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New hybrid probabilistic optimisation algorithm for optimal allocation of energy storage systems considering correlated wind farms

机译:考虑相关风电场的能量存储系统最优分配的新混合概率优化算法

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Wind power integration with high penetration in a power system is indispensable. However, wind power integration, especially with high level, raises the power system instability problems due to its natural variability and unpredictability, which increases system uncertainties. Thus, uncertainties and correlations amongst wind farms should be considered in a power system operation and planning. One of the best solutions for facilitating the wind power integration is the installation of an energy storage system (ESS). However, the location and sizing of ESSs should be optimally planned to achieve maximum benefits such as minimising total cost, time shifting, reliability and power quality enhancement, minimising power loss, improving the power factor and providing environmental support. In this paper, a new probabilistic discretising method is derived and developed to discretise the continuous joint power distribution of correlated wind farms. Combining the new probabilistic discretising method with a multi-objective hybrid particle swarm optimisation (MOPSO) and non-dominated sorting genetic algorithm (NSGAII), a new hybrid probabilistic optimisation algorithm is proposed. The proposed hybrid algorithm aims to search for the best location and size of energy storage system (ESSs) and considers the power uncertainties of multi-correlated wind farms. The objective functions to be minimised include a system's total expected cost restricted by investment budget, total expected voltage deviation and total expected carbon emission. IEEE 30-bus and IEEE 57-bus systems are adopted to perform the case studies using the proposed hybrid probabilistic optimisation algorithm. The simulation results demonstrate the effectiveness of the proposed hybrid method in solving the optimal allocation problem of ESSs and considering the uncertainties of wind farms' output power and the correlation amongst them.
机译:电力系统中具有高渗透的风力集成是必不可少的。然而,由于其自​​然变化和不可预测性,风电集成,尤其具有高水平,提高了电力系统不稳定问题,这增加了系统的不确定性。因此,在电力系统运行和规划中应考虑风电场之间的不确定性和相关性。用于促进风力电力集成的最佳解决方案之一是安装能量存储系统(ESS)。然而,ESS的位置和尺寸应最佳地计划实现最大效益,例如最小化总成本,时间转换,可靠性和电力质量增强,最大限度地减少功率损耗,提高功率因数并提供环境支持。在本文中,推导出并开发了一种新的概率离散化方法,以离散传递有关风电场的连续接合配电。结合新的概率离散化方法用多目标混合粒子群优化(MOPSO)和非主导的分类遗传算法(NSGaii),提出了一种新的混合概率优化算法。所提出的混合算法旨在搜索能量存储系统(ESS)的最佳位置和大小,并考虑多相关风电场的功率不确定性。最小化的客观职能包括系统总预期成本,限制受投资预算,总预期电压偏差和总碳排放总额。采用IEEE 30-BUS和IEEE 57总线系统使用所提出的混合概率优化算法进行案例研究。仿真结果表明,拟议的混合方法在解决ESS的最佳分配问题并考虑到风电场输出能力的不确定性以及它们之间的相关性。

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