Soares, JoãoVale, ZitaBorges, NunoLezama, FernandoKagan, Nelson2021-03-092021-03-092017978-1-5090-4000-1http://hdl.handle.net/10400.22/17321With the high penetration of renewable generation in Smart Grids (SG), the uncertainty behavior associated with the forecast of weather conditions possesses a new degree of complexity in the Energy Resource Management (ERM) problem. In this paper, a Multi-Objective Particle Swarm Optimization (MOPSO) methodology is proposed to solve ERM problem in buildings with penetration of Distributed Generation (DG) and Electric Vehicles (EVs) and considering the uncertainty of photovoltaic (PV) generation. The proposed methodology aims to maximize profits while minimizing CO 2 emissions. The uncertainty of PV generation is modeled with the use of Monte Carlo simulation in the evaluation process of the MOPSO core. Also, a robust optimization approach is adopted to select the best solution for the worst-case scenario of PV generation. A case study is presented using a real building facility from Brazil, to verify the effectiveness of the implemented robust MOPSO.engEnergy Resources ManagementCO2 EmissionsMulti-Objective Particle Swarm OptimizationRobust OptimizationMulti-objective robust optimization to solve energy scheduling in buildings under uncertaintyconference object10.1109/ISAP.2017.8071417