Abstract:
Wind energy is an integral resource in the renewable energy portfolio of many utilities across the world. One of the challenges in planning for operations when dealing wi...Show MoreMetadata
Abstract:
Wind energy is an integral resource in the renewable energy portfolio of many utilities across the world. One of the challenges in planning for operations when dealing with wind farms is to account for the fact that wind power is not dispatchable, and forecasting of wind over a typical window of operational planning such as a 7-day long horizon is challenging. While most previous reports on forecasting wind power are focused on short term wind forecast, this study focuses on ultra-long term forecast of generation in wind farms by using physical models in combination with deep learning as a rapidly growing part of machine learning discipline. The proposed approach is compared against a traditional approach of wind power forecast using physical models and provides promising improvement in accuracy.
Date of Conference: 29 June 2021 - 01 July 2021
Date Added to IEEE Xplore: 05 October 2021
ISBN Information: