Subject: Data Article | R858-859.7 | Computer applications to medicine. Medical informatics | Science (General) | Q1-390
Optimization instances relate to the input and output data stemming from optimization problems in general. Typically, an optimization problem consists of an objective function to be optimized (either minimized or maximized) and a set of constraints. Thus, objective and ... View more
Cano, E.L., Groissböock, M., Moguerza, J.M., Stadler, M.. A strategic optimization model for energy systems planning. Energy Build.. 2014; 81 (0): 416-423
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