Marine Vehicle Tracking using Agile Maritime IoTs

O. Zadorozhnyi, Pavlos Tsiantis, Erricos Michaelides, Christos C. Constantinou, I. Kyriakides, Ilias Alexopoulos, Ehson Abdi, J. Reodica, D. Hayes
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Abstract

Marine surveillance deals with the complex problem of modeling and estimating natural and human processes while operating with limited information acquisition resources. The complexity of the problem and the scarcity of resources, such as power, processing, and communications, requires agile distributed sensing and computing that provides scalability, diversity in information acquisition, and adaptive allocation of limited resources. This work deals with tracking multiple marine vehicles using data from heterogeneous sensors. Accurate tracking is achieved by a synergy between a network of agile maritime IoTs, with limited processing resources, and a fusion center, with computationally intensive capability. The IoTs can reconfigure their elementary processing operations settings to produce informative yet low volume measurement statistics. The fusion center handles heterogeneous data fusion and solves the complex problem of vehicle state estimation. We demonstrate that by configuring its agile distributed computing capabilities, the proposed system provides significant savings in processing and communications resources without deteriorating tracking performance.
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使用敏捷海事物联网进行船舶跟踪
海洋监测在信息获取资源有限的情况下,处理复杂的自然和人类过程建模和估计问题。问题的复杂性和资源(如电力、处理和通信)的稀缺性需要灵活的分布式感知和计算,以提供可伸缩性、信息获取的多样性和有限资源的自适应分配。这项工作涉及使用来自异构传感器的数据跟踪多个海上车辆。通过灵活的海上物联网网络(具有有限的处理资源)和融合中心(具有计算密集型能力)之间的协同作用,可以实现精确跟踪。物联网可以重新配置其基本处理操作设置,以产生信息量大但体积小的测量统计数据。融合中心处理异构数据融合,解决复杂的车辆状态估计问题。我们证明,通过配置其敏捷分布式计算能力,所提出的系统在不降低跟踪性能的情况下,显著节省了处理和通信资源。
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