112 lines
4.8 KiB
Python
112 lines
4.8 KiB
Python
#!/usr/bin/env python
|
||
# coding=utf-8
|
||
'''
|
||
@Author: John
|
||
@Email: johnjim0816@gmail.com
|
||
@Date: 2020-06-12 00:50:49
|
||
@LastEditor: John
|
||
LastEditTime: 2021-03-30 17:01:26
|
||
@Discription:
|
||
@Environment: python 3.7.7
|
||
'''
|
||
'''off-policy
|
||
'''
|
||
|
||
|
||
|
||
|
||
import torch
|
||
import torch.nn as nn
|
||
import torch.optim as optim
|
||
import random
|
||
import math
|
||
import numpy as np
|
||
from common.memory import ReplayBuffer
|
||
from common.model import MLP
|
||
class DQN:
|
||
def __init__(self, state_dim, action_dim, cfg):
|
||
|
||
self.action_dim = action_dim # 总的动作个数
|
||
self.device = cfg.device # 设备,cpu或gpu等
|
||
self.gamma = cfg.gamma # 奖励的折扣因子
|
||
# e-greedy策略相关参数
|
||
self.frame_idx = 0 # 用于epsilon的衰减计数
|
||
self.epsilon = lambda frame_idx: cfg.epsilon_end + \
|
||
(cfg.epsilon_start - cfg.epsilon_end) * \
|
||
math.exp(-1. * frame_idx / cfg.epsilon_decay)
|
||
self.batch_size = cfg.batch_size
|
||
self.policy_net = MLP(state_dim, action_dim,
|
||
hidden_dim=cfg.hidden_dim).to(self.device)
|
||
self.target_net = MLP(state_dim, action_dim,
|
||
hidden_dim=cfg.hidden_dim).to(self.device)
|
||
self.optimizer = optim.Adam(self.policy_net.parameters(), lr=cfg.lr)
|
||
self.loss = 0
|
||
self.memory = ReplayBuffer(cfg.memory_capacity)
|
||
|
||
def choose_action(self, state):
|
||
'''选择动作
|
||
'''
|
||
self.frame_idx += 1
|
||
if random.random() > self.epsilon(self.frame_idx):
|
||
with torch.no_grad():
|
||
# 先转为张量便于丢给神经网络,state元素数据原本为float64
|
||
# 注意state=torch.tensor(state).unsqueeze(0)跟state=torch.tensor([state])等价
|
||
state = torch.tensor(
|
||
[state], device=self.device, dtype=torch.float32)
|
||
# 如tensor([[-0.0798, -0.0079]], grad_fn=<AddmmBackward>)
|
||
q_value = self.policy_net(state)
|
||
# tensor.max(1)返回每行的最大值以及对应的下标,
|
||
# 如torch.return_types.max(values=tensor([10.3587]),indices=tensor([0]))
|
||
# 所以tensor.max(1)[1]返回最大值对应的下标,即action
|
||
action = q_value.max(1)[1].item()
|
||
else:
|
||
action = random.randrange(self.action_dim)
|
||
return action
|
||
|
||
def update(self):
|
||
|
||
if len(self.memory) < self.batch_size:
|
||
return
|
||
# 从memory中随机采样transition
|
||
state_batch, action_batch, reward_batch, next_state_batch, done_batch = self.memory.sample(
|
||
self.batch_size)
|
||
'''转为张量
|
||
例如tensor([[-4.5543e-02, -2.3910e-01, 1.8344e-02, 2.3158e-01],...,[-1.8615e-02, -2.3921e-01, -1.1791e-02, 2.3400e-01]])'''
|
||
state_batch = torch.tensor(
|
||
state_batch, device=self.device, dtype=torch.float)
|
||
action_batch = torch.tensor(action_batch, device=self.device).unsqueeze(
|
||
1) # 例如tensor([[1],...,[0]])
|
||
reward_batch = torch.tensor(
|
||
reward_batch, device=self.device, dtype=torch.float) # tensor([1., 1.,...,1])
|
||
next_state_batch = torch.tensor(
|
||
next_state_batch, device=self.device, dtype=torch.float)
|
||
done_batch = torch.tensor(np.float32(
|
||
done_batch), device=self.device)
|
||
|
||
'''计算当前(s_t,a)对应的Q(s_t, a)'''
|
||
'''torch.gather:对于a=torch.Tensor([[1,2],[3,4]]),那么a.gather(1,torch.Tensor([[0],[1]]))=torch.Tensor([[1],[3]])'''
|
||
q_values = self.policy_net(state_batch).gather(
|
||
dim=1, index=action_batch) # 等价于self.forward
|
||
# 计算所有next states的V(s_{t+1}),即通过target_net中选取reward最大的对应states
|
||
next_q_values = self.target_net(next_state_batch).max(
|
||
1)[0].detach() # 比如tensor([ 0.0060, -0.0171,...,])
|
||
# 计算 expected_q_value
|
||
# 对于终止状态,此时done_batch[0]=1, 对应的expected_q_value等于reward
|
||
expected_q_values = reward_batch + \
|
||
self.gamma * next_q_values * (1-done_batch)
|
||
# self.loss = F.smooth_l1_loss(q_values,expected_q_values.unsqueeze(1)) # 计算 Huber loss
|
||
self.loss = nn.MSELoss()(q_values, expected_q_values.unsqueeze(1)) # 计算 均方误差loss
|
||
# 优化模型
|
||
self.optimizer.zero_grad() # zero_grad清除上一步所有旧的gradients from the last step
|
||
# loss.backward()使用backpropagation计算loss相对于所有parameters(需要gradients)的微分
|
||
self.loss.backward()
|
||
# for param in self.policy_net.parameters(): # clip防止梯度爆炸
|
||
# param.grad.data.clamp_(-1, 1)
|
||
self.optimizer.step() # 更新模型
|
||
|
||
def save(self, path):
|
||
torch.save(self.target_net.state_dict(), path+'dqn_checkpoint.pth')
|
||
|
||
def load(self, path):
|
||
self.target_net.load_state_dict(torch.load(path+'dqn_checkpoint.pth'))
|