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Real-Time Automotive Engine Fault Detection and Analysis Using BigData Platforms

机译:实时汽车发动机故障检测和使用大数据平台分析

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This paper is aimed at diagnosing automotive engine fault in real-time utilizing BigData framework called spark. An automobile in the present day world is equipped with millions of sensors which are under the command of a central unit the ECU (Electronic Control Unit). ECU holds all information about the engine. 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. A piezoelectric transducer coupled to the ECU captures the vibration signals from the engine. The engine fault is detected by carving the problem into a pattern classification problem under machine learning after extracting cyclostationary features from the vibration signal. Spark-streaming framework, the most versatile BigData framework available today with immense computational capabilities is employed for engine fault detection and analysis.
机译:本文旨在实时诊断汽车发动机故障,利用名为Spark的大数据框架。本今世界的汽车配备了数百万个传感器,该传感器是ECU(电子控制单元)的中央单元的命令。 ECU保存有关发动机的所有信息。全球连接的ECU网络是BIGDATA的源头。通过汽车巨头利用新的BigData来源促进了车辆性能,增强了Loco驱动程序经验,加速了产品设计。耦合到ECU的压电换能器捕获来自发动机的振动信号。通过在从振动信号中提取循环棘轮特征后,通过在机器学习下进行模式分类问题来检测发动机故障。 Spark-Streaming Framework,今天可用的最通用的BigData框架,用于发动机故障检测和分析。

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