Section 01
Introduction: Interpretable Deep Learning Empowers Biomass Pyrolysis, AI-Driven Precise Optimization of Renewable Energy
The InterpretableDNN_PyrolysisModel project, open-sourced by the Tang Laboratory at Wuhan University, combines interpretable AI (SHAP) with deep neural networks to provide high-precision predictions and transparent insights for the biomass pyrolysis process. This project aims to address the limitations of traditional experimental optimization methods and the "black box" problem of deep learning, bridging the gap between model decisions and chemical intuition, and facilitating the precise utilization and optimization of global renewable energy feedstocks.