Garramiola Fernando, Poza Javier, Madina Patxi, Del Olmo Jon, Ugalde Gaizka
Faculty of Engineering, Mondragon Unibertsitatea, 20500 Arrasate-Mondragón, Spain.
Sensors (Basel). 2020 Feb 11;20(4):962. doi: 10.3390/s20040962.
Due to the importance of sensors in railway traction drives availability, sensor fault diagnosis has become a key point in order to move from preventive maintenance to condition-based maintenance. Most research works are limited to sensor fault detection and isolation, but only a few of them analyze the types of sensor faults, such as offset or gain, with the aim of reconfiguring the sensor in order to implement a fault tolerant system. This article is based on a fusion of model-based and data-driven techniques. First, an observer-based approach, using a Sliding Mode observer, is utilized for sensor fault reconstruction in real time. Then, once the fault is detected, a time window of sensor measurements and sensor fault reconstruction is sent to the remote maintenance center for fault evaluation. Finally, an offline processing is carried out to discriminate between gain and offset sensor faults, in order to get a maintenance decision-making to reconfigure the sensor during the next train stop. Fault classification is done by means of histograms and statistics. The technique here proposed is applied to the DC-link voltage sensor in a railway traction drive and is validated in a hardware-in-the-loop platform.
由于传感器在铁路牵引驱动可用性方面的重要性,传感器故障诊断已成为从预防性维护向基于状态的维护转变的关键所在。大多数研究工作仅限于传感器故障检测与隔离,但其中只有少数针对诸如偏移或增益等传感器故障类型进行分析,目的是重新配置传感器以实现容错系统。本文基于基于模型和数据驱动技术的融合。首先,采用基于滑模观测器的基于观测器的方法进行传感器故障实时重构。然后,一旦检测到故障,将传感器测量值和传感器故障重构的时间窗口发送到远程维护中心进行故障评估。最后,进行离线处理以区分增益和偏移传感器故障,以便做出维护决策,在下一次列车停车期间重新配置传感器。故障分类通过直方图和统计数据完成。本文提出的技术应用于铁路牵引驱动中的直流母线电压传感器,并在硬件在环平台上进行了验证。