An Intelligent Multi-Stage Optimization Approach For Community Based Micro-Grid Within Multi-Microgrid Paradigm

IEEE ACCESS(2020)

Cited 13|Views4
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Abstract
Smart community setups nowadays are subjected to complicated issues such as instability, intermittent integration of the load at the demand side, and lack of intelligent two-way communication process. These issues need to be addressed in terms of a balanced power demand dispatch (DD) in the real-time or day-ahead duplex signal regime under multi-microgrids. This paper offers an intelligent multi-agent-based approach that works between different levels of communication and their respective layers for a community-based system to optimize the power in community-based multi-microgrids model. This will further enhance user personal comfort. Constraints relative to cost minimization also have a relation with this model. A three-level structure with various layers of autonomous agents take intelligent decisions based on prioritized particle swarm optimization (P-PSO), prioritized plug and play (PPnP), and knapsack; considering DD as the main driver of the system to address objectives like price and power consumption uncertainties. Distinct smart home models, depending upon their living habits, are keenly observed providing their power infrastructure and personal comfort. Load appliances considered as load agents are individually contemplated for maximum proficiency. Furthermore, two-way communication between utility and consumers lowers down the risk of the inefficiency of the system.
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Key words
Energy management,Optimization,Smart cities,Real-time systems,Microgrids,Plugs,Particle swarm optimization,Demand dispatch,demand response,multi-agent system,multi-microgrid,python agent development,prioritized plug-and-play,prioritized particle swarm optimization,real-time pricing and usage
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