PARAMETER CALIBRATION IN WAKE EFFECT SIMULATION MODEL WITH STOCHASTIC GRADIENT DESCENT AND STRATIFIED SAMPLING
成果类型:
Article
署名作者:
Liu, Bingjie; Yue, Xubo; Byon, Eunshin; Al Kontar, Raed
署名单位:
Zhejiang Laboratory; University of Michigan System; University of Michigan
刊物名称:
ANNALS OF APPLIED STATISTICS
ISSN/ISSBN:
1932-6157
DOI:
10.1214/21-AOAS1567
发表日期:
2022
页码:
1795-1821
关键词:
computer-models
wind
approximation
output
摘要:
As the market share of wind energy has been rapidly growing, wake effect analysis is gaining substantial attention in the wind industry. Wake effects represent a wind shade cast by upstream turbines to the downwind direction, resulting in power deficits in downstream turbines. To quantify the aggregated influence of wake effects on the power generation of a wind farm, various simulation models have been developed, including Jensen's wake model. These models include parameters that need to be calibrated from field data. Existing calibration methods are based on surrogate models that impute the data under the assumption that physical and/or computer trials are computationally expensive, typically at the design stage. This, however, is not the case where large volumes of data can be collected during the operational stage. Motivated by the wind energy application, we develop a new calibration approach for big data settings without the need for statistical emulators. Specifically, we cast the problem into a stochastic optimization framework and employ stochastic gradient descent to iteratively refine calibration parameters using randomly selected subsets of data. We then propose a stratified sampling scheme that enables choosing more samples from noisy and influential sampling regions and thus reducing the variance of the estimated gradient for improved convergence. Through both theoretical and numerical studies on wind farm data, we highlight the benefits of our variance-conscious calibration approach.
来源URL: