不确定有穷自动机NFA的确定化

从文件读入一个非确定有穷状态自动机(NFA),用子集法将其确定化,并输出一个确定化的有穷状态自动机(DFA)。

原理:

](https://img-blog.csdnimg.cn/fc2d1830b46344e8b999152dbcb9b7ba.png)

流程图如下:

具体代码实现:
这里为了实现图形可视化,使用了graphviz,下载完成Graphviz工具后,需将其添加至系统环境变量中,且需将其上移至Matlab在系统环境变量中的路径之上。这样在Python中导入Graphviz工具包后,画图工具才能起作用,具体配置方法请自行百度…

from graphviz import Digraph


# 空用“*”表示,规定第一个节点的空闭包为初态集合
# nodes:其中每个元素称为一个状态
# path:其中每个元素称为一个输入符号
# edges:是单值转换函数,表示一个状态node1,在输入字符path后,转到另一个状态node2
# start:初态集
# end:终态集


def Read_NFA_Data():
    # 读入NFA数据
    # 第一行为nodes(用“,”隔开),第二行为path(用“,”隔开)
    # 第三行为edges(每个元素用“;”隔开,每个元素的数据用“,”隔开)
    # 第四行为start(用“,”隔开),第五行为终态集(用“,”隔开)
    with open('NFA.txt', 'r') as r:
        lines = [line.rstrip('\n') for line in r.readlines()]
    nodes = lines[0].split(',')
    path = lines[1].split(',')
    edges = lines[2].split(';')
    edges = [x.split(',') for x in edges]
    start = lines[3].split(',')
    end = lines[4].split(',')
    return nodes, path, edges, start, end


def NFA_Show(nodes, edges, start, end):
    # 生成NFA图
    NFA = Digraph('NFA', format='png')
    for node in nodes:
        if node in start:
            NFA.node(node, shape='circle', color='red')
        elif node in end:
            NFA.node(node, shape='doublecircle')
        else:
            NFA.node(node, shape='circle')
    for edge in edges:
        NFA.edge(edge[0], edge[1], label=edge[2])
    NFA.attr(rankdir='LR')
    NFA.view()


def DFA_Show(D_nodes, D_edges, start, end):
    # 生成DFA图
    DFA = Digraph('DFA', format='png')
    for n in D_nodes:
        list_node = n.split(',')
        if len(list(set(list_node) & set(end))) != 0 and list_node == start:
            DFA.node(n, shape='doublecircle', color='red')  # 该状态既是初态又是终结态
        elif len(list(set(list_node) & set(end))) != 0:
            DFA.node(n, shape='doublecircle')   # 该状态是终结态
        elif list_node == start:
            DFA.node(n, shape='circle', color='red')   # 该状态是初态
        else:
            DFA.node(n, shape='circle')  # 该状态既不是初态也不是终结态
    for e in D_edges:
        DFA.edge(e[0], e[1], label=e[2])
    DFA.attr(rankdir='LR')
    DFA.view()


def move(my_nodes, my_path, my_edges):
    # 定义单值转换函数
    My_Node = []
    for node in my_nodes:
        for edge in my_edges:
            if edge[0] == node and edge[2] == my_path:
                My_Node.append(edge[1])
    return My_Node


def closure(my_nodes, my_edges, My_Node=None):
    # 定义求闭包的函数
    if My_Node is None:
        My_Node = my_nodes[::]
    Temp = move(my_nodes, '*', my_edges)
    todo = [x for x in Temp if x not in My_Node]
    My_Node.extend(todo)
    for each in todo:
        closure(each, my_edges, My_Node)
    My_Node = list(set(My_Node))
    return My_Node


def is_in(Nodes, Temp):
    # 判断Temp是否在Nodes中
    for Node in Nodes:
        if set(Node) == set(Temp):
            return True
    return False


def From_NFA_to_DFA(path, edges, start):
    # 初始化DFA的状态和路径转换
    D_nodes = []
    D_edges = []

    # 用子集法将NFA确定化为DFA
    Start_node = start[::]
    Start_Node = closure(Start_node, edges)
    Nodes = [Start_Node]
    location = 0
    length = len(Nodes)
    while location < length:
        for p in path:
            Temp_one = move(Nodes[location], p, edges)
            Temp_two = closure(Temp_one, edges)
            if Temp_two:
                Last = ','.join(Nodes[location])
                Next = ','.join(Temp_two)
                D_edge = (Last, Next, p)
                D_edges.append(D_edge)
                D_nodes.append(Last)
            if Temp_two != [] and is_in(Nodes, Temp_two) is False:
                Nodes.append(Temp_two)
            length = len(Nodes)
        location += 1
    return D_nodes, D_edges, Start_Node


if __name__ == '__main__':
    N_nodes, N_path, N_edges, N_start, N_end = Read_NFA_Data()   # 读入NFA数据
    NFA_Show(N_nodes, N_edges, N_start, N_end)   # 绘制NFA
    D_Nodes, D_Edges, Start = From_NFA_to_DFA(N_path, N_edges, N_start)   # NFA转换为DFA
    DFA_Show(D_Nodes, D_Edges, Start, N_end)   # 绘制DFA

读入文件内容:
X,0,1,2,3,Y
0,1
X,0,;0,0,0;0,1,;1,1,0;1,2,1;2,1,0;1,3,;3,3,0;3,Y,
X
Y
代码运行结果:
NFA:
NFA
DFA:
DFA

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