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28,593 Article Results

Implementation of a secure system for calculating and supervising the energy consumption of electrical equipment

10.11591/ijeecs.v40.i1.pp127-136
Jarmouni Ezzitouni , Ahmed Mouhsen , Mohamed Lamhamdi , Ennajih Elmehdi , En-Naoui Ilias , Bousbaa Mohamed
With the advent of smart grids and the growing challenges associated with the production and consumption of electrical energy, it is crucial to deploy reliable systems to monitor production and consumption, as well as to improve energy efficiency. To ensure optimal decision-making in energy management and control systems, it is essential to have both efficient measurement systems for data collection and acquisition and secure information exchange. These elements are fundamental to ensuring the smooth operation of energy systems and enabling precise supervision of energy flows, thus contributing to more efficient use of available electrical resources. This article focuses on the implementation of a complete electrical energy calculation and management system for energy consumers. To achieve this, devices such as integrated digital control units and current and voltage sensors are used. The system architecture guarantees precise measurement and calculation of electrical energy and other important parameters, such as power factor in the case of inductive and capacitive loads, which have an effect on reactive energy. The data collected is stored in a secure database.
Volume: 40
Issue: 1
Page: 127-136
Publish at: 2025-10-01

The road conditions detection using the convolutional neural network

10.11591/ijeecs.v40.i1.pp327-345
Sujittra Sa-ngiem , Kwankamon Dittakan , Saroch Boonsiripant
Poor road conditions present considerable obstacles for individuals, resulting in asset loss, bodily harm, and time inefficiency. Approximately 1.35 million fatalities are attributable to road traffic incidents. The Department of Public Works and Town & Country Planning conducted road surveys to assess and strategize maintenance efforts. The manual car survey requires additional time and an excessive budget. The automated system of artificial intelligence (AI) is widely recognized. This paper presents a model to detect road surface conditions utilizing video data. Four versions of convolutional neural networks (CNN) were utilized for this work. The model evaluation employed the mean average precision (mAP) measure. The video data was acquired via a smartphone mounted in a vehicle, comprising 10,984 photos for training and 2,198 images for testing. We trained and evaluated four versions of CNN architectures named YOLO, utilizing our data and GPU, with a specific emphasis on identifying cracks, potholes, and the condition of manhole covers. Of the architectures evaluated, YOLO V6 attained the greatest mAP score in comparison YOLO V5 to YOLO V8. The testing results with batch sizes of 4, 8, 16, and 32 are effective. The batch size of 32 yields the highest performance, achieving 87.38% mAP. Conduct the dropout normalization using rates of 0.25, 0.50, 0.75, and 1. The maximum mAP is observed with a dropout rate of 0.25, yielding a mAP of 85.40%. The model indicates that the government conducted road surface inspections with enhanced efficiency, enabling the planning of road repairs for public utility issues, which can lower transportation costs. Additionally, the model can be utilized to identify hazardous road conditions and minimize vehicular accident rates.
Volume: 40
Issue: 1
Page: 327-345
Publish at: 2025-10-01

Determining social assistance recipients using fuzzy-TOPSIS method in Sumur Bandung district Indonesia

10.11591/ijeecs.v40.i1.pp366-378
Rangga Sanjaya , Irmeila Cahaya Fatihah , Titik Khawa Abdul Rahman
This study aims to improve the selection process for social assistance recipients in the Sumur Bandung District, Indonesia, using the fuzzyTOPSIS method. The research establishes eligibility criteria and evaluates alternatives based on data from April 2024. By combining multi-criteria decision-making with fuzzy logic, the fuzzy-TOPSIS approach enhances the accuracy and fairness of recipient selection. The methodology involves determining criteria weights, fuzzification, and ranking alternatives against ideal solutions. The results demonstrate that fuzzy-TOPSIS significantly improves decision-making, leading to more objective and reliable outcomes than traditional methods. These findings underscore the potential of fuzzyTOPSIS in optimizing social assistance distribution, ensuring that assistance reaches the most deserving recipients efficiently.
Volume: 40
Issue: 1
Page: 366-378
Publish at: 2025-10-01

Alzheimer’s disease stage prediction using a novel transfer learning-Alzheimer’s network architecture

10.11591/ijeecs.v40.i1.pp518-529
Pothala Ramya , Chappa Ramesh , Odugu Srinivasa Rao
The root cause of Alzheimer’s disease (AD) is unknown except for a very tiny number of family instances caused by a genetic mutation. A thorough examination of particular brain disorders’ tissues is necessary to correctly identify the circumstances using scans of magnetic resonance imaging (MRI), and specific non-brain tissues, like the neck, skin, muscle, and fat, make further investigation challenging and can be seen in MRI scans. This work aims to use the FSL-BET skull stripping tool to remove non-brain tissues and extract the significant region of the brain- deep learning (DL) techniques rather than machine learning (ML) models helpful in classification and predictions. The most frequent issue with DL models is which needs a lot of training data, causes to problems with class imbalance. To avoid imbalance issues, we used data augmentation to ensure that the samples were distributed equally among the classes. A novel transfer learning Alzheimer’s disease network (TL-AzNet) based visual geometry group-19 (VGG19) technique was developed in this study. Conducted a comparison study using the base and suggested models, comparing over data with oversampling versus non-oversampling. The novel model predicted AD with a 95% accuracy rate.
Volume: 40
Issue: 1
Page: 518-529
Publish at: 2025-10-01

Optimal placement of wind turbine to minimize voltage variance in distributed grid considering harmonic distortion

10.11591/ijeecs.v40.i1.pp57-66
Dinh Chung Phan , Dinh Truc Ha
This paper suggested an algorithm to choose the optimal location of wind turbines (WT) in a distribution grid. The optimal position is calculated so that the maximal voltage variance in the distribution grid is minimized. This paper considers the harmonic current emitted by WT and the limitation of total harmonic distortion of voltage waves at nodes in the distribution grid. This proposed approach is written in MATLAB software and validated through a sample distribution grid, IEEE 33-bus. The verifying results demonstrated that by applying the suggested algorithm, the maximal voltage variance due to the variation of the power output of WT is minimized, the total harmonic distortion value at all buses remains within the operating range, and the electrical loss in the grid is reduced. Moreover, by considering the limitation of total harmonic distortion, the number of WT allowed to be installed in the grid is able to limited.
Volume: 40
Issue: 1
Page: 57-66
Publish at: 2025-10-01

Integrating swarm intelligence with deep learning for enhanced social media sentiment analysis

10.11591/ijeecs.v40.i1.pp280-287
Parminder Singh , Saurabh Dhyani
Understanding user views on social media in the advent of internet content demands sentiment analysis. This study introduces a novel approach called particle swarm-accelerated model (PSAM), that integrates deep learning with long short-term memory (LSTM) with two hyper-parameters and swarm intelligence through particle swarm optimization (PSO). In the sentiment classification of YouTube movie reviews for “Pushpa 2,” the recommended approach classifies opinions as “positive,” “negative,” or “neutral,” with an accuracy score of 95.3%. The process involved utilizing YouTube API to collect user-genearted comments, followed by advanced preprocessing steps such as punctuation removal, stopword filtering, slang normalization, and emoji handling. PSO performs feature selection to boost the efficiency of classification systems. The PSAM model reaches superior outcome results compared to support vector machines (SVM), Naive Bayes, CNN, and random forest classifiers when evaluated based on F1-score and accuracy metrics. The proposed hybrid model demonstrates its ability to boost sentiment analysis in different social media platforms according to research findings.
Volume: 40
Issue: 1
Page: 280-287
Publish at: 2025-10-01

Enhancing small-signal stability in high-voltage DC systems: supplementary controls for damping inter-area oscillations

10.11591/ijeecs.v40.i1.pp1-9
Siddharthsingh K. Chauhan , Vineeta S. Chauhan
High voltage direct current (HVDC) transmission systems have emerged as a leading technology for efficient and cost-effective long-distance power transmission, offering significant advantages over traditional high voltage alternating current (HVAC) systems. These benefits include seamless integration of asynchronous grids and renewable energy sources (RES), enhancing the reliability of power supply. However, the dynamic behavior of HVDC systems and their ability to maintain stability under small disturbances introduce challenges to overall system stability.To address these challenges, this study focuses on improving small-signal stability in HVDC systems by exploring supplementary control strategies for damping interarea power oscillations.The proposed strategy was tested using the kundur two-area four-machine (K-TAFM) system modeled in power systems computer-aided design (PSCAD), incorporating case study under a three phase-to-ground fault scenario.The active power imbalance and inter-area oscillations observed during fault conditions highlight the critical need for advanced stability enhancement techniques to effectively mitigate small signal disturbances. This approach significantly improved the small-signal stability of the HVDC system, underscoring its potential to enhance the reliability and resilience of modern power grids.
Volume: 40
Issue: 1
Page: 1-9
Publish at: 2025-10-01

Substrate thickness variation on the frequency response of microstrip antenna for mm-wave application

10.12928/telkomnika.v23i5.26731
Bello Abdullahi; Universiti Sains Malaysia Muhammad , Mohd Fadzil; Universiti Sains Malaysia Ain , Mohd Nazri; Universiti Sains Malaysia Mahmud , Mohd Zamir; Universiti Sains Malaysia Pakhuruddin , Ahmadu; Universiti Sains Malaysia Girgiri , Mohamad Faiz Mohamed; Collaborative Microelectronic Design Excellence Center (CEDEC) Omar
Substrate height (Hs) is an important parameter that influences antenna propagation. This research designed a low-profile 28 GHz microstrip antenna on a polyimide substrate with varying Hs using CST Studio software. The simulated results and MINITAB software were used to develop regression model equations, which analyzed the impact of Hs variation on the antenna performance. The proposed models’ equations have indicated an increase in average responses of resonant frequency (Fr), percentage bandwidth (% BW), gain (G), return loss (RL), and efficiency (ƞ) as the Hs decreased. The antenna achieved a BW of 3.87 GHz at Hs 0.525 mm and 5.54 GHz at 0.025 mm, a G of 3.89 dBi at Hs 0.525 mm and 3.91 dBi at Hs 0.025 mm, and an ƞ of 94.19% at Hs 0.525 mm and 98.24% at Hs 0.025 mm. The antenna was fabricated and tested, and the experimental results were validated with the models’ equations. The thinner substrate resulted in an improvement in the antenna performance.
Volume: 23
Issue: 5
Page: 1188-1200
Publish at: 2025-10-01

Development of hydraulic servo controller for mechanical testing with optimization of PID tuning methods

10.12928/telkomnika.v23i5.26784
Djoko Wahyu; BRIN Karmiadji , Harris; BRIN Zenal , Dede Lia; Universitas Pancasila Zariatin , Arif; Indonesian Institute of Technology Krisbudiman , Andi Muhdiar; BRIN Kadir , Yudi; BRIN Irawadi , Indra Hardiman; BRIN Mulyowardono , Budi; BRIN Prasetiyo , Nofriyadi; BRIN Nurdam , Tri; BRIN Widodo
This study explores the use of hydraulic servo control (HSC) systems in static and dynamic structural testing, focusing on optimizing proportional, integral, derivative (PID) controller tuning. The HSC system comprises three main components: hydraulic, control, and measurement systems. To achieve optimal performance, the research begins with preparing setpoint displacement/force data and developing mathematical models for the cylinder actuator and servo valve, incorporating sensors like load cells and linear variable differential transducers (LVDTs). A closed-loop transfer function is used to predict outputs that align closely with setpoint values. Three PID tuning methods—Ziegler-Nichols, Cohen-Coon, and adaptive control—are evaluated. Simulation results show all methods yield satisfactory performance with evaluation errors below 1.5%. Implementation tests further confirm effectiveness, with root mean square deviation (RMSD) values under 1%, indicating high precision. Despite promising results, the study acknowledges limitations due to restricted datasets and test conditions. Future research should address broader dynamic load variations, nonlinearities such as fluid leakage and hysteresis, and integrate intelligent optimization techniques like machine learning to enhance robustness and adaptability. This work contributes to improving the reliability and accuracy of HSC systems in structural testing, paving the way for smarter, more responsive control strategies in engineering applications.
Volume: 23
Issue: 5
Page: 1404-1414
Publish at: 2025-10-01

Deep learning-based stacking ensemble for malaria parasite classification in blood smear images

10.11591/ijeecs.v40.i1.pp508-517
Komal Kumar Napa , Kalyan Kumar Angati , Senthil Murugan Janakiraman , Balamurugan Amoor Gopikrishnan , Bindu Kolappa Pillai Vijayammal , Vattikuti Charan Sri Manikanta Sai
Malaria remains a significant global health challenge, necessitating accurate and efficient diagnostic tools. Deep learning models have emerged as promising solutions for automated malaria detection using microscopic blood smear images. This study evaluates the performance of various convolutional neural network (CNN) architectures, including VGG16, ResNet50, MobileNetV2, and EfficientNet, in classifying infected and uninfected cells. Individual model performances were assessed based on accuracy, precision, recall, and F1-score, with EfficientNet achieving the highest standalone accuracy of 88.0%. To enhance classification performance, a stacking ensemble approach was implemented, using a logistic regression meta-classifier to integrate outputs from multiple models for improved decision-making. The stacking model outperformed individual networks, achieving an accuracy of 89.4%, with precision, recall, and F1- scores surpassing those of standalone models. Challenges in malaria parasite classification—such as high inter-class similarity, variations in staining quality, and class imbalance were addressed through data augmentation and model tuning. These findings highlight the potential of ensemble learning in medical image analysis, paving the way for more accurate and scalable malaria detection systems.
Volume: 40
Issue: 1
Page: 508-517
Publish at: 2025-10-01

Household electric monitoring IoT system

10.11591/ijeecs.v40.i1.pp85-92
Joemar Corpuz , Kristine Joy S. Dela Cruz , Joan B. Palomar , Jackielyn Tamayo , Hohn Lois C. Bongao , Mark Joseph B. Enojas , Jane E. Morgado
In dense areas in the Philippines, there are recorded cases of power theft or known to be illegally tapping power lines from another household which results to complaints because of increased electricity bills. To address the power theft problems, this work uses internet of things system for household electric monitoring and control. A transmitter and receiver set up is designed to monitor the energy consumption at both ends. When there is discrepancy with the meter reading, an alert system sends notification that there is an illegal wiretapping. The load is monitored through electric meters and the powers measured are compared. These data are being sent wirelessly through a GSM module. The meter readings for both the transmitter and receiver can be viewed in a mobile phone through a web app developed. A minimum of 3W difference between the transmitter and the receiver will mean a discrepancy and notifies illegal wiretapping. Illegal connections are cutoff when an incident of tapping occurs. Based on the results of the test, the household electricity monitoring system through internet of things (IoT) is found to be 100% reliable in detecting and cutting off illegal connections. Additionally, the system is able to compute the monthly power consumption.
Volume: 40
Issue: 1
Page: 85-92
Publish at: 2025-10-01

Optimizing distance vector-hop localization in wireless sensor networks using the grasshopper optimization algorithm

10.11591/ijeecs.v40.i1.pp461-479
Janani Selvaraj , Hymlin Rose Sasijohn Gloryrajabai , Sivarathinabala Mariappan , Backia Abinaya Antony Samy , Sudhakar Kalairishi
In scenarios involving mobile sensors within distributed sensor systems, such as those often encountered in wireless sensor networks (WSNs) or the internet of things (IoT), the ability to ascertain the origin of sensor data holds significant importance. Range-free Monte Carlo Localization methods offer an energy-efficient solution that eliminates the need for extra hardware, as they solely rely on the radio hardware already present on sensor nodes. But there are certain disadvantages when implemented, as it occupies more amount of power and some inaccuracies might happen in accessing the data from the sensor node. In this paper, we suggest the grasshopper optimization algorithm (GOA) strategy, which incorporates the distance-vector hop (DVHop) and three-anchor methods. It displays its usefulness in terms of both overall localization accuracy and resistance to hostile attacks or malfunctioning nodes. Nonetheless, the incorporation of dead reckoning based on motion sensor data significantly enhances the precision of location estimates and bolsters the network's robustness against both faulty components and malicious agents.
Volume: 40
Issue: 1
Page: 461-479
Publish at: 2025-10-01

Realization of Bernstein-Vazirani quantum algorithm in an interactive educational game

10.12928/telkomnika.v23i5.26929
David; Calvin Institute of Technology Gosal , Timothy Rudolf; Calvin Institute of Technology Tan , Yozef; Calvin Institute of Technology Tjandra , Hendrik Santoso; Calvin Institute of Technology Sugiarto
Quantum algorithms are celebrated for their computational superiority over classical counterparts, yet they pose significant learning challenges for non-physics audiences. Among these, the Bernstein-Vazirani (BV) algorithm stands out for its quantum speedup by efficiently identifying a secret binary string. However, the accessibility of such algorithms remains constrained by their inherent technical complexity. To address this educational gap, this paper introduces a gamified, web-based tool that innovatively reinterprets the BV algorithm’s complex mathematical settings through an into engaging scenario of identifying broken lamps. Players assume the role of an investigator, utilizing both classical and quantum solvers to identify faulty lamps with minimal queries. By transforming the BV algorithm into an intuitive gameplay experience, the tool helps reducing technical barriers, making quantum concepts much more comprehensible for educators and students than traditional methods that demand rigorous mathematical understanding. Developed using Qiskit, IBM’s Python package for quantum computation, and deployed via Flask, a popular Python microframework for building web applications, the game effectively simplifies complex quantum algorithms while demonstrating the practical applications of quantum speedup. This contribution advances quantum education by merging technical depth with interactive design, fostering a broader understanding of quantum principles and inspiring new innovations in gamified learning.
Volume: 23
Issue: 5
Page: 1247-1257
Publish at: 2025-10-01

Regulation of glucose insulin metabolism using feedback linearization

10.12928/telkomnika.v23i5.26408
Meriem; University of Sétif Samai , Ghedjati; University of Sétif Keltoum , Abdelaziz; University of Sétif Mourad
Diabetes is a chronic disease that occurs when the pancreas does not produce enough insulin, or when the body is not able to effectively use the insulin it produces. Insulin is a hormone that regulates blood sugar levels, this regulation is done by the pancreas. When this organ is damaged, the patient will have to regulate its blood sugar level themselves. This task is really painful and we will have to resort to an artificial pancreas or we will have to design a regulator which stabilizes blood sugar at its basal value. Several controls have been developed and the objective of this paper is to use input output linearization technique to regulate blood glucose levels by injecting an adequate quantity of insulin. The glucose insulin metabolism is a non-linear system whose input is the quantity of insulin to be injected and the output is the blood glucose measured in the blood. Simulations examples are given to demonstrate the usefulness of the command developed.
Volume: 23
Issue: 5
Page: 1385-1394
Publish at: 2025-10-01

Advanced image processing techniques for intelligent building environments using pattern recognition

10.12928/telkomnika.v23i5.26800
Mohanad A.; University of Anbar Al Askari , Iehab Abdul Jabbar; University of Anbar Kamil
The use of smart building environments, along with high-technology image processing and pattern recognition, is discussed within this paper. The study shows that the Canny edge detection algorithm is better than the Sobel operator in the edge clarity, continuity and accuracy in segmenting those edges, posting 92.7% of edge detection accuracy. Incorporating fuzzy logic, the hybrid Hough transform, and sophisticated segmentation techniques, like adaptive simple linear iterative clustering (SLIC) superpixel division, the study advances line detection and feature identification in the images of buildings. The variational autoencoder (VAE) and principal component analysis (PCA) help optimise the feature extraction substantially by retaining more than 93% variance at a lower dimension. In addition, adaptive Otsu thresholding and region-growing segmentation allow improving the segmentation accuracy, resulting in a significant increase in building detection F1 score from 77.3% to 89.6%. Irrespective of the Hough transform issues like noise sensitivity and over-joining, the results suggest computing process ideas that are computationally effective, scalable, and applicable in smart building systems. This study suggests extending the current advancement of hybrid models and incorporating them with the urban planning procedures, energy control, and building security systems.
Volume: 23
Issue: 5
Page: 1258-1270
Publish at: 2025-10-01
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