TY - JOUR
T1 - Constructing probabilistic scenarios for wide-area solar power generation
AU - Woodruff, David L.
AU - Deride, Julio
AU - Staid, Andrea
AU - Watson, Jean Paul
AU - Slevogt, Gerrit
AU - Silva-Monroy, César
N1 - Publisher Copyright:
© 2017
PY - 2018/1/15
Y1 - 2018/1/15
N2 - Optimizing thermal generation commitments and dispatch in the presence of high penetrations of renewable resources such as solar energy requires a characterization of their stochastic properties. In this paper, we describe novel methods designed to create day-ahead, wide-area probabilistic solar power scenarios based only on historical forecasts and associated observations of solar power production. Each scenario represents a possible trajectory for solar power in next-day operations with an associated probability computed by algorithms that use historical forecast errors. Scenarios are created by segmentation of historic data, fitting non-parametric error distributions using epi-splines, and then computing specific quantiles from these distributions. Additionally, we address the challenge of establishing an upper bound on solar power output. Our specific application driver is for use in stochastic variants of core power systems operations optimization problems, e.g., unit commitment and economic dispatch. These problems require as input a range of possible future realizations of renewables production. However, the utility of such probabilistic scenarios extends to other contexts, e.g., operator and trader situational awareness. We compare the performance of our approach to a recently proposed method based on quantile regression, and demonstrate that our method performs comparably to this approach in terms of two widely used methods for assessing the quality of probabilistic scenarios: the Energy score and the Variogram score.
AB - Optimizing thermal generation commitments and dispatch in the presence of high penetrations of renewable resources such as solar energy requires a characterization of their stochastic properties. In this paper, we describe novel methods designed to create day-ahead, wide-area probabilistic solar power scenarios based only on historical forecasts and associated observations of solar power production. Each scenario represents a possible trajectory for solar power in next-day operations with an associated probability computed by algorithms that use historical forecast errors. Scenarios are created by segmentation of historic data, fitting non-parametric error distributions using epi-splines, and then computing specific quantiles from these distributions. Additionally, we address the challenge of establishing an upper bound on solar power output. Our specific application driver is for use in stochastic variants of core power systems operations optimization problems, e.g., unit commitment and economic dispatch. These problems require as input a range of possible future realizations of renewables production. However, the utility of such probabilistic scenarios extends to other contexts, e.g., operator and trader situational awareness. We compare the performance of our approach to a recently proposed method based on quantile regression, and demonstrate that our method performs comparably to this approach in terms of two widely used methods for assessing the quality of probabilistic scenarios: the Energy score and the Variogram score.
KW - Probabilistic scenario creation
KW - Solar power forecasting
KW - Stochastic optimization
KW - Unit commitment and economic dispatch
UR - http://www.scopus.com/inward/record.url?scp=85037656303&partnerID=8YFLogxK
U2 - 10.1016/j.solener.2017.11.067
DO - 10.1016/j.solener.2017.11.067
M3 - Article
AN - SCOPUS:85037656303
SN - 0038-092X
VL - 160
SP - 153
EP - 167
JO - Solar Energy
JF - Solar Energy
ER -