It is now clear that machine learning will be widely used in future telecommunication networks as it is increasingly used in today's networks. However, despite its increasing application and its enormous potential, there are still many areas in which the new techniques developed in the area of machine learning are not yet fully utilized. The aim of this thesis is to present the application of innovative techniques of machine learning (ML-Machine Learning) in the field of Telecommunications, and specifically to problems related to the analysis and prediction of traffic in data networks (NTAP - Network Traffic Analysis and Prediction). The applications of NTAP are very broad, so this thesis focuses on the following five specific areas: - P...
In this report, two applications of neural networks are investigated. The first one is low bit rate ...
Data Mining (DM) refers to the analysis of observational datasets to find relationships and to summa...
SPEET project is aimed at exploiting the potential synergy among the huge amount of academic data a...
This dissertation investigates high performance cooperative localization in wireless environments ba...
In this thesis I present an automated framework for segmentation of bone structures from dual modal...
Presented in this work is an investigation of the application of artificially intelligent algorithms...
Testing object-oriented software is critical because object-oriented languages have been commonly us...
Industrial control systems (ICSs) are an essential part of every nation\u27s critical infrastructure...
To keep up with the security needs being exerted by the ever-increasing complexity of technology, ne...
Integration of artificial intelligence and unmanned aerial vehicles (UAVs) has been an active resear...
Recent technological advances have made it cost effective to utilize massive, heterogeneous sensor n...
Memristors have been extensively studied as a promising candidate for next generation non-volatile m...
Developing computer-aided detection and/or diagnosis (CAD) schemes has been an active research topic...
Machinery condition monitoring techniques are carried out based on the knowledge of the characterist...
The manufacturing industry is undergoing significant transformation towards electrification (e-mobil...
In this report, two applications of neural networks are investigated. The first one is low bit rate ...
Data Mining (DM) refers to the analysis of observational datasets to find relationships and to summa...
SPEET project is aimed at exploiting the potential synergy among the huge amount of academic data a...
This dissertation investigates high performance cooperative localization in wireless environments ba...
In this thesis I present an automated framework for segmentation of bone structures from dual modal...
Presented in this work is an investigation of the application of artificially intelligent algorithms...
Testing object-oriented software is critical because object-oriented languages have been commonly us...
Industrial control systems (ICSs) are an essential part of every nation\u27s critical infrastructure...
To keep up with the security needs being exerted by the ever-increasing complexity of technology, ne...
Integration of artificial intelligence and unmanned aerial vehicles (UAVs) has been an active resear...
Recent technological advances have made it cost effective to utilize massive, heterogeneous sensor n...
Memristors have been extensively studied as a promising candidate for next generation non-volatile m...
Developing computer-aided detection and/or diagnosis (CAD) schemes has been an active research topic...
Machinery condition monitoring techniques are carried out based on the knowledge of the characterist...
The manufacturing industry is undergoing significant transformation towards electrification (e-mobil...
In this report, two applications of neural networks are investigated. The first one is low bit rate ...
Data Mining (DM) refers to the analysis of observational datasets to find relationships and to summa...
SPEET project is aimed at exploiting the potential synergy among the huge amount of academic data a...