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Optimal crop plans for a multi-reservoir system having intra-basin water transfer using multi-objective evolutionary algorithms coupled with chaos

机译:利用多目标进化算法与混沌相结合的多储层系统具有盆地水分的最佳作物计划

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Optimizing a multi-reservoir system is complicated, since the operation of one reservoir depends on other reservoir and may also have conflicting multiple objectives. The conflicting purposes of a multi-reservoir system requires a systematic multi-objective study. Recently, multi-objective evolutionary algorithms (MOEAs) have been widely used for the multi-objective analysis of the reservoir systems. However, the simple MOEAs result in premature convergence and local optimal solution for complex non-linear multi-objective optimization problems. To improve the performance and maintain the diversity in the population, chaos is being combined with the evolutionary algorithms for optimizing complex problems. In the present study, the chaos algorithm is coupled with MOEAs such as non-dominated genetic algorithm-II (CNSGA-II) and multi-objective differential evolution algorithm (CMODE) to derive an optimal crop planning for a multi-reservoir system having intra-basin water transfer. The model is developed with the objective of maximizing the net benefits and maximizing the crop production, subject to various physical, land and water availability constraints. The resulted optimal policy is further assessed using a simulation model and its performance is evaluated using various statistical indices. It is found that CMODE has resulted in slightly higher net benefits of Rs. 1921.77 Million and 1201.55 thousand tons of crop production with an irrigation intensity of 106.29% compared to other techniques used in this study. It has also resulted in an optimal spatial and temporal intra-basin water transfer from the upstream reservoirs to the downstream reservoir. The simulation of optimal results showed that the optimal policies obtained from CMODE performed well for longer period with less irrigation deficits. All the reservoirs in the system achieved more than 95% reliability in meeting the irrigation demands and intra-basin water transfer. (C) 2017 Elsevier B.V. All rights reserved.
机译:优化多储层系统复杂,因为一个水库的操作取决于其他水库,并且也可能具有冲突的多个目标。多水库系统的冲突目的需要系统的多目标研究。最近,多目标进化算法(MOEAS)已广泛用于储层系统的多目标分析。然而,简单的MOEAS导致复杂非线性多目标优化问题的早熟收敛和局部最优解。为了提高性能并保持人口的多样性,混沌与进化算法相结合,以优化复杂问题。在本研究中,混沌算法与MOEAS偶联,例如非主导的遗传算法-II(CNSGA-II)和多目标差分演进算法(CMODE),以获得具有帧内多储层系统的最佳作物规划 - 在水中转移。该模型是通过最大化净效益和最大化作物生产的目标,而是通过各种物理,陆地和水可用性约束来实现的目标。使用仿真模型进一步评估所产生的最佳政策,并使用各种统计指标进行评估其性能。发现CMODE导致卢比的净效益略高。与本研究中使用的其他技术相比,192177万和1201.5.5万吨的作物产量为灌溉强度为106.29%。它还导致从上游储存器到下游储层的最佳空间和盆内水中的水。最佳结果的模拟表明,从CMODE获得的最佳策略在更长的时间内完成较少的灌溉缺陷。系统中的所有储层在满足灌溉需求和盆内水转移方面取得了超过95%的可靠性。 (c)2017 Elsevier B.v.保留所有权利。

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