Online Distributed Maritime Event Detection & Forecasting over Big Vessel Tracking Data.

IEEE BigData(2021)

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摘要
We present a Maritime Situational Awareness (MSA) framework for detecting and forecasting maritime events (e.g., illegal fishing) over streams of Big maritime Data. The architecture of the MSA framework relies on the following state-of-the-art components: (i) the Maritime Event Detector which uses data-driven distributed techniques deployed on a computer cluster to detect maritime events of interest in an online, real-time fashion, (ii) the Complex Event Forecasting module, which implements state-of-the-art distributed Complex Event Forecasting techniques for maritime data, (iii) the Synopses Data Engine component, that creates synopses of maritime data improving the scalability of the framework and (iv) the streaming extension of a popular data science platform, namely RapidMiner Studio, that integrates all the above, allowing users to graphically design and rapidly implement Big Data analytics pipelines which can be deployed transparently on top of distributed architectures.
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关键词
big maritime data,MSA framework,state-of-the-art components,data-driven distributed techniques,online time fashion,data science platform,big data analytics pipelines,distributed architectures,synopses data engine component,complex event forecasting techniques,complex event forecasting module,maritime event detector,maritime situational awareness framework,big vessel tracking data,online distributed maritime event detection & forecasting,RapidMiner Studio
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