Wind Turbine Power Curve Modelling using Robust Regression Techniques

Neel Pandey
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Abstract

The need of accurate wind turbine power curve modelling is essential as it provides great insight on the performance of the power system and ideal estimate of generation of power by turbines. However, presence of non linear relationship between output power of turbine and its primary and secondary parameters imposes restrictions to predict exact power generated. In this work wind power curve modelling is accomplished using different robust linear techniques that reduces the effects of outliers and provides precise results in terms of power generation. Mean Absolute Error(MAE), Root Mean Square Error(RMSE), and R^2 score were used as a measure of approximation method accuracy. Since above metrics doesn't provide any information about fitted model insights like overfiiting and underfitting, so bias and variance are considered as the two important aspects that clearly assesses model complexity. By decomposing the MSE into bias and variance a clear insight about model structure is obtained with a potential way with regard to which error component is likely to contribute more degradation of model performance.
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基于鲁棒回归技术的风力发电功率曲线建模
准确的风力发电机功率曲线建模是必不可少的,因为它提供了对电力系统性能的深入了解和对涡轮机发电的理想估计。然而,水轮机的输出功率与一次、二次参数之间存在非线性关系,这对准确预测发电功率造成了限制。在这项工作中,风电曲线建模使用了不同的鲁棒线性技术,减少了异常值的影响,并提供了发电方面的精确结果。使用平均绝对误差(MAE)、均方根误差(RMSE)和R^2评分来衡量近似方法的准确性。由于上述指标没有提供任何关于拟合模型洞察力的信息,如过拟合和欠拟合,因此偏差和方差被认为是清楚评估模型复杂性的两个重要方面。通过将MSE分解为偏差和方差,可以通过一种潜在的方法清楚地了解模型结构,从而了解哪些误差成分可能会导致模型性能的更大退化。
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