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将哨兵-1和哨兵-2数据中的叶面积指数和土壤湿度联合同化到WOFOST模型中用于冬小麦产量估算

Joint Assimilation of Leaf Area Index and Soil Moisture from Sentinel-1 and Sentinel-2 Data into the WOFOST Model for Winter Wheat Yield Estimation.

作者信息

Pan Haizhu, Chen Zhongxin, Allard de Wit, Ren Jianqiang

机构信息

Key Laboratory of Agricultural Remote Sensing, Ministry of Agriculture, Institute of Agricultural Resources and Regional Planning, Chinese Academy of Agricultural Science, Beijing 100081, China.

Wageningen Environmental Research, P.O. Box 47, 6700 AA Wageningen, The Netherlands.

出版信息

Sensors (Basel). 2019 Jul 18;19(14):3161. doi: 10.3390/s19143161.

Abstract

It is well known that timely crop growth monitoring and accurate crop yield estimation at a fine scale is of vital importance for agricultural monitoring and crop management. Crop growth models have been widely used for crop growth process description and yield prediction. In particular, the accurate simulation of important state variables, such as leaf area index (LAI) and root zone soil moisture (SM), is of great importance for yield estimation. Data assimilation is a useful tool that combines a crop model and external observations (often derived from remote sensing data) to improve the simulated crop state variables and consequently model outputs like crop total biomass, water use and grain yield. In spite of its effectiveness, applying data assimilation for monitoring crop growth at the regional scale in China remains challenging, due to the lack of high spatiotemporal resolution satellite data that can match the small field sizes which are typical for agriculture in China. With the accessibility of freely available images acquired by Sentinel satellites, it becomes possible to acquire data at high spatiotemporal resolution (10-30 m, 5-6 days), which offers attractive opportunities to characterize crop growth. In this study, we assimilated remotely sensed LAI and SM into the Word Food Studies (WOFOST) model to estimate winter wheat yield using an ensemble Kalman filter (EnKF) algorithm. The LAI was calculated from Sentinel-2 using a lookup table method, and the SM was calculated from Sentinel-1 and Sentinel-2 based on a change detection approach. Through validation with field data, the inverse error was 10% and 35% for LAI and SM, respectively. The open-loop wheat yield estimation, independent assimilations of LAI and SM, and a joint assimilation of LAI + SM were tested and validated using field measurement observation in the city of Hengshui, China, during the 2016-2017 winter wheat growing season. The results indicated that the accuracy of wheat yield simulated by WOFOST was significantly improved after joint assimilation at the field scale. Compared to the open-loop estimation, the yield root mean square error (RMSE) with field observations was decreased by 69 kg/ha for the LAI assimilation, 39 kg/ha for the SM assimilation and 167 kg/ha for the joint LAI + SM assimilation. Yield coefficients of determination (R) of 0.41, 0.65, 0.50, and 0.76 and mean relative errors (MRE) of 4.87%, 4.32%, 4.45% and 3.17% were obtained for open-loop, LAI assimilation alone, SM assimilation alone and joint LAI + SM assimilation, respectively. The results suggest that LAI was the first-choice variable for crop data assimilation over SM, and when both LAI and SM satellite data are available, the joint data assimilation has a better performance because LAI and SM have interacting effects. Hence, joint assimilation of LAI and SM from Sentinel-1 and Sentinel-2 at a 20 m resolution into the WOFOST provides a robust method to improve crop yield estimations. However, there is still bias between the key soil moisture in the root zone and the Sentinel-1 C band retrieved SM, especially when the vegetation cover is high. By active and passive microwave data fusion, it may be possible to offer a higher accuracy SM for crop yield prediction.

摘要

众所周知,及时进行作物生长监测并在精细尺度上准确估算作物产量对于农业监测和作物管理至关重要。作物生长模型已被广泛用于描述作物生长过程和预测产量。特别是,准确模拟重要的状态变量,如叶面积指数(LAI)和根区土壤湿度(SM),对于产量估算非常重要。数据同化是一种有用的工具,它将作物模型与外部观测数据(通常来自遥感数据)相结合,以改善模拟的作物状态变量,进而提高模型输出,如作物总生物量、水分利用和谷物产量。尽管数据同化很有效,但由于缺乏高时空分辨率的卫星数据来匹配中国典型农业的小块田地规模,在中国区域尺度上应用数据同化监测作物生长仍然具有挑战性。随着哨兵卫星获取的免费图像的可用性,以高时空分辨率(10 - 30米,5 - 6天)获取数据成为可能,这为表征作物生长提供了有吸引力的机会。在本研究中,我们使用集合卡尔曼滤波器(EnKF)算法将遥感LAI和SM同化到世界粮食研究(WOFOST)模型中以估算冬小麦产量。LAI通过查找表方法从哨兵 - 2数据计算得出,SM基于变化检测方法从哨兵 - 1和哨兵 - 2数据计算得出。通过与田间数据验证,LAI和SM的反演误差分别为10%和35%。在2016 - 2017年冬小麦生长季节,利用中国衡水市的田间测量观测数据对开环小麦产量估算、LAI和SM的独立同化以及LAI + SM的联合同化进行了测试和验证。结果表明,在田间尺度上进行联合同化后,WOFOST模拟的小麦产量准确性显著提高。与开环估算相比,LAI同化时与田间观测的产量均方根误差(RMSE)降低了69千克/公顷,SM同化时降低了39千克/公顷,LAI + SM联合同化时降低了167千克/公顷。开环、单独LAI同化、单独SM同化以及LAI + SM联合同化的产量决定系数(R)分别为0.41、0.65、0.50和0.76,平均相对误差(MRE)分别为4.87%、4.32%、4.45%和3.17%。结果表明,与SM相比,LAI是作物数据同化的首选变量,当同时有LAI和SM卫星数据时,联合数据同化具有更好的性能,因为LAI和SM具有相互作用。因此,将20米分辨率的哨兵 - 1和哨兵 - 2的LAI和SM联合同化到WOFOST中提供了一种改进作物产量估算的稳健方法。然而,根区关键土壤湿度与哨兵 - 1 C波段反演的SM之间仍然存在偏差,特别是在植被覆盖度高时。通过主动和被动微波数据融合,可能为作物产量预测提供更高精度的SM。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/eb6f/6679303/5b3df832404f/sensors-19-03161-g002.jpg

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