Publications

2016
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.
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.
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.
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.
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.

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.

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.

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.

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.
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.
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.
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.
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.
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.

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.

Pages