基于 HEFS-LGBM 的高维特征故障诊断方法

Gen Li, Wenhai Li, Tianzhu Wen, Weichao Sun, Xi Tang
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引用次数: 0

摘要

模拟电路高维故障特征数据中的冗余特征干扰所带来的挑战将削弱传统模拟电路故障诊断技术的功效,因此,本文提出了一种名为异构集合特征选择(HEFS)的新方法。这种方法与用于模式识别的轻梯度提升机(LGBM)协同集成,有助于在模拟电路测试数据中优先选择重要的高维特征,然后再进行分类。该方法首先采用异构集合学习策略,根据高维特征的重要性对其进行识别。随后,应用 LGBM 技术对指定特征进行模式识别分类。此外,还使用了树状结构 Parzen Estimator(TPE)优化方法和五次交叉验证来优化超参数,以提高模型的性能。在加州大学欧文分校(UCI)数据集和模拟电路上进行了诊断评估,以强调与现有技术相比,拟议的 HEFS-LGBM 方法具有更高的诊断精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

High-Dimensional Feature Fault Diagnosis Method Based on HEFS-LGBM

High-Dimensional Feature Fault Diagnosis Method Based on HEFS-LGBM

The challenge caused by redundant feature interference in high-dimensional fault feature data of analog circuits, will undermines the efficacy of conventional analog circuit fault diagnosis techniques, Thus, a novel approach termed Heterogeneous Ensemble Feature Selection (HEFS) is proposed in this paper. This approach is synergistically integrated with the Light Gradient Boosting Machine (LGBM) for pattern recognition, facilitating the prioritization and selection of significant high-dimensional features in analog circuit test data before classification. The methodology commences with the deployment of a heterogeneous ensemble learning strategy for the discernment of crucial high-dimensional features based on their significance. This is followed by the application of the LGBM technique for the pattern recognition classification of the earmarked features. Furthermore, the Tree-structured Parzen Estimator (TPE) optimization method, and five-fold cross-validation, are used for hyperparameter optimization to improve the model’s performance. Diagnostic evaluations are conducted on both University of California Irvine (UCI) datasets and analog circuits to underscore the superior diagnostic precision of the proposed HEFS-LGBM method compared with the existing techniques.

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