基于回归的电力电子电容器神经网络鲁棒性与泛化性研究

Christian Vorobev, Daniel Vahle, Volker Staudt
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引用次数: 0

摘要

模块化多电平转换器(MMC)在各种电气工程应用中的日益普及,需要有效的策略来确保电容器等关键部件的鲁棒性和可靠性。现有的MMC子模块电容器的数据驱动电容寿命估计方法,避免了控制修改、额外电路或专家知识,主要依赖于机器学习,理论上适用,但实际需要大量的训练数据,缺乏实际应用所需的灵活性,难以生成大量的训练数据。为了尽可能减少所需标签的数量,提出了一种基于回归的神经网络方法,该方法在连续范围内生成电容退化指标的估计。与类似的基于神经网络的方法相比,该模型使用只有两个不同标签的数据进行训练——工厂条件和故障条件,大大简化了设置,同时避免了使用专家知识或参数化。该外推方案通过将回归与附加的统计信号处理相结合来估计训练数据中不存在的连续电容值。使用MMC测试台的测量数据验证了这种方法的泛化性能,以预测训练数据中不存在的大范围直流链路电容值。结果表明,在最少数量的训练数据下,扩展了泛化能力,这可以作为未来预防性维护发展的潜在基础,并提高大型转炉的操作效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Robustness and generalisation study of a new regression-based neural network method for capacitors in power electronics
The growing prevalence of modular multilevel converters (MMC) in various electrical engineering applications necessitates effective strategies for ensuring the robustness and reliability of key components such as capacitors. Existing data-driven capacitor lifetime estimation methods for MMC sub-module capacitors that avoid control modification, additional circuits or expert knowledge predominantly rely on machine learning, which is well applicable in theory, but practically require a significant amount of training data, which results in a lack of flexibility necessary for practical applications, where generation of large amounts of training data is difficult to attain. In order to reduce the amount of required labels to the lowest possible, a regression-based neural network approach is proposed that generates estimations for a capacitance degradation indicator on a continuous range. The model is, in contrast to similar neural network-based methods, trained using data with only two distinct labels - a factory condition and a faulty condition, greatly simplifying set-up while avoiding use of expert-knowledge or parameterisation. The novel extrapolation scheme estimates continuous capacitance values not present in the training data by combining regression with additional statistical signal processing. This generalisation performance of this approach is validated using measurement data of an MMC test bench to predict a large range of DC-link capacitance values which were not present in training data. The results show an extended generalising capability at minimal amounts of training data, which can serve as a potential basis for future developments in preventive maintenance and increase operational effectiveness in large-scale converters.
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