概率逻辑
风力发电
风电预测
电力系统
计算机科学
核密度估计
概率密度函数
风速
概率预测
气象学
核(代数)
人工神经网络
环境科学
数学优化
功率(物理)
工程类
人工智能
数学
统计
地理
电气工程
物理
组合数学
估计员
量子力学
作者
Hao Zhang,Yongqian Liu,Jie Yan,Shuang Han,Li Li,Long Quan
出处
期刊:IEEE Transactions on Power Systems
[Institute of Electrical and Electronics Engineers]
日期:2020-02-04
卷期号:35 (4): 2549-2560
被引量:125
标识
DOI:10.1109/tpwrs.2020.2971607
摘要
Unsteady motion of the atmosphere incurs nonlinear and spatiotemporally coupled uncertainties in the wind power prediction (WPP) of multiple wind farms. This brings both opportunities and challenges to wind power probabilistic forecasting (WPPF) of a wind farm cluster or region, particularly when wind power is highly penetrated within the power system. This paper proposes an Improved Deep Mixture Density Network (IDMDN) for short-term WPPF of multiple wind farms and the entire region. In this respect, a deep multi-to-multi (m2m) mapping Neural Network model, which adopts the beta kernel as the mixture component to avoid the density leakage problem, is established to produce probabilistic forecasts in an end-to-end manner. A novel modified activation function and several general training procedures are then introduced to overcome the unstable behavior and NaN (Not a Number) loss issues of the beta kernel function. Verification of IDMDN is based on an open-source dataset collected from seven wind farms, and comparison results show that the proposed model improves the WPPF performance at both wind farm and regional levels. Furthermore, a laconic and accurate probabilistic expression of predicted power at each time step is produced by the proposed model.
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