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Averaging Based Predictive Modelling for Traffic Congestion in IoT

机译:基于平均的物联网流量拥塞预测模型

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The Internet of things (IoT) is the system of physical devices, vehicles, and other items embedded with electronics, software, sensors, actuators, and connectivity which empower these objects to accumulate and interchange data. IoT allows objects to be recognized or controlled distantly without human involvement. This result in enhanced efficiency, precision and economic advantage. Traffic blocking is bursting as foremost challenge in every established as well as emerging countries and it needs immediate attention. The amalgamation of machine learning and IoT, Vehicular Adhoc Network (VANET) makes the traffic management more intelligent. Many researchers have proposed numerous answers for covering detecting, estimating and avoiding traffic congestion in a handful of established nations. These solutions are not suitable from Indian perspective because of mixed traffic conditions, population. This paper proposes a novel traffic congestion prediction technique based on averaging under heterogeneous conditions. The proposed system uses real time and historic traffic data for informing accurately on road congestion preceding the journey.
机译:物联网(IoT)是包含电子,软件,传感器,执行器和连接性的物理设备,车辆和其他项目的系统,这些功能使这些对象能够累积和交换数据。物联网可以在无需人工干预的情况下远程识别或控制对象。这导致提高的效率,精度和经济优势。交通阻塞在每个成熟国家和新兴国家中都是最主要的挑战,需要立即予以关注。机器学习和IoT,车载自组织网络(VANET)的融合使交通管理更加智能。许多研究人员提出了许多答案,以涵盖在少数几个成熟国家中检测,估计和避免交通拥堵的问题。从印度的角度来看,这些解决方案不适合,因为交通状况,人口众多。本文提出了一种基于异构条件下平均的交通拥塞预测新技术。所提出的系统使用实时和历史交通数据来准确地告知旅途之前的道路拥堵情况。

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