A Real-Time Based Intelligent System for Predicting Equipment Status

Seungchul Lee, Daeyoung Kim
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引用次数: 1

Abstract

In manufacturing industry, significant productivity losses arise due to equipment failures. Therefore, it is an important task to prevent the equipment from failure by monitoring each machine's sensor data in advance. However, most of the current developed systems have been only focused on monitoring the sensor data and have a difficulty in applying advanced algorithms to the real-time stream data. To address issues, we implemented an intelligent system that employs real-time streaming engine loaded with the machine learning libraries for predictive maintenance analysis. By applying a deep-learning based model to the real-time streaming data, we can provide not only trends of raw sensor data but also give an indicator representing an equipment's status in real-time. We anticipate that our system contributes to recognize the equipment's status by monitoring the indicator for productivity improvement in manufacturing industry in real-time.
基于实时的智能设备状态预测系统
在制造业中,由于设备故障造成了重大的生产力损失。因此,提前监测各机器的传感器数据,防止设备故障是一项重要的任务。然而,目前开发的大多数系统只关注传感器数据的监测,难以将先进的算法应用于实时流数据。为了解决这些问题,我们实现了一个智能系统,该系统使用装载了机器学习库的实时流引擎进行预测性维护分析。通过将基于深度学习的模型应用于实时流数据,我们不仅可以提供原始传感器数据的趋势,还可以实时给出代表设备状态的指示器。我们期望我们的系统能够通过实时监测制造业生产率提高的指标来识别设备的状态。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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