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2025
Journal Article
Title
An LSTM network-based genetic algorithm for integrated procurement and scheduling optimisation
Abstract
Modern supply chains are characterised by high complexity, requiring effective management through coordinated activities across interrelated functions. This study aims to move from isolated optimisation to integrated decision-making, which offers new potential for efficiency. We investigate an integrated procurement-production problem based on a real case study from a German company specialising in printed circuit board assembly. We propose a novel solution approach that combines a genetic algorithm with a neural network to increase computational efficiency. Our comprehensive evaluation scheme demonstrates the viability of the approach in generating integrated decisions within a limited time frame. Specifically, we quantify the benefits of integrated over separated decision-making at the operational level, extending previous research focussed on the tactical level. The results indicate considerable benefits of integrated decision-making across a wide range of cost factors, although the exact savings depend on specific cost parameters. In addition, we evaluate our model on a rolling horizon planning basis, which is crucial for modelling realistic supply chain behaviour and remains underrepresented in the literature.
Author(s)
Keyword(s)
GA: Genetic algorithm
genetic algorithm
hybrid flow shop scheduling
integrated procurement production problem
LSTM: Long short-term memory
MILP:Mixed-integer linear program
OAP: Order allocation problem
OR: Operations research
PCB: Printed circuit board
RNN: Recurrent neural network
rolling horizon planning
supervised learning
Supply chain management
TS: Tabu search
VNS:Variable neighbourhood search