Literature DB >> 28915461

Forecasting wheat and barley crop production in arid and semi-arid regions using remotely sensed primary productivity and crop phenology: A case study in Iraq.

Sarchil Hama Qader1, Jadunandan Dash2, Peter M Atkinson3.   

Abstract

Crop production and yield estimation using remotely sensed data have been studied widely, but such information is generally scarce in arid and semi-arid regions. In these regions, inter-annual variation in climatic factors (such as rainfall) combined with anthropogenic factors (such as civil war) pose major risks to food security. Thus, an operational crop production estimation and forecasting system is required to help decision-makers to make early estimates of potential food availability. Data from NASA's MODIS with official crop statistics were combined to develop an empirical regression-based model to forecast winter wheat and barley production in Iraq. The study explores remotely sensed indices representing crop productivity over the crop growing season to find the optimal correlation with crop production. The potential of three different remotely sensed indices, and information related to the phenology of crops, for forecasting crop production at the governorate level was tested and their results were validated using the leave-one-year-out approach. Despite testing several methodological approaches, and extensive spatio-temporal analysis, this paper depicts the difficulty in estimating crop yield on an annual base using current satellite low-resolution data. However, more precise estimates of crop production were possible. The result of the current research implies that the date of the maximum vegetation index (VI) offered the most accurate forecast of crop production with an average R2=0.70 compared to the date of MODIS EVI (Avg R2=0.68) and a NPP (Avg R2=0.66). When winter wheat and barley production were forecasted using NDVI, EVI and NPP and compared to official statistics, the relative error ranged from -20 to 20%, -45 to 28% and -48 to 22%, respectively. The research indicated that remotely sensed indices could characterize and forecast crop production more accurately than simple cropping area, which was treated as a null model against which to evaluate the proposed approach.
Copyright © 2017 Elsevier B.V. All rights reserved.

Entities:  

Keywords:  Crop yield/production forecasting; EVI; MODIS; NDVI; NPP and Iraq; Vegetation phenology

Year:  2017        PMID: 28915461     DOI: 10.1016/j.scitotenv.2017.09.057

Source DB:  PubMed          Journal:  Sci Total Environ        ISSN: 0048-9697            Impact factor:   7.963


  4 in total

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2.  Using Machine Learning Models to Predict Hydroponically Grown Lettuce Yield.

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3.  A Hybrid Approach to Tea Crop Yield Prediction Using Simulation Models and Machine Learning.

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4.  UAV-based multi-sensor data fusion and machine learning algorithm for yield prediction in wheat.

Authors:  Shuaipeng Fei; Muhammad Adeel Hassan; Yonggui Xiao; Xin Su; Zhen Chen; Qian Cheng; Fuyi Duan; Riqiang Chen; Yuntao Ma
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  4 in total

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