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首页> 外文期刊>Agricultural Research >Performance Evaluation of AquaCrop and DSSAT-CERES for Maize Under Different Irrigation and Manure Application Rates in the Himalayan Region of India
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Performance Evaluation of AquaCrop and DSSAT-CERES for Maize Under Different Irrigation and Manure Application Rates in the Himalayan Region of India

机译:印度喜马拉雅大地区不同灌溉和肥大玉米水肿和DSSAT-CERES的绩效评价

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摘要

The agricultural modeling sector faces a lot of challenges when it comes to the evaluation of "what if scenarios due to the immense data requirement of common models specially the crop coefficients which are not usually available for all varieties. The present study assesses the performance of two commonly used crop models: AquaCrop (less data requiring model) and DSSAT-CERES (data-intensive model) for Maize (Zea mays) at higher Himalayan region of India. Model calibration and validation were done based on the combination of different irrigation and farmyard manure application rates. Furthermore, model comparison was done post-validation with field experimental data by comparing grain yield, total biomass yield, harvest index, total soil water content and leaf area index (LAI). Both AquaCrop and DSSAT-CERES underestimated yield by 1.0 and 0.2%, respectively. The corresponding models underestimated total aboveground biomass by 0.15 and 1.7%; however, DSSAT-CERES overestimated LAI by 0.5%, whereas AquaCrop underestimated by 0.1 %. Statistical tests for all the output variables indicate insignificant variation among the simulated and observed values. Results suggest that both AquaCrop and DSSAT-CERES are suitable for higher altitudes in the Himalayanregion of India. However, AquaCrop being parsimonious with relatively incomparable results to DSSAT-CERES and low data requirement is recommended.
机译:当涉及“如果由于普通模型的巨大数据需求的巨大数据需求的常规模型的巨大数据需求而特别是任何品种的作物系数,这是什么意义的,农业建模扇区面临着大量挑战。目前的研究评估了两个的性能常用的作物模型:印度较高喜马拉雅地区的玉米(Zea Mays)和DSSAT-CER(数据密集型模型)和DSSAT-CER(数据密集型模型)。模型校准和验证是根据不同灌溉和农家的组合完成的粪便申请率。此外,通过比较谷物产量,总生物质产量,收获指数,总土壤含水量和叶面积指数(Lai),通过对现场实验数据进行模型比较。Aquacrop和Dssat-Ceres都低估了产量1.0和0.2%。相应的模型低估了地上的地上生物量0.15%和1.7%;但是,Dssat-Ceres高估Lai 0.5 %,而Aquacrop低估了0.1%。所有输出变量的统计测试表明模拟和观察值之间的无关紧要。结果表明,Aquacrop和Dssat-Ceres都适用于印度喜马拉雅地区的高度高度。然而,建议使用对DSSAT-CER和低数据要求的相对无与伦比的结果进行促进的Aquacrop。

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