Vibration based Data Analysis of Single Acting Compressor through Condition Monitoring and Multilayer Perceptron – A Machine Learning Classifier

Aravinth Sivakumar, Sugumaran Vaithiyanathan
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引用次数: 1

Abstract

The air compressor is one of the desired mechanical equipment used for producing compressed air, which is utilized for performing various industrial and domestic functions. Its operation involves several rotating and fluctuating members which fail due to several miscellaneous reasons as the members prone to dynamic working environment quite frequently. The deficiencies create huge impact over the overall performance and thus leads to economic losses associated with system seizure. It is now essential to predict the occurrence of faults at earlier stages in order to avoid major shutdowns. Hence, in this article, a data modelling study using a machine learning algorithm is proposed. Initially, the vibration signals are measured as physical parameters from the compressor test rig as it contains critical information regarding the system working conditions instantly. The statistical features were extracted from the acquired signals and by using the J48 algorithm the most prominent features were selected. These selected features were classified using Multilayer Perceptron and its performance in fault classification was presented
基于状态监测和多层感知器的单作用压缩机振动数据分析
空气压缩机是生产压缩空气的理想机械设备之一,用于执行各种工业和家庭功能。它的运行涉及多个旋转和波动构件,由于构件经常处于动态工作环境中,各种原因导致构件失效。这些缺陷会对整体性能造成巨大影响,从而导致与系统故障相关的经济损失。现在,在早期阶段预测故障的发生是必不可少的,以避免重大停机。因此,本文提出了一种使用机器学习算法的数据建模研究。最初,振动信号作为压缩机试验台的物理参数进行测量,因为它包含了有关系统工作条件的关键信息。从采集的信号中提取统计特征,采用J48算法选择最显著的特征。利用多层感知机对选取的特征进行分类,并给出了多层感知机在故障分类中的性能
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