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The ITIDA Job Fair

A great opportunity for all graduates and students in Assiut!

The ITIDA Job Fair is coming to Silicon Oasis Assiut (Smart Village) on November 25th ?

This event will open new doors to the world of work!

Meet companies from the Tech, Software, and Call Center sectors,

and take the first real step towards your professional future

. Don't miss this opportunity! ?

? Attendance is free and open to everyone.

? Silicon Oasis Assiut (Smart Village) ? November 25th

? Free transportation provided

Register now using this link

https://www.aun.edu.eg/fci/ar/forms.gle/NyJXbqxHLoXV7XFT6

Alaa E Abdel-Hakim, Abdel-Monem M Ibrahim, Kheir Eddine Bouazza, Wael Deabes, Abdel-Rahman Hedar

Research Abstract

Traditional K-means clustering assumes, to some extent, a uniform distribution of data around predefined centroids, which limits its effectiveness for many realistic datasets. In this paper, a new clustering technique, simulated-annealing-based ellipsoidal clustering (SAELLC), is proposed to automatically partition data into an optimal number of ellipsoidal clusters, a capability absent in traditional methods. SAELLC transforms each identified cluster into a hyperspherical cluster, where the diameter of the hypersphere equals the minor axis of the original ellipsoid, and the center is encoded to represent the entire cluster. During the assignment of points to clusters, local ellipsoidal properties are independently considered. For objective function evaluation, the method adaptively transforms these ellipsoidal clusters into a variable number of global clusters. Two objective functions are simultaneously optimized: one reflecting partition compactness using the silhouette function (SF) and Euclidean distance, and another addressing cluster connectedness through a nearest-neighbor algorithm. This optimization is achieved using a newly-developed multiobjective simulated annealing approach. SAELLC is designed to automatically determine the optimal number of clusters, achieve precise partitioning, and accommodate a wide range of cluster shapes, including spherical, ellipsoidal, and non-symmetric forms. Extensive experiments conducted on UCI datasets demonstrated SAELLC’s superior performance compared to six well-known clustering algorithms. The results highlight its remarkable ability to handle diverse data distributions and automatically …

Research Authors
Alaa E Abdel-Hakim, Abdel-Monem M Ibrahim, Kheir Eddine Bouazza, Wael Deabes, Abdel-Rahman Hedar
Research Date
Research Department
Research Journal
Algorithms
Research Pages
https://scholar.google.com/scholar?oi=bibs&cluster=1136932969198565742&btnI=1&hl=en
Research Publisher
MDPI
Research Vol
Volume 17, Issue 12
Research Website
https://scholar.google.com/scholar?oi=bibs&cluster=1136932969198565742&btnI=1&hl=en
Research Year
2024

Dynamic Deployment of Mobile Roadside Units in Internet of Vehicles

Research Abstract

Mobile roadside units have crucial role in ensuring efficient communication, computing, and caching services in internet of vehicles (IoVs) for vehicles traversing urban landscapes. The dynamic nature of urban environments faces challenges in optimizing the deployment of mRSUs to adapt to varying vehicular densities and traffic patterns in real-time. In this article, we propose a novel real-time optimization approach for the dynamic deployment of mobile Roadside Units (mRSUs) in urban environments to support the rapid growth of the IoV. The proposed method is a novel allocation strategy based on Minimum Dominating Set (MDS) theory, which is demonstrated to significantly reduce the number of mRSUs required. This reduction is achieved without compromising the efficiency and effectiveness of the network, thereby ensuring rapid and reliable communication within the IoV. This approach addresses critical …

Research Authors
Alaa E Abdel-Hakim, Wael Deabes, Kheir Eddine Bouazza, Abdel-Rahman Hedar
Research Date
Research Department
Research Journal
IEEE Access
Research Pages
155548-155534
Research Publisher
IEEE
Research Vol
12
Research Website
https://scholar.google.com/scholar?oi=bibs&cluster=9429625967726641888&btnI=1&hl=en
Research Year
2025
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