Market-based power management and control of resilient smart grids and microgrids using a game theoretic multi-agent system approach

dc.contributor.advisorChairperson, Graduate Committee: M. Hashem Nehriren
dc.contributor.authorDehghanpour, Kavehen
dc.contributor.otherHashem Nehrir, John Sheppard and Nathan Kelly were co-authors of the article, 'Agent-based modeling in electrical energy markets using dynamic bayesian networks' in the journal 'IEEE transaction on power systems' which is contained within this thesis.en
dc.contributor.otherHashem Nehrir, John Sheppard and Nathan Kelly were co-authors of the article, 'Agent-based modeling of retail electrical energy markets with demand response' in the journal 'IEEE transaction on smart grid' which is contained within this thesis.en
dc.contributor.otherHashem Nehrir were co-authors of the article, 'Intelligent microgrid power management using the concept of nash bargaining solution' in 'Intelligent System Applications to Power Systems (ISAP) Conference, 2017' which is contained within this thesis.en
dc.contributor.otherHashem Nehrir was a co-author of the article, 'Real-time multiobjective microgrid power management using distributed optimization in an agent-based bargaining framework' in the journal 'IEEE transaction on smart grid' which is contained within this thesis.en
dc.contributor.otherHashem Nehrir was a co-author of the article, 'An agent-based hierarchical bargaining framework for power management of multiple cooperative microgrids' in the journal 'IEEE transaction on smart grid' which is contained within this thesis.en
dc.contributor.otherHashem Nehrir was a co-author of the article, 'A market-based resilient power management technique for distribution systems with multiple microgrids using a multi-agent system approach' submitted to the journal 'Electric power components and systems' which is contained within this thesis.en
dc.date.accessioned2018-05-09T19:08:54Z
dc.date.available2018-05-09T19:08:54Z
dc.date.issued2017en
dc.description.abstractIn this dissertation, we address the problem of optimal resource allocation through distributed market-based techniques in future power systems. Several connected problems are considered in different stages of this research project: 1) optimal decision making of generation companies in wholesale markets, 2) demand response and energy pricing in retail markets, 3) single and multiple microgrid power management within the retail sector, and 4) introducing a resiliency-aware power management for microgrid-based distribution systems. Hence, this work addresses the challenges that are connected to the economics of energy. All of these problems are concerned with optimizing the behavior of the participants in electricity markets (in wholesale and retail sectors) to achieve certain objectives in power system operation (e.g., profit maximization, peak shaving, resiliency improvement, extreme event awareness and preparedness, etc.). Solution concepts from the fields of machine learning and game theory have been employed to address these problems. Moreover, distributed agent-based frameworks are designed for modeling the interactive decision making processes and implementing control laws in electricity markets. The goal is to introduce automated 'intelligent' decision making capabilities into power systems to improve the efficiency of grid operation. This is closely related to the concept of 'smart grids'. The proposed solution strategies are verified through numerical simulations in MATLAB environment. The results demonstrate that using the proposed distributed decision tools and machine-learning-based techniques we can improve the performance of power systems to achieve higher levels of controllability and efficiency, while enhancing system resiliency.en
dc.identifier.urihttps://scholarworks.montana.edu/handle/1/14064en
dc.language.isoenen
dc.publisherMontana State University - Bozeman, College of Engineeringen
dc.rights.holderCopyright 2017 by Kaveh Dehghanpouren
dc.subject.lcshSmart power gridsen
dc.subject.lcshEconomicsen
dc.subject.lcshMachine learningen
dc.subject.lcshGame theoryen
dc.titleMarket-based power management and control of resilient smart grids and microgrids using a game theoretic multi-agent system approachen
dc.typeDissertationen
mus.data.thumbpage16en
thesis.degree.committeemembersMembers, Graduate Committee: Hongwei Gao; Donald Hammerstrom; Robert C. Maher; John Sheppard.en
thesis.degree.departmentElectrical & Computer Engineering.en
thesis.degree.genreDissertationen
thesis.degree.namePhDen
thesis.format.extentfirstpage1en
thesis.format.extentlastpage269en

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