1. Robust optimization based optimal chiller loading under cooling demand uncertainty
- Author
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Armin Emamifar, Meysam Hosseini, Mahdi Moradi, Noradin Ghadimi, and Mohammadhossein Saeedi
- Subjects
Chiller ,Mathematical optimization ,Optimization problem ,Computer science ,business.industry ,020209 energy ,Scheduling (production processes) ,Energy Engineering and Power Technology ,Robust optimization ,02 engineering and technology ,Solver ,Industrial and Manufacturing Engineering ,Software ,020401 chemical engineering ,0202 electrical engineering, electronic engineering, information engineering ,Electric power ,0204 chemical engineering ,Robust control ,business - Abstract
Optimization of electrical power consumption in multi-chiller system leads to save more energy in building or industrial locations. Also, this optimization problem is one of the most important issues in multi-chiller system. Furthermore, uncertainty modeling of cooling demand is necessary because of variation in cooling demand should be considered. Therefore, this work proposes a robust optimization approach for uncertainty modeling of cooling demand in order to obtain robust chiller loading in the uncertain environment which cooling demand is supplied by multi-chiller system. Minimizing of electrical power consumption in multi-chiller system is considered as objective function. The proposed robust scheduling of multi-chiller system is modeled as non-linear programming which is solved via CONOPT solver under General Algebraic Modeling System (GAMS) optimization software. The proposed optimization model is studied in the deterministic and robust optimization strategies and obtained results are compared with each other. Also, the effects of changes in the robust control parameter are analyzed on optimal chiller loading which decision maker can select the decision without risk as risk-neutral strategy via deterministic method or the most robust decision as risk-averse strategy via robust optimization approach. Comparison results show that capability of proposed approach in the uncertain environment.
- Published
- 2019
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