基于BRB的轨道车辆车厢LED照明亮度传感器故障预测

Xiaojing Yin, Guangxu Shi, Bangcheng Zhang, Shiyuan Lv, Yubo Shao
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引用次数: 1

摘要

为保证轨道车辆车厢LED照明系统的正常工作和亮度调节的准确性,对亮度传感器的故障进行预测是非常重要的。本文在分析轨道车辆车厢LED照明系统亮度传感器失效机理的基础上,提出了一种基于BRB (belief rule base)的故障预测模型,以实现亮度的精确调节和可靠性预测。基于BRB的故障预测模型可以充分利用系统的专家先验知识,融合系统特征量,实现亮度传感器的准确故障预测。在此过程中,通过迭代估计算法对模型参数进行更新,以补偿专家知识的不准确性。最后,为了验证所提模型的有效性和准确性,将所提模型应用于轨道车辆车厢LED照明系统的亮度传感器模块进行了实例研究,结果表明,所提方法能够准确地利用定性知识和定量信息进行故障预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fault Prediction of Brightness Sensor based on BRB in Rail Vehicle Compartment LED Lighting System
To guarantee the normal workflow and accurate brightness adjustment, it is important to predict fault of brightness sensor in rail vehicle compartment LED lighting system. In this paper, a BRB (belief rule base) based fault prediction model is proposed to accurate brightness adjustment and reliability based on the analysis of the failure mechanism of the brightness sensor in the rail vehicle compartment LED lighting system. The fault prediction model based on BRB can make full use of the system's expert prior knowledge, which can fuse the system feature quantity to achieve accurate fault prediction of the brightness sensor. In this process, the parameters of the model are updated by iterative estimation algorithm to compensate for the inaccuracy of expert knowledge. Finally, in order to verify the validity and accuracy of the proposed model, a case is studied by using the proposed prediction model for brightness sensor module in the rail vehicle compartment LED lighting system, which shows that the method can accurately predict the faults with qualitative knowledge and quantitative information.
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