基于风力预测的风电场共享储能电网优化

Kaige Zhu, Souma Chowdhury, Mucun Sun, Jie Zhang
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引用次数: 4

摘要

储能是提高可再生能源发电稳定性、减少发电与需求不匹配的关键。然而,由于高昂的资金成本和不断增加的人力资源和维护成本,为可再生能源工厂安装大型储能系统可能并不经济。因此,本文提出了多个风电场之间的共享储能系统来解决这一能源管理挑战。采用集合数值天气预报模型的风力发电预测方法,对共享储能系统(ESS)的规模进行了优化确定。通过对不同经济性和存储资源共享情况下的储能规模进行优化和探索。根据风力发电场和电力系统的ESS规模和运行约束,探讨了ESS的性能,即发电厂的净收益。一个案例研究的结果表明,多个风电场之间的储能共享和较低的储能成本逐步提高了使用储能来缓解生产过剩/预测不足(因此削减)和生产不足/预测过度情况的经济效益。
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Grid Optimization of Shared Energy Storage Among Wind Farms Based on Wind Forecasting
Energy storage is crucial for source-side renewable energy power plants for enhancing output stability and reducing mismatch between power generation and demand. However, installing large size energy storage systems for renewable energy plants may not be economic, due to high capital cost and ever-increasing human resources and maintenance cost. As a result, in this paper, a shared energy storage system among multiple wind farms is proposed to address this energy management challenge. A state-of-the-art wind power forecasting method with ensemble numerical weather prediction models is used to optimally determine the size of a shared energy storage system (ESS). A number of scenarios are performed to optimize and explore the energy storage size under different economic and storage resource sharing circumstances. The performance of ESS, namely the net revenue of power plants, is explored subject to ESS size and operating constraints of wind farms and power systems. Results of a case study show that sharing of energy storage among multiple wind farms and lower cost of storage progressively enhance the economic benefits of using storage to mitigate over-production/under-forecasting (thus curtailment) and under-production/over-forecasting scenarios.
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