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空间变系数深度函数神经网络:在大规模作物产量预测中的应用

Spatially varying deep functional neural network: application in large-scale crop yield prediction

Journal of the Royal Statistical Society. Series C: Applied Statistics · 2026
被引 0
ABS 3

中文导读

提出一种空间变系数深度函数神经网络,整合函数型与标量预测变量,处理空间异质性,在玉米产量预测中优于现有机器学习与统计模型。

Abstract

Abstract Accurate prediction of crop yield is critical for supporting food security, agricultural planning, and economic decision-making. However, yield forecasting remains a significant challenge due to the complex and nonlinear relationships between weather variables and crop production, as well as spatial heterogeneity across agricultural regions. We propose a Spatially Varying Deep Functional Neural Network (SVD-funNet), a deep neural network architecture that integrates functional and scalar predictors with spatially varying coefficients and spatial random effects. The method is designed to flexibly model spatially indexed functional data, such as daily temperature curves, and their relationship to variability in the response, while accounting for spatial correlation. SVD-funNet mitigates the curse of dimensionality through a low-rank structure inspired by the spatially varying functional index model (SVFIM). Through comprehensive simulations, we demonstrate that SVD-funNet outperforms state-of-the-art functional regression models for spatial data, when the functional predictors exhibit complex structure and their relationship with the response varies spatially in a potentially nonstationary manner. Application to corn yield data from the U.S. Midwest demonstrates that SVD-funNet achieves superior predictive accuracy compared to both leading machine learning approaches and parametric statistical models. These results highlight the model’s robustness and its potential applicability to other weather-sensitive crops.

作物产量预测深度学习函数型数据分析空间统计农业经济学