增强空压机故障诊断:GPT-2与传统机器学习模型的比较研究

Q3 Materials Science
Nima Rezazadeh, Donato Perfetto, Francesco Caputo, Alessandro De Luca
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引用次数: 0

摘要

本研究探讨了GPT-2(一种基于变压器的模型)在往复式空气压缩机故障诊断中的应用,强调了其捕捉声信号中复杂模式的能力。比较了两种方法:第一种方法涉及提取基于时间、频率和复杂性的特征,并使用传统的机器学习模型对它们进行分类,其中窄神经网络实现了最佳性能。第二种方法将这些特征重新表述为GPT-2的序列数据,通过细致的超参数优化,提供了卓越的诊断准确性。此外,SHapley加性解释分析通过识别最具影响力的特征来增强模型的可解释性,为故障诊断过程提供有价值的见解。虽然GPT-2比传统模型表现出显著的性能提升,但它需要更精确的超参数调优。这项研究为大型语言模型在分类受损机械系统中的应用提供了有价值的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Enhancing Air Compressor Fault Diagnosis: A Comparative Study of GPT-2 and Traditional Machine Learning Models

Enhancing Air Compressor Fault Diagnosis: A Comparative Study of GPT-2 and Traditional Machine Learning Models

This study investigates the application of GPT-2, a transformer-based model, for fault diagnosis in reciprocating air compressors, highlighting its ability to capture complex patterns in acoustic signals. Two approaches are compared: the first involves extracting time, frequency, and complexity-based features and classifying them using traditional machine learning models, with a narrow neural network achieving the best performance. The second approach reformulates these features as sequential data for GPT-2, which, through meticulous hyperparameter optimization, delivered superior diagnostic accuracy. Additionally, SHapley Additive exPlanations analysis was employed to enhance model interpretability by identifying the most influential features, providing valuable insights into the fault diagnosis process. While GPT-2 demonstrated notable performance gains over conventional models, it required a more precise hyperparameter tuning. This study offers valuable insights into the application of large language models for classifying damaged mechanical systems.

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来源期刊
Macromolecular Symposia
Macromolecular Symposia Materials Science-Polymers and Plastics
CiteScore
1.50
自引率
0.00%
发文量
226
期刊介绍: Macromolecular Symposia presents state-of-the-art research articles in the field of macromolecular chemistry and physics. All submitted contributions are peer-reviewed to ensure a high quality of published manuscripts. Accepted articles will be typeset and published as a hardcover edition together with online publication at Wiley InterScience, thereby guaranteeing an immediate international dissemination.
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