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Risk Management in Stochastic Integer Programming (eBook)

With Application to Dispersed Power Generation

(Autor)

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2008 | 2008
VIII, 107 Seiten
Vieweg & Teubner (Verlag)
978-3-8348-9536-3 (ISBN)

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Risk Management in Stochastic Integer Programming - Frederike Neise
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The author presents two concepts to handle the classic linear mixed-integer two-stage stochastic optimization problem. She describes mean-risk modeling and stochastic programming with first order dominance constraints. Both approaches are applied to optimize the operation of a dispersed generation system.

Dr. Frederike Neise gained a PhD in Mathematics from the University of Duisburg-Essen studying two-stage stochastic programming and its application to the optimal management of dispersed generation systems. She currently works as a gas market analyst with E.ON Ruhrgas AG.

Dr. Frederike Neise gained a PhD in Mathematics from the University of Duisburg-Essen studying two-stage stochastic programming and its application to the optimal management of dispersed generation systems. She currently works as a gas market analyst with E.ON Ruhrgas AG.

Preface 6
Contents 7
1 Introduction 9
1.1 Stochastic Optimization 11
1.2 Content and Structure 14
2 Risk Measures in Two-Stage Stochastic Programs 16
2.1 Risk Measures 16
2.2 Mean-Risk Models 19
3 Stochastic Dominance Constraints induced by Mixed- Integer Linear Recourse 40
3.1 Introduction to Stochastic Dominance 40
3.2 Stochastic Dominance Constraints induced by Mixed- Integer Linear Recourse 49
4 Application: Optimal Operation of a Dispersed Generation System 75
4.1 A Dispersed Generation System 75
4.2 Formulation as Linear Mixed-Integer Optimization Problem 76
4.3 Computational Results 80
5 Conclusion and Perspective 96
List of Tables 99
List of Figures 100
Bibliography 101

4 Application: Optimal Operation of a Dispersed Generation (S. 69-70)

System In this chapter we apply the introduced theories and algorithms to an optimization problem from power planning. We consider a dispersed generation system which is run by a German utility. We aim at an optimal operation with respect to technical constraints, the supply of thermal an electric demand, and the minimization of operational costs.

4.1 A Dispersed Generation System

A dispersed generation (DG) system is a combination of several power and/or heat generating units with a low capacity compared to conventional nuclear or coal- .red power stations. The single units, which can be installed decentrally, next to the consumers, are linked via communication networks and considered as one power producing system, also called Virtual Power Plant ([AKKM02, HBU02, IR02]). A de.nition can be found in [AAS01]. As reported in former studies (see e.g., [HNNS06]), the operation of dispersed generation units as one system is economically superior to the autarkic operation of each single unit.

Dispersed generation units can be combined heat and power (CHP) units which produce heat and power simultaneously, for example fuel cells, gas motors, or gas turbines, as well as units gaining power from renewable resources like wind turbines, hydroelectric power plants, or photovoltaic devices. Usually, also boilers are included to supply load peaks of heat. Furthermore, DG systems are often equipped with thermal storages and also with cooling devices to exhaust excessive heat. Electric storages are not considered here because either their capacity is too big to be used in DG systems or they store energy only for such a short time that it is not relevant for optimization.

Instead, we assume that electric energy can always be sold completely and imported if production does not meet demand. DG systems gain more and more importance today because of several reasons ([Neu04]). On the one hand they are preferable over custom power plants because of their high overall efficiency – installation next to consumers avoids transportation costs ([BHHU03]) – as well as the comparably low investments needed. They show a high .exibility which enables the operator to react immediately and to supply sudden load peaks, for example.

Furthermore, the energy generation with dispersed generation is environmentally friendly compared to convential power generation. On the other hand the current political development promotes the installation of dispersed generation units. For example, the pending nuclear phaseout has to be compensated ("Gesetz zur geordneten Beendigung der Kernenergienutzung zur gewerblichen Erzeugung von Elektrizität", AtG-E). Moreover, the usage of renewable resources is encouraged by the"Erneuerbare Energien Gesetz" (EEG), where it is stated that power generation from renewable resources should be increased to 20 % of the whole power production in 2020.

Furthermore, the "Kraft-Wärme-Kopplungsgesetz" (KWKG) dictates that CO2 emissions should be reduced by at least 20 million tons until 2010 (based on the emissions of 1998) by an increase of the installed CHP capacity. Additionally, the power generation with CHP units is subsidized. Last but not least many of the existing generation capacities are out-aged and will have to be replaced in the next years ([MMV05]). This stimulates a discussion of new trends, efficiency improvements, and the development of innovative techniques in power generation. The optimal operation of a DG system requires complex decisions ([Han02]) which are substantially influenced by uncertainty.

Erscheint lt. Verlag 25.9.2008
Zusatzinfo VIII, 107 p.
Verlagsort Wiesbaden
Sprache englisch
Themenwelt Mathematik / Informatik Mathematik Statistik
Mathematik / Informatik Mathematik Wahrscheinlichkeit / Kombinatorik
Technik
Schlagworte Dezentrale Energieumwandlungsanlagen • Gemischt-ganzzahlige Programmierung • Mathematik • Mean-Risk Modelle • Modeling • Optimization • programming • Risk Management • Stochastische Optimierung
ISBN-10 3-8348-9536-9 / 3834895369
ISBN-13 978-3-8348-9536-3 / 9783834895363
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