...
首页> 外文期刊>Journal of Failure Analysis and Prevention >Detailed Comparison of Methods for Classifying Bearing Failures Using Noisy Measurements
【24h】

Detailed Comparison of Methods for Classifying Bearing Failures Using Noisy Measurements

机译:使用噪声测量分类轴承故障方法的详细比较

获取原文
获取原文并翻译 | 示例

摘要

Rotary machines are key equipment in many industrial sectors, from mining operations to advanced manufacturing. Among the critical components of these machines are bearings, gearboxes, rotors, among others. These components tend to present failures, which can be catastrophic, with economic, safety and/or environmental consequences. Among the most established methods for classifying bearing faults, the envelope method has been widely used, with relative success, for several years. However, this method and its variations are difficult to automate and require extensive experience on the part of the analyst. We report that, while traditional methods (e.g., envelope) successfully classified bearing failures less than 45% of the time, machine learning methods were successful more than 62% of the time, and in some cases reaching 67%. This work differs from others in the sense that it uses all the available measurements from a well-known database, not just a subset. In addition, the measurements are taken at the motor base, which are more difficult to classify, and avoid using different segments of the same signal in both training and validation, thus reducing the possibility of overfitting. As a consequence, the results obtained are apparently inferior to those reported elsewhere, but probably closer to what one might expect in practical applications.
机译:旋转机器是许多工业领域的关键设备,从采矿业务到先进的制造。这些机器的关键部件中的轴承,齿轮箱,转子等。这些组件倾向于呈现可能是灾难性的故障,具有经济,安全和/或环境后果。在分类轴承故障的最熟悉的方法中,信封方法已被广泛使用,相对成功,几年。然而,这种方法及其变化难以自动化,并且需要在分析师的部分方面进行广泛的体验。我们报告说,虽然传统方法(例如,信封)成功分类轴承失败,但在45%的时间内,机器学习方法的成功超过62%,在某些情况下达到67%。这项工作与他人的不同之处在于它使用来自着名数据库的所有可用测量,而不仅仅是子集。此外,测量在电动机基座上拍摄,这更难以进行分类,并且避免在训练和验证中使用相同信号的不同段,从而降低过度装备的可能性。因此,所获得的结果显然不如其他地方报告的结果,但可能更接近在实际应用中可能期望的那些。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号