Abstract

Crop yield forecasting activities are essential to support decision making of farmers, private companies and public entities. While standard systems use georeferenced agro-climatic data as input to process-based simulation models, new trends entail the application of machine learning for yield prediction. In this paper we present HADES (HAzelnut yielD forEcaSt), a hazelnut yield prediction system, in which process-based modeling and machine learning techniques are hybridized and applied in Turkey. Official yields in the top hazelnut producing municipalities in 2004–2019 are used as reference data, whereas ground observations of phenology and weather data represent the main HADES inputs. A statistical analysis allows inferring the occurrence and magnitude of biennial bearing in official yields and is used to aid the calibration of a process-based hazelnut simulation model. Then, a Random Forest algorithm is deployed in regression mode using the outputs of the process-based model as predictors, together with information on hazelnut varieties, the presence of alternate bearing in the yield series, and agro-meteorological indicators. HADES predictive ability in calibration and validation was balanced, with relative root mean square error below 20%, and R2 and Nash-Sutcliffe modeling efficiency above 0.7 considering all municipalities together. HADES paves the way for a next-generation yield prediction system, to deliver timely and robust information and enhance the sustainability of the hazelnut sector across the globe.

Highlights

  • Turkey is the cradle of hazelnut cultivation and the largest hazelnut producer and exporter in the world (Erdogan, 2018)

  • This paper presents an operational prototype of a hybrid model for hazelnut yield prediction, named HADES (HAzelnut yielD forEcaSt), in which process-based modeling and machine learning techniques are integrated

  • In Materials and Methods, we introduce the datasets required as input, with a statistical analysis of hazelnut yields, and describe the different HADES modules and the machine learning layer

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Summary

Introduction

Turkey is the cradle of hazelnut cultivation and the largest hazelnut producer and exporter in the world (Erdogan, 2018). The history of hazelnut in Turkey originates in the North of Anatolia, along the Black Sea coast, which is a natural habitat of cultivated hazelnuts (Corylus avellana L.). About 700,000 ha of land in Turkey are nowadays devoted to hazelnut cultivation (Turkish Statistical Institute, 2020). Due to interannual yield variations, the average annual hazelnut production varies widely (Frary et al, 2019), fluctuating between 400,000 and 800,000 tons (Turkish Statistical Institute, 2020). Turkey supplies more than 65% of the world hazelnut production (Islam, 2018)

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