2016
Bentrcia T, DJEFFAL F, Chebaki E.
Multi-objective Design of Nanoscale Double Gate MOSFET Devices Using Surrogate Modeling and Global Optimization. In: Intelligent Nanomaterials, II, Second Edition. Willey ; 2016. pp. 395-427.
AbstractIn recent years, the design and fabrication ofmulti-gate Metal Oxide Semiconductor Field Effect Transistors (MOSFETs) have attracted more efforts due to their high appropriateness for advanced integration circuits’ applications. In fact, the boost of MOSFET structures is a battle against parasitic phenomena appearing at the nanoscale level. Short channel and quantum confinement effects are among the critical drawbacks that need to be remedied carefully. On the other hand, the hot carrier degradation effect is mainly a reliability concern affecting the device per- formance after long duration of work. In response to the high computational costs related to the development of physi- cal based models for Double Gate (DG) MOSFETs including all these effects, more flexible alternatives have been proposed for the prediction of device performances. Our aim in this chapter is to investigate the efficiency of a new proposed frame- work, built upon Kriging metamodeling and Non-dominated Sorting Genetic Algorithm version II (NSGA II), for the optimal design in terms of OFF-current, threshold voltage and swing factor. The input variables of interest are limited to the geometrical parameters namely the channel length and thickness. Data generated according to computer experiments, based on ATLAS 2-D simulator, are used to identify and adjust Kriging surrogate models. It is emphasized that the obtained models can be used accurately in a multi-objective context to offer several Pareto optimal configurations. Therefore, a wide range of selection possibilities is avail- able to the designer depending on situations under consideration.
Bencer S, Boudoukha A, Mouni L.
Multivariate statistical analysis of the groundwater of Ain Djacer area (Eastern of Algeria). Arabian Journal of GeosciencesArabian Journal of Geosciences. 2016;9 :1-10.
Benkherbache S, Mohamed SI-A.
Natural convection in a cylindrical and divergent annular duct fitted with fins. International Journal of Energy, Environment and EconomicsInternational Journal of Energy, Environment and Economics. 2016;24 :503-518.
ALLOUI Z, Vasseur P.
Natural convection in tall and shallow porous rectangular enclosures heated from below. Computational Thermal Sciences: An International JournalComputational Thermal Sciences: An International Journal. 2016;8.
Laib H, CHAGHI ABDELAZIZ, Wira P.
A Neural and Fuzzy Logic Based Control Scheme for a Shunt Active Power Filter. International Conference on Electrical Engineering and Control Applications. 2016 :201-211.
Khireddine S-M, Abdessemed Y, Makhloufi M-T.
A neural network MPP tracker using a Buck-Boost DC/DC converter for photovoltaic systems. 5th International Conference on Systems and Control (ICSC) [Internet]. 2016.
Publisher's VersionAbstract
This paper proposes an artificial neural network (ANN) controller for the maximum power point tracking (MPPT) of a photovoltaic system under rapidly varying temperature and solar radiation conditions. This intelligent control method is applied to a DC/DC Buck-Boost converter. The main difference between the proposed systems to existing MPPT control systems is that it includes an automatic determination of the main switch duty cycle which permits an optimal operation of the control circuit under steady and perturbed environmental conditions. The maximum power point tracking controllers receive solar radiation and photovoltaic cell temperature as inputs, and it estimates the optimum duty cycle corresponding to maximum power as output. The different steps of the design of the intelligent controller are presented hereby with some simulation results using Matlab/Simulink software.
Makhloufi T-M, Abdessemed Y, Khireddine M-S.
A neural network MPP tracker using a Buck-Boost DC/DC converter for photovoltaic systems. 5th International Conference on Systems and Control (ICSC) [Internet]. 2016.
Publisher's VersionAbstract
This paper proposes an artificial neural network (ANN) controller for the maximum power point tracking (MPPT) of a photovoltaic system under rapidly varying temperature and solar radiation conditions. This intelligent control method is applied to a DC/DC Buck-Boost converter. The main difference between the proposed systems to existing MPPT control systems is that it includes an automatic determination of the main switch duty cycle which permits an optimal operation of the control circuit under steady and perturbed environmental conditions. The maximum power point tracking controllers receive solar radiation and photovoltaic cell temperature as inputs, and it estimates the optimum duty cycle corresponding to maximum power as output. The different steps of the design of the intelligent controller are presented hereby with some simulation results using Matlab/Simulink software.
Bentouhami L, Abdessemed R, BENDJEDDOU YACINE, Merabet E.
Neuro-fuzzy control of a dual star induction machine. Journal of Electrical EngineeringJOURNAL OF ELECTRICAL ENGINEERING. 2016;16.
Djeffal EA, Djeffal L, Benoumelaz F.
New Complexity Analysis of the Path Following Method for Linear Complementarity Problem. In: Intelligent Mathematics II: Applied Mathematics and Approximation Theory. Springer ; 2016. pp. 87-104.
Zermane H, Mouss H-L, Oulmi T, Hemal S.
New fuzzy-Based Process Control System for a bag filter of a cement factory. International Conference on Advances in Automotive Technologies (AAT 2016) [Internet]. 2016.
Publisher's VersionAbstract
During the last years, in industrial process control, requirements for Continuous Emission Monitoring (CEM) have increased significantly. Most plants are investing in CEM systems in order to burn waste, obtain ISO 14000 and 18001 certification to protect operator's life. In this work, our approach describes development of a novel internet and fuzzy-based CEM system (IFCEMS). This system contains operator's stations for the bag filter's automation system and monitored using Internet. The object of the present installation consists of a suction ventilator, a bag filter and a system for collecting and evacuating the dust. To optimize the running of the bag filter workshop and ensure continuous control, the process based on one of the most powerful Artificial Intelligence techniques which is fuzzy logic involves the removal or filtration of smoke from the kiln and/or cement mill with control of temperature and pressure of the fumes.
Hichem F, Fayçal DJEFFAL.
New high performance ultraviolet (MSM) TiO2/Glass photodetector based on diffraction grating for optoelectronic applications, ISSN 0030-4026. OptikOptik. 2016;Volume 127 :pp 7202-7209.
AbstractIn this paper, a new TiO2-based UV photodetector including back triangular texturization morphology has been investigated numerically using accurate solutions of Maxwell’s equations. A quantitative study of the device optical parameters like responsivity, sensitivity, detectivity, derived current capability and signal to noise ratio have been carried out in order to review the device overall optical performance for UV optical communication applications. Based on the obtained results, we have found that the device performance figures-of-merit (FoMs) governing the optical behavior is strongly improved as compared to its conventional planar counterpart, where the proposed design offers superior photocurrent, higher responsivity and sensitivity in comparison with those provided by the planar structure. These results led us to suggest the optimization of the proposed morphology using genetic algorithm (GA), in order to improve the electric field confinement and UV-light trapping in TiO2 absorber layer, where excellent ability has been recorded in enhancing the device absorbance. In this context, photodetector with optimized triangular texturization exhibits a 432% improvement, in term of responsivity, over planar structures and 120% improvement over the textured device without optimization. Thus, these encouraging results make the proposed device an extremely efficient candidate for high performance optoelectronic applications.
Fayçal DJEFFAL, Hichem F.
A new high-performance phototransistor design based on both surface texturization and graded gate doping engineering, ISSN 1569-8025. Journal of Computational ElectronicsJournal of Computational Electronics. 2016;Volume 15 :pp 301-310.
AbstractIn this paper, we propose a new optically controlled field effect transistor, OC-FET, based on both surface texturization and graded gate doping engineering. The proposed design consists of a gate with both graded doping and surface texturization aspects to ensure high efficient light absorption and low dark current, respectively. Moreover, using an analytical investigation, an overall performance comparison of the proposed dual texturized gate (DTG) OC-FET device and conventional OC-FETs has been studied in order to confirm the enhanced optical and electrical performance of the proposed design in terms of increased photoresponsivity (R), optical gain (Formula presented.) ratio, drain current driving capability (Formula presented.) and high signal to noise ratio. Simulations show very good agreement between the results of the developed analytical models and those of TCAD software for wide range of design parameters. The developed analytical models are used to formulate the objective functions to optimize the device performance using a multi-objective genetic algorithm (MOGA). The proposed MOGA-based approach is used to search the optimal design parameters, for which the electrical and optical device performance is maximized. The obtained superior electrical performance suggests that our DTG OC-FET offers great promise as optical sensors and transducers for CMOS-based optical communications.
Laib H, Chaghi A, Wira P.
A New Learning and Fuzzy Strategy for Active Power Filtering. Journal on Electrical Engineering and informatics (IJEEI journal)Journal on Electrical Engineering and informatics (IJEEI journal). 2016;8 N°3.
Belkacem Y, Drid S, Makouf A, Bouslimani S, Chrifi-Alaoui L, Marhic B.
Nonlinear control of the doubly fed induction generator used with wind turbine for an isolated grid. 2016 17th International Conference on Sciences and Techniques of Automatic Control and Computer Engineering (STA). 2016 :19-25.
Houas A, Mokhtari Z, Melkemi KE, Boussaad A.
A novel binary image encryption algorithm based on diffuse representation. Engineering Science and Technology, an International JournalEngineering Science and Technology, an International Journal. 2016;19 :1887-1894.
Belferdi W, Noui L, Behloul A.
A Novel Cholesky Decomposition-based Scheme for Strict Image Authentication. 2nd international Conference on Pattern Analysis and Intelligent Systems. 2016.
Dahbi A, Nait-Said N, NAIT-SAID MS.
A novel combined MPPT-pitch angle control for wide range variable speed wind turbine based on neural network. International Journal of Hydrogen EnergyInternational Journal of Hydrogen Energy. 2016;41 N 22 :9427-9442.
AbstractThe objective of this paper is to develop a novel combined MPPT-pitch angle robust control system of a variable-speed wind turbine. The direct driven wind turbine using the permanent magnet synchronous generator (PMSG) is connected to the grid by means of fully controlled frequency converters, which consist of a pulse width-modulation PWM rectifier connected to an inverter via an intermediate DC bus. In order to maximize the exploited wind power and benefit from a wide range of the wind speed, a novel combined maximum power point tracking (MPPT)-Pitch angle control is developed using only one low cost circuit based on Neural Network (ANN), which allows the PMSG to operate at an optimal speed to extract maximum power when this last is lower than nominal power, and limit the extra power. To achieve feeding the grid with high-power and good quality of electrical energy, the inverter is controlled by (PWM) in a way to deliver only the active power into the grid, and thus to obtain a unit power factor. DC-link voltage is also controlled by the inverter. The dynamic and steady-state performances of the wind energy conversion system (WECS) are carried by using Matlab Simulink.
BENDJEDDOU YACINE, Abdessemed R, Merabet E, Bentouhami L.
Novel direct vector control of self excited induction generator with estimation of magnetizing inductance using conventionnal PI and fuzzy PI controllers. th International Conférence on Electrical Engineering and First Workshop on Robotics and controls, CEE'2016. 2016.
Hamza R, TITOUNA F.
A novel sensitive image encryption algorithm based on the Zaslavsky chaotic map. Information Security Journal: A Global PerspectiveInformation Security Journal: A Global Perspective. 2016;25 :6.
AbstractIn this article, a novel sensitive encryption scheme to secure the digital images based on the Zaslavsky chaotic map is proposed. We employ the Zaslavsky chaotic map as a pseudo-random generator to produce the key encryption of the proposed image cryptosystem. The cipher structure has been chosen based on permutation-diffusion processes, where we adopt the classic permutation substitution network, which ensures both confusion and diffusion properties for the encrypted image. Our proposed algorithm has high sensitivity in plain image and the secret key. Moreover, the results show that the characteristics of our approach have excellent performance, with high scores (NPRC = 99.61%, UACI = 33.47%, entropy (CipherImage) 8, and correlation coefficient 0). Experimental results have been studied and analyzed in detail with various types of security analysis. These results demonstrate that our proposed cryptosystem has highly satisfactory security performance and can withstand various attacks compared to state-of-the-art methods.