Robust Logistics Routing with Adversarially Trained AI Models

Oluwatumininu Anne Ajayi *

Department of Industrial Engineering, Texas A and M University, Kingsville, Texas, United States of America.
 
Research Article
International Journal of Science and Research Archive, 2022, 07(01), 576-579.
Article DOI: 10.30574/ijsra.2022.7.1.0254
Publication history: 
Received on 22 June 2022; revised on 21 September 2022; accepted on 23 September 2022
 
Abstract: 
Logistics networks are essential for the global economy, linking suppliers, manufacturers, and consumers across vast geographies. However, these networks are prone to disruptions from various sources, including traffic congestion, extreme weather events, cyberattacks, and geopolitical tensions. Traditional logistics routing models typically focus on optimization under known, static conditions. This paper investigates the use of adversarially trained artificial intelligence (AI) models to enhance logistics routing, ensuring robust performance even in the face of unexpected disruptions and adversarial conditions. We propose a novel framework for integrating adversarial training into logistics systems, enhancing real-time adaptability and operational resilience. By exploring the interplay of AI model robustness, dynamic environmental factors, and strategic routing, this paper seeks to provide an in-depth understanding of how AI-driven logistics routing can meet the challenges of modern supply chain vulnerabilities
 
Keywords: 
Adversarial AI;  Logistics Routing; Robust Optimization; Supply Chain Disruptions; Real-Time Adaptation; Route Optimization
 
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