Applying machine learning to the dynamic selection of replenishment policies in fast-changing supply chain environments
Year of publication: |
2019
|
---|---|
Authors: | Priore, Paolo ; Ponte, Borja ; Rosillo, Rafael ; Fuente, David de la |
Subject: | Bullwhip Effect | inductive learning | inventory management | machine learning | replenishment policy | supply chain management | Lieferkette | Supply chain | Künstliche Intelligenz | Artificial intelligence | Bullwhip-Effekt | Bullwhip effect | Lagerhaltungsmodell | Inventory model | Lernprozess | Learning process | Lagermanagement | Warehouse management | Bestandsmanagement | Inventory management |
-
Multi-Agent Deep Reinforcement Learning for Multi-Echelon Inventory Management
Liu, Xiaotian, (2022)
-
Centralized versus Decentralized Inventory Control in Supply Chains and the Bullwhip Effect
Zhan, Qu, (2017)
-
Centralized versus decentralized inventory control in supply chains and the bullwhip effect
Zhan, Qu, (2017)
- More ...
-
The effects of quantity discounts on supply chain performance : looking through the Bullwhip lens
Ponte, Borja, (2020)
-
A decision support system for applying failure mode and effects analysis
Puente, Javier, (2002)
-
Supply chain modelling using a multi-agent system
Pino, Raúl, (2010)
- More ...