Journal of Soft Computing in Civil Engineering | 卷:4 |
The Need for Recurrent Learning Neural Network and Combine Pareto Differential Algorithm for Multi-Objective Optimization of Real Time Reservoir Operations | |
Abiodun Ajala1  Semiu Akanmu2  Josiah Adeyemo3  | |
[1] Department of Mechanical Engineering, The Polytechnic Ibadan, Nigeria; | |
[2] North Dakota State University, United States; | |
[3] University of Washington, Seattle Campus, United States; | |
关键词: multi-objective optimization; reservoir operations; real time recurrent learning neural network; pareto; differential evolution; | |
DOI : 10.22115/scce.2020.226578.1204 | |
来源: DOAJ |
【 摘 要 】
Reservoir operations need computational models that can attend to both its real time data analytics and multi-objective optimization. This is now increasingly necessary due to the growing complexities of reservoir’s hydrological structures, ever-increasing its operational data, and conflicting conditions in optimizing the its operations. Past related studies have mostly attended to either real time data analytics, or multi-objective optimization of reservoir operations. This review study, based on systematic literature analysis, presents the suitability of Recurrent Learning Neural Network (RLNN) and Combine Pareto Multi-objective Differential Evolution (CPMDE) algorithms for real time data analytics and multi-objective optimization of reservoir operations, respectively. It also presents the need for a hybrid RLNN-CPMDE, with the use of CPMDE in the development of RLNN learning data, for reservoir operation optimization in a multi-objective and real time environment. This review is necessary as a reference for researchers in multi-objective optimization and reservoir real time operations. The gaps in research reported in this review would be areas of further studies in real time multi-objective studies in reservoir operation.
【 授权许可】
Unknown