Main article

Jingjing Luo
School of Management Science and Engineering, Nanjing University of Finance and Economics, Nanjing 210023, China
Haoran Xu
Department of Information Systems and Decision Sciences, Shandong University of Finance and Economics, Jinan 250014, China
Wei Fang*
School of Business Administration, Guizhou University of Finance and Economics, Guiyang 550025, China
wei.fang@gzufe.edu.cn

DOI: https://doi.org/10.63646/datamind.2023.010104

Abstract

Carbon accounting across global supply chains demands unprecedented data infrastructure: procurement records, logistics events, emission factors, and product-batch genealogies must be integrated and auditable at scale. Existing public databases address isolated aspects of this challenge but lack an integrated, versioned, and AI-ready architecture for end-to-end carbon lifecycle accounting. This paper introduces CarbonLedgerDB, a relational database system designed to support supply-chain carbon accounting and Green AI analytics. CarbonLedgerDB organizes five core entity types—Supplier, ProductBatch, EmissionFactor, LogisticsEvent, and CarbonRecord—into a formally specified schema with foreign-key traceability across Scope 1, 2, and 3 emission categories. The database ingests data from multiple heterogeneous sources including enterprise resource planning feeds, IoT sensor streams, logistics APIs, and curated emission-factor libraries. A structured quality-control layer manages missing values, duplicates, unit harmonization, and audit versioning. Experiments on a sample of 446 supplier entities, 12,800 product batches, and 31,200 carbon records demonstrate a mean carbon re-computation error of 2.3%, emission-factor coverage of 91.4%, three-tier supplier traceability of 87.6%, and audit consistency of 96.2%. CarbonLedgerDB is made openly available with a documented API and reproducible experiment notebooks, providing a reusable infrastructure for regulatory compliance analytics, machine learning model training, and organizational carbon intelligence.

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How to Cite

Luo, J., Xu, H., & Fang, W. . (2023). CarbonLedgerDB: A Structured Database for Supply-Chain Carbon Accounting and Green AI Analytics. DATAMIND, 1(1), 33-44. https://doi.org/10.63646/datamind.2023.010104