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Capacitance estimation algorithm based on DC-link voltage harmonics using artificial neural network in three-phase motor drive systems

机译:基于人工神经网络的直流母线电压谐波电容估计算法

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Reliability of dc-link capacitors in modern design of power electronic converters is an important aspect that needs to be considered. The requirement of applying condition monitoring for health status estimation in many reliability-critical applications have been a focused demand. The existing capacitor condition monitoring methodologies are suffering from shortcomings such as, low estimation accuracy, extra hardware, and increased cost, and thereby, they are rarely adopted by industry. Therefore, development of new methods that are based on advanced software algorithms and data processing techniques requiring no extra hardware will be more attractive to industry. In this paper, a condition monitoring methodology is proposed and applied on the dc-link capacitor in a three phase Front-End diode bridge motor drive. The proposed condition monitoring methodology estimates the capacitance value of the dc-link capacitor based on Artificial Neural Network (ANN) algorithm. Two ANNs (ANN1 and ANN2) are proposed, trained and evaluated based on time-domain and frequency-domain parameters. Experiments are conducted to validate the proposed methodology and the effectiveness of the proposed method is examined through an error analysis.
机译:功率电子转换器的现代设计中直流链路电容器的可靠性是需要考虑的重要方面。在许多对可靠性要求严格的应用中,将状态监视应用于健康状态估计的需求已成为焦点。现有的电容器状态监测方法正遭受诸如估计精度低,额外的硬件以及成本增加之类的缺点的困扰,因此,业界很少采用它们。因此,基于高级软件算法和不需要额外硬件的数据处理技术的新方法的开发将对工业更具吸引力。本文提出了一种状态监测方法,并将其应用于三相前端二极管桥式电动机驱动器中的直流环节电容器。所提出的状态监测方法基于人工神经网络(ANN)算法估计直流链路电容器的电容值。根据时域和频域参数,提出,训练和评估了两个人工神经网络(ANN1和ANN2)。进行实验以验证所提出的方法,并通过误差分析来检验所提出方法的有效性。

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