cs.AI updates on arXiv.org 07月22日 12:34
Explainable Artificial Intelligence based Soft Evaluation Indicator for Arc Fault Diagnosis
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本文提出一种基于AI的弧故障诊断模型,并引入软评估指标,通过可解释AI和真实实验数据提高诊断模型的可靠性和可理解性。

arXiv:2507.15239v1 Announce Type: new Abstract: Novel AI-based arc fault diagnosis models have demonstrated outstanding performance in terms of classification accuracy. However, an inherent problem is whether these models can actually be trusted to find arc faults. In this light, this work proposes a soft evaluation indicator that explains the outputs of arc fault diagnosis models, by defining the the correct explanation of arc faults and leveraging Explainable Artificial Intelligence and real arc fault experiments. Meanwhile, a lightweight balanced neural network is proposed to guarantee competitive accuracy and soft feature extraction score. In our experiments, several traditional machine learning methods and deep learning methods across two arc fault datasets with different sample times and noise levels are utilized to test the effectiveness of the soft evaluation indicator. Through this approach, the arc fault diagnosis models are easy to understand and trust, allowing practitioners to make informed and trustworthy decisions.

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AI弧故障诊断 软评估指标 可解释AI 神经网络
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