Liu Xiaobo, Teng Wei, Liu Yibing
Key Laboratory of Power Station Energy Transfer Conversion and System, North China Electric Power University, Ministry of Education, Beijing 102206, China.
Hebei Key Laboratory of Electric Machinery Health Maintenance & Failure Prevention, North China Electric Power University, Baoding 071003, China.
Sensors (Basel). 2022 Apr 25;22(9):3288. doi: 10.3390/s22093288.
The technology of fault diagnosis is helpful to improve the reliability of wind turbines, and further reduce the operation and maintenance cost at wind farms. However, in reality, wind turbines are not allowed to operate with faults, so few fault samples could be obtained. With a small amount of training data, traditional fault diagnosis models that need huge samples under a deep learning framework are difficult to maintain with high accuracy and effectiveness. Few-shot learning can effectively solve the problem of overfitting caused by fewer fault samples in model training. In view of model-agnostic meta-learning (MAML), this paper proposes a model for few-shot fault diagnosis of the wind turbines drivetrain, which is named model-agnostic meta-baseline (MAMB). The training data is input to the base classification model for pre-training, then, some data is randomly selected from the training set to form multiple meta-learning tasks that are utilized to train the MAML to finally fine-tune the later layers of the model at a smaller learning rate. The proposed model was analyzed by the small samples of the bearing data from Case Western Reserve University (CWRU) data, the generator bearings, and gearboxes vibration data in wind turbines under randomly changing operating conditions. The results verified that the proposed method was superior in one-shot, five-shot, and ten-shot tasks of wind turbines.
故障诊断技术有助于提高风力发电机组的可靠性,并进一步降低风电场的运行和维护成本。然而,在实际中,风力发电机组不允许带故障运行,因此能够获取的故障样本很少。在少量训练数据的情况下,深度学习框架下需要大量样本的传统故障诊断模型难以保持高精度和有效性。少样本学习能够有效解决模型训练中故障样本较少导致的过拟合问题。针对模型无关元学习(MAML),本文提出了一种用于风力发电机组传动系统少样本故障诊断的模型,命名为模型无关元基线(MAMB)。将训练数据输入到基础分类模型进行预训练,然后从训练集中随机选取一些数据形成多个元学习任务,用于训练MAML,最后以较小的学习率对模型的后续层进行微调。利用美国凯斯西储大学(CWRU)数据中的轴承数据小样本、风力发电机组在随机变化运行工况下的发电机轴承和齿轮箱振动数据,对所提模型进行了分析。结果验证了所提方法在风力发电机组的单样本、五样本和十样本任务中具有优越性。