Article (Scientific journals)
An Artificial-Immune-System-Based Algorithm Enhanced with Deep Reinforcement Learning for Solving Returnable Transport Item Problems
Achamrah, Fatima Ezzahra; Riane, Fouad; Sahin, Evren et al.
2022In Sustainability, 14 (10), p. 5805
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Keywords :
closed loop supply chain; returnable transport items; pickup and delivery; inventory routing problem; artificial immune systems; deep reinforcement learning
Abstract :
[en] This paper proposes a new approach, i.e., virtual pooling, for optimising returnable transport item (RTI) flows in a two-level closed-loop supply chain. The supply chain comprises a set of suppliers delivering their products loaded on RTIs to a set of customers. RTIs are of various types. The objective is to model a deterministic, multi-supplier, multi-customer inventory routing problem with pickup and delivery of multi-RTI. The model includes inventory-level constraints, the availability of empty RTIs to suppliers, and the minimisation of the total cost, including inventory holding, screening, maintenance, transportation, sharing, and purchasing costs for new RTIs. Furthermore, suppliers with common customers coordinate to virtually pool their inventory of empty RTIs held by customers so that, when loaded RTIs are delivered to customers, each may benefit from this visit to pick up the empty RTI, regardless of the ownership. To handle the combinatorial complexity of the model, a new artificial-immune-system-based algorithm coupled with deep reinforcement learning is proposed. The algorithm combines artificial immune systems’ strong global search ability and a strong self-adaptability ability into a goal-driven performance enhanced by deep reinforcement learning, all tailored to the suggested mathematical model. Computational experiments on randomly generated instances highlight the performance of the proposed approach. From a managerial point of view, the results stress that this new approach allows for economies of scale and cost reduction at the level of all involved parties to about 40%. In addition, a sensitivity analysis on the unit cost of transportation and the procurement of new RTIs is conducted, highlighting the benefits and limits of the proposed model compared to dedicated and physical pooling modes.
Disciplines :
Quantitative methods in economics & management
Author, co-author :
Achamrah, Fatima Ezzahra 
Riane, Fouad 
Sahin, Evren 
Limbourg, Sabine  ;  Université de Liège - ULiège > HEC Recherche > HEC Recherche: Business Analytics & Supply Chain Management
Language :
English
Title :
An Artificial-Immune-System-Based Algorithm Enhanced with Deep Reinforcement Learning for Solving Returnable Transport Item Problems
Publication date :
11 May 2022
Journal title :
Sustainability
eISSN :
2071-1050
Publisher :
MDPI AG
Volume :
14
Issue :
10
Pages :
5805
Peer reviewed :
Peer Reviewed verified by ORBi
Development Goals :
12. Responsible consumption and production
Available on ORBi :
since 17 May 2022

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