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A distributed multi-robot adaptive sampling scheme for the estimation of the spatial distribution in widespread fields

机译:一种分布式多机器人自适应采样方案,用于估计广阔领域中的空间分布

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Monitoring widespread environmental fields is undoubtedly a practically important area of research with many complex and challenging tasks. It involves the building of models of the fields or natural phenomena to be monitored, the estimation of the spatio-temporal distribution of a variety of environmental parameters of interest, such as moisture or salinity in a crop field, or the spatial distribution of vital natural resources such as oil and gas, etc. Sampling, a key operation of the monitoring process, is a broad methodology for gathering statistical information about the phenomenon, or environmental variable, being monitored. To efficiently monitor widespread fields and estimate the spatio-temporal distribution of some particular environmental variable, calls for the use of a sampling strategy can fuse information from different scales of sensors. Such an attractive strategy is well catered for by both the capabilities and distributed nature of wireless sensor networks and the mobility of robots performing the sampling (sensing) tasks. This sampling strategy could even be rendered “adaptive” in that the decision of “where to sample next” evolves temporally with past measurements and is optimally computed. In this article, we examine various single-robot and multi-robot adaptive sampling schemes based on different extended Kalman filter filtering structures such as centralized and decentralized filters as well as our own novel decentralized and distributed filters. Our investigation shows that, whereas the first two filters suffer from a heavy computational or communication load, our proposed method, through its key feature of distributing the filtering task amongst the robots used, manages to reduce both loads and the total reconstruction time. It also enjoys the added attractive feature of scalability that allows the structure of the proposed monitoring scheme to grow with the complexity of the field under study. Our results are corroborated by our simulation work and offer ample encouragement for a further theoretical investigation of some properties of the proposed scheme and its implementation on a physical system. Both of these activities are currently underway.
机译:监测广泛的环境领域无疑是一项具有许多复杂而艰巨任务的重要研究领域。它涉及建立要监视的田地或自然现象的模型,估算各种感兴趣的环境参数(如作物田中的水分或盐分)的时空分布或重要自然景观的空间分布采样是监视过程的关键操作,是一种广泛的方法,用于收集有关被监视的现象或环境变量的统计信息。为了有效地监视广泛的领域并估计某些特定环境变量的时空分布,要求使用采样策略可以融合来自不同比例传感器的信息。无线传感器网络的功能和分布式特性以及执行采样(传感)任务的机器人的移动性都很好地满足了这种有吸引力的策略。甚至可以使这种采样策略具有“适应性”,因为“下一个采样位置”的决策会随着过去的测量而随时间变化,并且会得到最佳计算。在本文中,我们研究了基于不同扩展卡尔曼滤波器滤波结构(例如集中式和分散式滤波器以及我们自己的新型分散式和分布式滤波器)的各种单机器人和多机器人自适应采样方案。我们的研究表明,尽管前两个过滤器承受了沉重的计算或通信负载,但我们提出的方法通过其在使用的机器人之间分配过滤任务的关键特征,设法减少了负载和总的重建时间。它还具有可扩展性的额外吸引人的功能,该功能使所提议的监视方案的结构随着所研究领域的复杂性而增长。我们的仿真工作证实了我们的结果,并为进一步理论研究所提议方案的某些特性及其在物理系统上的实现提供了充分的鼓励。这两项活动目前都在进行中。

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