兽世界》10.2.6 更新内容,新游玩模式《强袭风暴》即将于3月21 日在亚服上线,届时玩家将前往阿拉希高地展开一场 60 人大逃杀对战。

艾泽拉斯的冒险者已经征服了艾泽拉斯的大地及遥远的彼岸。他们在对抗世界上最致命的敌人时展现出过人的手腕,并且成功阻止终结宇宙等级的威胁。当他们在为即将于《魔兽世界》资料片《地心之战》中来袭的萨拉塔斯势力做战斗准备时,他们还需要在熟悉的阿拉希高地面对一个全新的敌人──那就是彼此。在《巨龙崛起》10.2.6 更新的《强袭风暴》中,玩家将会进入一个全新的海盗主题大逃杀式限时活动,其中包含极高的风险和史诗级的奖励。

《强袭风暴》不是普通的战场,作为一个独立于主游戏之外的活动,玩家可以用大逃杀的风格来体验《魔兽世界》,不分职业、不分装备(除了你在赛局中捡到的),光是技巧和战略的强弱之分就能决定出谁才是能坚持到最后的赢家。本次活动将会开放单人和双人模式,玩家在加入海盗主题的预赛大厅区域前,可以从强袭风暴角色画面新增好友。游玩游戏将可以累计名望轨迹,《巨龙崛起》和《魔兽世界:巫妖王之怒 经典版》的玩家都可以获得奖励。