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Elastic net multinomial logistic regression for fault diagnostics of on-board aeronautical systems

机译:弹性净多项式Lo​​gistic回归用于机载航空系统故障诊断

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The objective of this work is the development of a fault diagnostic system for a shaker blower used in on-board aeronautical systems. Features extracted from condition monitoring signals and selected by the ELastic NET (ELNET) algorithm, which combines l(1)-penalty with the squared l(2)-penalty on model parameters, are used as inputs of a Multinomial Logistic regression (MLR) model. For validation, the developed approach is applied to experimental data acquired on a shaker blower system (as representative of aeronautical on-board systems) and on three additional experimental datasets of literature. The satisfactory diagnostic performances obtained show the potential of the method for developing sound diagnostic classifiers from a very large set of features, even when only few training data are available. (C) 2019 Elsevier Masson SAS. All rights reserved.
机译:这项工作的目的是开发一种用于车载航空系统的振动鼓风机的故障诊断系统。从状态监视信号中提取并通过ELastic NET(ELNET)算法选择的特征(将l(1)罚分与模型参数的l(2)罚分平方相结合)用作多项逻辑回归(MLR)的输入模型。为了进行验证,将开发的方法应用于在振动鼓风机系统(作为航空机载系统的代表)和三个其他文献实验数据集上获得的实验数据。获得的令人满意的诊断性能表明,即使只有很少的训练数据,该方法也可以从非常多的功能集开发出合理的诊断分类器。 (C)2019 Elsevier Masson SAS。版权所有。

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