Application of Markov chain models for short term generation assets valuation

This paper demonstrates the application of Markov chain models to valuate generation assets within deregulated electricity markets. A new framework for modeling electricity markets with Markov chain model is proposed. The advantage of the Markov chain model is that it deploys fundamental approaches...

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Bibliographic Details
Main Author: Wang Yu (author)
Other Authors: Gerald B. Sheblé (author), Manuel António Matos (author)
Format: book
Language:eng
Published: 2004
Subjects:
Online Access:https://hdl.handle.net/10216/102203
Country:Portugal
Oai:oai:repositorio-aberto.up.pt:10216/102203
Description
Summary:This paper demonstrates the application of Markov chain models to valuate generation assets within deregulated electricity markets. A new framework for modeling electricity markets with Markov chain model is proposed. The advantage of the Markov chain model is that it deploys fundamental approaches to identify the key economic forces underlying the electricity markets such as demand on electricity and supplied online generation capacity. Based on this new model, real option calculations are used to valuate generation assets. Markov chain model is combined with binomial tree to approximate the stochastic movement of prices on both electric energy and ancillary services, which are driven by the market forces. A detailed example is presented. This method is shown to provide optimal operation policies and market values of generation assets. This method also provides capability to analyze the impacts of demand growth patterns, competition strategies of competitors and other key economic forces.