用于不平衡故障诊断的基于成本敏感核的简化广泛学习系统

Kaixiang Yang;Wuxing Chen;Yifan Shi;Zhiwen Yu;C. L. Philip Chen
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引用次数: 0

摘要

在智能制造领域,解决不平衡数据带来的分类难题至关重要。尽管广义学习系统(BLS)已被公认为是一种有效且高效的方法,但它的性能在不平衡数据集上会减弱。因此,本文提出了一种名为简化核成本敏感广义学习系统(SKCSBLS)的新方法来解决这些问题。成本敏感广义学习系统(CSBLS)为各个类别分配了不同的调整成本,SKCSBLS 在此框架的基础上,强调了少数类别的重要性,同时减轻了数据不平衡的影响。此外,考虑到噪声或重叠数据点带来的复杂性,我们在 CSBLS 中加入了核映射。这一改进不仅提高了系统处理重叠类样本的能力,还提高了整体分类效果。我们的实验结果凸显了 SKCSBLS 在克服不平衡数据固有挑战方面的潜力,为智能系统中的高级故障诊断提供了稳健的解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Simplified Kernel-Based Cost-Sensitive Broad Learning System for Imbalanced Fault Diagnosis
In the field of intelligent manufacturing, tackling the classification challenges caused by imbalanced data is crucial. Although the broad learning system (BLS) has been recognized as an effective and efficient method, its performance wanes with imbalanced datasets. Therefore, this article proposes a novel approach named simplified kernel-based cost-sensitive broad learning system (SKCSBLS) to address these issues. Based on the framework of cost-sensitive broad learning system (CSBLS) that assigns distinctive adjustment costs for individual classes, SKCSBLS emphasizes the importance of the minority class while mitigating the impact of data imbalance. Additionally, considering the complexity introduced by noisy or overlapping data points, we incorporate kernel mapping into the CSBLS. This improvement not only improves the system's capability to handle overlapping classes of samples, but also improves the overall classification effectiveness. Our experimental results highlight the potential of SKCSBLS in overcoming the challenges inherent in unbalanced data, providing a robust solution for advanced fault diagnosis in intelligent systems.
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