Multi-Objective Rule System Based Control Model with Tunable Parameters for Swarm Robotic Control in Confined Environment

Yuan Wang;Lining Xing;Junde Wang;Tao Xie;Lidong Chen
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Abstract

Enhancing the adaptability of Unmanned Aerial Vehicle (UAV) swarm control models to cope with different complex working scenarios is an important issue in this research field. To achieve this goal, control model with tunable parameters is a widely adopted approach. In this article, an improved UAV swarm control model with tunable parameters namely Multi-Objective O-Flocking (MO O-Flocking) is proposed. The MO O-Flocking model is a combination of a multi rule control system and a virtual-physical-law based control model with tunable parameters. To achieve multi-objective parameter tuning, a multi-objective parameter tuning method namely Improved Strength Pareto Evolutionary Algorithm 2 (ISPEA2) is designed. Simulation experiment scenarios include six target orientation scenarios with different kinds of objectives. Experimental results show that both the ISPEA2 algorithm and MO O-Flocking control model have good performance in their experiment scenarios.
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基于多目标规则系统、参数可调的控制模型,用于密闭环境中的蜂群机器人控制
提高无人飞行器(UAV)蜂群控制模型的适应性,以应对不同的复杂工作场景,是该研究领域的一个重要问题。为实现这一目标,参数可调的控制模型被广泛采用。本文提出了一种参数可调的改进型无人机蜂群控制模型,即多目标 O-Flocking(MO O-Flocking)。MO O-Flocking模型是多规则控制系统与基于虚拟物理定律的可调参数控制模型的结合。为实现多目标参数调整,设计了一种多目标参数调整方法,即改进强度帕累托进化算法 2(ISPEA2)。仿真实验场景包括六种不同目标的目标定向场景。实验结果表明,ISPEA2 算法和 MO O-Flocking 控制模型在各自的实验场景中都有良好的表现。
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