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Machine Learning-Based Alarms Classification and Correlation in an SDH/WDM Optical Network to Improve Network Maintenance
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作者 Deussom Djomadji Eric Michel Takembo Ntahkie Clovis +2 位作者 Tchapga Tchito Christian Arabo Mamadou Michael Ekonde Sone 《Journal of Computer and Communications》 2023年第2期122-141,共20页
The evolution of telecommunications has allowed the development of broadband services based mainly on fiber optic backbone networks. The operation and maintenance of these optical networks is made possible by using su... The evolution of telecommunications has allowed the development of broadband services based mainly on fiber optic backbone networks. The operation and maintenance of these optical networks is made possible by using supervision platforms that generate alarms that can be archived in the form of log files. But analyzing the alarms in the log files is a laborious and difficult task for the engineers who need a degree of expertise. Identifying failures and their root cause can be time consuming and impact the quality of service, network availability and service level agreements signed between the operator and its customers. Therefore, it is more than important to study the different possibilities of alarms classification and to use machine learning algorithms for alarms correlation in order to quickly determine the root causes of problems faster. We conducted a research case study on one of the operators in Cameroon who held an optical backbone based on SDH and WDM technologies with data collected from 2016-03-28 to “2022-09-01” with 7201 rows and 18. In this paper, we will classify alarms according to different criteria and use 02 unsupervised learning algorithms namely the K-Means algorithm and the DBSCAN to establish correlations between alarms in order to identify root causes of problems and reduce the time to troubleshoot. To achieve this objective, log files were exploited in order to obtain the root causes of the alarms, and then K-Means algorithm and the DBSCAN were used firstly to evaluate their performance and their capability to identify the root cause of alarms in optical network. 展开更多
关键词 Optical Network ALARMS Log Files Root Cause Analysis Machine Learning
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Machine Learning-Based Approach for Identification of SIM Box Bypass Fraud in a Telecom Network Based on CDR Analysis: Case of a Fixed and Mobile Operator in Cameroon
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作者 Eric Michel Deussom Djomadji Kabiena Ivan Basile +2 位作者 Tchapga Tchito Christian Ferry Vaneck Kouam Djoko Michael Ekonde Sone 《Journal of Computer and Communications》 2023年第2期142-157,共16页
In the telecommunications sector, companies suffer serious damages due to fraud, especially in Africa. One of the main types of fraud is SIM box bypass fraud, which includes using SIM cards to divert incoming internat... In the telecommunications sector, companies suffer serious damages due to fraud, especially in Africa. One of the main types of fraud is SIM box bypass fraud, which includes using SIM cards to divert incoming international calls from mobile operators creating massive losses of revenue. In order to provide a solution to these shortcomings that apply almost to all network operators, we developed intelligent algorithms that exploit huge amounts of data from mobile operators and that detect fraud by analyzing CDRs from voice calls. In this paper we used three classification techniques: Random Forest, Support Vector Machine (SVM) and XGBoost to detect this type of fraud;we compared the performance of these different algorithms to evaluate the model by using data collected from an operator’s network in Cameroon. The algorithm that produced a better performance was the Random Forest with 92% accuracy, so we effectuated the detection of existing fraudulent numbers on the telecommunications operator’s network. 展开更多
关键词 CDR Fraud Detection Machine Learning Voice Calls
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COST 231-Hata Propagation Model Optimization in 1800 MHz Band Based on Magnetic Optimization Algorithm: Application to the City of Limbé
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作者 Eric Michel Deussom Djomadji Kabiena Ivan Basile +1 位作者 Fobasso Segnou Thierry Tonye Emanuel 《Journal of Computer and Communications》 2023年第2期57-74,共18页
Network planning is essential for the construction and the development of wireless networks. The network planning cannot be possible without an appropriate propagation model which in fact is its foundation. Initially ... Network planning is essential for the construction and the development of wireless networks. The network planning cannot be possible without an appropriate propagation model which in fact is its foundation. Initially used mainly for mobile radio networks, the optimization of propagation model is becoming essential for efficient deployment of the network in different types of environment, namely rural, suburban and urban especially with the emergence of concepts such as digital terrestrial television, smart cities, Internet of Things (IoT) with wide deployment for different use cases such as smart grid, smart metering of electricity, gas and water. In this paper we use an optimization algorithm that is inspired by the principles of magnetic field theory namely Magnetic Optimization Algorithm (MOA) to tune COST231-Hata propagation model. The dataset used is the result of drive tests carry out on field in the town of Limbe in Cameroon. We take into account the standard K-factor model and then use the MOA algorithm in order to set up a propagation model adapted to the physical environment of a town. The town of Limbe is used as an implementation case, but the proposed method can be used everywhere. The calculation of the root mean square error (RMSE) between the real data from the radio measurements and the prediction data obtained after the implementation of MOA allows the validation of the results. A comparative study between the value of the RMSE obtained by the new model and those obtained by the optimization using linear regression, by the standard COST231-Hata models, and the free space model is also done, this allows us to conclude that the new model obtained using MOA for the city of Limbe is better and more representative of this local environment than the standard COST231-Hata model. The new model obtained can be used for radio planning in the city of Limbé in Cameroon. 展开更多
关键词 Radio Measurements Root Mean Square Error Magnetic Optimization Algorithm
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Okumura Hata Propagation Model Optimization in 400 MHz Band Based on Differential Evolution Algorithm: Application to the City of Bertoua
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作者 Eric Michel Deussom Djomadji Ivan Basile Kabiena +2 位作者 Joel Thibaut Mandengue Felix Watching Emmanuel Tonye 《Journal of Computer and Communications》 2023年第5期52-69,共18页
Propagation models are the foundation for radio planning in mobile networks. They are widely used during feasibility studies and initial network deployment, or during network extensions, particularly in new cities. Th... Propagation models are the foundation for radio planning in mobile networks. They are widely used during feasibility studies and initial network deployment, or during network extensions, particularly in new cities. They can be used to calculate the power of the signal received by a mobile terminal, evaluate the coverage radius, and calculate the number of cells required to cover a given area. This paper takes into account the standard k factors model and then uses the differential evolution algorithm to set up a propagation model adapted to the physical environment of the Cameroonian cities of Bertoua. Drive tests were made on the LTE TDD network in the city of Bertoua. Differential evolution algorithm is used as the optimization algorithm to deduct a propagation model which fits the environment of the considered town. The calculation of the root mean square error between the actual data from the drive tests and the prediction data from the implemented model allows the validation of the obtained results. A comparative study made between the RMSE value obtained by the new model and those obtained by the Okumura Hata and free space models, allowed us to conclude that the new model obtained is better and more representative of our local environment than the Okumura Hata currently used. The implementation shows that Differential evolution can perform well and solve this kind of optimization problem;the newly obtained models can be used for radio planning in the city of Bertoua in Cameroon. 展开更多
关键词 Radio Measurements Root Mean Square Error Differential Evolution Algorithm
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Security &Privacy Implications in the Placement of Biometric-Based ID Card for Rwanda Universities 被引量:1
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作者 Eugen Harinda Etienne Ntagwirumugara 《Journal of Information Security》 2015年第2期93-100,共8页
Biometric authentication systems are believed to be effective compared to traditional authentication systems. The introduction of biometrics into smart cards is said to result into biometric-based smart ID card with e... Biometric authentication systems are believed to be effective compared to traditional authentication systems. The introduction of biometrics into smart cards is said to result into biometric-based smart ID card with enhanced security. This paper discusses the biometric-based smart ID card with a particular emphasis on security and privacy implications in Rwanda universities environment. It highlights the security and implementation issues. The analysis shows that despite the necessity to implement biometric technology, absence of legal and regulatory requirements becomes a challenge to implementation of the proposed biometric solution. The paper is intended to engage a broad audience from Rwanda universities planning to introduce the biometric-based smart ID cards to verify students and staff for authentication purpose. 展开更多
关键词 BIOMETRICS SECURITY PRIVACY Smart ID Card
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New Ecg Signal Compression Model Based on Set Theory Applied to Images
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作者 Ivan Basile Kabiena Eric Michel Deussom Djomadji Emmanuel Tonye 《Journal of Computer and Communications》 2023年第8期29-43,共15页
Cardiovascular diseases are the origin of many causes of death worldwide. They impose on practitioners optimal diagnostic methods such as telemedicine in order to be able to quickly detect anomalies for daily care and... Cardiovascular diseases are the origin of many causes of death worldwide. They impose on practitioners optimal diagnostic methods such as telemedicine in order to be able to quickly detect anomalies for daily care and monitoring of patients. The Electrocardiogram (ECG) is an examination that can detect abnormal functioning of the heart and generates a large number of digital data which can be stored or transmitted for further analysis. For storage or transmission purposes, one of the challenges is to reduce the space occupied by ECG signal and for that, it is important to offer more and more efficient algorithms capable of achieving high compression rates, while offering a good quality of reconstruction in a relatively short time. We propose in this paper a new ECG compression scheme that is based on a subset of signal splitting and 2D processing, the wavelet transform (DWT) and SPIHT coding which has proved their worth in the field of signal processing and compression. They are exploited for decorrelation and coding of the signal. The results obtained are significant and offer many perspectives. 展开更多
关键词 Compression ECG DWT Sub-Set 2D
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Design of a Neural Network Based Stable State Observer for Mimo Systems
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作者 Jean Gutenbert Kenfack Wamba Eric Michel Deussom Djomadji +2 位作者 Jean Claude Lionel Ng’anyogo Arsene Roger Bienvenu Fouba Alain Tiedeu 《Journal of Computer and Communications》 2023年第11期87-110,共24页
MIMO (Multiple Input Multiple Output) is a key technology underpinning fourth generation or 4G networks. This technology allows 4G networks to increase throughput. However, the dynamics of the MIMO system are not unde... MIMO (Multiple Input Multiple Output) is a key technology underpinning fourth generation or 4G networks. This technology allows 4G networks to increase throughput. However, the dynamics of the MIMO system are not under control due to the many uncertainties that destabilize the system. This work is therefore very relevant in the sense that an observer can be used to monitor the dynamics of such a system. This work presents a neuro-adaptive observer based on a radial basis function neural network for generic non-linear MIMO systems. Unlike most neuro-adaptive observers, the proposed observer uses a neural network that is non-linear in its parameters. It can therefore be applied to systems with high degrees of nonlinearity without any a priori knowledge of the system dynamics. Indeed, in addition to the fact that neural networks are very good nonlinear approximators, their adaptive behavior makes them powerful tools for observing the state without any a priori knowledge of the dynamics of the system. The learning rule of the neural network is an approach based on the modified backpropagation algorithm: A term has been added to guarantee the robustness of the observer. The proposed approach is not limited by a strong assumption. The stability of the neuro-adaptive observer is demonstrated by the direct Lyapunov method. Simulation results are presented in the context of MIMO signal transmission applied in LTE, to demonstrate the performance of our observer. 展开更多
关键词 STABILITY Neural Network MIMO LTE Network Lyapunov Function
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Dynamic Resource Allocation in LTE Radio Access Network Using Machine Learning Techniques
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作者 Eric Michel Deussom Djomadji Ivan Basile Kabiena +2 位作者 Valery Nkemeni Ayrton Garcia Belinga À Njere Michael Ekonde Sone 《Journal of Computer and Communications》 2023年第6期73-93,共21页
Current LTE networks are experiencing significant growth in the number of users worldwide. The use of data services for online browsing, e-learning, online meetings and initiatives such as smart cities means that subs... Current LTE networks are experiencing significant growth in the number of users worldwide. The use of data services for online browsing, e-learning, online meetings and initiatives such as smart cities means that subscribers stay connected for long periods, thereby saturating a number of signalling resources. One of such resources is the Radio Resource Connected (RRC) parameter, which is allocated to eNodeBs with the aim of limiting the number of connected simultaneously in the network. The fixed allocation of this parameter means that, depending on the traffic at different times of the day and the geographical position, some eNodeBs are saturated with RRC resources (overused) while others have unused RRC resources. However, as these resources are limited, there is the problem of their underutilization (non-optimal utilization of resources at the eNodeB level) due to static allocation (manual configuration of resources). The objective of this paper is to design an efficient machine learning model that will take as input some key performance indices (KPIs) like traffic data, RRC, simultaneous users, etc., for each eNodeB per hour and per day and accurately predict the number of needed RRC resources that will be dynamically allocated to them in order to avoid traffic and financial losses to the mobile network operator. To reach this target, three machine learning algorithms have been studied namely: linear regression, convolutional neural networks and long short-term memory (LSTM) to train three models and evaluate them. The model trained with the LSTM algorithm gave the best performance with 97% accuracy and was therefore implemented in the proposed solution for RRC resource allocation. An interconnection architecture is also proposed to embed the proposed solution into the Operation and maintenance network of a mobile network operator. In this way, the proposed solution can contribute to developing and expanding the concept of Self Organizing Network (SON) used in 4G and 5G networks. 展开更多
关键词 RRC Resources 4G Network Linear Regression Convolutional Neural Networks Long Short-Term Memory PRECISION
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Day-Ahead Probabilistic Load Flow Analysis Considering Wind Power Forecast Error Correlation
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作者 Qiang Ding Chuancheng Zhang +4 位作者 Jingyang Zhou Sai Dai Dan Xu Zhiqiang Luo Chengwei Zhai 《Energy and Power Engineering》 2017年第4期292-299,共8页
Short-term power flow analysis has a significant influence on day-ahead generation schedule. This paper proposes a time series model and prediction error distribution model of wind power output. With the consideration... Short-term power flow analysis has a significant influence on day-ahead generation schedule. This paper proposes a time series model and prediction error distribution model of wind power output. With the consideration of wind speed and wind power output forecast error’s correlation, the probabilistic distributions of transmission line flows during tomorrow’s 96 time intervals are obtained using cumulants combined Gram-Charlier expansion method. The probability density function and cumulative distribution function of transmission lines on each time interval could provide scheduling planners with more accurate and comprehensive information. Simulation in IEEE 39-bus system demonstrates effectiveness of the proposed model and algorithm. 展开更多
关键词 Wind Power Time Series Model FORECAST ERROR Distribution FORECAST ERROR CORRELATION PROBABILISTIC Load Flow Gram-Charlier Expansion
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Thermodynamic Parameters of Central Spin Coupled to an Antiferromagnetic Bath: Path Integral Formalism
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作者 Christian Platini Fogang Kuetche Nsangou Issofa +1 位作者 Mathurin Esouague Ateuafack Lukong Cornelius Fai 《Journal of Applied Mathematics and Physics》 2021年第1期133-145,共13页
A path-integral representation of central spin system immersed in an antiferromagnetic environment was investigated. To carry out this study, we made use of the discrete-time propagator method associated with a basic ... A path-integral representation of central spin system immersed in an antiferromagnetic environment was investigated. To carry out this study, we made use of the discrete-time propagator method associated with a basic set involving coherent states of Grassmann variables which made it possible to obtain the analytical propagator which is the centerpiece of the study. In this study, we considered that the environment was in the low-temperature and low-excitation limit and was split into 2 subnets that do not interact with each other. The evaluation of our system was made by considering the first neighbor approximation. From the formalism of the path integrals, it is easy to evaluate the partition function and thermodynamic properties followed from an appropriate tracing over Grassmann variables in the imaginary time domain. We show that the energy of the system depends on the number of sites <em>n</em> when <em>β </em><em></em><span></span>→ 0. 展开更多
关键词 Path Integral Grassmann Algebra Antiferromagnetic Environment Partition Function
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Propagation Model Optimization Based on Ion Motion Optimization Algorithm for Efficient Deployment of eLTE Network
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作者 Deussom Djomadji Eric Michel Tsague Njatsa Austene Beldine Tonye Emmanuel 《Journal of Computer and Communications》 2022年第11期171-196,共26页
Propagation models are the foundation for radio planning in mobile networks. They are widely used during feasibility studies and initial network deployment, or during network extensions, particularly in new cities. Th... Propagation models are the foundation for radio planning in mobile networks. They are widely used during feasibility studies and initial network deployment, or during network extensions, particularly in new cities. They can be used to calculate the power of the signal received by a mobile terminal, evaluate the coverage radius, and calculate the number of cells required to cover a given area. This paper takes into account the standard K factors model and then uses the Ion motion optimization (IMO) algorithm to set up a propagation model adapted to the physical environment of each of the Cameroonian cities of Yaoundé and Bertoua for different frequencies and technologies. Drive tests were made on the CDMA network in the city of Yaoundé on one hand and on an LTE TDD network in the city of Bertoua on the other hand. IMO is used as the optimization algorithm to deduct a propagation model which fits the environment of the two considered towns. The calculation of the root-mean-square error (RMSE) between the actual data from the drive tests and the prediction data from the implemented model allows the validation of the obtained results. A comparative study made between the RMSE value obtained by the new model and those obtained by the Okumura-Hata and K factors standard models, allowed us to conclude that the new model obtained in each of these two cities is better and more representative of our local environment than the Okumura-Hata currently implemented. The implementation shows that IMO can perform well and solve this kind of optimization problem;the newly obtained models can be used for radio planning in the cities of Yaounde and Bertoua in Cameroon. 展开更多
关键词 Drive Test IMO Propagation Models Root Mean Square Error
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Continuous-wave terahertz in-line holographic diffraction tomography with the scattering fields reconstructed by a physics-enhanced deep neural network 被引量:1
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作者 XIAOYU JIN JIE ZHAO +4 位作者 DAYONG WANG JOHN JHEALY LU RONG YUNXIN WANG SHUFENG LIN 《Photonics Research》 SCIE EI CAS CSCD 2023年第12期2149-2158,共10页
Diffraction tomography is a promising,quantitative,and nondestructive three-dimensional(3D)imaging method that enables us to obtain the complex refractive index distribution of a sample.The acquisition of the scattere... Diffraction tomography is a promising,quantitative,and nondestructive three-dimensional(3D)imaging method that enables us to obtain the complex refractive index distribution of a sample.The acquisition of the scattered fields under the different illumination angles is a key issue,where the complex scattered fields need to be retrieved.Presently,in order to develop terahertz(THz)diffraction tomography,the advanced acquisition of the scattered fields is desired.In this paper,a THz in-line digital holographic diffraction tomography(THz-IDHDT)is proposed with an extremely compact optical configuration and implemented for the first time,to the best of our knowledge.A learning-based phase retrieval algorithm by combining the physical model and the convolution neural networks,named the physics-enhanced deep neural network(PhysenNet),is applied to reconstruct the THz in-line digital hologram,and obtain the complex amplitude distribution of the sample with high fidelity.The advantages of the PhysenNet are that there is no need for pretraining by using a large set of labeled data,and it can also work for thick samples.Experimentally with a continuous-wave THz laser,the PhysenNet is first demonstrated by using the thin samples and exhibits superiority in terms of imaging quality.More importantly,with regard to the thick samples,PhysenNet still works well,and can offer 2D complex scattered fields for diffraction tomography.Furthermore,the 3D refractive index maps of two types of foam sphere samples are successfully reconstructed by the proposed method.For a single foam sphere,the relative error of the average refractive index value is only 0.17%,compared to the commercial THz time-domain spectroscopy system.This demonstrates the feasibility and high accuracy of the THz-IDHDT,and the idea can be applied to other wavebands as well. 展开更多
关键词 HOLOGRAPHIC SCATTERED wave
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