Author:
Ferris Michael C.,Philpott Andy
Abstract
AbstractWe formulate and compare optimization models of investment in renewable generation using a suite of social planning models that compute optimal generation capacity investments for a hydro-dominated electricity system where inflow uncertainty results in a risk of energy shortage. The models optimize the expected cost of capacity expansion and operation allowing for investments in hydro, geothermal, solar, wind, and thermal plant, as well as battery storage for smoothing load profiles. A novel feature is the integration of uncertain seasonal hydroelectric energy supply and short-term variability in renewable supply in a two-stage stochastic programming framework. The models are applied to data from the New Zealand electricity system and used to estimate the costs of moving to a 100% renewable electricity system by 2035. We also explore the outcomes obtained when applying different forms of CO2 constraint that limit respectively non-renewable capacity, non-renewable generation, and CO2 emissions on average, almost surely, or in a chance-constrained setting, and show how our models can be used to investigate the merits of a proposed pumped-hydro scheme in New Zealand’s South Island.
Funder
U.S. Department of Energy
Isaac Newton Institute for Mathematical Sciences
Marsden Fund
University of Auckland
Publisher
Springer Science and Business Media LLC
Subject
Management Information Systems,Business, Management and Accounting (miscellaneous),Management Science and Operations Research,Statistics, Probability and Uncertainty
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