Predictive Maintenance Studies Applied to an Industrial Press Machine Using Machine Learning

Erkut Yiğit, M. Z. Bilgin, Ahmet Erdem Oner
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引用次数: 1

Abstract

The main purpose of Industry 4.0 applications is to provide maximum uptime throughout the production chain, to reduce production costs and to increase productivity. Thanks to Big Data, Internet of Things (IoT) and Machine Learning (ML), which are among the Industry 4.0 technologies, Predictive Maintenance (PdM) studies have gained speed. Implementing Predictive Maintenance in the industry reduces the number of breakdowns with long maintenance and repair times, and minimizes production losses and costs. With the use of machine learning, equipment malfunctions and equipment maintenance needs can be predicted for unknown reasons. A large amount of data is needed to train the machine learning algorithm, as well as adequate analytical method selection suitable for the problem. The important thing is to get the valuable signal by cleaning the data from noise with data processing. In order to create prediction models with machine learning, it is necessary to collect accurate information and to use many data from different systems. The existence of large amounts of data related to predictive maintenance and the need to monitor this data in real time, delays in data collection, network and server problems are major difficulties in this process. Another important issue concerns the use of artificial intelligence. For example, obtaining training data, dealing with variable environmental conditions, choosing the ML algorithm better suited to a specific scenario, necessity of information sensitive to operational conditions and production environment are of great importance for analysis. In this study, predictive maintenance studies for the transfer press machine used in the automotive industry, which can predict the maintenance need time and give warning messages to the relevant people when abnormal situations approach, are examined. First of all, various sensors have been placed in the machine for the detection of past malfunctions and it has been determined which data will be collected from these sensors. Then, machine learning algorithms used to detect anomalies with the collected data and model past failures were created and an application was made in a factory that produces automotive parts.
基于机器学习的工业压力机预测性维护研究
工业4.0应用的主要目的是在整个生产链中提供最长的正常运行时间,以降低生产成本并提高生产率。得益于工业4.0技术中的大数据、物联网(IoT)和机器学习(ML),预测性维护(PdM)研究加快了速度。在行业中实施预测性维护可以减少长时间维护和维修的故障数量,并最大限度地减少生产损失和成本。通过使用机器学习,可以预测未知原因的设备故障和设备维护需求。训练机器学习算法需要大量的数据,也需要选择足够适合问题的分析方法。重要的是通过数据处理去除数据中的噪声,得到有价值的信号。为了用机器学习创建预测模型,有必要收集准确的信息并使用来自不同系统的大量数据。存在大量与预测性维护相关的数据,需要对这些数据进行实时监控,数据收集的延迟,网络和服务器问题是这一过程中的主要困难。另一个重要问题涉及人工智能的使用。例如,获取训练数据、处理可变的环境条件、选择更适合特定场景的ML算法、对操作条件和生产环境敏感的信息的必要性等,都是分析的重要内容。本研究对汽车工业用转移压力机的预测性维修研究进行了研究,该研究可以预测维修所需的时间,并在异常情况发生时向相关人员发出警告信息。首先,在机器中放置了各种传感器,用于检测过去的故障,并确定将从这些传感器收集哪些数据。然后,使用机器学习算法来检测收集到的数据的异常情况,并对过去的故障进行建模,并在一家生产汽车零部件的工厂中制作应用程序。
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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