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Combining remote sensing-simulation modeling and genetic algorithm optimization to explore water management options in irrigated agriculture.

机译:将遥感模拟模型与遗传算法优化相结合,探索灌溉农业中的水资源管理方案。

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We present an innovative approach to explore water management options in irrigated agriculture considering the constraints of water availability and the heterogeneity of irrigation system properties. The method is two-folds: (i) system characterization using a stochastic data assimilation procedure where the irrigation system properties and operational management practices are estimated using remote sensing (RS) data; and (ii) water management optimization where we explored water management options under various levels of water availability. We set up a soil-water-atmosphere-plant model (SWAP) in a deterministic-stochastic mode for regional modelling. The distributed data, e.g. sowing dates, irrigation practices, soil properties, depth to groundwater and water quality, required as inputs for the regional modelling were estimated by minimizing the residuals between the distributions of field-scale evapotranspiration (ET) simulated by the regional application of SWAP, and by surface energy balance algorithm for land (SEBAL) using two Landsat7 ETM+ images. The derived distributed data were used as inputs in exploring water management options. Genetic algorithm was used in data assimilation and water management optimizations. The case study was conducted in Bata minor (lateral canal), Kaithal, Haryana, India during 2000-2001 rabi (dry) season. Our results showed that under limited water condition, regional wheat yield could improve further if water and crop management practices are considered simultaneously and not independently. Adjusting sowing dates and their distribution in the irrigated area could improve the regional yield, which also complements the practice of deficit irrigation when water availability is largely a constraint. This result was also found in agreement with the scenario that water is non-limited with the exception that the farmers have more degrees of freedom in their agricultural activities. An improvement of the regional yield to 8.5% is expected under the current scenario..
机译:考虑到可用水的限制和灌溉系统特性的异质性,我们提出了一种创新的方法来探索灌溉农业中的水管理方案。该方法有两个方面:(i)使用随机数据同化程序进行系统表征,其中使用遥感(RS)数据估算灌溉系统的特性和运营管理实践; (ii)水资源管理优化,我们探索了各种可用水量下的水资源管理方案。我们以确定性-随机模式建立了区域模型的土壤-水-大气-植物模型(SWAP)。分布式数据通过最小化SWAP区域应用模拟的田间蒸发蒸腾量(ET)分布之间的残差,并通过以下方法估算区域模型输入所需的播种日期,灌溉习惯,土壤特性,地下水深度和水质:使用两张Landsat7 ETM +图像的土地表面能平衡算法(SEBAL)。所获得的分布式数据被用作探索水资源管理方案的输入。遗传算法用于数据同化和水管理优化。该案例研究是在2000-2001年狂犬病(干燥)季节在印度哈里亚纳邦凯塔尔的巴塔小(侧渠)进行的。我们的结果表明,在有限的水条件下,如果同时考虑水和作物管理实践,而不是独立考虑,则区域小麦产量将进一步提高。调整播种日期及其在灌区的分布可以提高区域单产,这在水的可利用性受到很大限制的情况下也可以补充赤字灌溉。还发现这一结果与水不受限制的情景相一致,除了农民在农业活动中享有更大的自由度。在当前情况下,预计该地区的单产将提高到8.5%。

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