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首页> 外文期刊>Journal of Modern Power Systems and Clean Energy >Multi-objective Optimization of Production Scheduling Using Particle Swarm Optimization Algorithm for Hybrid Renewable Power Plants with Battery Energy Storage System
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Multi-objective Optimization of Production Scheduling Using Particle Swarm Optimization Algorithm for Hybrid Renewable Power Plants with Battery Energy Storage System

机译:用电池储能系统使用粒子群优化算法生产调度的多目标优化

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Considering the increasing integration of renewable energies into the power grid, batteries are expected to play a key role in the challenge of compensating the stochastic and intermittent nature of these energy sources. Besides, the deployment of batteries can increase the benefits of a renewable power plant. One way to increase the profits with batteries studied in this paper is performing energy arbitrage. This strategy is based on storing energy at low electricity price moments and selling it when electricity price is high. In this paper, a hybrid renewable energy system consisting of wind and solar power with batteries is studied, and an optimization process is conducted in order to maximize the benefits regarding the day-ahead production scheduling of the plant. A multi-objective cost function is proposed, which, on the one hand, maximizes the obtained profit, and, on the other hand, reduces the loss of value of the battery. A particle swarm optimization algorithm is developed and fitted in order to solve this non-linear multi-objec-tive function. With the aim of analyzing the importance of considering both the energy efficiency of the battery and its loss of value, two more simplified cost functions are proposed. Results show the importance of including the energy efficiency in the cost function to optimize. Besides, it is proven that the battery lifetime increases substantially by using the multi-objective cost function, whereas the profitability is similar to the one obtained in case the loss of value is not considered. Finally, due to the small difference in price among hours in the analyzed Iberian electricity market, it is observed that low profits can be provided to the plant by using batteries just for arbitrage purposes in the day-ahead market.
机译:考虑到可再生能量的越来越多的整合到电网,预计电池将在补偿这些能源随机和间歇性的挑战中发挥关键作用。此外,电池的部署可以增加可再生能源厂的益处。在本文中研究的电池增加利润的一种方法正在进行能源套利。该策略基于在低电价时刻储存能量,并在电价升高时销售它。本文研究了由风电和太阳能电池组成的混合可再生能源系统,并进行了优化过程,以最大限度地提高植物的日落生产调度的益处。提出了一种多目标成本函数,一方面,这一方面最大化所获得的利润,另一方面,减少了电池的价值损失。开发并安装了粒子群优化算法,以解决这种非线性多副论点功能。旨在分析考虑电池能效及其价值损失的重要性,提出了两种更简化的成本函数。结果表明,在成本函数中包括能源效率优化的重要性。此外,证明电池寿命基本上通过使用多目标成本函数来增加,而盈利能力类似于在不考虑价值损失的情况下获得的盈利能力。最后,由于分析的伊伯利安电力市场的数小时数小时差异,观察到,通过在日前市场中使用电池可以使用电池提供低利润。

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