具有优越逃避者的追逃微分对策的模糊强化学习算法

Ahmad A. Al-Talabi
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引用次数: 3

摘要

本文提出了一种模糊强化学习技术,使一组追捕者在追捕-逃避(PE)微分博弈中学习如何以分散的方式捕获单个高级逃避者。逃避者的优势在于它的最大速度,这意味着它的速度超过了游戏中最快的追捕者的最大速度。所提出的学习技术使用了模糊行为-批评学习自动机(FACLA)算法,以及所谓的阿波罗尼乌斯圈技术和特定的编队控制策略,该策略用于定义每个追捕者所需的奖励函数。这使每个追求者能够准确地更新其价值函数。因此,跟踪器将通过调整其模糊逻辑控制器(FLC)参数来采取正确的动作。该算法还采用了编队控制策略,使捕获过程中追捕者在躲避者周围的分布角尽可能保持不变。此外,它还用于避免它们之间的碰撞。假设上级逃避者是智能逃避者,其策略是利用阿波罗尼乌斯圆法在逃避过程中不断寻找间隙。如果存在间隙,则逃避器将选择其通过间隙的路径来逃避,否则逃避器将改变其方向以增加捕获时间。仿真结果验证了所提出的学习算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fuzzy reinforcement learning algorithm for the pursuit-evasion differential games with superior evader
This paper proposes a fuzzy reinforcement learning technique that enables a group of pursuers in pursuit-evasion (PE) differential games to learn how to capture a single superior evader in a decentralized manner. The superiority of the evader is in term of its maximum speed which means that this speed exceeds the maximum speed of the fastest pursuer in the game. The proposed learning technique uses a fuzzy actor-critic learning Automaton (FACLA) algorithm together with the so-called Apollonius circle technique and a specific formation control strategy which are used to define the necessary reward function for each pursuer. This enables each pursuer to update its value function accurately. Accordingly, the pursuer will take the right actions by tuning its fuzzy logic controller (FLC) parameters. The formation control strategy is also used such that during the capturing process the distribution angles of the pursuers around the evader are invariant as much as possible. Furthermore, it is also used to avoid a collision among them. It is assumed that the superior evader is an intelligent evader whose strategy is to continuously search for a gap during the evasion process by using the Apollonius circle method. If there is a gap, the evader will select its path through the gap to escape otherwise the evader will change its direction to increase the capture time. Simulation results are given to validate the proposed learning algorithm.
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