论文标题
使用深度学习方法具有复杂地形的区域中风力发电的概率预测:北极案例
Probabilistic forecasts of wind power generation in regions with complex topography using deep learning methods: An Arctic case
论文作者
论文摘要
能源市场依赖于需要保持动态平衡的需求和发电的预测能力。如今,当涉及可再生能源的产生时,这种决定越来越多地在自由化的电力市场环境中做出,在这种环境中,必须通过合同和拍卖机制提供未来的发电,因此基于预测。可再生能源的高度间歇性发电的份额增加,增加了预期未来发电的不确定性。点预测不能解释这种不确定性。为了解释这些不确定性,可以进行概率预测。这项工作首先提出了有关概率预测的重要概念和方法。然后,深度学习模型用于从位于挪威北部的一家风力发电厂对日前发电的概率预测。在不同的深度学习模型和协变量集中,比较了预测间隔的质量的性能。研究结果表明,当对测得的天气和数值天气预测(NWP)的历史数据作为外源性变量中,预测的准确性会提高。这允许模型使用历史测量数据自动纠正NWP中的系统偏见。仅使用NWP,或仅测量天气作为外源变量,获得了较差的预测性能。
The energy market relies on forecasting capabilities of both demand and power generation that need to be kept in dynamic balance. Today, when it comes to renewable energy generation, such decisions are increasingly made in a liberalized electricity market environment, where future power generation must be offered through contracts and auction mechanisms, hence based on forecasts. The increased share of highly intermittent power generation from renewable energy sources increases the uncertainty about the expected future power generation. Point forecast does not account for such uncertainties. To account for these uncertainties, it is possible to make probabilistic forecasts. This work first presents important concepts and approaches concerning probabilistic forecasts with deep learning. Then, deep learning models are used to make probabilistic forecasts of day-ahead power generation from a wind power plant located in Northern Norway. The performance in terms of obtained quality of the prediction intervals is compared for different deep learning models and sets of covariates. The findings show that the accuracy of the predictions improves when historical data on measured weather and numerical weather predictions (NWPs) were included as exogenous variables. This allows the model to auto-correct systematic biases in the NWPs using the historical measurement data. Using only NWPs, or only measured weather as exogenous variables, worse prediction performances were obtained.