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Improvement in estimation of soil water deficit by integrating airborne imagery data into a soil water balance model

机译:通过将航空影像数据集成到土壤水平衡模型中,改善对土壤水分亏缺的估算

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Abstract: In this study, an approach that integrates airborne imagery data as inputs was used to improve the estimation of soil water deficit (SWD) for maize and sunflower grown under full and deficit irrigation treatments. The proposed model was applied to optimize the maximum total available soil water (TAWr) by minimizing the difference between a water stress coefficient ks and crop water stress index (1-CWSI). The optimal value of maximum TAWr was then used to calibrate a soil water balance model which in turn updated the estimation of soil water deficit. The estimates of SWD in the soil profile of both irrigated maize and sunflower fields were evaluated with the crop root zone SWD derived from neutron probe measurements and the FAO-56 SWD procedure. The results indicated a good agreement between the estimated SWD from the proposed approach and measured SWD for both maize and sunflower. The statistical analyses indicated that the maximum TAWr estimated from CWSI significantly improved the estimates of SWD, which reduced the mean absolute error (MAE) and root mean square error (RMSE) by 40% and 44% for maize and 22% for sunflower, compared with the FAO-56 model. The proposed procedure works better for crops under deficit irrigation condition. With the availability of higher spatial and temporal resolution airborne imagery during the growing season, the optimization procedure can be further improved. Keywords: soil water deficit, soil water balance model, airborne imagery, total available water, CWSI, deficit irrigation DOI: 10.3965/j.ijabe.20171003.3081 Citation: Zhang H H, Han M, Chávez J L, Lan Y B. Improvement in estimation of soil water deficit by integrating airborne imagery data into a soil water balance model. Int J Agric & Biol Eng, 2017; 10(3): 37–46.
机译:摘要:在这项研究中,采用了一种将航空影像数据作为输入的方法,以改进对完全灌溉和亏缺灌溉条件下种植的玉米和向日葵的土壤水分亏缺(SWD)的估算。通过最小化水分胁迫系数ks和作物水分胁迫指数(1-CWSI)之间的差异,将拟议的模型应用于优化最大总可用土壤水分(TAWr)。然后,将最大TAWr的最佳值用于校准土壤水分平衡模型,进而更新土壤水分亏缺的估算值。通过中子探针测量和FAO-56 SWD程序得出的作物根区SWD,对灌溉玉米和向日葵田土壤剖面中的SWD进行了评估。结果表明,从建议的方法估算的社署与实测的玉米和向日葵社署之间有很好的一致性。统计分析表明,通过CWSI估算的最大TAWr显着改善了SWD的估算,与之相比,玉米的平均绝对误差(MAE)和均方根误差(RMSE)降低了40%,44%和向日葵的22%采用FAO-56模式。拟议的程序对缺水灌溉条件下的农作物效果更好。由于在生长季节可获得更高的时空分辨率的航空影像,因此可以进一步改善优化程序。关键词:土壤水分亏缺,土壤水分平衡模型,航空影像,总可利用水量,CWSI,亏缺灌溉DOI:10.3965 / j.ijabe.20171003.3081引用:张洪华,韩敏,查韦斯·杰林,兰永保。通过将航空影像数据整合到土壤水平衡模型中来实现土壤水分亏缺。国际农业与生物工程杂志,2017; 10(3):37-46。

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