Publications

2022
Berghout T, Mouss L-H, Bentrcia T, Benbouzid M. A Semi-Supervised Deep Transfer Learning Approach for Rolling-Element Bearing Remaining Useful Life Prediction. IEEE Transactions on Energy Conversion [Internet]. 2022;37 (2). Publisher's VersionAbstract
Deep learning techniques have recently brought many improvements in the field of neural network training, especially for prognosis and health management. The success of such an intelligent health assessment model depends not only on the availability of labeled historical data but also on the careful samples selection. However, in real operating systems such as induction machines, which generally have a long reliable life, storing the entire operation history, including deterioration (i.e., bearings), will be very expensive and difficult to feed accurately into the training model. Other alternatives sequentially store samples that hold degradation patterns similar to real ones in damage behavior by imposing an accelerated deterioration. Labels lack and differences in distributions caused by the imposed deterioration will ultimately discriminate the training model and limit its knowledge capacity. In an attempt to overcome these drawbacks, a novel sequence-by-sequence deep learning algorithm able to expand the generalization capacity by transferring obtained knowledge from life cycles of similar systems is proposed. The new algorithm aims to determine health status by involving long short-term memory neural network as a primary component of adaptive learning to extract both health stage and health index inferences. Experimental validation performed using the PRONOSTIA induction machine bearing degradation datasets clearly proves the capacity and higher performance of the proposed deep learning knowledge transfer-based prognosis approach.
AKSA K, Harrag M. Surveillance Des Zones Critiques Et Des Accès Non Autorisés En Utilisant La Technologie Rfid. khazzartech الاقتصاد الصناعي [Internet]. 2022;12 (1) :702-717. Publisher's VersionAbstract
La surveillance est la fonction d’observer toutes activités humaine ou environnementales dans le but de superviser, contrôler ou même réagir sur un cas particulier; ce qu’on appelle la supervision ou le monitoring. La technologie de la radio-identification, connue sous l’abréviation RFID (de l’anglais Radio Frequency IDentification), est l’une des technologies utilisées pour récupérer des données à distance de les mémoriser et même de les traiter. C’est une technologie d’actualité et l’une des technologies de l’industrie 4.0 qui s’intègre dans de nombreux domaines de la vie quotidienne notamment la surveillance et le contrôle d’accès. L’objectif de cet article est de montrer comment protéger et surveiller en temps réel des zones industrielles critiques et de tous types d’accès non autorisés de toute personne (employés, visiteurs…) en utilisant la technologie RFID et cela à travers des exemples de simulation à l’aide d’un simulateur dédié aux réseaux de capteurs.
AKSA K, Harrag M. Surveillance Des Zones Critiques Et Des Accès Non Autorisés En Utilisant La Technologie Rfid. khazzartech الاقتصاد الصناعي [Internet]. 2022;12 (1) :702-717. Publisher's VersionAbstract
La surveillance est la fonction d’observer toutes activités humaine ou environnementales dans le but de superviser, contrôler ou même réagir sur un cas particulier; ce qu’on appelle la supervision ou le monitoring. La technologie de la radio-identification, connue sous l’abréviation RFID (de l’anglais Radio Frequency IDentification), est l’une des technologies utilisées pour récupérer des données à distance de les mémoriser et même de les traiter. C’est une technologie d’actualité et l’une des technologies de l’industrie 4.0 qui s’intègre dans de nombreux domaines de la vie quotidienne notamment la surveillance et le contrôle d’accès. L’objectif de cet article est de montrer comment protéger et surveiller en temps réel des zones industrielles critiques et de tous types d’accès non autorisés de toute personne (employés, visiteurs…) en utilisant la technologie RFID et cela à travers des exemples de simulation à l’aide d’un simulateur dédié aux réseaux de capteurs.
Berghout T, Benbouzid M. A Systematic Guide for Predicting Remaining Useful Life with Machine Learning. Electronics [Internet]. 2022;11 (7). Publisher's VersionAbstract
Prognosis and health management (PHM) are mandatory tasks for real-time monitoring of damage propagation and aging of operating systems during working conditions. More definitely, PHM simplifies conditional maintenance planning by assessing the actual state of health (SoH) through the level of aging indicators. In fact, an accurate estimate of SoH helps determine remaining useful life (RUL), which is the period between the present and the end of a system’s useful life. Traditional residue-based modeling approaches that rely on the interpretation of appropriate physical laws to simulate operating behaviors fail as the complexity of systems increases. Therefore, machine learning (ML) becomes an unquestionable alternative that employs the behavior of historical data to mimic a large number of SoHs under varying working conditions. In this context, the objective of this paper is twofold. First, to provide an overview of recent developments of RUL prediction while reviewing recent ML tools used for RUL prediction in different critical systems. Second, and more importantly, to ensure that the RUL prediction process from data acquisition to model building and evaluation is straightforward. This paper also provides step-by-step guidelines to help determine the appropriate solution for any specific type of driven data. This guide is followed by a classification of different types of ML tools to cover all the discussed cases. Ultimately, this review-based study uses these guidelines to determine learning model limitations, reconstruction challenges, and future prospects.
Berghout T, Benbouzid M. A Systematic Guide for Predicting Remaining Useful Life with Machine Learning. Electronics [Internet]. 2022;11 (7). Publisher's VersionAbstract
Prognosis and health management (PHM) are mandatory tasks for real-time monitoring of damage propagation and aging of operating systems during working conditions. More definitely, PHM simplifies conditional maintenance planning by assessing the actual state of health (SoH) through the level of aging indicators. In fact, an accurate estimate of SoH helps determine remaining useful life (RUL), which is the period between the present and the end of a system’s useful life. Traditional residue-based modeling approaches that rely on the interpretation of appropriate physical laws to simulate operating behaviors fail as the complexity of systems increases. Therefore, machine learning (ML) becomes an unquestionable alternative that employs the behavior of historical data to mimic a large number of SoHs under varying working conditions. In this context, the objective of this paper is twofold. First, to provide an overview of recent developments of RUL prediction while reviewing recent ML tools used for RUL prediction in different critical systems. Second, and more importantly, to ensure that the RUL prediction process from data acquisition to model building and evaluation is straightforward. This paper also provides step-by-step guidelines to help determine the appropriate solution for any specific type of driven data. This guide is followed by a classification of different types of ML tools to cover all the discussed cases. Ultimately, this review-based study uses these guidelines to determine learning model limitations, reconstruction challenges, and future prospects.
KADRI O, Benyahia A, Abdelhadi A. Tifinagh Handwriting Character Recognition Using a CNN Provided as a Web Service. International Journal of Cloud Applications and Computing (IJCAC) [Internet]. 2022;12 (1). Publisher's VersionAbstract
Many cloud providers offer very high precision services to exploit Optical Character Recognition (OCR). However, there is no provider offers Tifinagh Optical Character Recognition (OCR) as Web Services. Several works have been proposed to build powerful Tifinagh OCR. Unfortunately, there is no one developed as a Web Service. In this paper, we present a new architecture of Tifinagh Handwriting Recognition as a web service based on a deep learning model via Google Colab. For the implementation of our proposal, we used the new version of the TensorFlow library and a very large database of Tifinagh characters composed of 60,000 images from the Mohammed Vth University in Rabat. Experimental results show that the TensorFlow library based on a Tensor processing unit constitutes a very promising framework for developing fast and very precise Tifinagh OCR web services. The results show that our method based on convolutional neural network outperforms existing methods based on support vector machines and extreme learning machine.
KADRI O, Benyahia A, Abdelhadi A. Tifinagh Handwriting Character Recognition Using a CNN Provided as a Web Service. International Journal of Cloud Applications and Computing (IJCAC) [Internet]. 2022;12 (1). Publisher's VersionAbstract
Many cloud providers offer very high precision services to exploit Optical Character Recognition (OCR). However, there is no provider offers Tifinagh Optical Character Recognition (OCR) as Web Services. Several works have been proposed to build powerful Tifinagh OCR. Unfortunately, there is no one developed as a Web Service. In this paper, we present a new architecture of Tifinagh Handwriting Recognition as a web service based on a deep learning model via Google Colab. For the implementation of our proposal, we used the new version of the TensorFlow library and a very large database of Tifinagh characters composed of 60,000 images from the Mohammed Vth University in Rabat. Experimental results show that the TensorFlow library based on a Tensor processing unit constitutes a very promising framework for developing fast and very precise Tifinagh OCR web services. The results show that our method based on convolutional neural network outperforms existing methods based on support vector machines and extreme learning machine.
KADRI O, Benyahia A, Abdelhadi A. Tifinagh Handwriting Character Recognition Using a CNN Provided as a Web Service. International Journal of Cloud Applications and Computing (IJCAC) [Internet]. 2022;12 (1). Publisher's VersionAbstract
Many cloud providers offer very high precision services to exploit Optical Character Recognition (OCR). However, there is no provider offers Tifinagh Optical Character Recognition (OCR) as Web Services. Several works have been proposed to build powerful Tifinagh OCR. Unfortunately, there is no one developed as a Web Service. In this paper, we present a new architecture of Tifinagh Handwriting Recognition as a web service based on a deep learning model via Google Colab. For the implementation of our proposal, we used the new version of the TensorFlow library and a very large database of Tifinagh characters composed of 60,000 images from the Mohammed Vth University in Rabat. Experimental results show that the TensorFlow library based on a Tensor processing unit constitutes a very promising framework for developing fast and very precise Tifinagh OCR web services. The results show that our method based on convolutional neural network outperforms existing methods based on support vector machines and extreme learning machine.
Khaoula S, Messaoud B, Djamel MM. Use of Petri Nets to Model the Maintenance of Multi Site Compagny. International Congress of Energies and Engineering of Industrial ProcessesCEGPI’22, 23 - 25 May. 2022.
Khaoula S, Messaoud B, Djamel MM. Use of Petri Nets to Model the Maintenance of Multi Site Compagny. International Congress of Energies and Engineering of Industrial ProcessesCEGPI’22, 23 - 25 May. 2022.
Soltani K, Benzouai M, Mouss M-D. Use of Petri Nets to Model the Maintenance of Multi Site Compagny. International Congress of Energies and Engineering of Industrial ProcessesCEGPI’22 23 - 25 May. 2022.
Khaoula S, Messaoud B, Djamel MM. Use of Petri Nets to Model the Maintenance of Multi Site Compagny. International Congress of Energies and Engineering of Industrial ProcessesCEGPI’22, 23 - 25 May. 2022.
Soltani K, Benzouai M, Mouss M-D. Use of Petri Nets to Model the Maintenance of Multi Site Compagny. International Congress of Energies and Engineering of Industrial ProcessesCEGPI’22 23 - 25 May. 2022.
Soltani K, Benzouai M, Mouss M-D. Use of Petri Nets to Model the Maintenance of Multi Site Compagny. International Congress of Energies and Engineering of Industrial ProcessesCEGPI’22 23 - 25 May. 2022.
Zermane H. Web Fuzzy Based Autonomous Control System. 4th International Conference on Engineering Science and Technology (ICEST2022) 16th-17th of February. 2022.
Amrane M, Messast S, Demagh R. Analyse Numerique D’une Fondation Superficielle Reposant Sur Un Sol Non-Sature En Hypoplasticite. 5ème Colloque International sur les sols Non Saturés, UNSAT, 15-16 Mars. 2022.
Amrane M, Messast S, Demagh R. Analyse Numerique D’une Fondation Superficielle Reposant Sur Un Sol Non-Sature En Hypoplasticite. 5ème Colloque International sur les sols Non Saturés, UNSAT, 15-16 Mars. 2022.
Amrane M, Messast S, Demagh R. Analyse Numerique D’une Fondation Superficielle Reposant Sur Un Sol Non-Sature En Hypoplasticite. 5ème Colloque International sur les sols Non Saturés, UNSAT, 15-16 Mars. 2022.
Yahiaoui D, SAADI M, Bouzid T. Compressive Behavior of Concrete Containing Glass Fibers and Confined with Glass FRP Composites. International Journal of Concrete Structures and Materials [Internet]. 2022. Publisher's VersionAbstract
In this paper, numerous experimental tests were carried out to study the behavior of concrete containing glass fibers and confined with glass fiber-reinforced polymer (GFRP). Concrete specimens containing different fiber percentages ( 0.3 wt.%, 0.6 wt.%, 0.9 wt.% or 1.2 wt.%) and with different strengths of concrete (8.5 MPa, 16 MPa and 25 MPa) and different confinement levels (two, four and six layers of GFRP) were used as research parameters. The samples were tested to failure under pure axial compression. The results imply that the confinement effect with GFRP is relatively higher for concrete samples containing glass fiber (GFCC) with a percentage equal to 0.6 wt.%. The theoretical of stress ratios (fcc/fco) estimated by using existing ultimate strength models are found to be close to the experimental results for high strength of GFCC, but not close to the experimental results for low strength of GFCC.
Yahiaoui D, SAADI M, Bouzid T. Compressive Behavior of Concrete Containing Glass Fibers and Confined with Glass FRP Composites. International Journal of Concrete Structures and Materials [Internet]. 2022. Publisher's VersionAbstract
In this paper, numerous experimental tests were carried out to study the behavior of concrete containing glass fibers and confined with glass fiber-reinforced polymer (GFRP). Concrete specimens containing different fiber percentages ( 0.3 wt.%, 0.6 wt.%, 0.9 wt.% or 1.2 wt.%) and with different strengths of concrete (8.5 MPa, 16 MPa and 25 MPa) and different confinement levels (two, four and six layers of GFRP) were used as research parameters. The samples were tested to failure under pure axial compression. The results imply that the confinement effect with GFRP is relatively higher for concrete samples containing glass fiber (GFCC) with a percentage equal to 0.6 wt.%. The theoretical of stress ratios (fcc/fco) estimated by using existing ultimate strength models are found to be close to the experimental results for high strength of GFCC, but not close to the experimental results for low strength of GFCC.

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