policy_iteration.py 4.6 KB

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  1. import env
  2. import plotting
  3. import motion_model
  4. import numpy as np
  5. import sys
  6. import copy
  7. class Policy_iteration:
  8. def __init__(self, x_start, x_goal):
  9. self.xI, self.xG = x_start, x_goal
  10. self.e = 0.001 # threshold for convergence
  11. self.gamma = 0.9 # discount factor
  12. self.env = env.Env(self.xI, self.xG)
  13. self.motion = motion_model.Motion_model(self.xI, self.xG)
  14. self.plotting = plotting.Plotting(self.xI, self.xG)
  15. self.u_set = self.env.motions # feasible input set
  16. self.stateSpace = self.env.stateSpace # state space
  17. self.obs = self.env.obs_map() # position of obstacles
  18. self.lose = self.env.lose_map() # position of lose states
  19. self.name1 = "policy_iteration, gamma=" + str(self.gamma)
  20. [self.value, self.policy] = self.iteration()
  21. self.path = self.extract_path(self.xI, self.xG, self.policy)
  22. self.plotting.animation(self.path, self.name1)
  23. def policy_evaluation(self, policy, value):
  24. """
  25. Evaluate current policy.
  26. :param policy: current policy
  27. :param value: value table
  28. :return: new value table generated by current policy
  29. """
  30. delta = sys.maxsize
  31. while delta > self.e: # convergence condition
  32. x_value = 0
  33. for x in self.stateSpace:
  34. if x not in self.xG:
  35. [x_next, p_next] = self.motion.move_next(x, policy[x])
  36. v_Q = self.cal_Q_value(x_next, p_next, value)
  37. v_diff = abs(value[x] - v_Q)
  38. value[x] = v_Q
  39. if v_diff > 0:
  40. x_value = max(x_value, v_diff)
  41. delta = x_value
  42. return value
  43. def policy_improvement(self, policy, value):
  44. """
  45. Improve policy using current value table.
  46. :param policy: policy table
  47. :param value: current value table
  48. :return: improved policy table
  49. """
  50. for x in self.stateSpace:
  51. if x not in self.xG:
  52. value_list = []
  53. for u in self.u_set:
  54. [x_next, p_next] = self.motion.move_next(x, u)
  55. value_list.append(self.cal_Q_value(x_next, p_next, value))
  56. policy[x] = self.u_set[int(np.argmax(value_list))]
  57. return policy
  58. def iteration(self):
  59. """
  60. polity iteration: using evaluate and improvement process until convergence.
  61. :return: value table and converged policy.
  62. """
  63. value_table = {}
  64. policy = {}
  65. count = 0
  66. for x in self.stateSpace:
  67. value_table[x] = 0 # initialize value table
  68. policy[x] = self.u_set[0] # initialize policy table
  69. while True:
  70. count += 1
  71. policy_back = copy.deepcopy(policy)
  72. value_table = self.policy_evaluation(policy, value_table) # evaluation process
  73. policy = self.policy_improvement(policy, value_table) # policy improvement process
  74. if policy_back == policy: break # convergence condition
  75. self.message(count)
  76. return value_table, policy
  77. def cal_Q_value(self, x, p, table):
  78. """
  79. cal Q_value.
  80. :param x: next state vector
  81. :param p: probability of each state
  82. :param table: value table
  83. :return: Q-value
  84. """
  85. value = 0
  86. reward = self.env.get_reward(x) # get reward of next state
  87. for i in range(len(x)):
  88. value += p[i] * (reward[i] + self.gamma * table[x[i]]) # cal Q-value
  89. return value
  90. def extract_path(self, xI, xG, policy):
  91. """
  92. extract path from converged policy.
  93. :param xI: starting state
  94. :param xG: goal states
  95. :param policy: converged policy
  96. :return: path
  97. """
  98. x, path = xI, [xI]
  99. while x not in xG:
  100. u = policy[x]
  101. x_next = (x[0] + u[0], x[1] + u[1])
  102. if x_next in self.obs:
  103. print("Collision! Please run again!")
  104. break
  105. else:
  106. path.append(x_next)
  107. x = x_next
  108. return path
  109. def message(self, count):
  110. """
  111. print important message.
  112. :param count: iteration numbers
  113. :return: print
  114. """
  115. print("starting state: ", self.xI)
  116. print("goal states: ", self.xG)
  117. print("condition for convergence: ", self.e)
  118. print("discount factor: ", self.gamma)
  119. print("iteration times: ", count)
  120. if __name__ == '__main__':
  121. x_Start = (5, 5)
  122. x_Goal = [(49, 5), (49, 25)]
  123. PI = Policy_iteration(x_Start, x_Goal)