Biniam Sisheber , Michael Marshall , Daniel Mengistu , Andrew Nelson
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We used Landsat and MODIS data fusion to obtain frequent and spatially detailed LAI estimates and assimilated at each main maize growth stage to evaluate the effect of timing and frequency of LAI assimilation. The jointing to grain filling stage observations were more important (RMSE = 117 g/m<sup>2</sup>, rRMSE = 16%) than other growth stages to improve yield estimation. Using LAI estimates at key crop growth stages was more influential than the frequency of LAI estimates. Reasonably accurate yield estimation (rRMSE = 20%) was obtained using the pre-peak growth stage LAI observations, suggesting that the method is suitable for in-season yield forecasting. LAI retrieval errors from EO data, particularly at the early and late growth stages, were the source of yield estimation uncertainty. Therefore, assimilation of other EO-derived biophysical variables and improving LAI retrieval accuracy from EO data could further improve crop growth model performance in smallholder agricultural systems.</p></div>","PeriodicalId":53227,"journal":{"name":"Remote Sensing Applications-Society and Environment","volume":"36 ","pages":"Article 101272"},"PeriodicalIF":3.8000,"publicationDate":"2024-06-26","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://www.sciencedirect.com/science/article/pii/S2352938524001368/pdfft?md5=c2c99707ed359353684913ba44b8347c&pid=1-s2.0-S2352938524001368-main.pdf","citationCount":"0","resultStr":"{\"title\":\"The influence of temporal resolution on crop yield estimation with Earth Observation data assimilation\",\"authors\":\"Biniam Sisheber , Michael Marshall , Daniel Mengistu , Andrew Nelson\",\"doi\":\"10.1016/j.rsase.2024.101272\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<div><p>Crop growth simulation models are often used to estimate crop yield. For most models, this requires crop, water, and soil management information, though this information is often lacking in many regions of the world. Assimilation of Earth observation (EO) data in crop growth models can generate field-level yield estimates over large areas. The use of EO for assimilation often requires a trade-off between spatial and temporal resolution. Spatiotemporal data fusion can provide higher spatial (≤30m) and temporal resolution data to avoid this trade-off. In this study, we evaluated the timing and frequency of EO data assimilation in the Simple Algorithm for Yield Estimation (SAFY) in a persistently cloudy and fragmented agroecosystem of Ethiopia for 2019 and 2020 growing seasons. We used Landsat and MODIS data fusion to obtain frequent and spatially detailed LAI estimates and assimilated at each main maize growth stage to evaluate the effect of timing and frequency of LAI assimilation. The jointing to grain filling stage observations were more important (RMSE = 117 g/m<sup>2</sup>, rRMSE = 16%) than other growth stages to improve yield estimation. Using LAI estimates at key crop growth stages was more influential than the frequency of LAI estimates. Reasonably accurate yield estimation (rRMSE = 20%) was obtained using the pre-peak growth stage LAI observations, suggesting that the method is suitable for in-season yield forecasting. LAI retrieval errors from EO data, particularly at the early and late growth stages, were the source of yield estimation uncertainty. 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引用次数: 0
摘要
作物生长模拟模型通常用于估算作物产量。对于大多数模型来说,这需要作物、水和土壤管理信息,但世界上许多地区往往缺乏这些信息。作物生长模型中的地球观测(EO)数据同化可以产生大面积的田间产量估算。使用地球观测数据进行同化通常需要在空间和时间分辨率之间进行权衡。时空数据融合可以提供更高的空间(≤30 米)和时间分辨率数据,从而避免这种权衡。在本研究中,我们评估了在埃塞俄比亚一个持续多云和支离破碎的农业生态系统中,2019 年和 2020 年生长季在产量估算简单算法(SAFY)中使用 EO 数据同化的时间和频率。我们利用大地遥感卫星和 MODIS 数据融合获得了频繁且空间详细的 LAI 估计值,并在玉米的每个主要生长阶段进行了同化,以评估 LAI 同化的时间和频率的影响。与其他生长阶段相比,拔节期到籽粒灌浆期的观测数据对提高产量估算更为重要(均方根误差 = 117 g/m2,rRMSE = 16%)。在作物的关键生长阶段使用 LAI 估算值比 LAI 估算的频率更有影响。利用生长旺盛期前的 LAI 观测数据可获得相当准确的产量估算(rRMSE = 20%),这表明该方法适用于季节内的产量预测。从 EO 数据中获取的 LAI 误差,尤其是生长初期和后期的 LAI 误差,是产量估算不确定性的来源。因此,同化其他 EO 衍生的生物物理变量并提高 EO 数据的 LAI 检索精度可进一步改善小农农业系统中作物生长模型的性能。
The influence of temporal resolution on crop yield estimation with Earth Observation data assimilation
Crop growth simulation models are often used to estimate crop yield. For most models, this requires crop, water, and soil management information, though this information is often lacking in many regions of the world. Assimilation of Earth observation (EO) data in crop growth models can generate field-level yield estimates over large areas. The use of EO for assimilation often requires a trade-off between spatial and temporal resolution. Spatiotemporal data fusion can provide higher spatial (≤30m) and temporal resolution data to avoid this trade-off. In this study, we evaluated the timing and frequency of EO data assimilation in the Simple Algorithm for Yield Estimation (SAFY) in a persistently cloudy and fragmented agroecosystem of Ethiopia for 2019 and 2020 growing seasons. We used Landsat and MODIS data fusion to obtain frequent and spatially detailed LAI estimates and assimilated at each main maize growth stage to evaluate the effect of timing and frequency of LAI assimilation. The jointing to grain filling stage observations were more important (RMSE = 117 g/m2, rRMSE = 16%) than other growth stages to improve yield estimation. Using LAI estimates at key crop growth stages was more influential than the frequency of LAI estimates. Reasonably accurate yield estimation (rRMSE = 20%) was obtained using the pre-peak growth stage LAI observations, suggesting that the method is suitable for in-season yield forecasting. LAI retrieval errors from EO data, particularly at the early and late growth stages, were the source of yield estimation uncertainty. Therefore, assimilation of other EO-derived biophysical variables and improving LAI retrieval accuracy from EO data could further improve crop growth model performance in smallholder agricultural systems.
期刊介绍:
The journal ''Remote Sensing Applications: Society and Environment'' (RSASE) focuses on remote sensing studies that address specific topics with an emphasis on environmental and societal issues - regional / local studies with global significance. Subjects are encouraged to have an interdisciplinary approach and include, but are not limited by: " -Global and climate change studies addressing the impact of increasing concentrations of greenhouse gases, CO2 emission, carbon balance and carbon mitigation, energy system on social and environmental systems -Ecological and environmental issues including biodiversity, ecosystem dynamics, land degradation, atmospheric and water pollution, urban footprint, ecosystem management and natural hazards (e.g. earthquakes, typhoons, floods, landslides) -Natural resource studies including land-use in general, biomass estimation, forests, agricultural land, plantation, soils, coral reefs, wetland and water resources -Agriculture, food production systems and food security outcomes -Socio-economic issues including urban systems, urban growth, public health, epidemics, land-use transition and land use conflicts -Oceanography and coastal zone studies, including sea level rise projections, coastlines changes and the ocean-land interface -Regional challenges for remote sensing application techniques, monitoring and analysis, such as cloud screening and atmospheric correction for tropical regions -Interdisciplinary studies combining remote sensing, household survey data, field measurements and models to address environmental, societal and sustainability issues -Quantitative and qualitative analysis that documents the impact of using remote sensing studies in social, political, environmental or economic systems