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Binary feature selection classifier ensemble for fault diagnosis of submersible motor pump

机译:二进制特征选择分类器潜水电机泵故障诊断

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The main motivation to develop this work is to create a diagnosis system able to facilitate the work of human experts responsible for detecting faults before acquisition of submersible petroleum motor pump systems. A new approach for multiclass learning by reduction to multiple, binary classifiers, in a one-versus-one scheme, is presented as an alternative artificial intelligence solution to diagnose faults. Such an idea is based on the hypothesis that each pair of process conditions has different optimal feature sets to improve the classification performance. Thus, features are selected from datasets containing only two classes. Then, classifiers are trained with the selected features. The combination uses the average confidence of each classifier pair prediction to calculate the ensemble answer. Experimental results show that the proposed approach improves classification performance in a statistically significant way, when compared with correlated work. A secondary contribution is the analysis of the most difficult fault to be identified, namely rubbing.
机译:开发这项工作的主要动机是创建一个能够促进负责检测潜水石油电机泵系统之前检测故障的人类专家的工作的诊断系统。通过减小到多个二进制分类器的多种语学习的新方法,以一对与一个方案呈现为识别故障的替代人工智能解决方案。这样的思想基于每对过程条件具有不同的最佳特征集来提高分类性能的假设。因此,从包含两个类的数据集中选择功能。然后,分类器接受所选功能培训。该组合使用每个分类器对预测的平均置信度来计算集合答案。实验结果表明,与相关工作相比,该方法以统计上显着的方式提高了分类性能。二次贡献是分析最难以识别的错误,即摩擦。

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