Martínez-Pérez Jose R, Carvajal Miguel A, Santaella Juan J, López-Ruiz Nuria, Escobedo Pablo, Martínez-Olmos Antonio
R&D Department, Valeo, 23600 Martos, Spain.
Department of Electronics and Computer Technology, Escuela Técnica Superior de Ingenierías Informática y de Telecomunicación (ETSIIT), University of Granada, 18014 Granada, Spain.
Sensors (Basel). 2024 Apr 27;24(9):2802. doi: 10.3390/s24092802.
This paper addresses the issue of LED short-circuit fault detection in signaling and lighting systems in the automotive industry. The conventional diagnostic method commonly implemented in newer vehicles relies on measuring the voltage drop across different LED branches and comparing it with threshold values indicating faults caused by open circuits or LED short circuits. With this algorithm, detecting cases of a few LEDs short-circuited within a branch, particularly a single malfunctioning LED, is particularly challenging. In this work, two easily implementable algorithms are proposed to address this issue within the vehicle's control unit. One is based on a mathematical prediction model, while the other utilizes a neural network. The results obtained offer a 100% LED short-circuit fault detection rate in the majority of analyzed cases, representing a significant improvement over the conventional method, even in scenarios involving a single malfunctioning LED within a branch. Additionally, the neural network-based model can accurately predict the number of failed LEDs.
本文探讨了汽车行业信号和照明系统中发光二极管(LED)短路故障检测的问题。较新车辆中普遍采用的传统诊断方法是测量不同LED支路两端的电压降,并将其与指示开路或LED短路所导致故障的阈值进行比较。采用这种算法时,检测支路内有几个LED短路的情况,尤其是单个故障LED,极具挑战性。在这项工作中,提出了两种易于实现的算法,以在车辆控制单元内解决此问题。一种基于数学预测模型,另一种则利用神经网络。在大多数分析案例中,所获得的结果实现了100%的LED短路故障检测率,与传统方法相比有显著改进,即使在支路内存在单个故障LED的情况下也是如此。此外,基于神经网络的模型能够准确预测故障LED的数量。