Li Tao, Wang Enyu, Yang Jun
College of Railway Transportation, Hunan University of Technology, Zhuzhou 412007, China.
College of Mechanical and Vehicle Engineering, Hunan University, Changsha 410082, China.
Sensors (Basel). 2025 Mar 18;25(6):1884. doi: 10.3390/s25061884.
Open-circuit (OC) faults in power converters are common issues in motor drive systems, significantly affecting the safe and stable operation of the system. Conventional models can accurately diagnose faults under a single operating condition. However, when conditions change, these models may fail to recognize new fault features, resulting in a decrease in diagnosis accuracy. To address this challenge, this paper proposes a lifelong learning-enabled fractional order-convolutional encoder model for open-circuit fault diagnosis of power converters under multi-conditions. Firstly, the model automatically extracts and identifies fault signal features using the convolutional module and the encoder module, respectively. Subsequently, the model's iterative computational process is optimized by learning historical gradient information through fractional order, and enhancing the model's ability to capture the long-term dependencies inherent in fault signals. Finally, a multilevel lifelong learning framework has been established to enable the model to continuously learn the fault features of power converter under multi-conditions, thereby avoiding catastrophic forgetting that can occur when the model learns different tasks. The proposed model effectively addresses the challenge of low fault diagnosis accuracy that occurs when the operating conditions of the power converter change, achieving a diagnosis accuracy of 96.89% across 85 fault categories under multi-conditions.
功率变换器中的开路(OC)故障是电机驱动系统中的常见问题,严重影响系统的安全稳定运行。传统模型能够在单一工况下准确诊断故障。然而,当工况发生变化时,这些模型可能无法识别新的故障特征,导致诊断准确率下降。为应对这一挑战,本文提出一种基于终身学习的分数阶卷积编码器模型,用于多工况下功率变换器的开路故障诊断。首先,该模型分别利用卷积模块和编码器模块自动提取并识别故障信号特征。随后,通过分数阶学习历史梯度信息优化模型的迭代计算过程,增强模型捕捉故障信号中固有长期依赖性的能力。最后,建立了一个多级终身学习框架,使模型能够持续学习多工况下功率变换器的故障特征,从而避免模型学习不同任务时可能出现的灾难性遗忘。所提模型有效解决了功率变换器工况变化时故障诊断准确率低的问题,在多工况下85种故障类型中实现了96.89%的诊断准确率。