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Assessment of a parallel evolutionary optimization approach for efficient management of coastal aquifers

机译:评估有效管理沿海含水层的并行进化优化方法

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This study presents a parallel evolutionary optimization approach to determine optimal management strategies of large-scale coastal groundwater problems. The population loops of evolutionary algorithms (EA) are parallelized using shared memory parallelism to address the high computational demands of such applications. This methodology is applied to solve the management problems in an aquifer system in Kish Island, Iran using a three-dimensional density-dependent groundwater numerical model. EAs of continuous ant colony optimization (CACO), particle swarm optimization, and genetic algorithm are utilized to solve the optimization problems. By implementing the parallelization strategy, a speedup ratio of up to 3.53 on an 8-core processor is achieved in comparison with serial model. Based on solution quality and computational time criteria, the CACO robustness is observed in comparison to other EAs. Moreover, the optimization solution of the case study for a scenario of sea-level-rise indicates that a reduction of 20% in groundwater extraction rate is mainly due to the land-surface inundation caused by sea-level rise. (C) 2015 Elsevier Ltd. All rights reserved.
机译:这项研究提出了一种并行的进化优化方法,以确定大规模的沿海地下水问题的最优管理策略。演化算法(EA)的填充循环使用共享内存并行性进行并行处理,以解决此类应用程序的高计算需求。该方法用于三维密度依赖的地下水数值模型,用于解决伊朗基什岛含水层系统中的管理问题。利用连续蚁群优化(CACO),粒子群优化和遗传算法的EA解决了优化问题。通过实施并行化策略,与串行模型相比,在8核处理器上的加速比达到3.53。基于解决方案质量和计算时间标准,与其他EA相比,可以观察到CACO的鲁棒性。此外,针对海平面上升情况的案例研究的优化解决方案表明,地下水提取率下降了20%,主要是由于海平面上升引起的地表淹没。 (C)2015 Elsevier Ltd.保留所有权利。

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