Distributed Control of Autonomous Swarms by Using Parallel Simulated Annealing Algorithm

W. Xi, J. Baras
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引用次数: 2

Abstract

In early work of the authors, it was shown that Gibbs sampler based sequential annealing algorithm could be used to achieve self-organization in swarm vehicles based only on local information. However, long travelling time presents barriers to implement the algorithm in practice. In this paper we study a popular acceleration approach, the parallel annealing algorithm, and its convergence properties. We first study the convergence and equilibrium properties of the synchronous parallel sampling algorithm. A special example based on a battle field scenario is then studied. Sufficient conditions that the synchronous algorithm leads to desired configurations (global minimizers) are derived. While the synchronized algorithm reduces travelling time, it also raises delay and communication cost dramatically, in order to synchronize moves of a large group of vehicles. An asynchronous version of the parallel sampling algorithm is then proposed to solve the problem. Convergence properties of the asynchronous algorithm are also investigated
基于并行模拟退火算法的自治群体分布式控制
在作者早期的工作中,证明了基于Gibbs采样器的顺序退火算法可以仅基于局部信息实现群体车辆的自组织。但在实际应用中,较长的传输时间给算法的实现带来了障碍。本文研究了一种流行的加速方法——并行退火算法及其收敛性。首先研究了同步并行采样算法的收敛性和均衡性。然后对基于战场场景的一个特殊实例进行了研究。导出了同步算法导致所需配置(全局最小值)的充分条件。同步算法在减少行驶时间的同时,为了实现大群车辆的同步移动,也大大增加了延迟和通信成本。然后提出了一种异步版本的并行采样算法来解决这个问题。研究了异步算法的收敛性
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