石油化工安全环保技术 ›› 2025, Vol. 42 ›› Issue (1): 11-14.

• 事故分析与预防 • 上一篇    

基于数据驱动的变频器故障诊断分析

范雨强1,胡越升2,李鑫2,程书仁2   

  1. 1. 丹佛斯动力系统(江苏)有限公司,江苏 镇江 212021;
    2. 丹佛斯(中国)投资有限公司,上海 200233
  • 收稿日期:2025-08-22 接受日期:2026-01-15 出版日期:2026-02-20 发布日期:2026-03-17
  • 作者简介:范雨强,男, 2020 年毕业于上海理工大学动力工程及工程热物理专业,博士,现从事复杂设备仿真与建模工作,高级工程师。 E-mail:yuqiang.fan@danfoss.com

Fault Diagnosis Analysis of Drive Based on Data-Driven Approach

Fan Yuqiang1,Hu Yuesheng2,Li Xin2,Cheng Shuren2   

  1. 1. Danfoss Power Systems (Jiangsu) Co., Ltd., Zhenjiang, Jiangsu 212021;
    2. Danfoss (China) Investment Co., Ltd., Shanghai 200233.
  • Received:2025-08-22 Accepted:2026-01-15 Online:2026-02-20 Published:2026-03-17

摘要: 随着变频调速技术的普及,变频器被大量应用于石油化工领域,已成为石油化工行业节能改造与智能升级的核心设备,但是在实际运行中容易发生各种故障,引发经济损失甚至人员伤亡。因此,对其故障诊断方法展开深入的研究具有必要性。丹佛斯作为变频器行业的领军企业,致力于应用人工智能方法开展变频器故障诊断研究,首次进行变频器风扇脏堵故障实验,构建支持向量机故障诊断模型。诊断结果显示,该模型对风扇脏堵故障诊断准确率显著提升。

关键词: 变频器, 故障诊断, 机器学习, 数据驱动, 支持向量机

Abstract: With the widespread adoption of variable-frequency speed regulation technology, drives are extensively used in the petrochemical industry and have become a core piece of equipment for energy-saving upgrades and intelligent transformation in this sector. However, various faults are prone to occur during actual operation, leading to economic losses and even casualties. Therefore, it is essential to conduct in-depth research on fault diagnosis methods for drives. As a leading enterprise in the drive industry, Danfoss is committed to applying artificial intelligence methods for drive fault diagnosis research. For the first time, experiments on fan fouling faults in drives were conducted, and a Support Vector Machine-based fault diagnosis model was constructed. The diagnostic results show that the model significantly improves the accuracy of diagnosing fan fouling faults.

Key words: Drive, Fault Diagnosis, Machine Learning, Data-Driven, Support Vector Machine