评估风电概率预测对蓄风联合发电系统极短期发电计划的影响

Jie Shi, Guoyue Zhang, Weijen Lee
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引用次数: 1

摘要

将储能系统(ESS)与风电场相结合,建立风储联产系统是提高风电可靠性的一种很有前景的解决方案。风电功率预测精度对小ESS联合发电系统提供可靠的发电计划至关重要。这种类型的发电计划(时间间隔:15分钟)使风力发电成为电力市场交易的有利参与者。本文分别基于径向基函数(RBF)神经网络和非参数估计方法建立了具有定值和概率区间的风电预测模型。根据概率模型,提出了计划偏差(PD)指标来估计预测对系统实时运行的影响,并在调度时间段内调整发电计划。实例分析表明,该模型在提高风电场参与电力市场交易的同时,提高了发电计划的可靠性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evaluating the impact of wind power probabilistic forecasting on very-short-term generation scheduling for Wind-Storage Combined Generation System
Incorporating Energy Storage System (ESS) with wind farms to build up Wind-Storage Combined Generation System is a promising solution to improve the dependability of wind power. Wind power forecasting precision plays a vital role to provide reliable generation scheduling on the combined generation system with smaller ESS. This type of generation scheduling (time interval: 15 minutes) makes wind generation a favorable player in power market trading. In this paper, wind power forecasting models with determined value and probabilistic interval are both established based on Radial Basis Function (RBF) neural network and nonparametric estimation method, respectively. According to the probabilistic model, the Plan Deviation (PD) index is proposed to estimate the forecasting impact to real-time system operation as well as adjusting generation plan in the scheduling time duration. After case study, the proposed model is proven to improve the reliability of generation scheduling along with increasing the participation of wind farm in power market trading.
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