基于机器学习方法的风力机参数标定研究

R. McCubbin, Kun Yang, R. Fan
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引用次数: 0

摘要

风力发电机的惯性和阻尼系数决定了风力发电机在瞬态下的反应。不幸的是,由于各种原因,这些系数的值并不总是准确地知道。本研究使用机器学习技术来确定这些系数。通过对惯性系数和阻尼系数的扰动,模拟产生了数千个瞬态事件。利用暂态事件的电测量值(实功率和无功功率)来训练多层感知器(MLP)网络,学习这些时间序列数据与相应系数之间的映射关系。采用基于支持向量机(SVM)的回归方法预测相同输入数据下的系数值,并与MLP方法进行性能比较。虽然两种方法都取得了可接受的结果,但MLP方法的性能明显优于SVM方法。通过灵敏度分析,评估测量噪声和训练数据的大小对基于机器学习的风力机参数校准性能的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Study of Wind Turbine Parameter Calibration Using Machine Learning Approaches
The inertia and damping coefficients of a wind turbine define how the turbine reacts in a transient state. Unfortunately, the values of these coefficients are not always accurately known due to various reasons. This research uses machine learning techniques to determine these coefficients. By perturbing the values of inertia and damping coefficients, thousands of transient events were generated through simulations. The electrical measurements (real and reactive power) of the transient events were used to train a multilayer perceptron (MLP) network to learn the mapping between these time-series data with the corresponding coefficients. A support vector machine (SVM) based regression method was also used to predict the coefficient values using the same input data, and its performance was compared with the MLP approach. While both methods achieved acceptable results, the MLP method outperformed the SVM method by a large margin. A sensitivity analysis was also conducted to evaluate the impact of measurement noises and the size of the training data on the performance of machine learning based wind turbine parameter calibration.
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