PREPRINT

AutoML-based Almond Yield Prediction and Projection in California

Shiheng Duan, Shuaiqi Wu, Erwan Monier, Paul Ullrich

Submitted on 7 November 2022

Abstract

Almonds are one of the most lucrative products of California, but are also among the most sensitive to climate change. In order to better understand the relationship between climatic factors and almond yield, an automated machine learning framework is used to build a collection of machine learning models. The prediction skill is assessed using historical records. Future projections are derived using 17 downscaled climate outputs. The ensemble mean projection displays almond yield changes under two different climate scenarios, along with two technology development scenarios, where the role of technology development is highlighted. The mean projections and distributions provide insightful results to stakeholders and can be utilized by policymakers for climate adaptation.

Preprint

Comment: Submitted to Tackling Climate Change with Machine Learning: workshop at NeurIPS 2022

Subjects: Computer Science - Machine Learning; Physics - Atmospheric and Oceanic Physics

URL: http://arxiv.org/abs/2211.03925