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Active learning for adaptive mobile sensing networks

机译:自适应移动感应网络的主动学习

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This paper investigates data-adaptive path planning schemes for wireless networks of mobile sensor platforms. We focus on applications of environmental monitoring, in which the goal is to reconstruct a spatial map of environmental factors of interest. Traditional sampling theory deals with data collection processes that are completely independent of the target map to be estimated, aside from possible a priori specifications reflective of assumed properties of the target. We refer to such processes as passive learning methods. Alternatively, one can envision sequential, adaptive data collection procedures that use information gleaned from previous observations to guide the process. We refer to such feedback-driven processes as active learning methods. Active learning is naturally suited to mobile path planning, in which previous samples are used to guide the motion of the mobiles for further sampling. This paper presents some of the most encouraging theoretical results to date that support the effectiveness of active over passive learning, and focuses on new results regarding the capabilities of active learning methods for mobile sensing. Tradeoffs between latency, path lengths, and accuracy are carefully assessed using our theory. Adaptive path planning methods are developed to guide mobiles in order to focus attention in interesting regions of the sensing domain, thus conducting spatial surveys much more rapidly while maintaining the accuracy of the estimated map. The theory and methods are illustrated in the application of water current mapping in a freshwater lake.
机译:本文研究了用于移动传感器平台无线网络的数据自适应路径规划方案。我们专注于环境监测的应用,其目标是重建感兴趣的环境因素的空间图。传统的采样理论处理的数据收集过程完全独立于要估计的目标地图,除了可能反映先验目标特性的先验规范外。我们将这种过程称为被动学习方法。或者,可以设想使用从以前的观察中收集到的信息来指导该过程的顺序的,自适应的数据收集过程。我们将这种反馈驱动的过程称为主动学习方法。主动学习自然适合于移动路径规划,其中以前的样本用于指导移动台的运动以进行进一步采样。本文提出了一些迄今为止最令人鼓舞的理论结果,这些理论支持主动学习优于被动学习的有效性,并着重于有关主动学习方法在移动传感方面的功能的新结果。使用我们的理论仔细评估了延迟,路径长度和准确性之间的折衷。开发了自适应路径规划方法来引导移动设备,以便将注意力集中在传感域的有趣区域,从而在保持估算地图准确性的同时,更快地进行空间勘测。该理论和方法在淡水湖水流测绘中的应用得到了说明。

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