...
首页> 外文期刊>Indian Journal of Science and Technology >Real Time Vehicular Data Analytics Utilising Bigdata Platforms and Cost Effective ECU Networks
【24h】

Real Time Vehicular Data Analytics Utilising Bigdata Platforms and Cost Effective ECU Networks

机译:利用大数据平台和经济高效的ECU网络进行实时车辆数据分析

获取原文

摘要

Background/Objectives: This paper is aimed at performing real time bigdata analytics on vehicular data collected from a network of ECUs (Electronic Control Unit) in cooperated into the different automobiles. Methods/Statistical Analysis: The analytics has been performed by building a software model that is capable of handling the vehicular data in real time. Bigdata platforms like hadoop, Apache Storm, Apache Spark(real time streaming), Kafka are utilised here. Automotive sensor data from different Electronic Control Units are collected into a central data server and this data is pushed to kafka, from which the real time streaming models pulls the data and perform analysis. Findings: Automotive industry has undergone a drastic revolutionised innovation in the past decade in all of its respective segments. The industry had started utilizing the computational and mathematical aspects from top to bottom in its design strategies to achieve greater reliability on its products out on roads. Latest advancements in this field is the fully autonomous car. Today an automotive is a collection of innumerable sensors and microcontrollers which are under the command of the master ECU. A network of ECUs connected across the globe is a source tap of bigdata. Leveraging the new sources of bigdata by automotive giants boost vehicle performance, enhance loco driver experience, accelerated product designs. Statistical Projections reveal that automotive industry is likely to be the 2nd largest generator of data by mid of 2016. The contribution of this paper to the automotive industry is the real time vehicle monitoring utilizing Bigdata platforms. This can contribute to better customer-industry relations. Applications/Improvements: The model developed in this paper can contribute a lot to the automobile industry as it facilitates real time monitoring of the vehicles. This can improve customer-industry relation.
机译:背景/目的:本文旨在对从不同汽车中的ECU(电子控制单元)网络收集的车辆数据进行实时大数据分析。方法/统计分析:分析是通过构建能够实时处理车辆数据的软件模型来执行的。这里使用了诸如hadoop,Apache Storm,Apache Spark(实时流),Kafka之类的Bigdata平台。来自不同电子控制单元的汽车传感器数据被收集到中央数据服务器中,并将该数据发送到kafka,实时流模型从中提取数据并进行分析。调查结果:在过去的十年中,汽车行业在其各个领域都经历了彻底的革命性创新。该行业已开始在其设计策略中从上至下利用计算和数学方面,以提高其公路产品的可靠性。该领域的最新进展是全自动驾驶汽车。如今,汽车是由主ECU指挥的无数传感器和微控制器的集合。遍布全球的ECU网络是大数据的源头。汽车业巨头利用新的大数据资源来提高汽车性能,增强机车驾驶员体验,加快产品设计。统计预测表明,到2016年中期,汽车行业可能会成为第二大数据生成器。本文对汽车行业的贡献是利用Bigdata平台进行实时车辆监控。这可以有助于改善客户与行业的关系。应用/改进:本文开发的模型可以促进汽车的实时监控,因此可以为汽车工业做出很大贡献。这样可以改善客户与行业的关系。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号