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Kernel and random extreme learning machine applied to submersible motor pump fault diagnosis

机译:核和随机极限学习机在潜水电泵故障诊断中的应用

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This paper presents an extension of a comparative study of classifier architectures for automatic fault diagnosis, with a special emphasis on the Extreme Learning Machine (ELM), with and without kernel mapping. Besides the explanation of the ELM model, an attempt is made to find theoretical hints of the excellent generalization capabilities of this model, based on the findings of Cover about dichotomies and the equivalence of Mean Squared Error minimization in the high-dimensional feature spaces induced by kernels, and spaces defined by a finite sample set. The field of application is a practical problem in the context of offshore petroleum exploration where sophisticated submersible motor pumps are extensively tested before being deployed. The work juxtaposes the performance of ELM to an existing statistically sound comparison of state of the art classifier methods for a hand-crafted feature model tailored specially to the spectra of the vibrational signals of the pump. The results suggest the remarkably good generalization capability of ELM, exhibiting the highest scores for the chosen F-measure performance criterion.
机译:本文介绍了用于自动故障诊断的分类器体系结构的比较研究的扩展,其中特别强调了带有和不带有内核映射的极限学习机(ELM)。除了对ELM模型的解释外,还尝试根据Cover的二分法发现和由C引起的高维特征空间中均方误差最小化的等价物,找到该模型出色的泛化能力的理论提示。内核和由有限样本集定义的空间。在海上石油勘探的背景下,应用领域是一个实际问题,在海上石油勘探中,复杂的潜水式电动泵在部署前已进行了广泛的测试。这项工作将ELM的性能与现有分类器方法的现有统计上合理的比较并进行了比较,该分类器方法是专门为泵的振动信号频谱量身定制的手工制作的特征模型。结果表明,ELM具有出色的泛化能力,在所选的F量度性能标准中表现出最高分。

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