Integrating Domain Knowledge in Data-driven Earth Observation with Process Convolutions
Daniel Heestermans Svendsen, Maria Piles, Jordi Mu\~noz-Mar\'i, David, Luengo, Luca Martino, Gustau Camps-Valls

TL;DR
This paper introduces Gaussian process convolution models, specifically latent force models, to integrate physical domain knowledge with data-driven methods for improved Earth observation time series analysis, addressing data scarcity and interpretability.
Contribution
It presents a hybrid modeling approach combining mechanistic differential equations with Gaussian processes, enhancing interpretability and robustness in Earth observation data analysis.
Findings
Successfully estimated soil moisture decay rates.
Discovered latent forces related to precipitation.
Improved handling of missing data in time series.
Abstract
The modelling of Earth observation data is a challenging problem, typically approached by either purely mechanistic or purely data-driven methods. Mechanistic models encode the domain knowledge and physical rules governing the system. Such models, however, need the correct specification of all interactions between variables in the problem and the appropriate parameterization is a challenge in itself. On the other hand, machine learning approaches are flexible data-driven tools, able to approximate arbitrarily complex functions, but lack interpretability and struggle when data is scarce or in extrapolation regimes. In this paper, we argue that hybrid learning schemes that combine both approaches can address all these issues efficiently. We introduce Gaussian process (GP) convolution models for hybrid modelling in Earth observation (EO) problems. We specifically propose the use of a class…
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Taxonomy
MethodsGaussian Process · Convolution
