...
首页> 外文期刊>Agricultural Water Management >Estimation of maize yield by assimilating biomass and canopy cover derived from hyperspectral data into the AquaCrop model
【24h】

Estimation of maize yield by assimilating biomass and canopy cover derived from hyperspectral data into the AquaCrop model

机译:通过将高光谱数据衍生的生物质和冠层覆盖分化为Aquacrop模型来估算玉米产量

获取原文
获取原文并翻译 | 示例
           

摘要

The accurate and timely estimation of temporal and spatial changes in crop growth and yield before harvesting is essential for ensuring global food security. The integration of remote sensing data and crop models is a potential approach for the estimation of key crop growth parameters and crop yields. Therefore, the aim of this study was to assimilate biomass and canopy cover (CC) derived from vegetation indices into the AquaCrop model using the particle swarm optimization (PSO) algorithm in order to obtain a more accurate estimation of CC, biomass, and yield for maize. The results show that, compared to other vegetation indices, the enhanced vegetation index (EVI) and the three-band water index (TBWI) can be used to obtain a better estimation of CC (R-2 = 0.78 and root-mean-square error (RMSE) =9.84%) and biomass (R-2 = 0.76 and RMSE = 2.84 ton/ha), respectively. Additionally, it was found that the data assimilation approaches in which only CC was used as a state variable (scheme SVcc) and only biomass was used as a state variable (scheme SVbio) can be used to obtain more accurate estimations of CC (R-2 = 0.83 and RMSE = 8.12%) and biomass (R-2 = 0.81 and RMSE = 2.51 ton/ha), respectively; however, larger differences were found between the measured and estimated values of one variable (i.e., CC or biomass) when the other variable (i.e., biomass or CC) was used as the only state variable during the data assimilation. The data assimilation approach in which both CC and biomass were used as state variables (scheme SVcc+bio) produced a robust result, with the estimation accuracy being fairly close to that obtained using the single-variable (SVcc or SVbio) data assimilation approaches. The estimation accuracy for maize yield was slightly better when using a double-variable data assimilation approach (R-2 = 0.78 and RMSE = 1.44 ton/ha) than when using a single-variable data assimilation approach. In summary, this study presents a robust approach for increasing the estimation accuracy for maize CC, biomass, and yield, and for optimizing field management strategies, by assimilating remote sensing data into the AquaCrop model at a regional scale.
机译:在收获之前,准确和及时估计作物生长和产量的时间和空间变化对于确保全球粮食安全是必不可少的。遥感数据和作物模型的集成是估计关键作物生长参数和作物产量的潜在方法。因此,本研究的目的是使用粒子群优化(PSO)算法使从植被指数中衍生自植被指数的生物质和冠层覆盖(CC),以获得更准确的CC,生物质和产量的估计玉米。结果表明,与其他植被指数相比,增强的植被指数(EVI)和三带水指数(TBWI)可用于获得CC的更好估计(R-2 = 0.78和根均线误差(RMSE)= 9.84%)和生物量(R-2 = 0.76和RMSE = 2.84吨/公顷)。另外,发现仅使用CC作为状态变量(方案SVCC)和仅使用生物量作为状态变量(方案SVBIO)的数据同化方法可用于获得更准确的CC估计(R- 2 = 0.83和RMSE = 8.12%)分别和生物量(R-2 = 0.81和RMSE = 2.51吨/公顷);然而,当在数据同化过程中使用另一个变量(即,生物量或CC)作为唯一状态变量时,在一个变量(即,CC或生物量)的测量和估计值之间存在较大的差异。使用CC和生物质的数据同化方法用作状态变量(方案SVCC + BIO)产生了稳健的结果,估计精度与使用单变量(SVCC或SVBIO)数据同化方法相当接近。使用双可变数据同化方法(R-2 = 0.78和RMSE = 1.44吨/公顷)时,玉米产量的估计精度略微好于比使用单变量数据同化方法。总之,本研究提高了一种稳健的方法,用于提高玉米CC,生物质和产量的估计准确度,并通过将遥感数据在区域规模中吸收到Aquacrop模型中来优化现场管理策略。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号