通过可解释的人工智能框架,将可持续性评估整合到早期碳捕获过程设计中

IF 4.1 Q2 ENGINEERING, CHEMICAL
Xin Yee Tai , Oliver Fisher , Lei Xing , Jin Xuan
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引用次数: 0

摘要

本研究引入了一个新的框架,通过使用与可解释人工智能(XAI)集成的代理建模方法来优化操作条件,从而减少对环境的影响。开发了两个代理模型:具有两步结构的顺序代理模型(SSM)和具有单步结构的直接代理模型(DSM)。两者都是根据基于单乙醇胺(MEA)的碳捕获过程的经过验证的物理模拟数据进行训练的,以预测人类健康、生态系统质量和资源枯竭方面的环境影响。SHapley加性解释(SHAP)通过识别影响结果的关键输入变量来提高透明度。采用粒子群算法(PSO)和NSGA-II进行多目标优化,确定最优操作条件。DSM具有较高的预测精度(R²高达0.995)和较低的误差,而SSM具有更好的可解释性和更广泛的探索帕累托最优解。该研究还表明,我们的框架确定的最优参数与实验最优参数相比,减少了76 - 88%的环境影响。该框架通过结合可解释性、预测性能和计算效率来支持可持续的过程设计。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Integration of sustainability assessment into early-stage carbon capture process design with an explainable AI framework

Integration of sustainability assessment into early-stage carbon capture process design with an explainable AI framework
This study introduces a novel framework for reducing environmental impacts by optimising operating conditions using a surrogate modelling approach integrated with Explainable AI (XAI). Two surrogate models were developed: a sequential surrogate model (SSM) with a two-step structure, and a direct surrogate model (DSM) with a single-step architecture. Both were trained on data from a validated physics-based simulation of a monoethanolamine (MEA)-based carbon capture process to predict environmental impacts across human health, ecosystem quality, and resource depletion. SHapley Additive exPlanations (SHAP) were used to enhance transparency by identifying key input variables influencing outcomes. Multi-objective optimisation was conducted using Particle Swarm Optimisation (PSO) and NSGA-II to determine optimal operating conditions. DSM achieved high prediction accuracy (R² up to 0.995) and lower errors, while SSM offered better interpretability and broader exploration of Pareto-optimal solutions. This study also shows that our framework identified optimum parameters that reduced environmental impacts by 76–88 % compared with the experiment optimum. This framework supports sustainable process design by combining interpretability, predictive performance, and computational efficiency.
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CiteScore
3.10
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