论文标题
贝叶斯神经网络,用于使用海洋数据对风向和速度的概率预测
Bayesian neural networks for the probabilistic forecasting of wind direction and speed using ocean data
论文作者
论文摘要
神经网络越来越多地在各种环境中用于预测风向和速度,这是估计风电场潜在功率输出的两个最重要的因素。但是,这些预测可以说是有限的,因为经典神经网络缺乏表达不确定性的能力。相反,我们考虑使用贝叶斯神经网络(BNN)的使用,其中权重,偏见和输出是分布而不是确定性点值。这允许评估认知和核心不确定性,并导致风速和功率的良好校准不确定性预测。在这里,我们考虑BNN在可再生能源应用中的海上风资源预测问题上的应用。对于我们的数据集,我们使用北海Fino1研究平台上记录的观察结果,我们的预测因子是海洋数据,例如水温和电流方向。 BNN预测的概率预测为结果增加了可观的价值,尤其是向用户告知了网络对样本外数据标记进行预测的能力。我们使用BNN的这种特性得出结论,我们网络对风速和方向预测的准确性和不确定性不受附近Alpha Ventus风电场的构建影响。因此,在此地点,在构建风电场后,可以使用接受过农场海洋数据培训的网络从海洋数据中准确预测风场信息。
Neural networks are increasingly being used in a variety of settings to predict wind direction and speed, two of the most important factors for estimating the potential power output of a wind farm. However, these predictions are arguably of limited value because classical neural networks lack the ability to express uncertainty. Here we instead consider the use of Bayesian Neural Networks (BNNs), for which the weights, biases and outputs are distributions rather than deterministic point values. This allows for the evaluation of both epistemic and aleatoric uncertainty and leads to well-calibrated uncertainty predictions of both wind speed and power. Here we consider the application of BNNs to the problem of offshore wind resource prediction for renewable energy applications. For our dataset, we use observations recorded at the FINO1 research platform in the North Sea and our predictors are ocean data such as water temperature and current direction. The probabilistic forecast predicted by the BNN adds considerable value to the results and, in particular, informs the user of the network's ability to make predictions of out-of-sample datapoints. We use this property of BNNs to conclude that the accuracy and uncertainty of the wind speed and direction predictions made by our network are unaffected by the construction of the nearby Alpha Ventus wind farm. Hence, at this site, networks trained on pre-farm ocean data can be used to accurately predict wind field information from ocean data after the wind farm has been constructed.