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Online Incremental Machine Learning Platform for Big Data-Driven Smart Traffic Management

机译:在线增量机器学习平台,用于大数据驱动的智能交通管理

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摘要

The technological landscape of intelligent transport systems (ITS) has been radically transformed by the emergence of the big data streams generated by the Internet of Things (IoT), smart sensors, surveillance feeds, social media, as well as growing infrastructure needs. It is timely and pertinent that ITS harness the potential of an artificial intelligence (AI) to develop the big data-driven smart traffic management solutions for effective decision-making. The existing AI techniques that function in isolation exhibit clear limitations in developing a comprehensive platform due to the dynamicity of big data streams, high-frequency unlabeled data generation from the heterogeneous data sources, and volatility of traffic conditions. In this paper, we propose an expansive smart traffic management platform (STMP) based on the unsupervised online incremental machine learning, deep learning, and deep reinforcement learning to address these limitations. The STMP integrates the heterogeneous big data streams, such as the IoT, smart sensors, and social media, to detect concept drifts, distinguish between the recurrent and non-recurrent traffic events, and impact propagation, traffic flow forecasting, commuter sentiment analysis, and optimized traffic control decisions. The platform is successfully demonstrated on 190 million records of smart sensor network traffic data generated by 545,851 commuters and corresponding social media data on the arterial road network of Victoria, Australia.
机译:物联网(IoT),智能传感器,监视源,社交媒体以及不断增长的基础设施需求产生的大数据流的出现,彻底改变了智能运输系统(ITS)的技术格局。 ITS充分利用人工智能(AI)的潜力来开发大数据驱动的智能交通管理解决方案,以进行有效的决策是及时且相关的。由于大数据流的动态性,来自异构数据源的高频未标记数据生成以及交通状况的波动性,现有的孤立运行的AI技术在开发综合平台方面显示出明显的局限性。在本文中,我们提出了一个基于无监督在线增量机器学习,深度学习和深度强化学习的扩展智能交通管理平台(STMP),以解决这些限制。 STMP集成了IoT,智能传感器和社交媒体等异构大数据流,以检测概念漂移,区分经常性和非经常性交通事件以及影响传播,交通流量预测,通勤者情绪分析和优化的交通控制决策。该平台已成功展示了由545,851名通勤者生成的1.9亿条智能传感器网络交通数据记录以及澳大利亚维多利亚州动脉道路网络上的相应社交媒体数据。

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