生命周期评估
生化工程
全球变暖潜力
工作(物理)
COSMO-RS公司
计算机科学
数量结构-活动关系
分子描述符
生物系统
环境科学
数据挖掘
化学
热力学
机器学习
温室气体
生产(经济)
工程类
经济
催化作用
离子液体
宏观经济学
物理
生物
生物化学
生态学
作者
Raúl Calvo-Serrano,María González‐Miquel,Gonzalo Guillén‐Gosálbez
标识
DOI:10.1021/acssuschemeng.8b06032
摘要
Life Cycle Assessment (LCA) has become the main approach for the environmental impact assessment of chemicals. Unfortunately, LCA studies often require large amounts of data, time, and resources. To circumvent this limitation, here we propose a streamlined LCA method that predicts the impact of chemicals from molecular descriptors, thermodynamic properties, and surface charge density distributions of molecules (COSMO-based σ-profiles). Our approach uses mixed-integer nonlinear models to automatically construct predictive equations of the life cycle impact of chemicals from a set of attributes that are more accesible than full LCA inventories. We applied our method to predict the life cycle impact of 90 chemicals from three attribute sets: 15 molecular descriptors, 12 thermodynamic properties, and discretized σ-profiles. Nine impact categories were estimated, including among others the Global Warming Potential and Eco-Indicator99. Results show that models based on molecular and σ-profile attributes show similar performance to those based on molecular and thermodynamic attributes. This facilitates the application of streamlined LCA when developing new chemicals and processes, avoiding the experimental determination of thermodynamic properties. Furthermore, molecular, thermodynamic, and σ-profile attributes used together provide the most accurate predictions. Overall, this work aims to enhance chemical environmental assessment, facilitating their screening and enhancing the development of more sustainable processes and products.
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