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Distributionally Robust Building Load Control to Compensate Fluctuations in Solar Power Generation...

by Yiling Zhang, Jin Dong, Phani Teja V Kuruganti, Siqian Shen, Yaosuo Xue
Publication Type
Conference Paper
Book Title
2019 IEEE Annual American Control Conference (ACC)
Publication Date
Page Numbers
5857 to 58636
Conference Name
2019 American Control Conference (ACC 2019)
Conference Location
Philadelphia, Pennsylvania, United States of America
Conference Sponsor
IEEE
Conference Date
-

This paper investigates the use of a collection of dispatchable heating, ventilation and air conditioning (HVAC) systems to absorb low-frequency fluctuations in renewable energy sources, especially in solar photo-voltaic (PV) generation. Given the uncertain and time-varying nature of solar PV generation, its probability distribution is difficult to be estimated perfectly, which poses a challenging problem of how to optimally schedule a fleet of HVAC loads to consume as much as local PV generation. We formulate a distributionally robust chance-constrained (DRCC) model to ensure that PV generation is consumed with a desired probability for a family of probability distributions, termed as an ambiguity set, built upon mean and covariance information. We benchmark the DRCC model with a deterministic optimization model and a stochastic programming model in a one-day simulation. We show that the DRCC model achieves constantly good performance to consume most PV generation even in the case with the presence of probability distribution ambiguity.