November 22, 2024
Conference Paper

WE-Validate: An Open-Source Framework For Wind Power Validation

Abstract

Grid operators rely on historical weather time series at existing and planned wind power plants to make informed decisions when planning for a future power grid with very high penetration of renewable power. While synthetic wind power time series have been developed based on historical weather models, their validation with actual power production data remains complex due to variations in modeling practices and methodologies. This paper introduces the WE-Validate framework, originally designed for wind speed validation and now enhanced for wind power validation with a graphical user interface to support users with minimal programming experience. Validation of wind power with WE-Validate is based on robust metrics consisting of RMSE, centered RMSE, average bias, average percent bias, mean absolute error, mean absolute percent error, cross correlation, and calculation of ramping magnitude, rate, and duration. This paper showcases WE-Validate with validation of synthetically derived power for a wind plant in Washington state for one month in 2018. Validation of the synthetic power from two comparison data sets compared with observations shows both comparison series have strong correlation with observed across weekly and monthly aggregations while suffering from persistent negative bias. The suite of metrics within WE-Validate facilitates immediate insight into the utility of the comparison data sets through compression across multiple axes. This user-friendly, open-source tool can be extended beyond wind power, making it a valuable resource for system planners and operators in different domains.

Published: November 22, 2024

Citation

Moncheur de Rieudotte M.P., A.M. Campbell, L.K. Berg, Y. Liu, N.A. Samaan, L.M. Sheridan, and H. Wang. 2024. WE-Validate: An Open-Source Framework For Wind Power Validation. In IEEE Conference on Technologies for Sustainability (SusTech 2024), April 14-17, 2024, Portland, OR, 317-323. Piscataway, New Jersey:IEEE. PNNL-SA-192533. doi:10.1109/SusTech60925.2024.10553454

Research topics