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29,939 Article Results

Classification using semantic feature and machine learning: Land-use case application

10.12928/telkomnika.v19i4.18359
Hela; Princess Nourah bint Abdulrahman University Elmannai , Abeer Dhafer; Princess Nourah bint Abdulrahman University AlGarni
Land cover classification has interested recent works especially for deforestation, urban are monitoring and agricultural land use. Traditional classification approaches have limited accuracy especially for non-heterogeneous land cover. Thus, using machine may improve the classification accuracy. The presented paper deals with the land-use scene recognition on very high-resolution remote sensing imagery. We proposed a new framework based on semantic features, handcrafted features and machine learning classifiers decisions. The method starts by semantic feature extraction using a convolutional neural network. Handcraft features are also extracted based on color and multi-resolution characteristics. Then, the classification stage is processed by three learning machine algorithms. The final classification result performed by majority vote algorithm. The idea behind is to take advantages from semantic features and handcrafted features. The second scope is to use the decision fusion to enhance the classification result. Experimentation results show that the proposed method provides good accuracy and trustable tool for land use image identification.
Volume: 19
Issue: 4
Page: 1242-1250
Publish at: 2021-08-01

An automatic screening approach for obstructive sleep apnea from photoplethysmograph using machine learning techniques

10.12928/telkomnika.v19i4.19371
Smily Jeya; Avinashilingam Institute for Home Science and Higher Education for Women Jothi E. , Anitha; Karunya Institute of Technology and Science J. , D. Jude; Karunya Institute of Technology and Science Hemanth
Obstructive sleep apnea (OSA), a very common sleep disorder remains as an underdiagnosed root cause for several cardiovascular and cerebrovascular diseases. In this paper, we propose an efficient and accurate system that utilizes a single sensor for effective screening of OSA using machine learning algorithms. The automatic screening system involves a photoplethysmogram (PPG) signal, a novel algorithm to detect and remove the corrupted part of the signal, a feature extraction module to extract several features from the PPG waveform and a classifier module which helps in screening for OSA. The elemental idea behind this work is that there is a characteristic relationship between the shape of the PPG waveform and the oxygen desaturation in the apnea patients. The method as described was tested on 285 subjects, inclusive of both normal and apnea patients, and the results were obtained after 10-fold-cross validation of the different machine learning techniques viz., univariate regression, multivariate regression, support vector machine and random forest. The best results in screening OSA were obtained from random forest algorithm with the highest performance (Acc:98.0%, Sen:98.6%, Spec:99.3%) for all the combined features. The proposed work is an effective system for automatic screening of OSA from a single PPG sensor, thereby reducing the need for a very expensive and overnight polysomnography sleep study.
Volume: 19
Issue: 4
Page: 1260-1272
Publish at: 2021-08-01

Inter-cell interference mitigation using adaptive reduced power subframes in heterogeneous networks

10.11591/ijece.v11i4.pp3275-3284
Mohammed I. Aal-nouman , Osamah Abdullah , Noor Qusay A. Al Shaikhli
With the remarkable impact and fast growth of the mobile networks, the mobile base stations have been increased too, especially in the high population areas. These base stations will be overloaded by users, for that reason the small cells (like pico cells) were introduced. However, the inter-cell interference will be high in this type of Heterogeneous networks. There are many solutions to mitigate this interference like the inter-cell interference coordination (ICIC), and then the further enhanced ICIC (Fe-ICIC) where the almost blank subframes are used to give priority to the (victim users). But it could be a waste of bandwidth due to the unused subframes. For that reason, in this paper, we proposed an adaptive reduced power subframe that reduces its power ratio according to the user’s signal-to-interference-plus-noise ratio (SINR) in order to get a better throughput and to mitigate the intercell interference. When the user is far from the cell, the case will be considered as an edge user and will get a higher priority to be served first. The results show that the throughput of all users in the macro cells and pico cell will be improved when applying the proposed scheme in term of throughput for the users and the cells.
Volume: 11
Issue: 4
Page: 3275-3284
Publish at: 2021-08-01

Comparative analysis of short-term demand predicting models using ARIMA and deep learning

10.11591/ijece.v11i4.pp3319-3328
Halima Bousqaoui , Ilham Slimani , Said Achchab
The forecasting consists of taking historical data as inputs then using them to predict future observations, thus determining future trends. Demand prediction is a crucial component in the supply chain’s process that allows each member to enhance its performance and its profit. Nevertheless, because of demand uncertainty supply chains usually suffer from many problems such as the bullwhip effect. As a solution to those logistics issues, this paper presents a comparative analysis of four time series demand forecasting models; namely, the autoregressive integrated moving Average (ARIMA) a statistical model, the multi-layer perceptron (MLP) a feedforward neural network, the long short-term memory model (LSTM) a recurrent neural network and the convolutional neural network (CNN or ConvNet) a deep learning model. The experimentations are carried out using a real-life dataset provided by a supermarket in Morocco. The results clearly show that the convolutional neural network gives slightly better forecasting results than the Long short-term memory network.
Volume: 11
Issue: 4
Page: 3319-3328
Publish at: 2021-08-01

Characterization and structural analysis of RF magnetron sputtered strontium stannate thin films

10.12928/telkomnika.v19i4.18790
Yusmar Palapa; University Tun Hussein Onn Wijaya , Khairul Anuar; University Tun Hussein Onn Mohamad , Abu Bakar Abdul; University Tun Hussein Onn Rahman , Afishah; University Tun Hussein Onn Alias , Mohammad Syahmi; University of Essex Nordin
This paper presents physical and morphology properties of strontium stannate (SrSnO3) perovskite-type as a candidate of an n-type material thin film for organic-inorganic hybrid diode heterojunction for optoelectronics application. Typical wet-process of SrSnO3 deposition produce thick film and having 10-8 S/cm order in conductivity. The SrSnO3 thin films were deposited on ITO glass substrates by RF magnetron sputtering using a purity 99.9% SrSnO3 target with 5.0 mTorr of gas pressure and 100 W of RF power at room temperature. The gas composition of pure argon (75%) and reactive oxygen gas (25%) was used for 60 min. XRD diffraction patterns revealed that the thin films are orthorhombic crystal structure with lattice parameter a=5.7040 Ǻ, b=8.06 Ǻ and c=5.7080 Ǻ with a strong orientation in the (002) direction. SEM images showed that films exhibited uniform surface morphology with a roughness average of Ra=2.258 nm and thickness of 311 nm. The EDX spectrum confirmed the presence of O, Sr, and Sn elements in the films with 75.22%, 8.29%, 16.49% in atomic number, respectively. The films were having a conductivity of 8.33x102 S/cm with low resistivity of 12.4x10-3 W-cm.
Volume: 19
Issue: 4
Page: 1349-1356
Publish at: 2021-08-01

Comparative analysis of ReliefF-SVM and CFS-SVM for microarray data classification

10.11591/ijece.v11i4.pp3393-3402
Mochamad Agusta Naofal Hakim , Adiwijaya Adiwijaya , Widi Astuti
Cancer is one of the main causes of death in the world where the World Health Organization (WHO) recognized cancer as among the top causes of death in 2018. Thus, detecting cancer symptoms is paramount in order to cure and subsequently reduce the casualties due to cancer disease. Many studies have been developed data mining approaches to detect symptoms of cancer through a classifying human gene data expression. One popular approach is using microarray data based on DNA. However, DNA microarray data has many dimensions that can have a detrimental effect on the accuracy of classification. Therefore, before performing classification, a feature selection technique must be used to eliminate features that do not have important information to support the classification process. The feature selection techniques used were ReliefF and correlation-based feature selection (CFS) and a classification technique used in this study is support vector machine (SVM). Several testing schemes were applied in this analysis to compare the performance of ReliefF and CFS with SVM. It showed that the ReliefF outperformed compared with CFS as microarray data classification approach.
Volume: 11
Issue: 4
Page: 3393-3402
Publish at: 2021-08-01

Robotic hex-nut sorting system with deep learning

10.11591/ijece.v11i4.pp3575-3583
Cristian Almanza , Javier Martínez Baquero , Robinson Jiménez-Moreno
This article exposes the design and implementation of an automation system based on a robotic arm for hex-nut classification, using pattern recognition and image processing.  The robotic arm work based on three servo motors and an electromagnetic end effector. The pattern recognition implemented allows classifying three different types of hex-nut through deep learning algorithms based on convolutional neural network architectures. The proposed methodology exposes four phases: the first is the design, implementation, and control of a robotic arm. The second is the capture, classification, and image treatment; the third allows gripping the nut through the robot’s inverse kinematic. The final phase is the re-localization of the hex-nut in the respective container. The automation system successfully classifies all the types of hex-nuts, where the convolutional network used is an efficient and recent pattern recognition method, with an accuracy of 100% in 150 iterations. This development allows for obtaining a novel algorithm for robotic applications in hex-nut sorting.
Volume: 11
Issue: 4
Page: 3575-3583
Publish at: 2021-08-01

Fuzzy clustering means algorithm analysis for power demand prediction at PT PLN Lhokseumawe

10.12928/telkomnika.v19i4.14941
Muhammad; Malikussaleh University Sadli , Wahyu; Malikussaleh University Fuadi , Faizar; Universitas Islam Kebangsaan Indonesia Abdurrahman , Nurul; Universitas Islam Kebangsaan Indonesia Islami , Muhammad; Gajah Putih University Ihsan
Indonesian National Electricity Company (PT PLN) as the main electric power provider in Lhokseumawe City. In fulfilling the need of electricity supply for the whole requirement, which upscale gradually. The proper forecasting method need to be premeditated. The area that was grouped based on the total of power consists of the four sub districts, namely Banda Sakti, Blang Mangat, Muara Dua and Muara Satu. In this study the fuzzy clustering mean (FCM) Classification was applied in determining the power demand of each area and categorized into a cluster respectively. The data clustering divided into six variable and five classifications of power of customer. Based on clustering step that applied revealed for four different classification of power requirement for future demand, the house hold electricity consumption measured for current consumption 9.588.466 Kw/H and forecast 10.037.248 Kw/H, for Business cluster classification measured 10.107.845 Kw/H and forecast 10.566.854 Kw/H, for industry the power measured 9.195.027 Kw/H and the forecasting revealed 9.638.804 Kw/H, and the last analysis was applied in general cluster classification based on measurement was recorded 9.729.048 Kw/H and forecasted result 10.198.282 Kw/H. this method has shown the better result in term of forecasting method by employing the cluster system in determining future power consumption requirement for the area of Lhokseumawe District.
Volume: 19
Issue: 4
Page: 1145-1151
Publish at: 2021-08-01

Internal mode control based coordinated controller for brushless doubly fed induction generator in wind turbines during fault conditions

10.11591/ijeecs.v23.i2.pp650-656
Ahsanullah Memon , Mohd Wazir Mustafa , Attaullah Khidrani , Farrukh Hafeez , Shadi Khan Baloach , Touqer Ahmed Jumani
Brushless double fed induction generator (BDFIG) based machines have gained popularity in wind turbine applications because of their easily accessible design. Low voltage ride through (LVRT) is critical for the reliable integration of renewable energy with the power grid. The refore, LVRT capability of brushless DFIGs makes them an attractive choice for maintaining voltage stability in grid. The existing works on BDFIG control suffer from two major drawbacks. Firstly, the methodology does not consider LVRT as a design metric, and secondly, these techniques do not have any means for coordinating between a machine side inverter (MSI) and grid side inverter (GSI). This results in sub-optimal controller design and eventually result in the violation of grid code requirements. To solve these issues, this paper proposes the use of brushless DFIGs in wind turbines using a control technique based on analytical modeling. Moreover, employing internal model control (IMC), the proposed technique can effectively coordinate the control between the MSI and GSI resulting in reduced oscillations, overshoots and improved stability under fault conditions. Furthermore, the simulation results for wind turbine generators show that the proposed scheme significantly improves the stability and compliance of grid codes ascompared to the existing hardware techniques.
Volume: 23
Issue: 2
Page: 650-656
Publish at: 2021-08-01

Optimal resource allocation for route selection in ad-hoc networks

10.12928/telkomnika.v19i4.18521
Marwa K.; Al-Nahrain University Farhan , Muayad S.; University of Technology Croock
Nowadays, the selection of the optimum path in mobile ad hoc networks (MANETS) is being an important issue that should be solved smartly. In this paper, an optimal path selection method is proposed for MANET using the Lagrange multiplier approach. The optimization problem considers the objective function of maximizing bit rate, under the constraints of minimizing the packet loss, and latency. The obtained simulation results show that the proposed Lagrange optimization of rate, delay, and packet loss algorithm (LORDP) improves the selection of optimal path in comparison to ad-hoc on-demand distance vector protocol (AODV). We increased the performance of the system by 10.6 Mbps for bit rate and 0.133 ms for latency.
Volume: 19
Issue: 4
Page: 1197-1207
Publish at: 2021-08-01

Design an intelligent hybrid position/force control for above knee prosthesis based on adaptive neuro-fuzzy inference system

10.11591/ijeecs.v23.i2.pp675-685
Mithaq N. Raheema , Dhirgaam A. Kadhim , Jabbar S. Hussein
This paper reviews the position/force control approach for governs an efficient knee joint in an active lower limb prosthesis, and the inter facing current control algorithm with human gate parameter is inserted. Two techniques are used to collect gait cycle data of leg: first, the foot ground force is obtained by the force platform device based on its position (x, y), then data of knee joint angles is recorded by using a video-camera device.The collected information is sent and used in the proposed intelligent controller. This intelligent control system used an adaptive neuro-fuzzy inference system (ANFIS) circuit in addition to the proportional integral derivative (PID) controller. This hybrid ANFIS-PID control system simulates and provides the ground force values. The experimental results show anexcellent response and lower root mean square error (RMSE) compared with each of PID and ANFIS controller that implemented for a similar purpose. In summary, the results showed acceptably stable performance of the proposedposition/force controller based on hybrid ANFIS-PID system. It can be concluded that the finest performance of the controlled force, as quantified by the RMSE criteria, is perceived by the proposed hybrid scheme depending on the controller intelligent decision circuit.
Volume: 23
Issue: 2
Page: 675-685
Publish at: 2021-08-01

Rikitake dynamo system, its circuit simulation and chaotic synchronization via quasi-sliding mode control

10.12928/telkomnika.v19i4.17700
Yi-You; National Kaohsiung University of Science and Technology Hou , Cheng-Shun; Innolux Corporation Fang , Chang-Hua; National Kaohsiung University of Science and Technology Lien , Sundarapandian; Vel Tech University Avadi Vaidyanathan , Aceng; Universitas Muhammadiyah Tasikmalaya Sambas , Mustafa; Universiti Sultan Zainal Abidin Gong Badak Mamat , Muhamad Deni; Universitas Padjadjaran Johansyah
Rikitake dynamo system (1958) is a famous two-disk dynamo model that is capable of executing nonlinear chaotic oscillations similar to the chaotic oscillations as revealed by palaeomagnetic study. First, we detail the Rikitake dynamo system, its signal plots and important dynamic properties. Then a circuit design using Multisim is carried out for the Rikitake dynamo system. New synchronous quasi-sliding mode control (QSMC) for Rikitake chaotic system is studied in this paper. Furthermore, the selection on switching surface and the existence of QSMC scheme is also designed in this paper. The efficiency of the QSMC scheme is illustrated with MATLAB plots.
Volume: 19
Issue: 4
Page: 1428-1438
Publish at: 2021-08-01

AlertNet: Deep convolutional-recurrent neural network model for driving alertness detection

10.11591/ijece.v11i4.pp3529-3538
P. C. Nissimagoudar , A. V. Nandi , Aakanksha Patil , Gireesha H. M.
Drowsy driving is one of the major problems which has led to many road accidents. Electroencephalography (EEG) is one of the most reliable sources to detect sleep on-set while driving as there is the direct involvement of biological signals. The present work focuses on detecting driver’s alertness using the deep neural network architecture, which is built using ResNets and encoder-decoder based sequence to sequence models with attention decoder. The ResNets with the skip connections allow training the network deeper with a reduced loss function and training error. The model is built to reduce the complex computations required for feature extraction. The ResNets also help in retaining the features from the previous layer and do not require different filters for frequency and time-invariant features. The output of ResNets, the features are input to encoder-decoder based sequence to sequence models, built using Bi-directional long-short memories. Sequence to Sequence model learns the complex features of the signal and analyze the output of past and future states simultaneously for classification of drowsy/sleepstage-1 and alert stages. Also, to overcome the unequal distribution (class-imbalance) data problem present in the datasets, the proposed loss functions help in achieving the identical error for both majority and minority classes during the raining of the network for each sleep stage. The model provides an overall-accuracy of 87.92% and 87.05%, a macro-F1-core of 78.06%, and 79.66% and Cohen's-kappa score of 0.78 and 0.79 for the Sleep-EDF 2013 and 2018 data sets respectively.
Volume: 11
Issue: 4
Page: 3529-3538
Publish at: 2021-08-01

A numerical-analytical iterative method for solving an electrical oscillator equation

10.12928/telkomnika.v19i4.18987
Sudi; Sanata Dharma University Mungkasi , Damar; Sanata Dharma University Widjaja
Self-excited oscillation problem occurring from a triode electrical circuit has been modelled by van der Pol. Until now, the exact solution to the van der Pol equation is not available. This paper focuses on finding a new method for solving the van der Pol equation simply and accurately. There exists several approximate iterative methods available in the literature for solving the van der Pol equation, such as, the successive approximation method. The successive approximation method is simple, but inaccurate for large time values. In this paper, we propose a new variant of numerical-analytical method, which is simple but accurate, for solving the van der Pol equation. Our new variant of numerical-analytical method solves the van der Pol equation from its equivalent system of first order ordinary differential equations. Our strategy leads to a simple implementation of the numerical-analytical method in the multistage way. Furthermore, computational experiments show that our proposed method is accurate for large sizes of time domain in solving the van der Pol equation.
Volume: 19
Issue: 4
Page: 1218-1225
Publish at: 2021-08-01

From cloud computing security towards homomorphic encryption: A comprehensive review

10.12928/telkomnika.v19i4.16875
Saja J.; University of Mosul Mohammed , Dujan B.; University of Mosul Taha
“Cloud computing” is a new technology that revolutionized the world of communications and information technologies. It collects a large number of possibilities, facilities, and developments, and uses the combining of various earlier inventions into something new and compelling. Despite all features of cloud computing, it faces big challenges in preserving data confidentiality and privacy. It has been subjected to numerous attacks and security breaches that have prompted people to hesitate to adopt it. This article provided comprehensive literature on the cloud computing concepts with a primary focus on the cloud computing security field, its top threats, and the protection against each one of them. Data security/privacy in the cloud environment is also discussed and homomorphic encryption (HE) was highlighted as a popular technique used to preserve the privacy of sensitive data in many applications of cloud computing. The article aimed to provide an adequate overview of both researchers and practitioners already working in the field of cloud computing security, and for those new in the field who are not yet fully equipped to understand the detailed and complex technical aspects of cloud computing.
Volume: 19
Issue: 4
Page: 1152-1161
Publish at: 2021-08-01
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