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基于作物及遥感同化模型的小麦产量估测
引用本文:解毅,王鹏新,王蕾,张树誉,李俐,刘峻明.基于作物及遥感同化模型的小麦产量估测[J].农业工程学报,2016,32(20):179-186.
作者姓名:解毅  王鹏新  王蕾  张树誉  李俐  刘峻明
作者单位:1. 中国农业大学信息与电气工程学院,北京,100083;2. 陕西气象局,西安,710014
基金项目:国家自然科学基金资助项目(41371390)
摘    要:为提高陕西省关中平原冬小麦的估产精度,该文通过粒子滤波算法同化Landsat遥感数据反演的状态量叶面积指数(leaf area index,LAI)、土壤含水量(0~20 cm)、地上干生物量数据和CERES-Wheat模型模拟的状态量数据,分析小麦不同生育期的LAI、土壤含水量及生物量同化值和实测单产的线性相关性,以构建同化估产模型。结果表明,在返青期土壤含水量同化值和实测单产的相关性高于LAI、生物量同化值和实测单产的相关性,选择土壤含水量作为最优变量;在拔节期和抽穗-灌浆期同时选择LAI、土壤含水量及生物量作为最优变量;在乳熟期选择生物量作为最优变量。在小麦各生育时期同化最优变量的估产精度(R2=0.85)高于同时同化LAI、土壤含水量及生物量的估产精度,同时同化LAI、土壤含水量及生物量的估产精度高于同时同化LAI和土壤含水量(或LAI和地上干生物量、或土壤含水量和地上干生物量)的估产精度,表明在作物不同生育时期同化与产量相关性较大的变量对提高估产精度有重要作用。

关 键 词:模型  遥感  土壤水分  粒子滤波  冬小麦  估产  数据同化
收稿时间:2016/3/13 0:00:00
修稿时间:2016/8/10 0:00:00

Estimation of wheat yield based on crop and remote sensing assimilation models
Xie Yi,Wang Pengxin,Wang Lei,Zhang Shuyu,Li Li and Liu Junming.Estimation of wheat yield based on crop and remote sensing assimilation models[J].Transactions of the Chinese Society of Agricultural Engineering,2016,32(20):179-186.
Authors:Xie Yi  Wang Pengxin  Wang Lei  Zhang Shuyu  Li Li and Liu Junming
Institution:1. College of Information and Electrical Engineering, China Agricultural University, Beijing 100083, China,1. College of Information and Electrical Engineering, China Agricultural University, Beijing 100083, China,1. College of Information and Electrical Engineering, China Agricultural University, Beijing 100083, China,2. Shaanxi Provincial Meteorological Bureau, Xi''an 710014, China,1. College of Information and Electrical Engineering, China Agricultural University, Beijing 100083, China and 1. College of Information and Electrical Engineering, China Agricultural University, Beijing 100083, China
Abstract:Abstract: Data assimilation (DA) has been recognized as a promising approach for regional crop growth monitoring and yield estimation. The widely used DA method, ensemble Kalman filter (EnKF), holds the assumption that the involved probability density functions (PDFs) are Gaussian, and the evolution of the filter can be governed only by its second-order characteristics, leading to a significant loss of information. In comparison with the EnKF, the particle filter (PF) has no restrictive assumption regarding the forms of the PDFs, and thus can be applied to any nonlinear and non-Gaussian systems. Different researchers have used leaf area index (LAI), vegetation indices and soil moisture as the state variables in agricultural data-assimilation systems for estimating crop yields. However, the assimilation of variables that are not very important for crop yields (e.g., LAI at the maturity stage) may decrease the accuracy of yield estimations. Conversely, assimilating highly yield-related variables is important for improving yield estimates. To improve winter wheat yield esimation in the Guanzhong Plain, China and determine whether assimilating highly yield-related variables at each wheat growth stage improved the accuracy of the yield estimation, daily LAI, soil moisture (0-20 cm) and aboveground dry biomass simulated by the CERES-Wheat model were assimilated from the LAI, soil moisture and biomass retrieved from Landsat data using the PF algorithm, for obtaining daily assimilated LAI, soil moisture and biomass values. Then, the daily assimilated LAI and biomass values during the growth stages of winter wheat, including the green-up, jointing, heading-filling and milk stages, were accumulated to obtain the accumulated LAI and biomass values. Linear regression analyses were performed to examine the relationships between accumulated LAI, accumulated biomass or assimilated soil moisture and the field-measured yields respectively for determining the optimal-assimilation variables. The results showed that the PF algorithm combined the remotely sensed LAI, soil moisture and biomass values with the phenological characteristics of simulated LAI, soil moisture and biomass trajectories, which improved the daily LAI, soil moisture and biomass estimation. The field measurements for the sampling sites were compared with the assimilated and simulated LAI, biomass and soil moisture. The RMSE of 0.61 m2/m2 and 790.65 kg/hm2 of the assimilated LAI and biomassvalues were 0.25 m2/m2 and 154.21 kg/hm2 lower than those of the simulated LAI and biomass values. Similarly, the RMSE of 0.017 mm3/mm3 of the assimilated soil moisture value was 0.012 mm3/mm3 lower than that of the simulated soil moisture value. At the green-up stage, the linear correlation between the assimilated soil moisture and the field-measured yields was higher than those between the accumulated LAI and the yields or between the accumulated biomass and the yields, that soil moisture was chosen as the optimal-assimilation variable for the green-up stage. At the jointing and heading-filling stages, the accumulated LAI, accumulated biomass or assimilated soil moisture were all highly correlated to the yields, respectively, and thus all of them were chosen as the optimal-assimilation variables for the 2 stage. In addition, biomass was selected as the optimal-assimilation variable for the milk stage. The optimal-assimilation yield estimation model, established based on the optimal-assimilation variables at each growth stage, achieved better estimation accuracy for wheat yields (R2=0.91, RMSE=207.76 kg/hm2) than the yield estimation model established based on the assimilation of LAI, soil moisture and biomass simultaneously (R2=0.84, RMSE=281.69 kg/hm2). Moreover, the yield estimation accuracy by assimilating LAI, soil moisture and biomass was higher than that by assimilating LAI and soil moisture (or soil moisture and biomass, or LAI and soil moisture). Therefore, assimilating highly yield-related variables at each crop growth stage provides reliable and promising methods for improving crop yield estimates.
Keywords:models  remote sensing  soil moisture  particle filter  winter wheat  crop yield estimation  data assimilation
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