Title of article :
A Monte Carlo based decision-support tool for assessing generation portfolios in future carbon constrained electricity industries
Author/Authors :
Peerapat Vithayasrichareon، نويسنده , , Iain F. MacGill، نويسنده ,
Issue Information :
ماهنامه با شماره پیاپی سال 2012
Pages :
19
From page :
374
To page :
392
Abstract :
This paper presents a novel decision-support tool for assessing future generation portfolios in an increasingly uncertain electricity industry. The tool combines optimal generation mix concepts with Monte Carlo simulation and portfolio analysis techniques to determine expected overall industry costs, associated cost uncertainty, and expected CO2 emissions for different generation portfolio mixes. The tool can incorporate complex and correlated probability distributions for estimated future fossil-fuel costs, carbon prices, plant investment costs, and demand, including price elasticity impacts. The intent of this tool is to facilitate risk-weighted generation investment and associated policy decision-making given uncertainties facing the electricity industry. Applications of this tool are demonstrated through a case study of an electricity industry with coal, CCGT, and OCGT facing future uncertainties. Results highlight some significant generation investment challenges, including the impacts of uncertain and correlated carbon and fossil-fuel prices, the role of future demand changes in response to electricity prices, and the impact of construction cost uncertainties on capital intensive generation. The tool can incorporate virtually any type of input probability distribution, and support sophisticated risk assessments of different portfolios, including downside economic risks. It can also assess portfolios against multi-criterion objectives such as greenhouse emissions as well as overall industry costs.
Keywords :
Monte Carlo simulation , Generation portfolio , Generation investment under uncertainty
Journal title :
Energy Policy
Serial Year :
2012
Journal title :
Energy Policy
Record number :
973630
Link To Document :
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