%0 Journal Article %T Agent-Based Modeling in Supply Chain Management:A Genetic Algorithm and Fuzzy Logic Approach %A Meriem Djennas %A Mohamed Benbouziane %A Mustapha Djennas %J International Journal of Artificial Intelligence & Applications %D 2012 %I Academy & Industry Research Collaboration Center (AIRCC) %X In today¡¯s global market, reaching a competitive advantage by integrating firms in a supply chainmanagement strategy becomes a key success for any firm seeking to survive in a complex environment.However, as interactions among agents in the supply chain management (SCM) remain unpredictable,simulation appears as a powerful tool aiming to predict market behavior and agents¡¯ performance levels.This paper discusses the issues of supply chain management and the requirements for supply chainsimulation modeling. It reviews the relationships amongArtificial Intelligence (AI) and SCM and concludesthat under some conditions, SCM models exhibit some inadequacies that may be enriched by the use of AItools. This approach aims to test the supply chain activities of nine companies in the crude oil market. Theobjective is to tackle the issues under which agents can coexist in a competitive environment. Furthermore,we will specify the supply chain management trading interaction amongagents by using an optimizationapproach based on a Genetic Algorithm (AG), Clustering and Fuzzy Logic (FL).Results support the viewthat the structured model provides a good tool for modeling the supply chain activities using AImethodology. %K Supply Chain Management %K Genetic Algorithm %K Fuzzy Logic %K Clustering %K Optimization. %U http://airccse.org/journal/ijaia/papers/3512ijaia02.pdf