电池储能在并网风电场中的应用,以提高经济利用率

M. R. Aghaebrahimi, V. Amani-Shandiz
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引用次数: 0

摘要

当电力系统中存在风电场时,由于风电场输出的随机性和波动性,运营商在系统利用方面将面临比以前更复杂的问题。由于电力系统利用中存在一定的约束条件,可能导致风电向电力系统的注入受到一定的限制。因此,在存在这些限制的情况下,风力发电场的利用可能变得不具有成本效益。在风电场中使用储能系统(ESS)将对电力系统的利用产生积极影响,这取决于区域风力状况和小时能源价格。本文提出了一种将风电场容量分配研究的方向转向增加风电场容量的新方法。事实上,在本研究中,ESS的容量和风电场的小时输出功率都是以尽可能增加风电场一年的总收入及其容量系数的方式来确定的。因此,随着总收益和风电场容量系数的增加,电力系统用户增加风电在电力系统中的渗透率的倾向将会增强。本文将粒子群算法(PSO)应用于优化ESS容量和小时能量管理。结果表明,尽管储能系统成本较高,但通过将该方法用于能源管理优化,风能销售的总收入将增加。此外,这些结果承认在初级规划研究中提出的增加风电场容量的所有理由。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of battery-based energy storage in grid-connected wind farms in order to improve economical utilization
In presence of wind farms in a power system, operators will encounter more complexity in system utilization than before, because of the stochastic and fluctuating nature of the wind farm output. The presence of some constraints in power systems utilization may cause some restrictions in wind energy injection to the power system. Therefore, wind farm utilization may become non-cost effective in presence of these constraints. Using energy storage systems (ESS) in wind farms will have positive effects on power system utilization, which depend on regional wind regime and hourly energy prices. In this research, a new method is proposed to change the direction of wind farms' capacity allocation studies towards increasing wind farms' capacity. In fact, in this study, the capacity of ESS and the wind farm hourly output power are determined in a way that wind farm total income in one year and its capacity factor are increased as much as possible. So, power system utilizers' tendency towards increasing wind power penetration in power system will be raised as total income and wind farm capacity factor increase. In this paper, particle swarm optimization (PSO) is applied to find optimal ESS capacity and hourly energy management. Results demonstrate that despite high cost of energy storage systems, by using the proposed method in energy management optimization, the total income from wind energy sales will increase. Also, these results acknowledge all justifications proposed towards increasing the wind farm capacity in primary planning studies.
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