Each year a growing number of wind farms are being added to power grids to generate electricity. The power curve of a wind turbine, which exhibits the relationship between generated power and wind speed, plays a major role in assessing the performance of a wind farm. Neural networks have been used for power curve estimation. However, they do not produce a confidence measure for their output, unless computationally prohibitive Bayesian methods are used. In this paper, a probabilistic neural network with Monte Carlo dropout is considered to quantify the model (epistemic) uncertainty of the power curve estimation. This approach offers a minimal increase in computational complexity over deterministic approaches. Furthermore, by incorporating a probabilistic loss function, the noise or aleatoric uncertainty in the data is estimated. The developed network captures both model and noise uncertainty which is found to be useful tools in assessing performance. Also, the developed network is compared with existing ones across a public domain dataset showing superior performance in terms of prediction accuracy.
翻译:每年有越来越多的风力农场被添加到电网中,以产生电力。风力涡轮机的功率曲线显示发电和风速之间的关系,在评估风力农场的性能方面起着重要作用。神经网络被用于进行电动曲线估计。但是,除非采用计算上令人望而却步的方法,否则它们不会对其产出产生信心度量。本文认为蒙特卡洛辍学的概率神经网络可以量化电动曲线估计的模型(范围性)不确定性。这一方法比确定性方法的计算复杂性略有增加。此外,通过纳入概率性损失功能,对数据中的噪音或偏移性不确定性进行了估计。发达网络捕捉到模型和噪音不确定性,这些模型和噪音不确定性被认为是评估性能的有用工具。此外,发达网络与公共域数据集的现有网络进行了比较,显示在预测准确性方面表现优异。