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Main Authors: Shawon, Reza E Rabbi, Hasan, MD Rokibul, Rahman, Md Anisur, Ghandri, Mohamed, Lamari, Iman Ahmed, Kawsar, Mohammed, Akter, Rubi
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2503.14556
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author Shawon, Reza E Rabbi
Hasan, MD Rokibul
Rahman, Md Anisur
Ghandri, Mohamed
Lamari, Iman Ahmed
Kawsar, Mohammed
Akter, Rubi
author_facet Shawon, Reza E Rabbi
Hasan, MD Rokibul
Rahman, Md Anisur
Ghandri, Mohamed
Lamari, Iman Ahmed
Kawsar, Mohammed
Akter, Rubi
contents The rapid evolution of Artificial Intelligence (AI) and Machine Learning (ML) has significantly transformed logistics and supply chain management, particularly in the pursuit of sustainability and eco-efficiency. This study explores AI-based methodologies for optimizing logistics operations in the USA, focusing on reducing environmental impact, improving fuel efficiency, and minimizing costs. Key AI applications include predictive analytics for demand forecasting, route optimization through machine learning, and AI-powered fuel efficiency strategies. Various models, such as Linear Regression, XGBoost, Support Vector Machine, and Neural Networks, are applied to real-world logistics datasets to reduce carbon emissions based on logistics operations, optimize travel routes to minimize distance and travel time, and predict future deliveries to plan optimal routes. Other models such as K-Means and DBSCAN are also used to optimize travel routes to minimize distance and travel time for logistics operations. This study utilizes datasets from logistics companies' databases. The study also assesses model performance using metrics such as mean absolute error (MAE), mean squared error (MSE), and R2 score. This study also explores how these models can be deployed to various platforms for real-time logistics and supply chain use. The models are also examined through a thorough case study, highlighting best practices and regulatory frameworks that promote sustainability. The findings demonstrate AI's potential to enhance logistics efficiency, reduce carbon footprints, and contribute to a more resilient and adaptive supply chain ecosystem.
format Preprint
id arxiv_https___arxiv_org_abs_2503_14556
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Designing and Deploying AI Models for Sustainable Logistics Optimization: A Case Study on Eco-Efficient Supply Chains in the USA
Shawon, Reza E Rabbi
Hasan, MD Rokibul
Rahman, Md Anisur
Ghandri, Mohamed
Lamari, Iman Ahmed
Kawsar, Mohammed
Akter, Rubi
Machine Learning
Artificial Intelligence
The rapid evolution of Artificial Intelligence (AI) and Machine Learning (ML) has significantly transformed logistics and supply chain management, particularly in the pursuit of sustainability and eco-efficiency. This study explores AI-based methodologies for optimizing logistics operations in the USA, focusing on reducing environmental impact, improving fuel efficiency, and minimizing costs. Key AI applications include predictive analytics for demand forecasting, route optimization through machine learning, and AI-powered fuel efficiency strategies. Various models, such as Linear Regression, XGBoost, Support Vector Machine, and Neural Networks, are applied to real-world logistics datasets to reduce carbon emissions based on logistics operations, optimize travel routes to minimize distance and travel time, and predict future deliveries to plan optimal routes. Other models such as K-Means and DBSCAN are also used to optimize travel routes to minimize distance and travel time for logistics operations. This study utilizes datasets from logistics companies' databases. The study also assesses model performance using metrics such as mean absolute error (MAE), mean squared error (MSE), and R2 score. This study also explores how these models can be deployed to various platforms for real-time logistics and supply chain use. The models are also examined through a thorough case study, highlighting best practices and regulatory frameworks that promote sustainability. The findings demonstrate AI's potential to enhance logistics efficiency, reduce carbon footprints, and contribute to a more resilient and adaptive supply chain ecosystem.
title Designing and Deploying AI Models for Sustainable Logistics Optimization: A Case Study on Eco-Efficient Supply Chains in the USA
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2503.14556