Back to Search Start Over

AutoPCF: Efficient Product Carbon Footprint Accounting with Large Language Models

Authors :
Deng, Zhu
Liu, Jinjie
Luo, Biao
Yuan, Can
Yang, Qingrun
Xiao, Lei
Zhou, Wenwen
Liu, Zhu
Publication Year :
2023

Abstract

The product carbon footprint (PCF) is crucial for decarbonizing the supply chain, as it measures the direct and indirect greenhouse gas emissions caused by all activities during the product's life cycle. However, PCF accounting often requires expert knowledge and significant time to construct life cycle models. In this study, we test and compare the emergent ability of five large language models (LLMs) in modeling the 'cradle-to-gate' life cycles of products and generating the inventory data of inputs and outputs, revealing their limitations as a generalized PCF knowledge database. By utilizing LLMs, we propose an automatic AI-driven PCF accounting framework, called AutoPCF, which also applies deep learning algorithms to automatically match calculation parameters, and ultimately calculate the PCF. The results of estimating the carbon footprint for three case products using the AutoPCF framework demonstrate its potential in achieving automatic modeling and estimation of PCF with a large reduction in modeling time from days to minutes.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2308.04241
Document Type :
Working Paper