Machine Learning Based Logistic Decision Support System for Intelligent Vehicles and Transportation Systems
Hussein Alaa Diame1, Waleed Hameed2, Zainab.R.Abdulsada3,*, Noora Hani Sherif4, Noor Hanoon Haroon5, Narjes Benameur6, M. A. Burhanuddin7
1Technical Computer Engineering Department, Al-Kunooze University College, Basrah, Iraq
2Medical instruments engineering techniques, Al-farahidi University, Baghdad, Iraq
3Department of Medical Devices Engineering Technologies, National University of Science and Technology, Dhi Qar, Nasiriyah, Iraq
4Computer Technologies Engineering, Al-Turath University College, Baghdad,Iraq
5Department of Computer Technical Engineering, Technical Engineering College, Al-Ayen University, Thi- Qar, Iraq
6Laboratory of Biophysics and Medical Technology, Higher Institute of Medical Technologies of Tunis, University of Tunis El Manar, Tunis 1006, Tunisia
7Faculty of Information & Communication Technology, Universiti Teknikal Malaysia Melaka, Durian Tunggal, Melaka, Malaysia
Emails: Hussein .Alaa@ Kunoozu .Edu .Iq; Waleed Hameed@uoalfarahidi.edu.iq; zainab.alsada@nust.edu.iq; noura.hani@turath.edu.iq; noor@alayen.edu.iq; narjes.benameur@istmt.utm.tn; burhanuddin@utem.edu.my
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Abstract One-third of the freight expense is spent on transportation and transport networks, thus significantly impacting the logistics sector's efficiency. Artificial Intelligent logistics strategies are designed to alleviate the impact on metropolitan areas exacerbated by increased freight transport. The city of logistics is widely employed as a modern study area, has a significant social and economic influence, and has extensively explored the key elements and components. Most recent experiments concentrate on traffic management and logistics monitoring, even though no research studies have tried to detect drivers' distractions. Since drivers are one of the major parts of logistic service, this study incorporates existing logistics DSS with the cognitive model for predicting driver distraction. This paper presents a Machine Learning Integrated Decision Support System (MLIDSS) architecture and core components based on simulation/optimization modules to assist the smart logistics DSS with an eye to service delivery driver distraction level. The ML algorithms perform real-time driver distraction predictions for smooth logistics transportation. The viability of such a transportation system is often illustrated in the real world. The findings result in the highest-performing intelligent decision support system compared to existing models. Vehicular |
*Corresponding Author: zainab.alsada@nust.edu.iq
Received: February 25, 2023 Revised: May 16, 2023 Accepted: September 05, 2023
Keywords: Logistics; Decision Support System; Machine Learning Algorithms; Intelligent Vehicle Transportation