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Optimization of multipurpose reservoir operation using evolutionary algorithms / Mohammed Heydari

机译:利用进化算法/ mohammed Heydari优化多用途水库运行

摘要

Today, the water resources are among the great human treasures. Optimal reservoir operation, due to the numerous needs, shortcomings and restrictions on the use of these resources is necessary. The main purpose of this study was presenting a model for an optimal operation of multi-purpose dams of water resources systems. In this study, a hybrid evolutionary algorithm model (HPSOGA) and linear programming (LP) has been developed for optimizing the operation of reservoirs with the objectives of maximizing hydroelectric power generation, meeting the water demand for agricultural purposes and predicting the cost and estimating amount of agriculture products.udAn improved particle swarm algorithm (HPSOGA) is used to solve complex problems of water resources optimization. One of the main problems of this method is premature convergence and to improve this problem, the compound of the particle swarm algorithm and genetic algorithm were evaluated. The basis of this compound is in such a way that the advantages of the Particle Swarm Optimization (PSO) algorithm and Genetic Algorithm (GA) have been applied simultaneously. Two efficient operators of Genetic Algorithm, that is, mutation and crossover are used in the obtained algorithm, the mutation causes an increase in the diversity of the population and the intersection of information between the particles of the population. To evaluate the hybrid algorithm, optimization of hydro-power energy of Karun dams were considered.udCases studied in this research were reservoirs of Karun I, Karun III and Karun IV. The three dams are located in a consecutive series of Karun River in Iran. In order to optimize, 41 years of the common statistical period were used. Then, the optimal output of the problem in the form of curves that represent the desired amount of discharge from the reservoir at a specified time interval were prepared and compared with the Lingo model. The regression analysis and artificial neural networks (ANN) were used to check the quality of the results. By using the Weibull distribution, the base year which is consistent with the percent probability of agricultural needs was determined for downstream of the Karun III dam. To achieve the best cultivation pattern, initially the arable land was categorized into 6 classes and only 2100 hectares of agricultural irrigable land that had the best agricultural conditions were studied. The amount of water allocated to the mentioned land was about 6.240 MCM. Seventeen important agricultural products of the region were used for the modelling. The optimization problem was modelled with the aim of maximizing the ultimate value of agriculture in terms of the number of acres of each crop. The described model was resolved by linear programming and evolutionary algorithms in Microsoft Excel (Solver). The results showed full compliance of these two methods. To estimate and predict the cost of the different stages of farming, and the cost of fertilizers needed for agricultural products, the obtained results of cultivation pattern per acre multiplied to cost breakdown values in tables taken from the ministry of agriculture.udComparing the results of the combination of the PSO and GA algorithms makes clear that the obtained algorithm increased flexibility and improving the ability of the PSO algorithm to create the population with high-speed convergence and it is very applicable to solve the problems of operation optimization of water resources. To compare the accuracy of the results, three criteria were used for RMSE, NRMSD and CV. In all the obtained results, i.e. optimum release, optimum storage and the produced energy, for all dams, the accuracy of HPSOGA was better than GA and GA accuracy was remarkably better than PSO. However, exceptionally, the accuracy of the GA algorithm was approximately 34% better than the HPSOGA algorithm for only the optimal storage capacity at Karun IV Dam. The overall results show that the optimal values have higher importance in the preparation of the rule curve, especially in periods of drought.
机译:今天,水资源已成为人类的宝贵财富。由于众多需求,需要优化油藏运行,这些资源的缺点和限制是必要的。这项研究的主要目的是提出一个水资源系统多功能水坝的最优运行模型。在这项研究中,开发了一种混合进化算法模型(HPSOGA)和线性规划(LP),以优化水库的运行,目标是最大化水力发电,满足农业用水需求,预测成本和估算量 ud使用改进的粒子群算法(HPSOGA)解决水资源优化的复杂问题。该方法的主要问题之一是过早收敛,为解决该问题,对粒子群算法和遗传算法的组合进行了评估。该化合物的基础在于,粒子群优化(PSO)算法和遗传算法(GA)的优点已被同时应用。遗传算法中使用了两个有效的遗传算法算子,即变异和交叉,变异导致种群多样性和种群粒子之间信息交集的增加。为了评估混合算法,考虑了Karun大坝的水电能量优化。 ud本研究研究的案例是Karun I,Karun III和Karun IV的水库。这三个水坝位于伊朗的卡伦河连续系列中。为了优化,使用了41年的共同统计期。然后,以曲线的形式表示问题的最佳输出,该曲线代表在指定的时间间隔内从储层中排放的所需水量,并将其与Lingo模型进行比较。回归分析和人工神经网络(ANN)用于检查结果的质量。通过使用Weibull分布,确定了Karun III大坝下游的基准年,该基准年与农业需求的概率百分比一致。为了获得最佳耕作模式,最初将耕地分为6类,仅研究了具有最佳农业条件的2100公顷农业灌溉土地。分配给上述土地的水量约为6.240 MCM。该区域使用了十七种重要的农产品进行建模。对优化问题进行了建模,目的是根据每种作物的英亩数最大化农业的最终价值。所描述的模型通过Microsoft Excel(Solver)中的线性编程和进化算法解析。结果表明这两种方法完全兼容。为了估算和预测不同农业生产阶段的成本以及农产品所需的肥料成本,将获得的每英亩耕种方式的结果乘以农业部表格中的成本细分值。 PSO算法和GA算法的结合表明,所获得的算法增加了灵活性,提高了PSO算法创建高速收敛种群的能力,非常适用于解决水资源运行优化问题。为了比较结果的准确性,对RMSE,NRMSD和CV使用了三个标准。在所有获得的结果中,即所有大坝的最佳释放,最佳存储和产生的能量,HPSOGA的精度均优于GA,GA的精度明显优于PSO。但是,仅在Karun IV大坝的最佳存储容量下,GA算法的精度比HPSOGA算法高出约34%。总体结果表明,最佳值在拟定规则曲线中具有更高的重要性,尤其是在干旱时期。

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    Mohammed Heydari;

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