Book chapter

Of Particles Molecules: Application of Particle Filtering to Irrigated Agriculture in Punjab, India

Alban Thomas

Abstract

We present an estimation method for agricultural crop yield functions, when unobserved productivity depends on water availability that is only partially observed. Using the setting of Bayesian non-linear filtering for estimating Hidden Markov Models, we discuss joint estimation of state variables and parameters in a structural production model with potentially endogenous regressors. An extension to particle filtering with resampling, convolution filter based on kernel regularization, is then discussed. We apply this non-parametric method to estimate a system of structural equations for rice crop yield and unobserved productivity on panel data for 10 districts in Punjab, India. Results based on computer-intensive resampling steps illustrate the interest of convolution particle filtering techniques, with low interquartile range of time-varying estimates. We compare fertilizer elasticity estimates with and without accounting for unobserved productivity, and we find a significant relationship between unobserved productivity and nitrogen fertilizer input, when the former is conditioned on district-level climate variables (summer rainfall, potential evapotranspiration).

Reference

Alban Thomas, Of Particles Molecules: Application of Particle Filtering to Irrigated Agriculture in Punjab, India, in Advances in Contemporary Statistics and Econometrics, Abdelaati Daouia, and Anne Ruiz-Gazen (eds.), 2021.

Published in

Advances in Contemporary Statistics and Econometrics, Abdelaati Daouia, and Anne Ruiz-Gazen (eds.), 2021