基于人工鱼群算法的微电网发电和存储源日前调度

K. P. Kumar, B. Saravanan, K. Swarup
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引用次数: 4

摘要

可再生能源的能源可用性不一致需要提前估计和调度,以便其他特定的能源,如燃料电池、柴油发电机、存储设备等,可以被适当地调度,以保持实时的负载发电平衡。在这个过程中,进化程序技术被证明是方便和可靠的。本文采用人工鱼群算法解决了可再生能源、可调度能源和储能混合发电的日前调度问题。考虑每小时发电成本效用函数在微网运行约束条件下的优化。将该算法应用于由风力发电机组和光伏发电机组作为可再生能源,柴油发电机组和燃料电池作为可调度发电机,蓄电池作为储能电池组成的并网微电网调度发电,验证了算法的性能。对每台发电机的计划发电量、存储源的电力交换以及其充电状态进行了评估,以获得最优的发电成本。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Day ahead scheduling of generation and storage sources in a microgrid using artificial fish swarm algorithm
Non-consistency of energy availability from Renewable Energy Sources needs estimation and scheduling in advance so that the other certain sources of energy like fuel cells, diesel generators, storage devices etc., can be scheduled appropriately to maintain load-generation balance in real time. Evolutionary program techniques are proving handy and reliable in the process. This article uses an Artificial Fish Swarm algorithm to solve the problem of day-ahead scheduling of generation in a mix of Renewable Energy Sources, despatchable sources and storage. The utility function of hourly generation cost is considered for optimization along with various microgrid operational constraints. The performance of the algorithm is validated by applying to schedule generation in a microgrid in grid connected mode consisting of one wind turbine and one PV source as Renewable energy sources, one diesel generator and fuel cell as despatchable generators and a battery for storage. The scheduled generation of each generator, power exchange of storage source along with its state of charge are evaluated for optimum cost of generation.
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