Accurate probabilistic prediction of wind power is crucial for maintaining grid stability and facilitating the efficient integration of renewable energy sources. Gaussian process (GP) models offer a principled framework for quantifying uncertainty; however, conventional approaches typically rely on stationary kernels and homoscedastic noise assumptions, which are inadequate for modelling the inherently non-stationary and heteroscedastic nature of wind speed and power output. We propose a heteroscedastic non-stationary GP framework based on the generalised spectral mixture kernel, enabling the model to capture input-dependent correlations as well as input-dependent variability in wind speed-power data. We evaluate the proposed model on 10-minute supervisory control and data acquisition (SCADA) measurements and compare it against GP variants with stationary and non-stationary kernels, as well as commonly used non-GP probabilistic baselines. The results highlight the necessity of modelling both non-stationarity and heteroscedasticity in wind power prediction and demonstrate the practical value of flexible non-stationary GP models in operational SCADA settings.
翻译:风电功率的精确概率预测对于维持电网稳定和促进可再生能源高效并网至关重要。高斯过程(GP)模型为量化不确定性提供了一个理论框架;然而,传统方法通常依赖于平稳核函数和同方差噪声假设,这些假设不足以刻画风速与功率输出固有的非平稳和异方差特性。我们提出了一种基于广义谱混合核的异方差非平稳高斯过程框架,使模型能够捕捉风速-功率数据中与输入相关的相关性以及输入相关的变异性。我们在10分钟级监控与数据采集(SCADA)测量数据上评估了所提出的模型,并将其与采用平稳和非平稳核函数的GP变体以及常用的非GP概率基线模型进行了比较。结果突显了在风电功率预测中同时建模非平稳性和异方差性的必要性,并验证了灵活的非平稳GP模型在SCADA实际运行环境中的实用价值。