双向搜索是一种常见的搜索算法,可以提高搜索效率。在搜索多个目标状态的情况下,双向搜索可以更快地找到目标状态。本文将介绍如何使用双向搜索来搜索多个目标状态。
步骤如下:
1.定义起始状态和目标状态列表。 2.分别从起始状态和目标状态列表开始搜索。 3.对于每一步搜索,记录当前状态、前一个状态和操作。 4.如果两个搜索相遇,则说明找到了一条路径。 5.将两个搜索的路径连接起来,得到完整的路径。 6.重复步骤2-5,直到找到所有目标状态为止。
以下是Python代码示例:
class Node: def init(self, state, parent=None, action=None): self.state = state self.parent = parent self.action = action
def bidirectional_search(start_state, goal_states, successors): forward_frontier = [Node(start_state)] backward_frontier = [Node(goal_states[0])] forward_explored = {start_state} backward_explored = {goal_states[0]} forward_parents = {} backward_parents = {goal_states[0]: None}
while forward_frontier and backward_frontier: if len(forward_frontier) <= len(backward_frontier): node = forward_frontier.pop(0) for successor, action in successors(node.state): if successor not in forward_explored: forward_explored.add(successor) child = Node(successor, node, action) forward_parents[successor] = child forward_frontier.append(child)
if successor in backward_parents:
return join_paths(successor, forward_parents, backward_parents)
else:
node = backward_frontier.pop(0)
for successor, action in successors(node.state):
if successor not in backward_explored:
backward_explored.add(successor)
child = Node(successor, node, action)
backward_parents[successor] = child
backward_frontier.append(child)
if successor in forward_parents:
return join_paths(successor, forward_parents, backward_parents)
return None
def join_paths(state, forward_parents, backward_parents): forward_path = [] node = forward_parents[state] while node: forward_path.append(node) node = node.parent
backward_path = [] node = backward_parents[state] while node: backward_path.append(node) node = node.parent
backward_path.reverse