华电技术 ›› 2020, Vol. 42 ›› Issue (5): 55-60.

• 风力发电 • 上一篇    下一篇

基于BP神经网络的风电系统控制器I/O硬件故障自诊断方法

  

  1. 1.浙江运达风电股份有限公司,杭州 310012;
    2.浙江省风力发电技术重点实验室,杭州 310012
  • 出版日期:2020-05-25 发布日期:2020-06-08

Self-detecting method for faults in wind turbine controller I/O hardware based on BP neural network algorithm

  1. 1.Zhejiang Windey Company Limited,Hangzhou 310012,China;2.Key Laboratory of Wind Power Technology of Zhejiang Province,Hangzhou 310012,China
  • Online:2020-05-25 Published:2020-06-08

摘要:   随着风电产业竞争日趋白热化,市场对整机制造商产品交付和运维服务质量的要求不断提高。针对批量

库存控制器个别I/O硬件故障影响项目生产维护的问题,介绍一种基于反向传播(BP)神经网络算法的低成本、适用
于生产运维现场使用的控制器I/O硬件故障的自诊断方法。通过输入随机顺序故障样本数据集对神经网络模型进
行训练,利用待测 I/O硬件和继电器构造的自诊断电路采集信号,将其处理为归一化数据的特征矩阵,输入自诊断
模型进行故障识别和分类,最终输出参考结果。试验初步验证了该方法在不依赖专用设备的情况下,可有效识别
I/O硬件信道故障,具有实际应用价值。

关键词: BP神经网络, 故障诊断, 控制器, I/O硬件, 特征矩阵, 风电控制系统, 自诊断

Abstract: With the fierce competition in wind power industry,market's requirements for the product delivery,operation and maintenance service provided by machine manufacturers are increasingly demanding.A low-cost fault self-detecting method suitable for controller Input and Output(I/O)hardware was proposed based on BP neural network algorithm,in order to mitigate the negative impacts of certain defective I/O hardware of controllers′batch inventory on the operation and maintenance service of the project.The neural network model was trained with the random sequence of fault sample data set. The self-detecting circuit constructed with I/O hardware and relays is designed for collecting sampling signals which are processed into a characteristic matrix of normalized data.Putting the data into the self-detecting model,reference results will be output after fault identification and classification. The experiment preliminarily verified that the method can effectively identify the I/O hardware fault without specified equipment,which is of practical application values.

Key words: BP neural network, fault detecting, controller, I/O hardware, characteristic matrix, wind turbine controller, self