Publications by Year: 2017

2017
Hamdi M, CHRIFI-ALAOUI L, Drid S, Bouguila N. Management, optimization and conversion of energy for self-governing house. 2017 International Conference on Control, Automation and Diagnosis (ICCAD). 2017 :429-433.
Abbache F, Kalla H. Maximizing Reliability of Heterogeneous Distributed System Using Bio-Inspired Technique for Task Allocation Problem. Proceedings of the 2017 International Conference on Computer Science and Artificial Intelligence. 2017 :131-136.
Mourad A, Mourad B, Abderrahim B. Measurement and numerical simulation of the cutting temperature in cutting tool during turning operation. Journal of Engineering Science and TechnologyJournal of Engineering Science and Technology. 2017;12 :1307-17.
Brahmi S, Aitouche S, Mouss MD. Measurement of Intellectual Capital in an Algerian Company. International Journal of Economics and Management EngineeringInternational Journal of Economics and Management Engineering. 2017;11 :1163-1166.
Abboudi A, Chermime B, Djebaili H, Brioua M. Mechanical and Structural Studies of Ternary Mo–Zr–N Layers Deposited on Substrate by PVD. Металлофизика и новейшие технологииМеталлофизика и новейшие технологии. 2017.
Nawel A, Melkemi K. Memory boundary feedback stabilization for Schrodinger equations with variable coefficients. Electronic Journal of Differential EquationsElectronic Journal of Differential Equations. 2017;2017 :1-14.
Djebaili K. Méthodes de chiffrement basées sur la factorisation en entiers et logarithme discret. 2017.
Hamouda K, Adjroudi R, Rotter VS, Wang F. Methodology for WEEE assessment in Algeria. International Journal of Environmental StudiesInternational Journal of Environmental Studies. 2017;74 :568-585.
Benamar S. Microbiologie des péritonites infectieuses sur dialyse péritonéale, Batna (2010-2017). 9ème Journées Internationales de Néphrologie d’Annaba. 2017.
Benamar S. Micro-organismes et profils de sensibilité aux antibiotiques, selon l’âge dans l’infection urinaire nosocomiale. 6èmes Journées Urologiques Nationales d’Annaba (JUNA). 2017.
Abdelali S, Mohamed S. Mise à niveau d&⋕39;un banc optique de mesure de la réponse spectrale. 2017.
Bouguerra F, Benacer I, Saidi L. MLP and RBF Symbol Tracking with 16 QAM Modulation Over Multipath Distorted Channel. International Conference on Advanced Systems and Electric Technologies (IC_ASET) [Internet]. 2017 :182-187. Publisher's VersionAbstract

Multilayer Perceptron (MLP) and Radial Basis Function (RBF) were proposed in this paper as two models of non-linear ANN based equalization techniques in order to optimize processing performance, tracking, and minimize error of the channel effects and the ascending noise with 16 QAM Modulation, this work will be referenced with one of the most used linear adaptive equalization; Recursive least squares (RLS), as an evaluation. The two models will be compared in terms of efficiency and robustness facing noisy channel.

Bouguerra F, Benacer I, Saidi L. MLP and RBF symbol tracking with 16 QAM modulation over multipath distorted channel. 2017 International Conference on Advanced Systems and Electric Technologies (IC_ASET). 2017 :182-187.
Abid K, Arab-Mansour I, Bonner-Cherifi C, Mouss L, KAZAR O. M-Maintenance Approach based on Mobile Agent Technology. International Journal of Operations and Quantitative Management (IJOQM)International Journal of Operations and Quantitative Management (IJOQM). 2017;23 :1-21.
Benaziza W, Slimane N, Mallem A. Mobile robot trajectory tracking using terminal sliding mode control. 6th International Conference on Systems and Control (ICSC) [Internet]. 2017. Publisher's VersionAbstract

In this paper, an approach of trajectory tracking is proposed. The approach is based on two controls. Firstly, a quasi sliding mode control is proposed of the angular velocity in aim to converge the angle error to zero in short time with asymptotic stability. Secondly, a global sliding mode control for linear velocity is proposed, in order to bring the position error to zero and ensure the asymptotic stability by using the Lyapunov theory. Finally, the proposed control shows the performance of the algorithm, and the simulation results show good convergence for circular, sinusoidal and specific trajectories.

Guezouli L, Barka K, Bouam S, Bouhta D, Aouti S. Mobile sensor nodes collaboration to optimize routing process based mobility model. 2017 International Conference on Wireless Networks and Mobile Communications (WINCOM). 2017 :1-5.
CHOUROUK BOUCHAREB, MOHAMED-SAID NAIT-SAID, FETHI LAHMER. Modeling and Diagnostic of Permanent Magnet Synchronous Machine under Insulation Failure Condition. Algerian Journal of Signals and SystemsAlgerian Journal of Signals and Systems. 2017;2 :86-95.
Farid M, Abdelmalek K, Fayçal DJEFFAL, Zohir D. Modeling and investigation of smart capacitive pressure sensor using artificial neural networks. 6th International Conference on Systems and Control (ICSC). 2017.Abstract

In this paper, a new capacitive pressure sensor (CPS) is investigated and modeled by means of neural approach. The sensing principle in our pressure sensor is based on the determination of the change in the capacity induced by the applied pressure. A ring oscillator is used to convert the capacity variation of the pressure sensor to an output frequency. A multilayer perceptron neural network is used to predict the applied pressure which causes a variation of the capacity including the temperature effects. This model is implemented as an electronic device into PSPICE simulator library, where the device should reproduce faithfully the pressure sensor behavior. Moreover, a new inverse model called smart sensor has been developed, in order to remove the nonlinearity behavior of sensor response. The obtained results make the proposed smart sensor as a potential alternative for high performances pressure sensing applications.

Abderrahim Y, Zohir D, Mawloud G, Salim A. Modeling and Simulation of Double Gate Field Plate In_ (0.2) Ga_ (0.8) As/Al_ (0.3) Ga_ (0.7) as HEMT using Gaussian Process Regression for Sensor Application. Research Journal of Applied Sciences, Engineering and TechnologyResearch Journal of Applied Sciences, Engineering and Technology. 2017;14 :112-118.
Ferradji MA, HEDJAZI D. Modeling collaborative learning: case of clinical reasoning. Medical Technologies JournalMedical Technologies Journal. 2017;19 :52-53.Abstract
  Background: Collaborative learning is an important pedagogical strategy which gained a huge interest in critical domains such as the medical field. However, to ensure the quality of this learning method, it is necessary to focus intention not only on the cognitive aspect but also on the social activities that represent an essential issue during collaborative learning sessions. Our objective in this study is to highlight the collaborative aspect in the group learning method of clinical reasoning. Methods: In this work, we have focused on cognitive studies that are interested in the clinical reasoning processes, while proposing a model dedicated to the design of collaborative clinical reasoning learning environment in synchronous mode. This model is primarily interested in social activities that have a strong influence on the collaborative learning effectiveness, and they are generally treated implicitly by basing on the improvisation and spontaneity of the learners group. Results: The research idea was embodied through a collaborative learning clinical reasoning environment based on Web 2.0 technologies. We chose this technology to benefit from its ease of use and from its technical performances that can significantly contribute to the development of the cognitive and social aspects in the collaborative learning environment. Conclusion: Our first contact with medical students showed us that they are appreciating this learning method. Indeed, to evaluate objectively our choices reliability, we plan to accomplish this research with a quantitative study based on real experiences with clinicians and medical students. The suggested study will allow us to collect the necessary lessons to work in depth on the relevant questions concerning the cognitive and social activities in the collaborative clinical reasoning learning.  

Pages