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A rigorous approach of determining FAO56 dual crop coefficient using soil sensor measurements and inverse modeling techniques.

机译:使用土壤传感器测量和逆建模技术确定FAO56双重作物系数的严格方法。

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Accurate estimation of crop coefficients for evaporation and transpiration is of great importance in optimizing irrigation and modeling water and solute transfers in the soil-crop system. In this study we used inverse modeling techniques on soil sensor measurements at depths from the soil-crop system to estimate crop coefficients. An inverse model was rigorously formulated to infer the crop coefficients and the lengths of growth stages using the measured soil water potential at depths during crop growth. By applying a micro-genetic algorithm to the formulated inverse model, the optimum values of the crop coefficient and the corresponding length of growth stage were successfully deduced. It has been found that the lengths of both the initial and development growth stages of cabbage were 5 d shorter than those from the FAO56 (Irrigation and Drainage Paper by the FAO). The deduced crop coefficient for transpiration at the initial growth stage was 0.11; slightly smaller than 0.15 recommended by the FAO56, while at the mid-season growth stage, the deduced value of 0.95 was identical with the recommended value. Results show that the predictions of soil water potential using the obtained values of crop coefficients agreed well with the measurements throughout the entire growing period, indicating that the deduced crop coefficients were credible and appropriate for cabbage grown under the specific conditions of location and climate. It follows that the strategy presented in the study can enable accurate estimates of crop coefficients to be obtained from soil sensor measurements and inverse modeling techniques.
机译:准确估算作物蒸发和蒸腾系数对优化灌溉和模拟土壤作物系统中水和溶质的转移非常重要。在这项研究中,我们使用反建模技术对距土壤作物系统深度的土壤传感器进行测量,以估算作物系数。严格地建立了一个逆模型,以使用作物生长过程中深处测得的土壤水势来推断作物系数和生长阶段的长度。通过对建立的逆模型应用微遗传算法,成功推导了作物系数的最佳值和相应的生育期长度。已经发现,白菜的初始和发育阶段的长度都比FAO56(FAO的灌溉排水文件)中的长度短了5天。推导的初期生长期的蒸腾系数为0.11;略小于FAO56建议的0.15,而在中期生长阶段,推导的0.95值与建议值相同。结果表明,利用获得的作物系数值对土壤水势的预测与整个生长期的测量结果吻合得很好,表明推导的作物系数是可信的,适合在特定位置和气候条件下种植的白菜。因此,研究中提出的策略可以使从土壤传感器测量和逆建模技术获得的作物系数的准确估计成为可能。

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