多作业型群搜索与服务任务的先验性能预测混合模型

M. Chandarana, Dana Hughes, M. Lewis, K. Sycara, S. Scherer
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引用次数: 3

摘要

在群体搜索和服务(SSS)应用中,群体车辆负责同时搜索一个区域,同时立即为搜索过程中发现的工作提供服务。环境中可能存在多种作业类型。当车辆进出蜂群去服务工作时,覆盖率(即每个时间步长蜂群搜索的面积)会动态变化,以反映当前参与搜索的车辆数量。因此,工作的到达率也在动态变化。在规划SSS任务时,必须确定资源需求,例如实现所需系统性能所需的蜂群大小。动态变化的到达率使得传统的排队方法不适合预测群体的性能。本文提出了一种用于先验预测群性能的混合方法——混合模型。它利用马尔科夫模型,其状态表示捕获了搜索或服务工作的代理的比例。使用状态依赖排队模型计算马尔可夫状态的状态转移函数。该模型已被开发为一种预测工具,以协助任务规划者平衡复杂的权衡,但也为优化成本函数已知的群体规模提供了基础。混合模型在先前考虑的恒定覆盖率场景中进行测试,并将结果与先前开发的排队模型进行比较。然后对其他SSS任务进行模拟,并使用其结果性能进一步评估混合模型作为预测工具在更一般的情况下动态变化覆盖率的群体性能的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hybrid Model for A Priori Performance Prediction of Multi-Job Type Swarm Search and Service Missions
In Swarm Search and Service (SSS) applications, swarm vehicles are responsible for concurrently searching an area while immediately servicing jobs discovered while searching. Multiple job types may be present in the environment. As vehicles move in and out of the swarm to service jobs, the coverage rate (i.e., area searched by the swarm per time step) changes dynamically to reflect the number of vehicles currently engaged in search. As a result, the arrival rates of jobs also changes dynamically. When planning SSS missions, the resource requirements, such as the swarm size needed to achieve a desired system performance, must be determined. The dynamically changing arrival rates make traditional queuing methods ill-suited to predict the performance of the swarm. This paper presents a hybrid method - Hybrid Model - for predicting the performance of the swarm a priori. It utilizes a Markov model, whose state representation captures the proportion of agents searching or servicing jobs. State-dependent queuing models are used to calculate the state transition function of the Markov states. The model has been developed as a prediction tool to assist mission planners in balancing complex trade-offs, but also provides a basis for optimizing swarm size where cost functions are known. The Hybrid Model is tested in previously considered constant coverage rate scenarios and the results are compared to a previously developed Queuing Model. Additional SSS missions are then simulated and their resulting performance is used to further evaluate the effectiveness of using the Hybrid Model as a prediction tool for swarm performance in more general scenarios with dynamically changing coverage rates.
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