论文标题
海上动态目标搜索和跟踪的异质群
Heterogeneous Swarms for Maritime Dynamic Target Search and Tracking
论文作者
论文摘要
海上目标搜索和跟踪所采用的当前策略主要是基于遵循预定路径的代理的使用,以执行搜索区域的系统扫描。最近,动态粒子群优化(PSO)算法已与蜂群多机器人系统(MRS)一起使用,从而为搜索和跟踪解决方案提供了鲁棒性,可扩展性和灵活性的附加属性。蜂拥而至的太太还为最终用户提供了逐步升级机器人系统的机会,不可避免地会导致使用异质群的MRS。但是,此类系统尚未得到很好的研究,并将升级的代理纳入群中可能会导致任务表演降低。在本文中,我们使用具有自适应排斥参数的可调探索和剥削动力学的拓扑K-nearthigh图提出了一种基于PSO的策略。该策略是在50个代理的模拟群中实施的,其中有不同比例的快速代理跟踪以虚拟二进制函数为代表的目标。通过这些模拟,我们能够通过以一定比例的快速浮标代替群体的集体响应水平和目标跟踪性能的提高。
Current strategies employed for maritime target search and tracking are primarily based on the use of agents following a predetermined path to perform a systematic sweep of a search area. Recently, dynamic Particle Swarm Optimization (PSO) algorithms have been used together with swarming multi-robot systems (MRS), giving search and tracking solutions the added properties of robustness, scalability, and flexibility. Swarming MRS also give the end-user the opportunity to incrementally upgrade the robotic system, inevitably leading to the use of heterogeneous swarming MRS. However, such systems have not been well studied and incorporating upgraded agents into a swarm may result in degraded mission performances. In this paper, we propose a PSO-based strategy using a topological k-nearest neighbor graph with tunable exploration and exploitation dynamics with an adaptive repulsion parameter. This strategy is implemented within a simulated swarm of 50 agents with varying proportions of fast agents tracking a target represented by a fictitious binary function. Through these simulations, we are able to demonstrate an increase in the swarm's collective response level and target tracking performance by substituting in a proportion of fast buoys.