基于病毒群搜索算法并考虑采用竞价策略的风电场智能电网机组承诺

Hossein Shahinzadeh, G. Gharehpetian, M. Moazzami, Jalal Moradi, S. Hosseinian
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引用次数: 9

摘要

可再生能源发电技术和智能电网基础设施的发展正在取得重大的技术和科学进步,已将其价格和成本降低到可承受的经济水平。因此,近十年来,可再生能源并网已明显普及,电网结构已向智能电网发展。智能电网的运行和绿色能源的更多渗透有助于降低发电支出,减少温室气体排放,并实现更有效地利用发电资源。除了电力系统运行的各种不确定性外,以间歇性为主的可再生资源的纳入对电力系统运行调度提出了严峻的挑战。因此,必须将风能、太阳能等可再生资源的不确定性,以及负荷预测不准确性等电力系统固有的不确定性纳入运行计划中。对这种不确定性的考虑提高了对可能的波动和意外事件的稳健性,并提供了更安全的操作。将各种不确定性因素纳入机组承诺规划,会降低问题求解的复杂性。解决这样一个复杂的问题,包括时间导向和实际的限制,需要适当的精确或启发式的方法。本文选择一个10台发电机的测试系统进行仿真,考虑间歇性风电场存在的影响,采用病毒群搜索(VCS)算法求解机组承诺问题。最终,在承诺单元之间进行经济调度,并计算运行成本。通过三种情景将风负荷预测的不确定性纳入系统建模。这些场景展示了智能电网中风力发电机组的影响,以及不确定性对电网经济运行的影响。此外,还研究了风力发电场如何通过适当的投标策略来应对这种不确定性,以保护自己免受现货市场的高价格和可能的损害。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Unit commitment in smart grids with wind farms using virus colony search algorithm and considering adopted bidding strategy
The significant ongoing technical and scientific advancements in renewable generation technologies and developments in smart grids' infrastructures have reduced their prices and costs to an affordable economical level. Hence, in the last decade, integration of renewable energies has had conspicuous pervasiveness, and the structures of power networks have been evolving to smart grid styles. The intelligently operated grids and more penetration of green energies facilitate alleviation of the generation expenditures, mitigation of greenhouse gases emissions, and achieving more efficient exploitation of installed generation resources. Aside from various uncertainties in power system operation, the inclusion of renewable resources, which are mainly intermittent in nature, encounters the power system operation scheduling with severe challenges. Therefore, the uncertainties of renewable resources such as wind and solar energy resources, as well as inherent uncertainties of power systems such as load forecast inaccuracies must be included mathematically in the operation schedules. The consideration of such uncertainties improves the robustness against plausible volatilities and contingencies and provides a more secure operation. The incorporation of various uncertainties into the unit commitment program deteriorates the solution of the problem in term of complexity. The solution of such a sophisticated problem which comprises time-oriented and practical constraints requires either appropriate exact or heuristic approaches. In this paper, a 10-generator test system is selected for simulations, and the virus colony search (VCS) algorithm is employed to solve unit commitment problem considering the impact of the presence of intermittent wind farms. Ultimately, the economic dispatch is performed between committed units, and operational costs are also calculated. The uncertainties of wind and load forecasts are incorporated in the system modeling through three scenarios. These scenarios demonstrate the impact of the presence of wind units in smart grids, and the way uncertainties affect the electricity network operation economically. Besides, the way wind farms must treat with such uncertainties through appropriate bidding strategy is investigated in order to protect themselves from high prices of spot market and plausible detriments.
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