Abstract

Abstract. Compound weather events may lead to extreme impacts that can affect many aspects of society including agriculture. Identifying the underlying mechanisms that cause extreme impacts, such as crop failure, is of crucial importance to improve their understanding and forecasting. In this study, we investigate whether key meteorological drivers of extreme impacts can be identified using the least absolute shrinkage and selection operator (LASSO) in a model environment, a method that allows for automated variable selection and is able to handle collinearity between variables. As an example of an extreme impact, we investigate crop failure using annual wheat yield as simulated by the Agricultural Production Systems sIMulator (APSIM) crop model driven by 1600 years of daily weather data from a global climate model (EC-Earth) under present-day conditions for the Northern Hemisphere. We then apply LASSO logistic regression to determine which weather conditions during the growing season lead to crop failure. We obtain good model performance in central Europe and the eastern half of the United States, while crop failure years in regions in Asia and the western half of the United States are less accurately predicted. Model performance correlates strongly with annual mean and variability of crop yields; that is, model performance is highest in regions with relatively large annual crop yield mean and variability. Overall, for nearly all grid points, the inclusion of temperature, precipitation and vapour pressure deficit is key to predict crop failure. In addition, meteorological predictors during all seasons are required for a good prediction. These results illustrate the omnipresence of compounding effects of both meteorological drivers and different periods of the growing season for creating crop failure events. Especially vapour pressure deficit and climate extreme indicators such as diurnal temperature range and the number of frost days are selected by the statistical model as relevant predictors for crop failure at most grid points, underlining their overarching relevance. We conclude that the LASSO regression model is a useful tool to automatically detect compound drivers of extreme impacts and could be applied to other weather impacts such as wildfires or floods. As the detected relationships are of purely correlative nature, more detailed analyses are required to establish the causal structure between drivers and impacts.

Highlights

  • Climate extremes such as droughts, heatwaves, floods and frost events can have substantial impacts on crop health (Shah and Paulsen, 2003; Singh et al, 2011; Lesk et al, 2016; Ben-Ari et al, 2018)

  • We defined bad years as years where the annual crop yield is below the 5th percentile and were able to predict those years by using the least absolute shrinkage and selection operator (LASSO) regression with an average critical success index (CSI) of 0.43

  • LASSO regression can serve as a tool for identifying important variables with automated variable selection while accounting for collinearity and achieving overall good predictive power

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Summary

Introduction

Climate extremes such as droughts, heatwaves, floods and frost events can have substantial impacts on crop health (Shah and Paulsen, 2003; Singh et al, 2011; Lesk et al, 2016; Ben-Ari et al, 2018). Compound events have been defined as extreme impacts that depend on multiple statistically dependent drivers (Leonard et al, 2014) or, more recently, as the combination of multiple drivers that contributes to environmental or societal risk (Zscheischler et al, 2018). Drivers in this context refer to climate and weather processes and phenomena. With respect to yields at the local scale, multiple drivers can compound an impact through a sequence of weather events (temporally compounding); one weather event may change the vulnerability of the crop to a subsequent weather event (preconditioning), or multiple drivers may interact and impact crops at the same time (multivariate events) (Zscheischler et al, 2020)

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