Event-Based Data Authenticity Analytics for Iot and Blockchain-Enabled ESG Disclosure

31 Pages Posted: 17 Aug 2023

See all articles by Wei Chen

Wei Chen

The University of Hong Kong

Wei Wu

Chongqing University

Zhiyuan Ouyang

The University of Hong Kong

Yelin Fu

The University of Hong Kong

Ming Li

Hong Kong Polytechnic University

George Q. Huang

Hong Kong Polytechnic University

Abstract

Environment, social, and governance (ESG) disclosure has raised significant interest in academia and industry for sustainable development and investing. However, the data authenticity of the ESG disclosure is still a serious matter of concern. This study proposes a novel solution to solve the above problem. First, an ESG information disclosure system (IBESG) enabled by IoT and blockchain is originally designed. The IBESG integrates IoT and blockchain technologies to facilitate the collection and transmission of data during ESG disclosure, and to ensures the data authenticity, consistency, and transparency. Second, we design a Local and Global Authenticity Verification Flow (LGA) consisting of edge computing and cloud computing to sufficiently verify the authenticity through the data flow. In addition, data authenticity analytics algorithms are developed in this study, which contains event-based spatial-temporal analytics and authenticity index computation. Finally, we carry out an experimental simulation to illustrate the implementation of the IBESG and the performance of the verification solution. Moreover, the sensitivity analysis of the above solution is conducted, and relevant suggestions on deployment are given. This study is expected to help academia and industry apply the solution in similar scenarios and inspire new ideas.

Keywords: Data authenticity, ESG reporting, Spatial-temporal analytics, blockchain, Internet of Things

Suggested Citation

Chen, Wei and Wu, Wei and Ouyang, Zhiyuan and Fu, Yelin and Li, Ming and Huang, George Q., Event-Based Data Authenticity Analytics for Iot and Blockchain-Enabled ESG Disclosure. Available at SSRN: https://ssrn.com/abstract=4544036 or http://dx.doi.org/10.2139/ssrn.4544036

Wei Chen

The University of Hong Kong ( email )

Pokfulam Road
Hong Kong, HK
China

Wei Wu

Chongqing University ( email )

Shazheng Str 174, Shapingba District
Shazheng street, Shapingba district
Chongqing 400044, 400030
China

Zhiyuan Ouyang

The University of Hong Kong ( email )

Pokfulam Road
Hong Kong, HK
China

Yelin Fu

The University of Hong Kong ( email )

Pokfulam Road
Hong Kong, Pokfulam HK
China

Ming Li

Hong Kong Polytechnic University ( email )

Hung Hom
Kowloon
Hong Kong

George Q. Huang (Contact Author)

Hong Kong Polytechnic University ( email )

Hung Hom
Kowloon
Hong Kong

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