Article ID Journal Published Year Pages File Type
1134810 Computers & Industrial Engineering 2012 24 Pages PDF
Abstract

Electric utility resource planning traditionally focuses on conventional energy supplies such as coal, natural gas, and oil. Nowadays, planning of renewable energy generation as well as its side necessity of storage capacities have become equally important due to the increasing growth in energy demand, insufficiency of natural resources, and newly established policies for low carbon footprint. In this study, we propose to develop a comprehensive simulation based decision making framework to determine the best possible combination of resource investments for electric power generation and storage capacities. The proposed tool involves a combined continuous-discrete modular modeling approach for processes of different nature that exist within this complex system, and will help the utility companies conduct resource planning via employed multiobjective optimization techniques in a realistic simulation environment. The distributed power system considered here has four major components including (1) energy generation via a solar farm, a wind farm, and a fossil fuel power station, (2) storage via compressed air energy storage system, and batteries, (3) transmission via a bus and two main substations, and (4) demand of industrial, commercial, residential and transportation sectors. The proposed approach has been successfully demonstrated for the electric utility resource planning at a scale of the state of Florida.

► We develop a decision making framework for power generation and storage capacities. ► A continuous-discrete modular modeling approach is utilized for different processes. ► Multi-objective optimization is employed in a realistic simulation environment. ► Framework has energy generation, storage, transmission, and demand components. ► Framework is demonstrated for electricity resource planning in the state of Florida.

Related Topics
Physical Sciences and Engineering Engineering Industrial and Manufacturing Engineering
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