首页> 外文期刊>Tribology letters >A New Intelligent Fusion Method of Multi-Dimensional Sensors and Its Application to Tribo-System Fault Diagnosis of Marine Diesel Engines
【24h】

A New Intelligent Fusion Method of Multi-Dimensional Sensors and Its Application to Tribo-System Fault Diagnosis of Marine Diesel Engines

机译:多维传感器智能融合新方法及其在船用柴油机摩擦系统故障诊断中的应用

获取原文
获取原文并翻译 | 示例
       

摘要

Marine diesel engines, a critical component to provide power for entire ships, have been received and still need considerable attentions to ensure their safety operation. Vibration and wear debris analysis are currently the most popular techniques for diesel engine condition monitoring and fault diagnosis. However, they are usually used independently in practice, and limited work has been done to address the integration of data collected using the two techniques. To enhance early fault detections, a new fault diagnosis technique for the marine diesel engine has been proposed by the information fusion of the vibration and wear particle analyses in this paper. A new independent component analysis with reference algorithm (ICA-R) using the empirical mode decomposition based reference extraction scheme was adopted to identify the characteristic source signals of the engine vibration collected from multi-channel sensors. The advantage of this approach performed at a data fusion level is that the ICA-R can extract only the relevant source directly related to the engine fault features in one separation cycle via incorporating prior knowledge. The statistical values of the recovered source signals were then calculated. The above vibration features, along with the wear particle characteristics, were used as the feature vectors for the engine fault detection. Lastly, the improved simplified fuzzy ARTMAP (SFAM) was applied to integrate the distinctive features extracted from the two techniques at a decision level to detect faults in a supervised learning manner. Particularly, the immune particle swarm optimization was used to tune the vigilance parameter of the SFAM to improve the identification performance. The experimental tests were implemented on a diesel engine set-up to evaluate the effectiveness of the proposed diagnosis approach. The diagnosis results have shown that distinguished fault features can be extracted and the fault identification accuracy is satisfactory. Moreover, the fault detection rate of the integration approach has been enhanced by 16.0% or better when compared with using the two techniques separately.
机译:船用柴油机是为整艘船提供动力的关键部件,已经得到了接受,并且仍需要相当多的注意以确保其安全运行。振动和磨损碎片分析是当前柴油机状态监测和故障诊断中最流行的技术。但是,它们通常在实践中独立使用,并且为解决使用这两种技术收集的数据的集成所做的有限工作。为了加强早期故障检测,本文通过对振动和磨损颗粒分析的信息融合,提出了一种新的船用柴油机故障诊断技术。通过基于经验模式分解的参考提取方案,采用参考算法(ICA-R)进行了新的独立成分分析,以识别从多通道传感器收集的发动机振动的特征源信号。在数据融合级别执行此方法的优点是,ICA-R通过合并现有知识,只能在一个分离循环中仅提取与发动机故障特征直接相关的相关源。然后计算恢复的源信号的统计值。上述振动特征以及磨损颗粒特征被用作发动机故障检测的特征向量。最后,将改进的简化模糊ARTMAP(SFAM)应用于在决策级别上整合从两种技术中提取的独特特征,以监督学习的方式检测故障。特别地,使用免疫粒子群优化来调整SFAM的警戒参数,以提高识别性能。实验测试在柴油机上进行,以评估所提出诊断方法的有效性。诊断结果表明,可以提取出明显的故障特征,故障识别精度令人满意。此外,与分别使用两种技术相比,集成方法的故障检测率提高了16.0%或更高。

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