A Machine Learning-based Secured and Energy-efficient Data Transmission in Mobile Ad-Hoc Networks (MANET)
Dr. Rajani BalakrishnanFaculty of Business and Communications, INTI International University, Malaysia. rajani.balakrishnan@newinti.edu.my0000-0002-0467-2053
Salim Saleh Said Al KhadouriFaculty of Business and Communications, INTI International University, Malaysia. salims0007@hotmail.com0009-0004-7823-7312
Dr. Anantha Raj A. ArokiasamyFaculty of Business and Communications, INTI International University, Malaysia. anantharaj.asamy@newinti.edu.my0000-0001-9784-6448
Dr. Stephen Antoni LouisFaculty of Management Sciences, Knowledge Institute of Technology, India. directorkbs@kiot.ac.in0009-0002-4421-1830
Dr. Arasu RamanFaculty of Business and Communications, INTI International University, Malaysia. arasu.raman@newinti.edu.my0000-0002-8281-3210
Keywords: Energy Efficiency, Mobile Ad-Hoc Networks, Machine Learning, Data Transmission.
Abstract
Mobile hoc networks (MANET) are wireless networks of mobile devices that set up Data Transmission (DT) links independently without a fixed framework. Because topology changes constantly, MANET lines are often interrupted and out of balance. So, making sure that DT works well and reliably while also making good use of network resources is a problematic issue that MANET needs to solve. The suggested solution is to create a DT method to deal with these issues. This method aims to improve DT by sending data as quickly as possible while using as little time. As learning examples, the suggested method uses a range of mobile gadgets. Support Vector Machine (SVM) classes are trained to be weak groups. Supervised SVM can sort the surrounding nodes into groups with better link quality and lower energy use. The results of weak learners are combined to create a robust classifier, which guarantees that the data transfer works well. An experimental test checks the amount of power used, the packet transfer rate, the time it takes, and the output. The number of mobile nodes and data packages will be changed during the analysis.