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Optimal Components Capacity Based Multi-Objective Optimization and Optimal Scheduling Based MPC-optimization Algorithm in Smart Apartment Buildings

Energy and buildings(2023)

引用 7|浏览3
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摘要
In this study, we propose an optimization algorithm that achieves both optimal component capacity and high effi-ciency operation of a Smart Apartment Building (SAB). Multi-objective optimization is used to optimize component capacity, with the goal of minimizing the total cost and carbon footprint of the SAB. A Pareto front is then gener-ated to present flexibility to the SAB operator. For high efficiency operations, a Model Predictive Control (MPC)-based optimal scheduling method is used. This method can achieve higher operational efficiency than conventional methods by taking future data into account. Furthermore, it avoids over-integration of components by evaluating component capacities determined by a multi-objective optimization problem. As a result, compared to the base case, the MPC algorithm reduces operation costs by 73.0% and carbon emissions by 49.0%.
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关键词
Multi -objective optimization problem,Model predictive control,Distributed generation,Battery energy storage system,MILP
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