College of Information Engineering and college of Qianhu, Nanchang University, Nanchang 330031, China.
College of Information Engineering, Nanchang University, Nanchang 330031, China.
Sensors (Basel). 2019 Feb 18;19(4):845. doi: 10.3390/s19040845.
Prognostics and Health Management (PHM) is an emerging technique which can improve the availability and efficiency of equipment. A series of related optimization of the PHM system has been achieved due to the growing need for lowering the cost of maintenance. The PHM system highly relies on data collected from its components. Based on the theory of machine learning, this paper proposes a bio-inspired PHM model based on a dissolved gas-in-oil dataset (DGA) to diagnose faults of transformes in power grids. Specifically, this model applies Bat algorithm (BA), a metaheuristic population-based algorithm, to optimize the structure of the Back-propagation neural network (BPNN). Furthermore, this paper proposes a modified Bat algorithm (MBA); here the chaos strategy is utilized to improve the random initialization process of BA in order to avoid falling into local optima. To prove that the proposed PHM model has better fault diagnostic performance than others, fitness and mean squared error (MSE) of Bat-BPNN are set as reference amounts to compare with other power grid PHM approaches including BPNN, Particle swarm optimization (PSO)-BPNN, as well as Genetic algorithm (GA)-BPNN. The experimental results show that the BA-BPNN model has increased the fault diagnosis accuracy from 77.14% to 97.14%, which is higher than other power transformer PHM models.
预测与健康管理(PHM)是一种新兴技术,可提高设备的可用性和效率。由于维护成本降低的需求不断增长,PHM 系统已经实现了一系列相关的优化。PHM 系统高度依赖于从其组件收集的数据。基于机器学习理论,本文提出了一种基于溶解气体在油中的数据集(DGA)的仿生 PHM 模型,用于诊断电网中变压器的故障。具体来说,该模型应用了蝙蝠算法(BA),一种基于群体的元启发式算法,来优化反向传播神经网络(BPNN)的结构。此外,本文还提出了一种改进的蝙蝠算法(MBA);这里利用混沌策略改进 BA 的随机初始化过程,以避免陷入局部最优。为了证明所提出的 PHM 模型比其他模型具有更好的故障诊断性能,将蝙蝠-反向传播神经网络(Bat-BPNN)的适应度和均方误差(MSE)设置为参考量,与其他电网 PHM 方法进行比较,包括反向传播神经网络(BPNN)、粒子群优化(PSO)-反向传播神经网络(BPNN)以及遗传算法(GA)-反向传播神经网络(BPNN)。实验结果表明,BA-BPNN 模型的故障诊断准确率从 77.14%提高到 97.14%,高于其他电力变压器 PHM 模型。