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Performance Analysis of IoT-Based Sensor Big Data Processing and Machine Learning Model for Real-Time Monitoring System in Automotive Manufacturing

机译:汽车制造业实时监控系统中基于物联网的传感器大数据处理和机器学习模型的性能分析

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摘要

With the increase in the amount of data captured during the manufacturing process, monitoring systems are becoming important factors in decision making for management. Current technologies such as Internet of Things (IoT)-based sensors can be considered a solution to provide efficient monitoring of the manufacturing process. In this study, a real-time monitoring system that utilizes IoT-based sensors, big data processing, and a hybrid prediction model is proposed. Firstly, an IoT-based sensor that collects temperature, humidity, accelerometer, and gyroscope data was developed. The characteristics of IoT-generated sensor data from the manufacturing process are: real-time, large amounts, and unstructured type. The proposed big data processing platform utilizes Apache Kafka as a message queue, Apache Storm as a real-time processing engine and MongoDB to store the sensor data from the manufacturing process. Secondly, for the proposed hybrid prediction model, Density-Based Spatial Clustering of Applications with Noise (DBSCAN)-based outlier detection and Random Forest classification were used to remove outlier sensor data and provide fault detection during the manufacturing process, respectively. The proposed model was evaluated and tested at an automotive manufacturing assembly line in Korea. The results showed that IoT-based sensors and the proposed big data processing system are sufficiently efficient to monitor the manufacturing process. Furthermore, the proposed hybrid prediction model has better fault prediction accuracy than other models given the sensor data as input. The proposed system is expected to support management by improving decision-making and will help prevent unexpected losses caused by faults during the manufacturing process.
机译:随着制造过程中捕获的数据量的增加,监视系统已成为管理决策中的重要因素。诸如基于物联网(IoT)的传感器之类的当前技术可以被视为提供对生产过程进行有效监控的解决方案。在这项研究中,提出了一种实时监控系统,该系统利用基于IoT的传感器,大数据处理和混合预测模型。首先,开发了一种基于物联网的传感器,该传感器可收集温度,湿度,加速度计和陀螺仪数据。制造过程中由IoT生成的传感器数据的特征是:实时,大量和非结构化类型。拟议的大数据处理平台利用Apache Kafka作为消息队列,利用Apache Storm作为实时处理引擎,并使用MongoDB来存储制造过程中的传感器数据。其次,对于所提出的混合预测模型,分别使用基于密度的基于噪声的应用程序空间聚类(DBSCAN)的离群值检测和随机森林分类来去除离群值传感器数据并在制造过程中提供故障检测。拟议的模型在韩国的汽车制造装配线进行了评估和测试。结果表明,基于物联网的传感器和拟议的大数据处理系统足够有效地监控制造过程。此外,在传感器数据为输入的情况下,提出的混合预测模型具有比其他模型更好的故障预测精度。拟议的系统有望通过改进决策来支持管理,并将有助于防止制造过程中的故障所导致的意外损失。

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