To read this content please select one of the options below:

Artificial intelligence-based reverse logistics for improving circular economy performance: a developing country perspective

Subhodeep Mukherjee (GITAM School of Business, GITAM (Deemed to be University), Visakhapatnam, India)
Ramji Nagariya (School of Business and Management, CHRIST University, Bengaluru, India)
K. Mathiyazhagan (Thiagarajar School of Management, Madurai, India)
Manish Mohan Baral (GITAM School of Business, GITAM (Deemed to be University), Visakhapatnam, India)
M.R. Pavithra (Rajalakshmi School of Business, Chembarambakkam, Chennai, India)
Andrea Appolloni (Department of Management and Law, University of Rome Tor Vergata, Rome, Italy)

The International Journal of Logistics Management

ISSN: 0957-4093

Article publication date: 16 April 2024

Issue publication date: 28 October 2024

900

Abstract

Purpose

Reverse logistics services are designed to move goods from their point of consumption to an endpoint to capture value or properly dispose of products and materials. Artificial intelligence (AI)-based reverse logistics will help Micro, Small, and medium Enterprises (MSMEs) adequately recycle and reuse the materials in the firms. This research aims to measure the adoption of AI-based reverse logistics to improve circular economy (CE) performance.

Design/methodology/approach

In this study, we proposed ten hypotheses using the theory of natural resource-based view and technology, organizational and environmental framework. Data are collected from 363 Indian MSMEs as they are the backbone of the Indian economy, and there is a need for digital transformation in MSMEs. A structural equation modeling approach is applied to analyze and test the hypothesis.

Findings

Nine of the ten proposed hypotheses were accepted, and one was rejected. The results revealed that the relative advantage (RA), trust (TR), top management support (TMS), environmental regulations, industry dynamism (ID), compatibility, technology readiness and government support (GS) positively relate to AI-based reverse logistics adoption. AI-based reverse logistics indicated a positive relationship with CE performance. For mediation analysis, the results revealed that RA, TR, TMS and technological readiness are complementary mediation. Still, GS, ID, organizational flexibility, environmental uncertainty and technical capability have no mediation.

Practical implications

The study contributed to the CE performance and AI-based reverse logistics literature. The study will help managers understand the importance of AI-based reverse logistics for improving the performance of the CE in MSMEs. This study will help firms reduce their carbon footprint and achieve sustainable development goals.

Originality/value

Few studies focused on CE performance, but none measured the adoption of AI-based reverse logistics to enhance MSMEs’ CE performance.

Keywords

Citation

Mukherjee, S., Nagariya, R., Mathiyazhagan, K., Baral, M.M., Pavithra, M.R. and Appolloni, A. (2024), "Artificial intelligence-based reverse logistics for improving circular economy performance: a developing country perspective", The International Journal of Logistics Management, Vol. 35 No. 6, pp. 1779-1806. https://doi.org/10.1108/IJLM-03-2023-0102

Publisher

:

Emerald Publishing Limited

Copyright © 2024, Emerald Publishing Limited

Related articles