多代理主动多目标搜索与间歇性测量

IF 5.4 2区 计算机科学 Q1 AUTOMATION & CONTROL SYSTEMS
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引用次数: 0

摘要

考虑一个多代理系统,该系统必须尽快在未知位置找到未知数量的静态目标。为了从嘈杂且有时缺失的测量结果中估算出目标的数量和位置,我们使用了一种定制的基于粒子的概率假设密度滤波器。我们引入了新的方法,以与测量脱钩的方式为特工选择航点,这样就可以在环境中任意远的航点上进行优化,同时沿途根据需要进行尽可能多的测量。优化涉及控制成本、目标细化和环境探索。测量可以定期进行,也可以在事件触发的情况下,仅在预期能提高目标探测效率时进行。所有这些都是在二维和三维环境中,针对单个代理以及多个同质或异质代理完成的,从而形成了一个间歇测量的(多代理)主动目标搜索(MA)ASI 综合框架。在涉及 Parrot Mambo 无人机和 TurtleBot3 地面机器人的模拟和实际实验中,新框架的效果优于割草机、基于相互信息的方法、主动搜索方法和我们早期的基于探索的技术等基线方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-agent active multi-target search with intermittent measurements

Consider a multi-agent system that must find an unknown number of static targets at unknown locations as quickly as possible. To estimate the number and positions of targets from noisy and sometimes missing measurements, we use a customized particle-based probability hypothesis density filter. Novel methods are introduced that select waypoints for the agents in a decoupled manner from taking measurements, which allows optimizing over waypoints arbitrarily far in the environment while taking as many measurements as necessary along the way. Optimization involves control cost, target refinement, and exploration of the environment. Measurements are taken either periodically, or only when they are expected to improve target detection, in an event-triggered manner. All this is done in 2D and 3D environments, for a single agent as well as for multiple homogeneous or heterogeneous agents, leading to a comprehensive framework for (Multi-Agent) Active target Search with Intermittent measurements – (MA)ASI. In simulations and real-life experiments involving a Parrot Mambo drone and a TurtleBot3 ground robot, the novel framework works better than baselines including lawnmowers, mutual-information-based methods, active search methods, and our earlier exploration-based techniques.

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来源期刊
Control Engineering Practice
Control Engineering Practice 工程技术-工程:电子与电气
CiteScore
9.20
自引率
12.20%
发文量
183
审稿时长
44 days
期刊介绍: Control Engineering Practice strives to meet the needs of industrial practitioners and industrially related academics and researchers. It publishes papers which illustrate the direct application of control theory and its supporting tools in all possible areas of automation. As a result, the journal only contains papers which can be considered to have made significant contributions to the application of advanced control techniques. It is normally expected that practical results should be included, but where simulation only studies are available, it is necessary to demonstrate that the simulation model is representative of a genuine application. Strictly theoretical papers will find a more appropriate home in Control Engineering Practice''s sister publication, Automatica. It is also expected that papers are innovative with respect to the state of the art and are sufficiently detailed for a reader to be able to duplicate the main results of the paper (supplementary material, including datasets, tables, code and any relevant interactive material can be made available and downloaded from the website). The benefits of the presented methods must be made very clear and the new techniques must be compared and contrasted with results obtained using existing methods. Moreover, a thorough analysis of failures that may happen in the design process and implementation can also be part of the paper. The scope of Control Engineering Practice matches the activities of IFAC. Papers demonstrating the contribution of automation and control in improving the performance, quality, productivity, sustainability, resource and energy efficiency, and the manageability of systems and processes for the benefit of mankind and are relevant to industrial practitioners are most welcome.
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