College of Information Engineering, Nanchang University, Nanchang 330031, China.
College of Qianhu, Nanchang University, Nanchang 330031, China.
Sensors (Basel). 2018 Dec 14;18(12):4430. doi: 10.3390/s18124430.
An emerging prognostic and health management (PHM) technology has recently attracted a great deal of attention from academies, industries, and governments. The need for higher equipment availability and lower maintenance cost is driving the development and integration of prognostic and health management systems. PHM models depend on the smart sensors and data generated from sensors. This paper proposed a machine learning-based methods for developing PHM models from sensor data to perform fault diagnostic for transformer systems in a smart grid. In particular, we apply the Cuckoo Search (CS) algorithm to optimize the Back-propagation (BP) neural network in order to build high performance fault diagnostics models. The models were developed using sensor data called dissolved gas data in oil of the power transformer. We validated the models using real sensor data collected from power transformers in China. The results demonstrate that the developed meta heuristic algorithm for optimizing the parameters of the neural network is effective and useful; and machine learning-based models significantly improved the performance and accuracy of fault diagnosis/detection for power transformer PHM.
一种新兴的预测性维护和健康管理(PHM)技术最近引起了学术界、工业界和政府的极大关注。提高设备可用性和降低维护成本的需求推动了预测性维护和健康管理系统的发展和集成。PHM 模型依赖于智能传感器和传感器生成的数据。本文提出了一种基于机器学习的方法,从传感器数据中开发 PHM 模型,以实现智能电网中变压器系统的故障诊断。特别是,我们应用了布谷鸟搜索(CS)算法来优化反向传播(BP)神经网络,以构建高性能的故障诊断模型。该模型是使用被称为电力变压器油中溶解气体的数据的传感器数据开发的。我们使用从中国电力变压器收集的实际传感器数据验证了这些模型。结果表明,所开发的用于优化神经网络参数的启发式算法是有效和有用的;基于机器学习的模型显著提高了电力变压器 PHM 的故障诊断/检测性能和准确性。