规范化(社会学)
风速
计算机科学
可再生能源
风力发电
均方误差
数据库规范化
时间序列
气象学
人工智能
机器学习
统计
工程类
数学
模式识别(心理学)
地理
社会学
电气工程
人类学
作者
Deepali Patil,Rajesh Wadhvani,Sanyam Shukla,Muktesh Gupta
出处
期刊:Wind Engineering
[SAGE Publishing]
日期:2022-04-23
卷期号:46 (5): 1606-1617
被引量:5
标识
DOI:10.1177/0309524x221093908
摘要
Wind speed forecasting, a time series problem, plays a vital role in estimating annual wind energy production in wind farms. Calculation of wind energy helps to maintain stability between electricity production and consumption. Deep learning models are used for predicting time series data. However, as wind speed is non-stationary and irregular, pre-processing of these data is necessary to get accurate results. In this paper, static normalization techniques like min–max, z-score, and adaptive normalization are used for pre-processing wind datasets, and further, their forecasting results are compared. Adaptive normalization increases the learning rate and gives better forecasting results than static normalization. The RMSE value was reduced by 9.18% for the NREL dataset when adaptive normalization was used instead of z-score normalization and by 23.58% for the Weather dataset. The datasets used are taken from National Renewable Energy Laboratory (NREL) and Kaggle’s Dataset.
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