Control of Dual-Sourcing Inventory Systems using Recurrent Neural Networks
Lucas B\"ottcher, Thomas Asikis, Ioannis Fragkos

TL;DR
This paper introduces neural network controllers that efficiently learn near-optimal policies for complex dual-sourcing inventory management, effectively handling non-stationary demand and dynamic inventory conditions.
Contribution
It presents a novel neural network-based approach that directly incorporates inventory dynamics, enabling scalable and adaptive optimization for dual-sourcing problems.
Findings
Neural network controllers learn near-optimal policies within minutes.
NNCs effectively manage non-stationary demand distributions.
Approach outperforms traditional methods on complex inventory problems.
Abstract
A key challenge in inventory management is to identify policies that optimally replenish inventory from multiple suppliers. To solve such optimization problems, inventory managers need to decide what quantities to order from each supplier, given the net inventory and outstanding orders, so that the expected backlogging, holding, and sourcing costs are jointly minimized. Inventory management problems have been studied extensively for over 60 years, and yet even basic dual-sourcing problems, in which orders from an expensive supplier arrive faster than orders from a regular supplier, remain intractable in their general form. In addition, there is an emerging need to develop proactive, scalable optimization algorithms that can adjust their recommendations to dynamic demand shifts in a timely fashion. In this work, we approach dual sourcing from a neural network--based optimization lens and…
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Taxonomy
TopicsForecasting Techniques and Applications · Supply Chain and Inventory Management · Advanced Queuing Theory Analysis
