MELGNov 15, 2024

Adaptive Physics-Guided Neural Network

arXiv:2411.10064v11 citationsh-index: 13
Originality Incremental advance
AI Analysis

This work addresses the challenge of integrating physical laws into deep learning for robust predictions in diverse real-world environments, representing an incremental improvement over existing physics-guided methods.

The paper tackles the problem of predicting quality attributes from image data by introducing an adaptive physics-guided neural network (APGNN) that balances data-driven and physics-informed predictions, resulting in superior performance in complex real-world thermal datasets, particularly outperforming PGNN and ResNet in outdoor materials with high environmental variability.

This paper introduces an adaptive physics-guided neural network (APGNN) framework for predicting quality attributes from image data by integrating physical laws into deep learning models. The APGNN adaptively balances data-driven and physics-informed predictions, enhancing model accuracy and robustness across different environments. Our approach is evaluated on both synthetic and real-world datasets, with comparisons to conventional data-driven models such as ResNet. For the synthetic data, 2D domains were generated using three distinct governing equations: the diffusion equation, the advection-diffusion equation, and the Poisson equation. Non-linear transformations were applied to these domains to emulate complex physical processes in image form. In real-world experiments, the APGNN consistently demonstrated superior performance in the diverse thermal image dataset. On the cucumber dataset, characterized by low material diversity and controlled conditions, APGNN and PGNN showed similar performance, both outperforming the data-driven ResNet. However, in the more complex thermal dataset, particularly for outdoor materials with higher environmental variability, APGNN outperformed both PGNN and ResNet by dynamically adjusting its reliance on physics-based versus data-driven insights. This adaptability allowed APGNN to maintain robust performance across structured, low-variability settings and more heterogeneous scenarios. These findings underscore the potential of adaptive physics-guided learning to integrate physical constraints effectively, even in challenging real-world contexts with diverse environmental conditions.

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