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A hybrid neural-genetic algorithm for reservoir water quality management

机译:水库水质管理的混合神经遗传算法

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A combined neural network and genetic algorithm (GA) was developed for water quality management of Feitsui Reservoir in Taiwan. First, an artificial neural network (ANN) model was employed to simulate the behavior of nutrient loads into the reservoir. The data from watershed loads, precipitation in the watershed, and outflow were used in the ANN model to forecast the total phosphorus concentration in the reservoir. A 6-year (1992-97) record of water quality data was used for network training, and additional data collected in 1998-2000 were used for model verification. Further, a GA was used with this ANN model to optimize the control of nutrient loads from the watershed. The GA was used as a search strategy to determine the proper reduction rates of nutrient loads from the watershed so that the objective function could be as close to the optimal value as possible. The study results indicate that the ANN model can effectively simulate the dynamics of reservoir water quality. The GA is able to identify control schemes that reduce the in-reservoir total phosphorus concentration by as much as 60%, and water quality in the reservoir can be expected to achieve an oligotrophic (most of the time) or mesotrophic level if the watershed nutrient loads are reduced by 10-80%.
机译:开发了神经网络和遗传算法相结合的台湾飞水水库水质管理系统。首先,采用人工神经网络(ANN)模型来模拟营养物向水库中的负荷行为。来自流域负荷,流域降水和流出的数据被用于ANN模型中,以预测储层中的总磷浓度。网络培训使用了6年(1992-97)的水质数据记录,而1998-2000年收集的其他数据用于模型验证。此外,遗传算法与该ANN模型一起使用,以优化对流域养分负荷的控制。遗传算法被用作一种搜索策略,以确定流域中营养物负荷的适当降低率,从而使目标函数尽可能接近最佳值。研究结果表明,人工神经网络模型可以有效地模拟水库水质动态。遗传算法能够确定控制方案,使储层中的总磷浓度降低多达60%,如果流域养分丰富,则储层中的水质有望达到贫营养(大部分时间)或中等营养水平负载减少了10-80%。

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