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- """
- LRTA_star 2D (Learning Real-time A*)
- @author: huiming zhou
- """
- import os
- import sys
- import copy
- import matplotlib.pyplot as plt
- sys.path.append(os.path.dirname(os.path.abspath(__file__)) +
- "/../../Search-based Planning/")
- from Search_2D import queue
- from Search_2D import plotting
- from Search_2D import env
- class LrtAstarN:
- def __init__(self, x_start, x_goal, N, heuristic_type):
- self.xI, self.xG = x_start, x_goal
- self.heuristic_type = heuristic_type
- self.Env = env.Env()
- self.u_set = self.Env.motions # feasible input set
- self.obs = self.Env.obs # position of obstacles
- self.N = N # number of expand nodes each iteration
- self.visited = [] # order of visited nodes in planning
- self.path = [] # path of each iteration
- def searching(self):
- s_start = self.xI # initialize start node
- while True:
- OPEN, CLOSED = self.Astar(s_start, self.N) # OPEN, CLOSED sets in each iteration
- if OPEN == "FOUND": # reach the goal node
- self.path.append(CLOSED)
- break
- h_value = self.iteration(CLOSED) # h_value table of CLOSED nodes
- s_start, path_k = self.extract_path_in_CLOSE(s_start, h_value) # s_start -> expected node in OPEN set
- self.path.append(path_k)
- def extract_path_in_CLOSE(self, s_start, h_value):
- path = [s_start]
- s = s_start
- while True:
- h_list = {}
- for u in self.u_set:
- s_next = tuple([s[i] + u[i] for i in range(2)])
- if s_next not in self.obs:
- if s_next in h_value:
- h_list[s_next] = h_value[s_next]
- else:
- h_list[s_next] = self.h(s_next)
- s_key = min(h_list, key=h_list.get) # move to the smallest node with min h_value
- path.append(s_key) # generate path
- s = s_key # use end of this iteration as the start of next
- if s_key not in h_value: # reach the expected node in OPEN set
- return s_key, path
- def iteration(self, CLOSED):
- h_value = {}
- for s in CLOSED:
- h_value[s] = float("inf") # initialize h_value of CLOSED nodes
- while True:
- h_value_rec = copy.deepcopy(h_value)
- for s in CLOSED:
- h_list = []
- for u in self.u_set:
- s_next = tuple([s[i] + u[i] for i in range(2)])
- if s_next not in self.obs:
- if s_next not in CLOSED:
- h_list.append(self.get_cost(s, s_next) + self.h(s_next))
- else:
- h_list.append(self.get_cost(s, s_next) + h_value[s_next])
- h_value[s] = min(h_list) # update h_value of current node
- if h_value == h_value_rec: # h_value table converged
- return h_value
- def Astar(self, x_start, N):
- OPEN = queue.QueuePrior() # OPEN set
- OPEN.put(x_start, self.h(x_start))
- CLOSED = set() # CLOSED set
- g_table = {x_start: 0, self.xG: float("inf")} # cost to come
- PARENT = {x_start: x_start} # relations
- visited = [] # order of visited nodes
- count = 0 # counter
- while not OPEN.empty():
- count += 1
- s = OPEN.get()
- CLOSED.add(s)
- visited.append(s)
- if s == self.xG: # reach the goal node
- self.visited.append(visited)
- return "FOUND", self.extract_path(x_start, PARENT)
- for u in self.u_set:
- s_next = tuple([s[i] + u[i] for i in range(len(s))])
- if s_next not in self.obs and s_next not in CLOSED:
- new_cost = g_table[s] + self.get_cost(s, u)
- if s_next not in g_table:
- g_table[s_next] = float("inf")
- if new_cost < g_table[s_next]: # conditions for updating cost
- g_table[s_next] = new_cost
- PARENT[s_next] = s
- OPEN.put(s_next, g_table[s_next] + self.h(s_next))
- if count == N: # expand needed CLOSED nodes
- break
- self.visited.append(visited) # visited nodes in each iteration
- return OPEN, CLOSED
- def extract_path(self, x_start, parent):
- """
- Extract the path based on the relationship of nodes.
- :return: The planning path
- """
- path_back = [self.xG]
- x_current = self.xG
- while True:
- x_current = parent[x_current]
- path_back.append(x_current)
- if x_current == x_start:
- break
- return list(reversed(path_back))
- def h(self, s):
- heuristic_type = self.heuristic_type
- goal = self.xG
- if heuristic_type == "manhattan":
- return abs(goal[0] - s[0]) + abs(goal[1] - s[1])
- elif heuristic_type == "euclidean":
- return ((goal[0] - s[0]) ** 2 + (goal[1] - s[1]) ** 2) ** (1 / 2)
- else:
- print("Please choose right heuristic type!")
- @staticmethod
- def get_cost(x, u):
- """
- Calculate cost for this motion
- :param x: current node
- :param u: input
- :return: cost for this motion
- :note: cost function could be more complicate!
- """
- return 1
- def main():
- x_start = (10, 5)
- x_goal = (45, 25)
- lrta = LrtAstarN(x_start, x_goal, 220, "euclidean")
- plot = plotting.Plotting(x_start, x_goal)
- fig_name = "Learning Real-time A* (LRTA*)"
- lrta.searching()
- plot.animation_lrta(lrta.path, lrta.visited, fig_name)
- if __name__ == '__main__':
- main()
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