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Applying max-sum to teams of mobile sensing agents

机译:将最大和应用于移动传感代理团队

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Multi-agent applications that include teams of mobile sensing agents are challenging since they are inherently dynamic and a single movement of a mobile sensor can change the problem that the entire team is facing. A variation of the Distributed Constraint Optimization model for Mobile Sensor Teams (DCOP_MST) was previously adjusted to represent such problems along with local search algorithms that were enhanced with exploration methods. This paper considers the use of the Max-sum algorithm for solving problems of deploying a mobile sensor team in an unknown environment to track and monitor points of interest (targets), represented by the DCOP_MST model.The DCOP_MST model allows the representation of different functions for aggregating the joint coverage of targets by multiple sensors. The use of different functions has a dramatic effect on the complexity of the Max-sum algorithm. When using cardinality functions, Max-sum can be performed efficiently regardless of the arity of constraints. When Max-sum is used to solve applications that require other (more complex) aggregation functions, its complexity is exponential in the arity of the constraints and thus, its usefulness is limited.In this paper we investigate the performance of the Max-sum algorithm on two implementations of the DCOP_MST model. Each implementation considers a differentjoint credibility functionfor determining the coverage for each target, with respect to the locations and the credibility of agents. In the first, the coverage is calculated according to the number of agents that are located within sensing range from the target. This function can be calculated efficiently. The second takes the angle between the lines of sight of different agents to a target into consideration. The larger the difference in the angle between the lines of sight, the higher the coverage efficiency.We analyze the challenges in adjusting the Max-sum algorithm in both scenarios and propose enhancements of the algorithm that make it more efficient. We provide empirical evidence of the advantages resulting from these enhancements in comparison to the naive algorithm.
机译:包括移动传感代理团队在内的多智能体应用程序具有挑战性,因为它们本质上是动态的,并且移动传感器的单次移动可以改变整个团队所面临的问题。先前已对用于移动传感器团队的分布式约束优化模型(DCOP_MST)的变体进行了调整,以代表此类问题以及通过探索方法得到增强的本地搜索算法。本文考虑使用Max-sum算法解决由DCOP_MST模型表示的在未知环境中部署移动传感器团队以跟踪和监视兴趣点(目标)的问题.DCOP_MST模型允许表示不同的功能用于汇总多个传感器对目标的联合覆盖。使用不同的函数对Max-sum算法的复杂性产生巨大影响。使用基数函数时,无论约束如何,都可以有效地执行最大和。当使用Max-sum解决需要其他(更复杂)聚合函数的应用程序时,其复杂性在约束条件的约束下呈指数级增长,因此其实用性受到限制。本文研究了Max-sum算法的性能DCOP_MST模型的两个实现。每个实施方案考虑不同的联合信誉函数,以针对代理的位置和信誉确定每个目标的覆盖范围。首先,根据位于距目标感应范围内的代理数量计算覆盖范围。可以有效地计算该函数。第二个考虑了不同主体到目标的视线之间的角度。视线之间的角度差异越大,覆盖范围的效率就越高。我们分析了在两种情况下调整Max-sum算法的挑战,并提出了使算法更有效的增强措施。我们提供了与朴素算法相比这些增强带来的优势的经验证据。

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