利用先进的机器学习技术对工业旋转机械进行故障检测和分类

Divya Paikaray, Naveen Kumar Rajendran, Vaishali Singh, Pulkit Srivastava
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引用次数: 0

摘要

本研究解决了工业旋转机械故障识别和分类的难题,并引入了革命性的蒲公英优化 CatBoost(DO-CB)技术。所建议的框架利用了 CB 算法,并通过 DO 方法对其进行了增强。建议的 DO-CB 方法的第一步是收集旋转齿轮的传感器数据,记录不同的运行设置。为确保稳健性,建议的方法是在已识别数据的基础上开发的,包括各种故障情况。此外,用于识别故障和分类的 Python 工具也是实施 DO-CB 方法的基础。实验结果表明,所建议的方法能很好地精确识别和分类工业旋转齿轮中的问题。与基准缺陷检测技术相比,建议的 DO-CB 方法表现更佳,证明了其管理数据中错综复杂的模式和波动的能力。
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FAULT DETECTION AND CATEGORIZATION USING AN ADVANCED MACHINE LEARNING TECHNIQUE FOR INDUSTRIAL ROTATIONAL MACHINERY
The difficulty of fault identification as well as categorization in industrial rotating machinery is fixed by this study, which introduces a revolutionary Dandelion Optimized CatBoost (DO-CB) technique. The suggested framework makes use of the CB algorithm, which is enhanced by the DO method. The first step in the suggested DO-CB approach is gathering sensor data from rotating gear to record different operational settings. To ensure robustness, the recommended approach is developed on identified data and includes a variety of fault scenarios. Additionally, the Python tool used for identifying faults and classification is the basis for the implementation of the DO-CB approach. The experimental findings show how well the suggested method works to precisely identify and classify problems in industrial rotating gear. In comparison to benchmark defect detection techniques, the suggested DO-CB approach performs better, demonstrating its capacity to manage intricate patterns and fluctuations in the data.
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CiteScore
1.00
自引率
0.00%
发文量
55
审稿时长
12 weeks
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