演化算法在多聚合器环境下的日内能源调度

José Almeida, J. Soares, F. Lezama, B. Canizes, Z. Vale
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摘要

道路上越来越多的电动汽车(ev)和为实现碳减排目标而生产的可再生能源给电网带来了许多问题。分布式能源(DER)在电网中的使用日益增加,带来了严重的运行问题,如电网拥塞和过载。由多个实体使用智能电网(SG)技术和人工智能(AI)技术对配电网进行主动管理。在这种情况下,聚合器可以支持网格的操作,为最终用户提供更好的产品。本研究提出了一种有效的日内能源管理方法,从一天前的时间框架开始,考虑到与高DER渗透相关的不确定性。优化是通过考虑五种不同的元启发式算法(DE、HyDE-DF、DEEDA、CUMDANCauchy++和HC2RCEDUMDA)来实现的。结果表明,除了最终的聚合器外,所提出的模型对于前一天变化的多个聚合器在6%左右是有效的。我们还使用了Wilcoxon测试来比较CUMDANCauchy++算法与其他算法的性能。CUMDANCauchy++显示了在所有聚合器中击败所有算法的竞争结果,除了DEEDA,它呈现出类似的结果。
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Evolutionary Algorithms applied to the Intraday Energy Resource Scheduling in the Context of Multiple Aggregators
The growing number of electric vehicles (EVs) on the road and renewable energy production to meet carbon reduction targets has posed numerous electrical grid problems. The increasing use of distributed energy resources (DER) in the grid poses severe operational issues, such as grid congestion and overloading. Active management of distribution networks using the smart grid (SG) technologies and artificial intelligence (AI) techniques by multiple entities. In this case, aggregators can support the grid's operation, providing a better product for the end-user. This study proposes an effective intraday energy resource management starting with a day-ahead time frame, considering the uncertainty associated with high DER penetration. The optimization is achieved considering five different metaheuristics (DE, HyDE-DF, DEEDA, CUMDANCauchy++, and HC2RCEDUMDA). Results show that the proposed model is effective for the multiple aggregators with variations from the day-ahead around the 6 % mark, except for the final aggregator. A Wilcoxon test is also applied to compare the performance of the CUMDANCauchy++ algorithm with the remaining. CUMDANCauchy++ shows competitive results beating all algorithms in all aggregators except for DEEDA, which presents similar results.
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