Pоbоlјšаnjе prеdikciје prоizvоdnjе vеtrоеlеktrаnа u Јužnоm Bаnаtu kоmbinоvаnjеm pојеdinаčnih prоgnоzа pоmоću mоdеlа vеštаčkе intеligеnciје

Мilicа Kоprivicа, Željko Đurišić
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Abstract

The prediction of day-ahead wind farm production is crucial for optimal unit engagement and minimizing power balancing costs in the power system. Several wind farms which use different models to predict the production have been built in the South Banat region. The basic idea in this paper is to combine the production predictions of each of the wind farms with the production predictions of other wind farms in the region using the artificial intelligence model. This approach has a physical justification given that all wind farms are located in a region with the same wind climatology. Since the total error in estimating production for the day ahead is of interest for planning balancing capacities, this paper analyses the possibility of minimizing cumulative error through the application of artificial intelligence algorithms. The algorithms combine forecasts of individual wind farm models and thus make corrections in estimating the total production of wind farms in this region. The training of the neural network model was performed on the basis of forecasts of individual wind farms for the day ahead and performance. One-year sets of forecasted and realized wind farm productions that were in operation in 2020 were used to train the networks. The developed model of prediction of cumulative wind farm production in South Banat enables the transmission system operator to perform subsequent processing of individual predictions of wind farm production in order to reduce the total error in the assessment of cumulative production.
风力发电场日前产量的预测对于优化机组配置和降低电力系统的电力平衡成本至关重要。在南巴纳特地区已经建立了几个使用不同模型来预测产量的风电场。本文的基本思想是利用人工智能模型将每个风电场的产量预测与该地区其他风电场的产量预测结合起来。考虑到所有风电场都位于具有相同风气候学的地区,这种方法具有物理上的合理性。由于估计前一天产量的总误差对规划平衡能力很重要,因此本文分析了通过应用人工智能算法最小化累积误差的可能性。该算法结合了单个风电场模型的预测,从而在估计该地区风电场的总产量时进行修正。神经网络模型的训练是基于对单个风电场未来一天的预测和性能进行的。使用预测和实现的2020年运行的风电场产量的一年集来训练网络。开发的南巴纳特风电场累积产量预测模型使输电系统运营商能够对风电场产量的个别预测进行后续处理,以减少累积产量评估中的总误差。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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