Complementarity Modeling in Energy Markets e-bog
948,41 DKK
(inkl. moms 1185,51 DKK)
This addition to the ISOR series introduces complementarity models in a straightforward and approachable manner and uses them to carry out an in-depth analysis of energy markets, including formulation issues and solution techniques. In a nutshell, complementarity models generalize:a. optimization problems via their Karush-Kuhn-Tucker conditionsb. non-cooperative games in which each player ma...
E-bog
948,41 DKK
Forlag
Springer
Udgivet
20 juli 2012
Genrer
Macroeconomics
Sprog
English
Format
pdf
Beskyttelse
LCP
ISBN
9781441961235
This addition to the ISOR series introduces complementarity models in a straightforward and approachable manner and uses them to carry out an in-depth analysis of energy markets, including formulation issues and solution techniques. In a nutshell, complementarity models generalize:a. optimization problems via their Karush-Kuhn-Tucker conditionsb. non-cooperative games in which each player may be solving a separate but related optimization problem with potentially overall system constraints (e.g., market-clearing conditions)c. economic and engineering problems that aren't specifically derived from optimization problems (e.g., spatial price equilibria)d. problems in which both primal and dual variables (prices) appear in the original formulation (e.g., The National Energy Modeling System (NEMS) or its precursor, PIES).As such, complementarity models are a very general and flexible modeling format.A natural question is why concentrate on energy markets for this complementarity approach? As it turns out, energy or other markets that have game theoretic aspects are best modeled by complementarity problems. The reason is that the traditional perfect competition approach no longer applies due to deregulation and restructuring of these markets and thus the corresponding optimization problems may no longer hold. Also, in some instances it is important in the original model formulation to involve both primal variables (e.g., production) as well as dual variables (e.g., market prices) for public and private sector energy planning. Traditional optimization problems can not directly handle this mixing of primal and dual variables but complementarity models can and this makes them all that more effective for decision-makers.