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28,451 Article Results

Efficient mask region-based convolutional neural network-based architecture for COVID-19 detection from computed tomography data

10.11591/ijece.v15i5.pp4751-4761
Nader Mahmoud , Ashraf B. El-Sisi
The worldwide effect of the coronavirus disease (COVID-19) pandemic has been catastrophic, leading to a significant number of fatalities worldwide. In response to the outbreak, health care institutions have proposed the use of chest computed tomography (CT) as an important diagnosis tool for rapid diagnosis, leveraging deep learning approaches for disease detection. This paper aims to progress a robust methodology towards accurate diagnosis of COVID-19 based on deep learning approaches with chest CT images. We propose a mask region-based convolutional neural network (Mask R-CNN) model architecture that is well-trained and used to discriminate between COVID-19-infected and uninfected cases. In order to improve feature extraction, the proposed model incorporates a fuzzy color enhancement preprocessing technique that reduces image fuzziness and increases contrast. A publicly available chest CT dataset is considered for quantitative evaluation of the proposed architecture model, which includes various frontal image views of COVID-19 and non-COVID-19 cases. The proposed approach yielded an accuracy of 98.8% with 98.4% precision and 98.5% recall. Additionally, the proposed model architecture has been quantitatively evaluated in comparison with benchmark approaches, yielding superior performance in terms of conventional evaluation metrics.
Volume: 15
Issue: 5
Page: 4751-4761
Publish at: 2025-10-01

Enhancing facial landmark detection with ControlNet-based data augmentation

10.11591/ijece.v15i5.pp4907-4915
Kritaphat Songsri-in , Munlika Rattaphun , Sopee Kaewchada , Sunisa Kidjaideaw , Sangjun Ruang-On , Wichit Sookkhathon , Patompong Chabplan
Facial landmark detection plays a pivotal role in various computer vision applications, including face recognition, expression analysis, and augmented reality. However, existing approaches often struggle with accuracy due to the variations in lighting, poses, and occlusion. To address these challenges, this study explores the integration of ControlNet with Stable Diffusion to enhance facial landmark detection via data augmentation. ControlNet, an advanced extension of diffusion models, improves image generation by conditioning outputs on structured inputs such as landmark coordinates, enabling precise control over image attributes. By leveraging annotated landmark data from the 300W dataset, ControlNet synthesizes diverse facial images that supplement traditional training datasets. Experimental results demonstrate that ControlNet-based augmentation reduces the interocular normalized mean error (INME) in landmark detection from a baseline of 4.67 to a range of 4.63 to 4.74, with optimal parameter tuning yielding further accuracy gains. These findings highlight the potential of generative models in complementing discriminative approaches and improving robustness and precision in facial landmark detection. The proposed method offers a scalable solution for enhancing model generalization, particularly in applications requiring high-fidelity facial analysis. Future research can extend this framework to broader computer vision tasks that demand detailed feature localization and structured data augmentation.
Volume: 15
Issue: 5
Page: 4907-4915
Publish at: 2025-10-01

A hybrid extreme learning machine and sine cosine algorithm model for accurate electricity price forecasting

10.11591/ijece.v15i5.pp4366-4375
Udaiyakumar Sambathkumar , Sangeetha Shanmugam , Kannayeram Ganapathiya Pillai
Electricity demand is continually rising due to the advancement of new technology, the switch to greener energy, and the popularity of electric vehicles over conventional ones. The proliferation of businesses in the generation and distribution sectors has increased competition in the electricity market. Forecasting electricity prices enables consumers to control their monthly electricity bills and consumer-owned distributed generation by knowing the forecasted hourly price. For demand management, generation scheduling, and bidding price quotations, electricity price forecasting is crucial for buyers, generation businesses, and bidders alike. Electricity price data is highly nonlinear and affected by numerous factors because of which EPF models are more complex, highly volatile and slow in convergence. A range of neural network models, training algorithms, and hybrid systems comprising two or more models have been suggested for precise and efficient electricity price forecasting by researchers over the decade. This study involves the development of a hybrid neural network model with two intelligent algorithms sine cosine algorithm (SCA) and extreme learning machine (ELM) to predict electricity price for a particular duration. The newly developed network model is trained and tested with real-time Indian electricity price data from the year 2022. The selected annual price data set is divided into three different sets to explore seasonal variations and all the sets are given as the input to the model for training and testing to obtain the effective price forecasting.
Volume: 15
Issue: 5
Page: 4366-4375
Publish at: 2025-10-01

Anomaly-based intrusion detection leveraging optimized firewall log analysis: a real-time machine learning solution

10.11591/ijece.v15i5.pp4785-4802
Tran Cong Hung , Dam Minh Linh , Han Minh Chau , Ngo Xuan Thoai , Thai Duc Phuong , Huynh De Thu
Firewall logs play a vital role in cybersecurity by recording network traffic and flagging potential threats. This study evaluates five machine learning algorithms-decision tree (DT), random forest (RF), extra trees (ET), CatBoost (CB), and AdaBoost (AB)-on a dataset of 65,532 firewall log entries. Models were assessed using accuracy, precision, recall, training/prediction time, and Pearson correlation for feature selection, across multiple train-test splits. The DT model achieved the best performance, reaching 99.45% test accuracy, 97.457% precision, and 93.389% recall at a 7:3 split, along with the fastest training time (0.20642s). We propose real-time flow-level intrusion detection (RT-FLID), novel, lightweight, real-time intrusion detection system that leverages multithreaded processing and flow-level analysis to boost detection speed and scalability. Unlike existing approaches that rely heavily on deep packet inspection or computationally intensive processing, RT-FLID requires minimal resources while maintaining high detection accuracy. The architecture efficiently handles large traffic volumes and dynamically identifies anomalies such as distributed denial-of-service (DDoS) and port scans. Validated on real-world logs, the system maintained high accuracy in critical classes like “deny” and “reset-both.” These findings highlight RT-FLID’s novelty and practical advantages, demonstrating its potential for deployment in high-throughput, low-latency network environments.
Volume: 15
Issue: 5
Page: 4785-4802
Publish at: 2025-10-01

Comparative analysis of metaheuristic algorithms (genetic algorithm, artificial bee colony, differential evolution) in the design of substrate integrated waveguide dual bandpass filter

10.11591/ijece.v15i5.pp4682-4691
Souad Akkader , Abdennaceur Baghdad , Hamid Bouyghf , Aziz Dkiouak , Yassine Gmih
A well-optimized substrate integrated waveguide (SIW) filter can significantly enhance the performance of modern technologies, including wireless communication systems, radar, and sensors. The frequencies of 5 and 6 GHz play a crucial role in these applications. Metaheuristic algorithms such as genetic algorithm (GA), artificial bee colony (ABC), and differential evolution (DE) are effective for designing SIW filters specifically tailored to these needs. This paper evaluates the performance of evolutionary optimization techniques in the design of substrate integrated waveguide filters. The optimization focuses on achieving optimal impedance matching within the frequency range of 4 to 8 GHz. The attenuation constant serves as the cost function, guiding the optimization process to ensure reliable and accurate results from each algorithm. The filter parameters derived from the most efficient algorithm are verified using ANSYS HFSS, resulting in two bands with S11=-45 dB and S21=-0.2 dB in the first band, and S11=-28 dB and S21=-0.5 dB in the second band. Additionally, two transmission zeros with rejections of -23 and -12 dB are achieved at 6.4 and 7.08 GHz, respectively. These results highlight the practicality of SIW technologies in designing microwave circuits, particularly for internet of things (IoT) applications.
Volume: 15
Issue: 5
Page: 4682-4691
Publish at: 2025-10-01

A hybrid approach to phishing email detection: leveraging machine learning and explainable artificial intelligence

10.11591/ijece.v15i5.pp4865-4874
Tarek Zidan , Fadi Abu-Amara , Ahmad Hasasneh , Muath Sawaftah , Seth Griner
With the increasing use of emails in our daily lives, they have become a prime target of phishing attacks, posing a significant threat to users. Attackers pretend to be trusted sources and use email phishing attacks to trick people into clicking malicious links or opening attachments. The aim of these attacks is to obtain sensitive information, such as financial information, login credentials, and personally identifiable information. Emails have attributes including the URL, sender, subject, receiver(s), and body. This paper proposes a hybrid intelligence model that integrates machine learning algorithms (ML) and natural language processing (NLP) techniques for email phishing detection. Three ML algorithms are employed: logistic regression, decision tree, and random forest. In addition, a customized ChatGPT model has been developed to receive email classification results from the hybrid model. This model educates users on recognizing phishing emails by explaining email classifications, highlighting keywords, and offering security tips. The proposed approach to detecting phishing emails raises awareness and educates users on recognizing and reporting email phishing attacks.
Volume: 15
Issue: 5
Page: 4865-4874
Publish at: 2025-10-01

Bone-Net: a parallel deep convolutional neural network-based bone fracture recognition

10.11591/ijece.v15i5.pp4692-4704
Md. Hasan Imam Bijoy , Nusrat Islam Kohinoor , Syeda Zarin Tasnim , Md Saidur Rahman Kohinoor
Many people suffer from bone fractures, which can result from minor accidents, forceful blows, or even diseases like osteoporosis or bone cancer. In the medical realm, accurately identifying bone fractures from X-ray images is paramount for effective diagnosis and treatment. To address this, a comparative study is conducted utilizing three distinct models: a traditional convolutional neural network (CNN), MobileNet-V2, and a newly developed parallel deep convolutional neural network (PDCNN). The primary aim is to evaluate and contrast these models in terms of precision, sensitivity, and specificity for diagnosing bone fractures. X-ray images of fractured and non-fractured bones are sourced from Kaggle and subjected to various image processing techniques to rectify anomalies. Techniques such as cropping, resizing, contrast enhancement, filtering, and augmentation are applied, culminating in canny edge detection. These processed images are then used to train and test models. The results showcased the superior performance of the newly developed PDCNN model, achieving an impressive accuracy of 92.89%, surpassing both the traditional CNN and pretrained MobileNet-V2 models. A series of ablation studies are conducted to fine-tune the hyperparameters of the PDCNN model, further validating its efficacy. Throughout the investigation, PDCNN consistently outperformed MobileNet-V2 and traditional CNN, underscoring its potential as an advanced tool for streamlining bone fracture identification.
Volume: 15
Issue: 5
Page: 4692-4704
Publish at: 2025-10-01

Characteristics of partial discharge on high-density polyethylene insulation under AC and DC voltages

10.11591/ijece.v15i5.pp4421-4429
Yudha Agung Subarkah , Abdul Syakur , Iwan Setiawan
The majority of insulation system failures in electrical grids are caused by partial discharge (PD) activity. Continuous PD activity gradually degrades the quality of insulation, potentially resulting in total breakdown. This study investigates PD activity in high-density polyethylene (HDPE) insulation, detected through the observation and measurement of PD charge using the CIGRE Method II electrode system. The objective is to analyze PD behavior in HDPE cable insulation containing cavity-type defects under alternating current (AC) and direct current (DC). The samples consist of three layers of HDPE sheets, each 1 mm thick, with an artificial circular cavity of 1 cm in diameter embedded in the middle layer. This configuration enables detailed analysis of insulation damage and degradation. The results show that HDPE performs better under DC voltage compared to AC. This is evidenced by the average PD inception voltage (Vin) under DC conditions reaching 15.5 kV, higher than the 11.8 kV observed under AC, as well as a significantly longer PD inception time (Tin) under DC conditions. Although the PD charge magnitude is nearly the same under both voltage types, the higher voltage required to trigger PD under DC indicates that HDPE exhibits superior insulation resistance to DC voltage.
Volume: 15
Issue: 5
Page: 4421-4429
Publish at: 2025-10-01

Computer vision based smart overspeeding vehicle surveillance system

10.11591/ijece.v15i5.pp4740-4750
Budhaditya Bhattacharjee , Pragyendra Pragyendra , Boopalan Ganapathy , Shanmugasundaram M.
In India, overspeeding causes more than 60% of deaths. Therefore, we need a system that tracks the median speed of cars and identifies those who regularly violate the law. Road fatalities can be reduced as a result of maintaining law and order. In this paper, we present an embedded system that can read the license plates of passing cars in real time. Using optical character recognition technology, the proposed system will capture images of license plates. In addition, it sends short message service (SMS) notifications regarding the highway speed of a specific moving vehicle violating the rules to the relevant authorities. By using this technique, several manual operations that were previously required to detect over-speeding automobiles with RADAR guns are eliminated. On the roadway, the device can only be operated by one operator due to its well-developed user interface. As part of this work, a downloadable database is developed which includes information about speeding vehicles as well as vehicles travelling on a roadway at the moment they are detected.
Volume: 15
Issue: 5
Page: 4740-4750
Publish at: 2025-10-01

A comparative analysis of D-FACTS devices for power quality improvement in photovoltaic/wind/battery system

10.11591/ijece.v15i5.pp4477-4486
Manpreet Singh , Lakhwinder Singh
The identification and reduction of power quality events have become essential because of the growing interest in incorporating renewable energy sources to power system. The primary aim of this paper is to compare the performances of dynamic voltage restorer (DVR), unified power flow controller (UPFC) and unified power quality conditioner (UPQC) to improve power quality issues in grid-connected photovoltaic/wind/battery system by mitigating total harmonic distortion (THD). The results of the proposed research have been validated using MATLAB platform. The comparative analysis of DVR, UPFC, and UPQC in mitigating THD in a grid-connected PV/wind/battery system is presented in this paper. The comparative analysis of the results depicts that THD in voltage decreases from 51% to 44.67%, 20.94%, and 16% whereas THD in current decreases from 58% to 44%, 29.26%, and 22% after implementation of DVR, UPFC, and UPQC respectively in the proposed photovoltaic/wind/battery system. The effectiveness of the proposed system has been confirmed by comparing the results with already published techniques.
Volume: 15
Issue: 5
Page: 4477-4486
Publish at: 2025-10-01

Optimizing vehicle selection in supply chain management with data-driven strategies

10.11591/ijece.v15i5.pp4899-4906
Imane Zeroual , Jaber El Bouhdidi
Logistics has undergone significant transformation to address the complex economic, social, and environmental challenges of the modern era. To maintain competitiveness, logistics providers have been compelled to optimize operations, meet increasing customer expectations, and improve satisfaction. Critical issues impacting logistics performance include traffic congestion, infrastructure limitations, rising demand, and the complexities of vehicle scheduling, coordination, and management. These challenges frequently disrupt delivery operations, undermining efficiency and overall system performance. This paper proposes the application of three machine learning models aimed at optimizing delivery processes, with a focus on improving vehicle assignment for order deliveries. By leveraging these models, logistics providers can enhance decision-making and operational efficiency. The study defines the core problem and evaluates several machine learning approaches to bolster logistics delivery systems.
Volume: 15
Issue: 5
Page: 4899-4906
Publish at: 2025-10-01

Decomposition and multi-scale analysis of surface electromyographic signal for finger movements

10.11591/ijece.v15i5.pp4593-4604
Afroza Sultana , Md. Tawhid Islam Opu , Md. Shafiul Alam , Farruk Ahmed
Decomposition of the surface electromyography (sEMG) signal is vital for separating the composite, complex, noisy signals recorded from muscles into their integral motor unit action potentials (MUAPs). By precisely identifying each motor unit’s activity, this method offers greater insights into the functioning of the neuromuscular system, which helps isolate each motor unit's contribution, making it essential for understanding muscle coordination and diagnosing neuromuscular disorders. In this study, we employ the maximal overlapping discrete wavelet transform (MODWT), which is well-suited for analyzing signals in the time-frequency domain. The study decomposed the sEMG signal into six levels to identify the neural activity of finger movements and analyzed the motor unit action potential (MUAP). In the frequency range of 30.2 and 64.6 Hz, the signal exhibits the highest MUAP which is independent of movement. Using inverse MODWT, it was rebuilt from the decomposed levels. With 95.8% accuracy, the similarity between the reassembled signal and the original signal was determined using correlation analysis to assess the efficacy of the method.
Volume: 15
Issue: 5
Page: 4593-4604
Publish at: 2025-10-01

Design of a solar-powered electric vehicle charging station

10.11591/ijece.v15i5.pp4465-4476
Emerson Cabanzo Mosquera , Walter Naranjo Lourido , Javier Eduardo Martínez Baquero
This manuscript presents the design of a solar-powered electric vehicle (EV) charging station in Villavicencio, Colombia, aimed at reducing reliance on the utility grid, lowering energy costs, and minimizing environmental impact. The station designed integrates a photovoltaic system to harness renewable energy, ensuring a sustainable and cost-effective charging solution. It accommodates both AC and DC fast charging options to meet diverse vehicle requirements. The design considers available space, energy generation potential, and financial feasibility to maximize efficiency and return on investment. A technical analysis of battery storage, power electronics, and system configuration is provided, along with a cost-benefit assessment. Simulation results confirm the station's ability to deliver stable power under varying conditions. With an estimated payback period of 2.8 years, this project demonstrates the economic and environmental advantages of solar-powered EV infrastructure, supporting the transition to clean transportation in Colombia.
Volume: 15
Issue: 5
Page: 4465-4476
Publish at: 2025-10-01

Efficient fall detection using lightweight network to enhance smart internet of things

10.11591/ijece.v15i5.pp5031-5044
Pinrolinvic D. K. Manembu , Jane Ivonne Litouw , Feisy Diane Kambey , Abdul Haris Junus Ontowirjo , Vecky Canisius Poekoel , Muhamad Dwisnanto Putro
Fall detection automatically recognizes human falls, mainly to monitor and prevent severe injury and potential fatalities. It can be developed by applying deep learning methods to recognize human subjects during fall incidents and implemented in the internet of things (IoT) to monitor patient and elderly individuals’ activity. The development of object detection presents you only look once v8 (YOLOv8) as an influential network, but its efficiency needs to be improved. A modified YOLOv8 architecture is proposed to introduce a novel lightweight network version called YOLOv8-Hypernano (YOLOv8h) that recognizes fall events. The backbone incorporates a combined spatial and channel attention module, which enhances focus on human subjects by concentrating on movement patterns to detect falls more accurately. This work also offers a consecutive selective enhancement (CSE) module to improve efficiency and effectiveness in feature extraction while reducing computational costs. The neck structure is modified by adding a lightweight bottleneck network. The proposed network reconstructs feature maps in depth, paying more attention to accurate human movement patterns and enhancing efficiency and effectiveness in feature extraction. Experimental results of YOLOv8h with the light bottleneck and consecutive selective enhancement modules show giga floating-point operations per seconds (GFLOPS) of 5.6 and 1,194,440 parameters. The model performance is calculated in mean average precision, achieving 0.603 and 0.732 on the Le2i and Fallen datasets, respectively. These results demonstrate that the optimized network improves accuracy performance while maintaining lightweight computing requirements that can run smoothly on IoT devices, achieving comparable speed and efficiency suitable for operation on low-cost computing devices.
Volume: 15
Issue: 5
Page: 5031-5044
Publish at: 2025-10-01

Analysis of partial discharge characteristics in transformer oil insulation media using needle-plane and plane-plane electrode systems

10.11591/ijece.v15i5.pp4445-4453
Teuku Khairul Murad , Abdul Syakur , Iwan Setiawan
Insulation failure is a common issue in electric power transmission. Insulation is necessary to separate two or more live conductors to prevent electrical arcing or sparking between them. Partial discharge (PD) is a phenomenon that can also occur in high-voltage equipment under pre-breakdown conditions. This PD activity can take place in liquid insulation, such as transformer oil, leading to a decrease in the quality and reliability of the transformer. This study aims to detect PD under various conditions and investigate its characteristics. Although various studies have been conducted on PD in liquid insulation, most of them focus on PD characterization under specific conditions without considering variations in electrode configurations that may influence the PD phenomenon. Therefore, this research is necessary to fill this gap by analyzing PD characteristics using a needle-plane and plane-plane electrode system. This study introduces the use of castor oil as an alternative liquid insulating material. In this study, PD testing will be conducted in a laboratory environment, and it is expected to produce reliable data regarding the capability of liquid insulation to withstand PD. The results obtained indicate that the PD phenomenon occurs more quickly in the needle-plane electrode configuration compared to the plane-plane configuration. PD in the needle-plane electrode occurs at an average voltage of 10.96 kV, while PD in the plane-plane electrode occurs at an average voltage of 12.5 kV.
Volume: 15
Issue: 5
Page: 4445-4453
Publish at: 2025-10-01
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