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Artificial intelligence-based food-quality and warehousing management for food banks' inbound logistics

Pei-Ju Wu (Transportation and Logistics, Feng Chia University, Taichung, Taiwan)
Yu-Chin Tai (International Integrated Systems, Inc., Taipei, Taiwan)

Journal of Enterprise Information Management

ISSN: 1741-0398

Article publication date: 29 January 2024

Issue publication date: 21 February 2024

263

Abstract

Purpose

In the reduction of food waste and the provision of food to the hungry, food banks play critical roles. However, as they are generally run by charitable organisations that are chronically short of human and other resources, their inbound logistics efforts commonly experience difficulties in two key areas: 1) how to organise stocks of donated food, and 2) how to assess the donated items quality and fitness for purpose. To address both these problems, the authors aimed to develop a novel artificial intelligence (AI)-based approach to food quality and warehousing management in food banks.

Design/methodology/approach

For diagnosing the quality of donated food items, the authors designed a convolutional neural network (CNN); and to ascertain how best to arrange such items within food banks' available space, reinforcement learning was used.

Findings

Testing of the proposed innovative CNN demonstrated its ability to provide consistent, accurate assessments of the quality of five species of donated fruit. The reinforcement-learning approach, as well as being capable of devising effective storage schemes for donated food, required fewer computational resources that some other approaches that have been proposed.

Research limitations/implications

Viewed through the lens of expectation-confirmation theory, which the authors found useful as a framework for research of this kind, the proposed AI-based inbound-logistics techniques exceeded normal expectations and achieved positive disconfirmation.

Practical implications

As well as enabling machines to learn how inbound logistics are handed by human operators, this pioneering study showed that such machines could achieve excellent performance: i.e., that the consistency provided by AI operations could in future dramatically enhance such logistics' quality, in the specific case of food banks.

Originality/value

This paper’s AI-based inbound-logistics approach differs considerably from others, and was found able to effectively manage both food-quality assessments and food-storage decisions more rapidly than its counterparts.

Keywords

Acknowledgements

This research was supported in part by Feng Chia University, Taiwan (Grant No. 23H00807) and National Science and Technology Council, Taiwan (Grants MOST 110-2410-H-035-027 and MOST 111-2410-H-035-025). This support is very much appreciated. Thoughtful comments and suggestions for the improvement of this manuscript by the Editor-in-Chief, Zahir Irani, and the anonymous reviewers are gratefully acknowledged.

Citation

Wu, P.-J. and Tai, Y.-C. (2024), "Artificial intelligence-based food-quality and warehousing management for food banks' inbound logistics", Journal of Enterprise Information Management, Vol. 37 No. 1, pp. 307-325. https://doi.org/10.1108/JEIM-10-2022-0398

Publisher

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Emerald Publishing Limited

Copyright © 2024, Emerald Publishing Limited

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