Abstract

Accurate and spatially explicit yield information is required to ensure farmers’ income and food security at local and national levels. Current approaches based on crop cutting experiments are expensive and usually too late for timely income stabilization measures like crop insurances. We, therefore, utilized a Gradient Boosted Regression (GBR), a machine learning technique, to estimate rice yields at ~500 m spatial resolution for rice-producing areas in India with potential application for near real-time estimates. We used resampled intermediate resolution (~5 km) images of the Moderate Resolution Imaging Spectroradiometer (MODIS) Leaf Area Index (LAI) and observed yields at the district level in India for calibrating GBR models. These GBRs were then used to downscale district yields to 500 m resolution. Downscaled yields were re-aggregated for validation against out-of-sample district yields not used for model training and an additional independent data set of block-level (below district-level) yields. Our downscaled and re-aggregated yields agree well with reported district-level observations from 2003 to 2015 (r = 0.85 & MAE = 0.15 t/ha). The model performance improved further when estimating separate models for different rice cropping densities (up to r = 0.93). An additional out-of-sample validation for the years 2016 and 2017, proved successful with r = 0.84 and r = 0.77, respectively. Simulated yield accuracy was higher in water-limited, rainfed agricultural systems. We conclude that this downscaling approach of rice yield estimation using GBR is feasible across India and may complement current approaches for timely rice yield estimation required by insurance companies and government agencies.

Highlights

  • Accurate information on crop acreage, yield, and production is required for loss determination in crop insurance schemes and adaptation strategies’ development

  • Considering germination to peak vegetation stage is a decisive parameter of yield outcomes, some of the states (Uttarakhand and Rajasthan) have higher relative importance in a later stage than dates mentioned above, which could be due to late sowing

  • We have presented a downscaling approach to estimate rice yields in India on 500 m spatial resolution

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Summary

Introduction

Accurate information on crop acreage, yield, and production is required for loss determination in crop insurance schemes and adaptation strategies’ development. This need is even more urgent in countries like India, where the agricultural sector is a livelihood for millions of farmers, with changes having far-reaching impacts on food security and the economy. In India, 58% of the population work in the agricultural sector, and more than. Rapid advances in remote sensing (RS) and machine learning (ML). In India, most large-scale yield estimation studies have used remote sensing vegetation indices

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