Physics-Informed AI Surrogates for Day-Ahead Wind Power Probabilistic Forecasting with Incomplete Data for Smart Grid in Smart Cities

风电预测 概率逻辑 概率预测 风力发电 智能电网 可再生能源 计算机科学 网格 一般化 缺少数据 数据挖掘 机器学习 电力系统 人工智能 功率(物理) 工程类 地理 数学分析 物理 数学 大地测量学 量子力学 电气工程
作者
Zeyu Wu,Bo Sun,Qiang Feng,Zili Wang,Junlin Pan
出处
期刊:Cmes-computer Modeling in Engineering & Sciences [Tech Science Press]
卷期号:137 (1): 527-554 被引量:6
标识
DOI:10.32604/cmes.2023.027124
摘要

Due to the high inherent uncertainty of renewable energy, probabilistic day-ahead wind power forecasting is crucial for modeling and controlling the uncertainty of renewable energy smart grids in smart cities. However, the accuracy and reliability of high-resolution day-ahead wind power forecasting are constrained by unreliable local weather prediction and incomplete power generation data. This article proposes a physics-informed artificial intelligence (AI) surrogates method to augment the incomplete dataset and quantify its uncertainty to improve wind power forecasting performance. The incomplete dataset, built with numerical weather prediction data, historical wind power generation, and weather factors data, is augmented based on generative adversarial networks. After augmentation, the enriched data is then fed into a multiple AI surrogates model constructed by two extreme learning machine networks to train the forecasting model for wind power. Therefore, the forecasting models’ accuracy and generalization ability are improved by mining the implicit physics information from the incomplete dataset. An incomplete dataset gathered from a wind farm in North China, containing only 15 days of weather and wind power generation data with missing points caused by occasional shutdowns, is utilized to verify the proposed method’s performance. Compared with other probabilistic forecasting methods, the proposed method shows better accuracy and probabilistic performance on the same incomplete dataset, which highlights its potential for more flexible and sensitive maintenance of smart grids in smart cities.
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