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Diagnosing multiple faults in oil rig motor pumps using support vector machine classifier ensembles

机译:使用支持向量机分类器集成诊断石油钻机电动泵中的多个故障

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摘要

We present a generic procedure for diagnosing faults using features extracted from noninvasive machine signals, based on supervised learning techniques to build the fault classifiers. An important novelty of our research is the use of 2000 examples of vibration signals obtained from operating faulty motor pumps, acquired from 25 oil platforms off the Brazilian coast during five years. Several faults can simultaneously occur in a motor pump. Each fault is individually detected in an input pattern by using a distinct ensemble of support vector machine (SVM) classifiers. We propose a novel method for building a SVM ensemble, based on using hill-climbing feature selection to create a set of accurate, diverse feature subsets, and further using a grid-search parameter tuning technique to vary the parameters of SVMs aiming to increase their individual accuracy. Thus our ensemble composing method is based on the hybridization of two distinct, simple techniques originally designed for producing accurate single SVMs. The experiments show that this proposed method achieved a higher estimated prediction accuracy in comparison to using a single SVM classifier or using the well-established genetic ensemble feature selection (GEFS) method for building SVM ensembles.
机译:我们基于监督学习技术来构建故障分类器,提出了一种使用从无创机器信号中提取的特征来诊断故障的通用过程。我们的研究的一个重要创新是使用了2000个示例,这些示例是从运行故障的电动泵中获得的2000年振动信号示例,这些信号是在五年内从巴西沿海25个石油平台获得的。电动泵可能同时发生多个故障。通过使用不同的支持向量机(SVM)分类器,以输入模式分别检测每个故障。我们提出了一种用于构建SVM集成的新方法,该方法基于以下特征:使用爬山特征选择来创建一组准确的,多样的特征子集,并进一步使用网格搜索参数调整技术来改变SVM的参数,从而增加SVM的参数。个人准确性。因此,我们的整体合成方法是基于两种最初设计用于产生准确的单个SVM的不同简单技术的混合。实验表明,与使用单个SVM分类器或使用成熟的遗传集成特征选择(GEFS)方法构建SVM集成相比,该方法可实现更高的估计预测精度。

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