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Scalable and Distributed Sea Port Operational Areas Estimation from AIS Data

机译:根据AIS数据估算可扩展和分布式海港作业区域

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Seaports are spatial units that do not remain static over time. They are constantly in flux, evolving according to environmental and connectivity patterns both in size and operational capacity. As such any valid decision making regarding port investment and policy making, essentially needs to take into account port evolution over time and space, thus, accurately defining a seaport's exact location, operational boundaries, capacity, connectivity indicators, environmental impact and overall throughput. In this work, we apply a data driven approach to defining a seaport's extended area of operation based on data collected though the Automatic Identification System (AIS). Specifically, we present our adaptation of the well-known KDE algorithm to the MapReduce paradigm, and report results on the port of Rotterdam.
机译:海港是随时间推移不会保持静态的空间单位。它们不断变化,并根据大小和操作能力方面的环境和连接模式而发展。因此,任何有关港口投资和政策制定的有效决策,基本上都需要考虑港口在时间和空间上的演变,从而准确定义海港的确切位置,运营边界,容量,连通性指标,环境影响和总体吞吐量。在这项工作中,我们将基于通过自动识别系统(AIS)收集的数据,采用数据驱动的方法来定义海港的扩展运营区域。具体来说,我们介绍了我们对MapReduce范例的著名KDE算法的改编,并在鹿特丹港口报告了结果。

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