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28,296 Article Results

Applications of satellite information for rainwater estimation and usage: a comprehensive review

10.11591/ijece.v15i5.pp4671-4681
Laura Valeria Avendaño-García , Yeison Alberto Garcés-Gómez
Global climate change introduces significant uncertainty in water resource availability, making precipitation studies essential for societal sustainability. Satellite precipitation products (SPPs) have emerged as a vital alternative and complement to traditional meteorological station data for hydrological and climate research. This review examines scientific literature on SPP applications for daily, monthly, and annual rainfall estimations globally. Eleven widely used SPPs were identified, with the tropical rainfall measuring mission (TRMM) and climate hazards group infrared precipitation with station data (CHIRPS) standing out due to their frequent usage, high resolution, and extensive data records. A growing trend in research utilizes SPPs for hydrological studies and validates their estimates by contrasting satellite information with ground station measurements using continuous and categorical statistics. TRMM and CHIRPS, in particular, show precipitation accuracies closer to station data, influenced by local topography and climatology. Furthermore, SPP data, combined with geographic information systems (GIS), proves useful for identifying potential rainwater harvesting sites, offering an alternative information source to address water availability crises in drought-prone areas.
Volume: 15
Issue: 5
Page: 4671-4681
Publish at: 2025-10-01

A non-destructive approach for estimation of Hb, HCT and red blood cells using reflectance spectroscopic technique

10.11591/ijece.v15i5.pp4569-4580
P. Divyabharathi , Neelamegam Devarasu
Paediatric haematology involves the use of non-invasive methods and technologies to evaluate haematological parameters in children. These techniques attempt to offer precise measurements of blood constituents without the necessity of intrusive procedures such as venipuncture or blood draws, which can be difficult and unpleasant for paediatric patients. The data gathered from the elbow will be given priority for further investigations to find haematological profiles. Estimates of haemoglobin, haematocrit, and red blood cell count were done and compared against the values obtained using conventional methods. This method achieves an accuracy of 75.56% with high precision and specificity which makes the method particularly beneficial for paediatric applications, potentially due to physiological differences or enhanced calibration for younger populations. The sensitivity varies with red blood cells (RBC) showing the lowest true positive detection rate. Future work could focus on improving the sensitivity of these parameters to enhance the accuracy. Conventional techniques cannot monitor continuously and remotely, which is crucial for a point-of-care screening device in the current era. The proposed non-destructive technique offers the benefits of infection control, pain reduction, and minimal operational cum maintenance expenses, all while being portable and child friendly.
Volume: 15
Issue: 5
Page: 4569-4580
Publish at: 2025-10-01

Overcoming challenges in managing public schools of novice principals

10.11591/ijere.v14i5.33538
Jayson Ryan T. De Leon , Rich Paulo S. Lim , Justin Vianey M. Embalsado , Jed V. Madlambayan , Chillet G. Credo , Ricardo C. Salunga
A qualitative phenomenological approach was utilized in this study to explore the challenges experienced by novice school principals and how they overcome these challenges in managing their schools in the Division of Mabalacat City during school year 2023-2024. Guided by in-depth one-on-one semi-structured interviews, data was gathered from nine public elementary school principals. With the transcribed data, coding was employed using thematic analysis. Results showed that novice principals’ challenges are categorized into two: i) interpersonal challenges, including keeping the school safe and conducive and engaging with stakeholders, and ii) intrapersonal challenges, which include transitioning to higher roles and responsibilities and catching up with the new knowledge and skills needed to acquire. Moreover, novice principals experienced in overcoming these challenges were also examined. Findings revealed that growing interpersonal skills by establishing a good relationship with stakeholders and building rapport with teachers and growing intrapersonal skills by never stopping learning and having the right attitude would help them cope with their difficulties in managing the school. Finally, a proposed novice principals’ challenges model framework was developed and recommended for use in the Division of Mabalacat City to improve the knowledge, skills, and qualities of beginning and aspiring principals with their new roles in managing their schools.
Volume: 14
Issue: 5
Page: 3686-3701
Publish at: 2025-10-01

Performance evaluation of a high-gain 50 W DC-DC flyback boost converter for variable input voltage low-power photovoltaic applications

10.11591/ijece.v15i5.pp4520-4530
Muhammad Hafeez Mohamed Hariri , Lim Kean Boon , Tole Sutikno , Nor Azizah Mohd Yusoff
DC-DC boost converters are essential for stabilizing the voltage output of photovoltaic (PV) modules. This paper analyzes a unique 50 W high-gain DC-DC flyback boost converter for various input voltage PV applications. Scientific analysis was employed to determine suitable parameters for critical circuit components. Simulations were conducted to evaluate the proposed high-gain DC-DC boost converter's performance. Subsequently, a prototype of the high-gain DC boost converter was fabricated with a printed circuit board (PCB) size of 100×100 mm. The proposed prototype's performance is compared to that of conventional boost converters based on criteria such as input voltage, output voltage, component count, voltage stress, voltage gain, efficiency, and rated power. The results indicate that the proposed converter can achieve a 300 V output voltage with a 50 W power rating from variable input voltages ranging between 12 V and 36 V. The highest gain achieved was 25 with a 12 V input voltage, though at a lower power rating of 15 W. A peak efficiency of 84.30% was measured with a 24 V DC input voltage. The proposed converter's features, particularly its high step-up voltage gain, make it suitable for industrial and renewable energy applications.
Volume: 15
Issue: 5
Page: 4520-4530
Publish at: 2025-10-01

Well-being and engagement: its implications for university policy on administrative employee’s wellness program

10.11591/ijere.v14i5.34387
John Michael D. Aquino , Jayson L. de Vera
The well-being and engagement of administrative employees are critical to creating a productive and sustainable work environment. This study investigates causes of university administrative staff well-being and professional involvement. This study examines: i) employee engagement and well-being; ii) administrative employees’ biggest workplace challenges; and iii) how wellness programs promote personal and professional progress. This study used a concurrent triangulation mixed-method research approach. Gallup’s employee engagement survey found that 124 employees have overall favorable attitudes, with a composite mean score of 4.36 demonstrating moderate to high levels of engagement across key workplace indicators. The inconsistent recognition may have an impact on involvement, with the lowest mean of 3.80 and the biggest variability of 1.09. Meanwhile, semi-structured interviews were conducted with 12 administrative employees from a university in region 4A. The findings highlight factors influencing well-being, such as effective communication, work-life balance, positive office environments, and opportunities for promotion. Stress, heavy workloads, and insufficient recognition were seen to be significant challenges, whereas coping strategies including task prioritization, emotional regulation, and peer support were regarded as critical. The results show that well-being boosts commitment and productivity, whereas engagement improves mental health and job happiness. Universities must offer stress management, professional development, and recognition to improve results and staff engagement.
Volume: 14
Issue: 5
Page: 3515-3525
Publish at: 2025-10-01

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

Understanding emotion regulation strategies in female adolescents with depressive symptoms: a qualitative study

10.11591/ijere.v14i5.31924
Siti Rashidah Yusoff , Khairul Farhah Khairuddin , Suzana Mohd Hoesni , Nur Afrina Rosharudin , Tuti Iryani Mohd Daud , Noor Azimah Muhammad , Manisah Mohd Ali , Mohamad Omar Ihsan Razman , Dharatun Nissa Puad Mohd Kari , Mohd Pilus Abdullah
In Malaysia, adolescents are at a high risk for depression, with the prevalence rising from 18.3% in 2017 to 26.9% in 2022. Additionally, the proportion of female adolescents affected is significantly higher than male adolescents, with 36.1% of females experiencing depression compared to 17.7% of males. Thus, a qualitative study was conducted to explore the emotion regulation strategies used by female adolescents experiencing depressive symptoms. Semi-structured interviews were performed with 15 female adolescents, aged 14 to 16 years, who had severe depression scores as assessed by the DASS-21. Using purposive sampling, all 15 female adolescents were selected from six public secondary schools in the Klang Valley, Malaysia. The Klang Valley, which includes the two main states of Selangor and Kuala Lumpur, was chosen due to its ranking among the top three states in 2022 with the highest rates of depression symptoms. All responses were recorded and analyzed using a thematic analysis approach. The findings revealed that female adolescents employed five emotion regulation strategies: suppressing expression, pampering themselves, seeking support, reorganizing their thoughts, and engaging in negative actions. This study explores the emotional experiences of female adolescents to design feasible and flexible interventions that address a wide range of individual needs.
Volume: 14
Issue: 5
Page: 3946-3959
Publish at: 2025-10-01

Learning strategies in distance nursing education during the COVID-19 lockdown: a cross-sectional analysis

10.11591/ijere.v14i5.33377
Khadija Ait Moussa , Sabah Selmaoui , Nadia Ouzennou
The COVID-19 pandemic led to a rapid transition to distance learning (DL), significantly affecting nursing students due to the disruption of essential practical training. This cross-sectional descriptive study examines the learning strategies (LS) adopted by 200 students at the Higher Institute of Nursing and Health Techniques of Marrakech (ISPITS-M) and identifies the factors influencing their adoption. Data were collected using a structured, expert-validated questionnaire (Cronbach’s alpha=0.72). Statistical analyses, conducted using SPSS (version 25.0), included descriptive, bivariate, and multivariate analyses. The findings indicate a predominance of metacognitive strategies, such as planning and time management (63.8%), and cognitive strategies, including memorization (58.9%), which were often adopted intuitively. The blended learning mode (synchronous and asynchronous) (OR=0.621; p=0.013) and student satisfaction with pedagogical modalities (OR=1.446; p=0.019) emerged as key determinants of learning strategy adoption. These findings underscore the need to develop structured blended learning environments that foster interaction, student engagement, and digital competency training. Implementing targeted pedagogical interventions could enhance academic performance and adaptability, addressing the specific needs of health sciences education while promoting long-term student success.
Volume: 14
Issue: 5
Page: 4066-4075
Publish at: 2025-10-01

The underlying physics concept of a soccer game as a catalyst for enhancing creative thinking skills

10.11591/ijere.v14i5.32682
Ida Sriyanti , Mardiah Afifa , Meilinda Meilinda , Anisya Sefina Puteri , Nyimas Aisyah , Wahyu Indra Bayu , Zulkardi Zulkardi , Ratu Ilma Indra Putri , Hapizah Hapizah
Teachers need to improve students’ creative thinking skills by incorporating relevant everyday contexts. Soccer, as a familiar part of daily life, has not been widely used in education, and its impact on creative thinking requires further study. This research aimed to develop a contextual physics e-module centered on soccer to enhance creative thinking in physics learning. The study followed Rowntree's development model, including planning, development, and evaluation, with Tessmer’s formative evaluation through expert reviews, one-on-one assessments, small-group evaluations, and field tests. The creative thinking indicators used in the research are fluency, flexibility, originality, and elaboration. Data were collected from 346 high school students in Palembang via walkthroughs, questionnaires, and written tests, then analyzed using SPSS version 16. The results showed that the soccer-based physics e-module is valid (Sig. 0.00), practical (one-to-one: 82.75%; small group: 91.00%), and in the moderate category for improving creative thinking (N-gain: 0.59). These findings highlight the need to explore other everyday contexts and assess the long-term impact of the e-module across different educational settings.
Volume: 14
Issue: 5
Page: 3712-3726
Publish at: 2025-10-01

Pilot study on the use of art therapy techniques to improve the psycho-emotional state of educational psychologists

10.11591/ijere.v14i5.30603
Tatigul Samuratova , Gulnar Khazhgaliyeva , Oksana Makarova , Nikolay Pronkin
The aim of this study is to investigate the impact of art therapy on the psycho-emotional state of educational psychologists. The issue at hand is the prevalence of depression, anxiety, and emotional burnout among future educational psychologists, which can negatively affect their professional performance. To address this problem, the application of art therapy was proposed as a tool to improve the emotional health of students. The experiment involved 107 students aged 20-22 from the Yelabuga Institute of Kazan Federal University. The assessment of emotional state was conducted using the Beck Depression Inventory, the Spielberger-Hanin Anxiety Scale, and the Schreiner, Rosenberg, and Boyko tests. The results indicated that after three months of art therapy, the average level of depression decreased by 15%, anxiety levels decreased by 20%, and emotional burnout was reduced by 15%. Additionally, students’ stress resistance increased by 20%. Thus, art therapy is an effective means for reducing the emotional burden on students. It is recommended to incorporate art therapy techniques into the curricula of universities, colleges, and secondary schools. Further research is necessary to confirm the effectiveness of art therapy among students of various specializations.
Volume: 14
Issue: 5
Page: 4129-4139
Publish at: 2025-10-01

Integrating project-based learning for enhancing higher education within an outcome-based education framework

10.11591/ijere.v14i5.31957
Radhika Bhagwat , Anagha Kulkarni
Project-based learning (PBL) has emerged as a powerful pedagogical approach within the outcome-based education (OBE) framework that is designed to align educational outcomes with the evolving demands of the 21st century. This research investigates the integration of PBL into an engineering course and focuses on its impact on the overall development of the students. Project-based approach was adapted in the artificial intelligence (AI) course, where 56 and 58 students applied AI concepts to real-world challenges in academic year 21-22 and 22-23, respectively. A structured PBL framework was implemented, systematically dividing the project into stages ensuring progressive learning. Feedback and statistical analysis, including a paired t-test, were conducted to evaluate students’ academic and interpersonal skill improvements. The statistical analysis proved a remarkable improvement in the course assessment marks. Students demonstrated improved problem-solving ability, algorithmic thinking and expertise in AI techniques. The findings exhibited enhanced communication skills, effective presentations, articulation of ideas and peer collaboration. These outcomes indicate the significance of PBL on the holistic development of higher education students, within technical disciplines by equipping students with the necessary skills, mindset, and experience to excel in their professional practice. PBL provides a comprehensive assessment of student’s abilities and fosters collaboration with industry partners thus strengthening ties between academia and industry.
Volume: 14
Issue: 5
Page: 4099-4108
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
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