Equipe 1 com

2020
Berghout, Tarek, Leila-Hayet Mouss, and Ouahab Kadri. 2020. “Dynamic Adaptation for Length Changeable Weighted Extreme Learning Machine”. International conferance of intelligent. Publisher's Version Abstract

In this paper, a new length changeable extreme learning machine is proposed. The aim of the proposed method is to improve the learning performances of a Single hidden layer feedforward neural network (SLFN) under rich dynamic imbalanced data. Particle Swarm Optimization (PSO) is involved for hyper-parameters tuning and updating during incremental learning. The algorithm is evaluated using a subset from C-MAPSS (Commercial Modular Aero-Propulsion System Simulation) dataset of gas turbine engine and compared to its derivatives. The results prove that the new algorithm has a better learning attitude. The toolbox that contains the developed algorithms of this comparative study is publicly available.

Berghout, Tarek, and Leila-Hayet Mouss. 2020. “Regularized Length Changeable Extreme Learning Machine with Incremental Learning Enhancements for Remaining Useful Life Prediction of Aircraft Engines”. 1st International Conference on Communications, Control Systems and Signal Processing (CCSSP), 16-17 May. Publisher's Version Abstract

The main objective of this works is to study and improve the performances of the Single hidden Layer Feedforward Neural network (SLFN) for the application of Remaining Useful Life (RUL) prediction of aircraft engines. The most common problems in SLFNs based old training algorithms such as backpropagation are time consuming, over-fitting and the appropriate network architecture identification. In this paper a new incremental constructive learning algorithm based on Extreme Learning Machine algorithm is proposed for founding the appropriate architecture of a neural network under less computational costs. The aim of the proposed training approach is to study its maximum capabilities during RUL prediction by reducing over-fitting and human intervention. The performances of the proposed approach which are evaluated on C-MAPPS dataset and compared with its original variant from the literature. Experimental results proved that the new algorithm outperforms the old one in many metrics evaluations.

2019
Ammar, Haboussi. 2019. “A New Approache on the trajectory planning of the robot for terminal spray”. ICMM 2019 The third edition of the International Conference of Mechanics and Materials. Publisher's Version
Ammar, Haboussi. 2019. “Supervision du système de clinkérisation par les systemes Immunitaires artificiels”. ICMM 2019 The third edition of the International Conference of Mechanics and Materials. Publisher's Version
Naima, Zerari. 2019. “Proposal of an Automatic Single Document Text Summarization”. ICMESS 2019 International Conference on Management, Economics & Social Science,18 -19 March London United Kingdom.
Samia, Aitouche. 2019. “Supervision of an Industrial Process using Artificial Intelligence”. ICSET 2019 International Conference on Science, Engineering & Technology 18 -19 March London, United Kingdom.
Naima, Zerari. 2019. “ Proposal of an Automatic Single Document Text Summarization http://researchfora.com/Conference2019/UK/2/ICMESS/ ”. ICMESS 2019 43rd International Conference, 18-19 Mars London, Royaume unis. Publisher's Version
Ouahiba, Chouhal. 2019. “Type 2 Fuzzy logic approachto fault production in preheater cement Cyclone”. IAM’2019 2nd Conference on Informatic and Applied Mathematics 12-13 juin Guelma Algeria.
2018
Faycal, Bouzid. 2018. “Numerical simulation of a high responsivity ultraviolet photodetector”. In ICPR International Conference on Photonics Research (Interphotonics-2018,. Publisher's Version Abstract
Ultraviolet photodetectors (UV PDs) are important devices that can be used in various scientific, commercial and military applications. In this work, a numerical simulation study of nitride-based "p+-n-n+" front illuminated UV PD, designed with an aluminum composition achieving a true solar blindness, has been reported using the commercially available Atlas package from Silvaco international. It has been found that the proposed structure is sensitive to the UV rays in the wavelength range investigated, where the spectral response reaches its maximum then declines sharply with a good performance of solar-blind at room temperature and zero-bias voltage. Furthermore, it was also found by simulating the evolution of the current density according to different wavelengths of the incident radiation that the designed structure is able to act as a wavelength selector device.
Djamil, Rezki. 2018. “Decision support system for piloting an oil drilling process: ROP prediction”. In ICATS'17 - International Conference on Automatic control, Telecommunications and Signals,. Publisher's Version
Djamil, Rezki. 2018. “Rate of penetration (ROP) prediction in oil drilling based on ensemble machine learning”. In ICTO 2018 / MENCIS2018 - Information and Communication Technologies in Organizations and Society / Middle East & North Africa Conference for Information Systems, , p. 537-549. Publisher's Version Abstract
This work presents the prediction of the rate of progression in oil drilling based on random forest algorithm, which is part of the family of ensemble machine learning. The ROP parameter plays a very important role in oil drilling, which has a great impact on drilling costs, and its prediction allows drilling engineers to choose the best combination of input parameters for better progress in drilling operations. To resolve this problem, several works have been realized with the different modeling techniques as machine learning: RNAs, Bayesian networks, SVM etc. The random forest algorithm chosen for our model is better than the other MLS techniques. in speed or precision, following what we found in the literature and tests done with the open source machine learning tool on historical oil drilling logs from fields of Hassi Terfa located in southern Algeria.
Rate of penetration (ROP) prediction in oil drilling based on ensemble machine learning
Djamil, Rezki. 2018. “Rate of penetration (ROP) prediction in oil drilling based on ensemble machine learning”. In ICT for an Inclusive World , Springer, Cham , p. 537-549. Publisher's Version Abstract
This work presents the prediction of the rate of progression in oil drilling based on random forest algorithm, which is part of the family of ensemble machine learning. The ROP parameter plays a very important role in oil drilling, which has a great impact on drilling costs, and its prediction allows drilling engineers to choose the best combination of input parameters for better progress in drilling operations. To resolve this problem, several works have been realized with the different modeling techniques as machine learning: RNAs, Bayesian networks, SVM etc. The random forest algorithm chosen for our model is better than the other MLS techniques. in speed or precision, following what we found in the literature and tests done with the open source machine learning tool on historical oil drilling logs from fields of Hassi Terfa located in southern Algeria.
Khyreddine, Bouhafna. 2018. “A strategic method for steering a photovoltaic generator ISSN / ISBN 2308-4375 / 978-1-61208-620-0”. eKNOW 2018 : The Tenth International Conference on Information, Process, and Knowledge Management 25-29 March Rome, Italy : 50-55. Publisher's Version Abstract
T There are several forms of electricity generation, first, by burning fuels, such as coal, natural gas or oil, which have an effect on the atmosphere, especially increasing greenhouse gases, or, second, from renewable sources, such as wind, hydro and solar, which are clean and renewable sources of energy. Our work focuses on solar sources, especially photovoltaics; we have treated the steering part of photovoltaic generators using artificial intelligence methods, specifically, case-based reasoning. The system we have built generates actions to be applied to the generator based on its current state and reasoning from previous cases recorded in the case base.
Hanane, Zermane. 2018. “Fuzzy Logic Control System in Medical Field”. Proceedings of the International Conference on Industrial Engineering and Operations Management, 26-27 July Paris, France. Publisher's Version Abstract
Since the work of Lotfi Zadeh in 1965, the fuzzy logic continues to interest researchers and industrialists who gather around the "theories of uncertainty". The ramifications of fuzzy logic extend to fields as varied as control, the diagnosis of complex systems, bioinformatics, decision support. Research work is done in bio-informatic field where a system for decision support of anesthetic depth fuzzy basic. This study was carried out under general anesthesia with propofol. We use in our work some parameters influencing the patient's condition during the course of surgery to control their effects on the depth of general anesthesia by fuzzy logic. In this paper, we propose using the environment MatLab R2017a to realize this application. A comparison between the predictions of the anesthesiologist and anesthetic predictions according to fuzzy logic of our work is done. This study will serve as a guide in developing new anesthesia control systems for patients.
Hanane, Zermane. 2018. “Automation and Advanced System Control of an Industrial Production Process using Fuzzy Logic”. In CISTEM'18 3th International Conference on Electrical Sciences and Technologies in Maghreb 28-31 October Algiers, Algeria,. Publisher's Version Abstract
Process controls (basic as well as advanced) are implemented within the process control system, which may mean a distributed control system (DCS), programmable logic controller (PLC), and/or a supervisory control computer. DCSs and PLCs are typically industrially hardened and fault-tolerant. Supervisory control computers are often not hardened or fault-tolerant, but they bring a higher level of computational capability to the control system, to host valuable, but not critical, advanced control applications. Advanced controls may reside in either the DCS or the supervisory computer, depending on the application. Basic controls reside in the DCS and its subsystems, including PLCs. Because we usually deal with real - world systems with real - world constraints (cost, computer resources, size, weight, power, heat dissipation, etc.), it is understood that the simplest method to accomplish a task is the one that should be used. Experts usually rely on common sense when they solve problems. They also use vague and ambiguous terms. Other experts have no difficulties with understanding and interpreting this statement because they have the background to hearing problems described like this. However, a knowledge engineer would have difficulties providing a computer with the same level of understanding. In a complex industrial process, how can we represent expert knowledge that uses vague and fuzzy terms in a computer to control it? In this context, the application is developed to control the pretreatment and pasteurization station of milk localized in Batna (Algeria) by adopting a control approach based on expert knowledge and fuzzy logic.
Khaled, Benaggoune. 2018. “Agent-based prognostic function for multicomponents system with stochastic dependence ”. In ICASS 2018International Conference on Applied Smart Systems Medea, Algeria,. Publisher's Version Abstract
Prognostic and Health Management of multi-components systems is a challenging task, where different types of dependencies may exist. To tackle the complexity of such system, many distributed approaches are proposed. They deal with structural and functional dependencies and suppose that components are independent, which is not the case in reality. The transition of one component to more degraded states may affect other dependent components. In this paper we address the problem of prognosing components under stochastic dependence, we propose a prognostic based agent function in which a set of agents interact and coordinate to estimate the component remaining useful life with degradation interactions in a distributed manner. The simulation of an example taken from the literature is done on jade framework, the results indicate that the precision of the component RUL is enhanced.
Rabie, Hamidane. 2018. “Implementation of a preventive maintenance system, based on augmented reality”. PAIS'2018 3rd International Conference on Pattern Analysis and Intelligent Systems 7-28 Octobre, Universite de Tebessa : 1-6 . Publisher's Version Abstract
In this article, we present ARPM (Augmented Reality-based Preventive Maintenance) system, which aims at offering to the technician of a Cement Factory a virtual assistance in real time using various forms of 3D models, images or even texts, in order to help him to maintain and inspect his equipment. This system not only offers the possibility of reducing costs of the preventive maintenance, but also allows monitoring and even anticipating failures. In order to ensure a reliable maintenance operation, we adapted our system to be compatible with the CMMS system (Computerized Maintenance Management System) already exists in the Cement factory
Hayet, Mouss Leila. 2018. “Moving From unknown to known feature spaces based on TS-ELM with random kernels and connections”. IntelliSys2018. International Conference on Intelligent Systems, London, United Kingdom. Publisher's Version Abstract
In this paper, we propose an algorithm for classification based on extreme learning machine, named TS-ELM (Two feature Spaces Extreme learning Machine). It is a hybridization of two distinct feature mapping of SLFNs (Single hidden layer feedforward neural network). Both are realized based on ELM theories. The first feature space resulted from a random kernel distributions of a randomly connected input samples, that inspired initially from conventional random connected neural network and it is also included in ELM theories. The second feature space that gives the training or testing samples is the result of a random probability distribution of fully connected samples taken from the first feature space, and adjusted with their own weight and threshold parameters. This algorithm was applied on three datasets of multiclass and binary classification, and the results shows that it has strong classification capabilities and universal approximation as well. The mechanisms of the algorithm and universal approximation are discussed in this paper.
Naima, Zerari. 2018. “Bi-directional Recurrent End-to-End Neural Network Classifier for Spoken Arab Digit Recognition”. ICNLSP 2018, The 3rd International Conference on Natural Language and Speech Processing, Algiers. Publisher's Version Abstract
Automatic Speech Recognition can be considered as a transcription of spoken utterances into text which can be used to monitor/command a specific system. In this paper, we propose a general end-to-end approach to sequence learning that uses Long Short-Term Memory (LSTM) to deal with the non-uniform sequence length of the speech utterances. The neural architecture can recognize the Arabic spoken digit spelling of an isolated Arabic word using a classification methodology, with the aim to enable natural human-machine interaction. The proposed system consists to, first, extract the relevant features from the input speech signal using Mel Frequency Cepstral Coefficients (MFCC) and then these features are processed by a deep neural network able to deal with the non uniformity of the sequences length. A recurrent LSTM or GRU architecture is used to encode sequences of MFCC features as a fixed size vector that will feed a multilayer perceptron network to perform the classification. The whole neural network classifier is trained in an end-to-end manner. The proposed system outperforms by a large gap the previous published results on the same database.
Djamil, Rezki. 2018. “Using a data mining CRISP-DM methodology for rate of penetration (ROP) prediction in oil well drilling”. In Proceedings of the International Conference on Industrial Engineering and Operations Management Paris, France,. Publisher's Version Abstract
This work describes an implementation of a oil drilling data mining project approach based on the CRISP-DM methodology. Recent real-world data were collected from a from historical data of an actual oil drilling process in Hassi Terfa field, situated in South of Algeria. During the modelling process. The goal was to predict the rate of penetration (ROP) based on input parameters that are commonly used at the oil drilling process (weight on bit, rotation per minute, mud density , spp, ucs) . At the data preparation stage, the data were cleaned and variables were selected and transformed. Next, at the modeling stage, a regression approach was adopted, where three learning methods were compared : Artificial Neural Network, Support Vector Machine and Random Forest. The best learning model was obtained by the Random Forest method, which presents a high quality coefficient of correlation. The results of the experiment show that the proposed approach is able to effectively use the engineering data to provide effective prediction ROP, the ROP prediction allows the drilling engineer to select the best combination of the input parameters to have a better advancement

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