CONCEPT OF AN ENSEMBLE FORECASTING SYSTEM FOR OPTIMIZATION PROBLEMS OF CONTROL OF SOLAR MICROGRID

Dmytro Matushkin, Alla Bosak
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Abstract

Accurate probabilistic forecasts of renewable generation are the driving force for optimizing the operation and management of MicroGrid systems. Combining forecasts of different individual models can improve forecast accuracy, but unlike combining point forecasts, for which simple weighted averaging is often a plausible solution, combining probabilistic forecasts is a much more complex task. Today, ensembles of forecasting models are one of the promising directions for problem solving, where forecasting accuracy is more important than the ability to interpret the model. The main idea of ensembles is the training of several basic models and the aggregation of the results of their work. Empirical studies show that combinations of forecasts, on average, are more likely to produce better forecasts than methods that are based on selecting only one forecasting model. When building ensembles, the issue of ensuring diversity of models and effective training of model members of the ensemble becomes especially relevant. The article is devoted to solving the issues of building an ensemble model for forecasting photovoltaic (PV) power, which combines the results of several basic probabilistic models. Using the ensemble method proposed by the authors can improve forecasting accuracy and reduce the time required for training and evaluation of ensemble member models. Directions and prospects of further research are formulated.
太阳能微网控制优化问题的集成预测系统概念
准确的可再生能源发电概率预测是优化微电网系统运行和管理的动力。结合不同个体模型的预测可以提高预测的准确性,但与结合点预测不同的是,结合概率预测是一项复杂得多的任务,对点预测来说,简单的加权平均通常是一种可行的解决方案。今天,预测模型的集成是解决问题的一个有希望的方向,其中预测的准确性比解释模型的能力更重要。集成的主要思想是几个基本模型的训练和它们的工作结果的聚合。实证研究表明,平均而言,组合预测比只选择一种预测模型的方法更有可能产生更好的预测。当构建集成时,确保模型的多样性和集成模型成员的有效培训的问题变得特别相关。本文致力于解决将几种基本概率模型的结果结合起来,建立光伏发电预测集成模型的问题。使用本文提出的集成方法可以提高预测精度,减少集成成员模型的训练和评估时间。提出了进一步研究的方向和展望。
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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