Unsupervised Dynamic Sensor Selection for IoT-Based Predictive Maintenance of a Fleet of Public Transport Buses

IF 3.5 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS ACM Transactions on Internet of Things Pub Date : 2022-04-20 DOI:10.1145/3530991
P. Killeen, I. Kiringa, T. Yeap
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引用次数: 3

Abstract

In recent years, big data produced by the Internet of Things has enabled new kinds of useful applications. One such application is monitoring a fleet of vehicles in real time to predict their remaining useful life. The consensus self-organized models (COSMO) approach is an example of a predictive maintenance system. The present work proposes a novel Internet of Things based architecture for predictive maintenance that consists of three primary nodes: the vehicle node, the server leader node, and the root node, which enable on-board vehicle data processing, heavy-duty data processing, and fleet administration, respectively. A minimally viable prototype of the proposed architecture was implemented and deployed to a local bus garage in Gatineau, Canada. The present work proposes improved consensus self-organized models (ICOSMO), a fleet-wide unsupervised dynamic sensor selection algorithm. To analyze the performance of ICOSMO, a fleet simulation was implemented. The J1939 data gathered from a hybrid bus was used to generate synthetic data in the simulations. Simulation results that compared the performance of the COSMO and ICOSMO approaches revealed that in general ICOSMO improves the average area under the curve of COSMO by approximately 1.5% when using the Cosine distance and 0.6% when using Hellinger distance.
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基于物联网的公交车队预测性维护的无监督动态传感器选择
近年来,物联网产生的大数据催生了新的有用应用。其中一个应用程序是实时监控车队,以预测它们的剩余使用寿命。共识自组织模型(COSMO)方法是预测性维护系统的一个例子。目前的工作提出了一种新的基于物联网的预测性维护架构,该架构由三个主要节点组成:车辆节点、服务器领导节点和根节点,分别实现车载数据处理、重型数据处理和车队管理。在加拿大Gatineau,一个最小可行的架构原型被实现并部署到当地的公共汽车车库。本工作提出了改进的共识自组织模型(ICOSMO),一种全舰队无监督动态传感器选择算法。为了分析ICOSMO的性能,进行了机群仿真。从混合动力总线收集的J1939数据用于生成模拟中的合成数据。对比COSMO和ICOSMO方法性能的仿真结果表明,ICOSMO方法在使用余弦距离时将COSMO曲线下的平均面积提高了约1.5%,使用海灵格距离时提高了约0.6%。
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CiteScore
5.20
自引率
3.70%
发文量
0
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