Monte-Carlo Tree Search with Neural Networks for Petri Nets

Mengsen Jia, A. Köhler, R. Fritz, Ping Zhang
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Abstract

This paper considers the tracking control of Petri nets, namely finding the optimal firing sequence that leads the Petri net from an initial marking to a destination marking. Value neural networks (VNN) and policy neural networks (PNN) are used to improve the Monte-Carlo Tree Search (MCTS) based tracking control approach proposed recently in [1]. It is shown how to integrate the VNN and PNN, respectively, with the simulation and expansion step of the MCTS algorithm, so that the search space is significantly reduced. By introducing the neural networks, the dependence of the performance of the MCTS algorithm on parameter selection is also strongly reduced. Compared with the existing tracking control approaches, the proposed approaches can handle large PNs and have a very high probability of finding the optimal firing sequence within a prespecified time. The PNN based MCTS approach needs less online calculation, while the VNN based MCTS approach requires less offline training time. An example is given to illustrate the proposed approaches and show the advantage of the proposed approaches over other approaches.
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Petri网中神经网络的蒙特卡罗树搜索
本文研究了Petri网的跟踪控制,即寻找最优发射序列,使Petri网从初始标记到目标标记。价值神经网络(VNN)和策略神经网络(PNN)被用于改进最近在[1]中提出的基于蒙特卡罗树搜索(MCTS)的跟踪控制方法。展示了如何将VNN和PNN分别与MCTS算法的仿真和扩展步骤相结合,从而显著减小了搜索空间。通过引入神经网络,大大降低了MCTS算法性能对参数选择的依赖。与现有的跟踪控制方法相比,所提出的方法可以处理大的PNs,并且在预定时间内找到最优射击序列的概率很高。基于PNN的MCTS方法需要较少的在线计算,而基于VNN的MCTS方法需要较少的离线训练时间。给出了一个例子来说明所提出的方法,并展示了所提出的方法相对于其他方法的优势。
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