Deep Learning Meets Process-Based Models: A Hybrid Approach to Agricultural Challenges
Process-based models (PBMs) and deep learning (DL) are two key approaches in agricultural modelling, each offering distinct advantages and limitations. PBMs provide mechanistic insights based on physical and biological principles, ensuring interpretability and scientific rigour. However, they often...
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Main Authors | , , , , , , , , , |
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Format | Journal Article |
Language | English |
Published |
22.04.2025
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Subjects | |
Online Access | Get full text |
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Summary: | Process-based models (PBMs) and deep learning (DL) are two key approaches in
agricultural modelling, each offering distinct advantages and limitations. PBMs
provide mechanistic insights based on physical and biological principles,
ensuring interpretability and scientific rigour. However, they often struggle
with scalability, parameterisation, and adaptation to heterogeneous
environments. In contrast, DL models excel at capturing complex, nonlinear
patterns from large datasets but may suffer from limited interpretability, high
computational demands, and overfitting in data-scarce scenarios.
This study presents a systematic review of PBMs, DL models, and hybrid PBM-DL
frameworks, highlighting their applications in agricultural and environmental
modelling. We classify hybrid PBM-DL approaches into DL-informed PBMs, where
neural networks refine process-based models, and PBM-informed DL, where
physical constraints guide deep learning predictions. Additionally, we conduct
a case study on crop dry biomass prediction, comparing hybrid models against
standalone PBMs and DL models under varying data quality, sample sizes, and
spatial conditions. The results demonstrate that hybrid models consistently
outperform traditional PBMs and DL models, offering greater robustness to noisy
data and improved generalisation across unseen locations.
Finally, we discuss key challenges, including model interpretability,
scalability, and data requirements, alongside actionable recommendations for
advancing hybrid modelling in agriculture. By integrating domain knowledge with
AI-driven approaches, this study contributes to the development of scalable,
interpretable, and reproducible agricultural models that support data-driven
decision-making for sustainable agriculture. |
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DOI: | 10.48550/arxiv.2504.16141 |