经济调度
风力发电
风电预测
风速
电力系统
计算机科学
期限(时间)
预测验证
气象学
功率(物理)
预测技巧
工程类
地理
量子力学
电气工程
物理
作者
Le Xie,Yingzhong Gu,Xinxin Zhu,Marc G. Genton
标识
DOI:10.1109/pesgm.2016.7741502
摘要
Summary form only given. We propose a novel statistical wind power forecast framework, which leverages the spatio-temporal correlation in wind speed and direction data among geographically dispersed wind farms. Critical assessment of the performance of spatio-temporal wind power forecast is performed using realistic wind farm data from West Texas. It is shown that spatio-temporal wind forecast models are numerically efficient approaches to improving forecast quality. By reducing uncertainties in near-term wind power forecasts, the overall cost benefits on system dispatch can be quantified. We integrate the improved forecast with an advanced robust look-ahead dispatch framework. This integrated forecast and economic dispatch framework is tested in a modified IEEE RTS 24-bus system. Numerical simulation suggests that the overall generation cost can be reduced by up to 6% using a robust look-ahead dispatch coupled with spatio-temporal wind forecast as compared with persistent wind forecast models.
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