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29,325 Article Results

Expert evaluation of a web-based grammatical competence module: Fuzzy Delphi method

10.11591/ijere.v15i1.35355
Nur Hidayah Md Yazid , Nur Ainil Sulaiman , Harwati Hashim
Web-based learning modules have been considered indispensable for English as a second language (ESL) learners to utilize autonomously. However, there are still not many reputable grammatical competence modules designed for the transition between secondary school and undergraduate levels. Thus, this study aimed to ascertain expert consensus on developing a web-based grammatical competence module for pre-university ESL learners. The Fuzzy Delphi method (FDM) was employed in this study to create the module. Four broad constructs, which are the design, technical aspects, content, pedagogy of the website were used as references in developing a survey as the instrument for the study. The features in the survey were evaluated by six selected experts based on established criteria for high-quality language learning websites. Data analysis was undertaken using a 5-point fuzzy scale and the Fuzzy Delphi approach Logic Software (FUDELO 1.0). Supported by the findings and a consensus rate of over 75%, a cut-off value (d) of ≤0.2, and a fuzzy score (A) of ≥α-cut value=0.5, expert consensus was reached for the four constructs. The findings support that the module is fitting for pre-university ESL learners and can be used as a supplementary grammar learning module. Empirical studies related to learner performance and engagement outcomes in the future must continue assessing the long-term effectiveness of the module and ensure its long-term efficacy in ESL learning.
Volume: 15
Issue: 1
Page: 784-794
Publish at: 2026-02-01

Family economics education and basic economics in shaping students’ irrationality

10.11591/ijere.v15i1.33626
Albrian Fiky Prakoso , Waspodo Tjipto Subroto , Eka Hendi Andriansyah , Norida Canda Sakti , Ardhita Eko Ginanjar , Prattana Srisuk , Dyah Nugraheny Priastuti , Ety Youhanita
The COVID-19 pandemic has led to changes in consumption habits and irrational consumption, which also exhibit a strong tendency towards family economic education (FEE) in shaping student economic behavior and economic irrationality (IR). The novelty of this study lies in the exploration of the relationship between FEE and students’ economic behavior mediated by basic economic (BE) understanding, which is still under-explored in the context of economic education in Indonesia. This study uses a quantitative approach with structural equation modeling (SEM). A total of 385 students of economics or economic education study programs are spread across 38 provinces in Indonesia. The finding of the research indicate that FEE has a significant but relatively weak positive effect on students’ BE understanding. In addition, FEE directly increases students’ irrationality, as well as BE understanding, which also turns out to contribute positively to such irrational behavior. This finding implicitly shows that the delivery of intensive FEE information does not always have a positive impact but can actually strengthen IR in students. Thus, this study emphasizes the need for a more careful and selective approach in FEE to reduce students’ irrational behavior.
Volume: 15
Issue: 1
Page: 895-914
Publish at: 2026-02-01

A move analysis of the discussion sections in English as a second language learners’ quantitative theses

10.11591/ijere.v15i1.34624
Mary Joy V. Herediano , Riziel E. Secretario , Arnold M. Sumpo , Ivy F. Amante , Rovy M. Banguis , Gay Emelyn L. Lariosa , Norhanie D. Macarao
Discussion section of research papers is one of the most essential sections because the authors demonstrate the knowledge contribution of their research findings to the existing literature. In this study, 16 quantitative theses analytical components written by the English language learners were gathered and analyzed. By utilizing qualitative research design focusing on move analysis, the researchers found out that Move 1 (background information), Move 2 (reporting results), Move 3 (summarizing the results), and Move 4 (commenting on the results) were identified as obligatory moves since they serve as the primary objectives of this explanatory segment. Move 6 (evaluating methodology) was recognized as a traditional move. Move 5 (summarizing the study) and Move 7 (deductions from the research) were noted as optional moves. Distinct linguistic characteristics and verbal signals were observed in the various moves, with the patterns of these steps identified as a structured arrangement in the results discussion. The results aim to help student writers recognize the rhetorical frameworks that should be included in the interpretive sections of quantitative theses.
Volume: 15
Issue: 1
Page: 740-750
Publish at: 2026-02-01

Enhancing Chinese character achievement in primary education through multimedia-assisted deep learning module

10.11591/ijere.v15i1.36753
Yulu Jin , Nik Muhammad Hanis Nek Rakami , Md. Nasir Masran
Chinese character literacy is essential for developing literacy competence in primary education; however, traditional instructional methods often rely on rote memorization, limiting student engagement, and deep learning. This study examined the effectiveness of a multimedia-assisted deep learning (MADL) module, designed based on the cognitive theory of multimedia learning (CTML) and cognitive semantic theory, in enhancing primary students’ academic achievement in Chinese character learning. A quasi-experimental design was adopted with 222 second-grade students from three schools, with an experimental group (MADL, n=110) and a control group receiving traditional instruction (n=112). Academic achievement was assessed using pre-test and post-test, measuring overall scores, reading, writing, and understanding. Non-parametric Mann–Whitney U tests and Wilcoxon signed-rank tests revealed that the MADL group significantly outperformed the control group in overall post-test scores (p<.05) as well as in reading, writing, and understanding subtests. Within-group analyses further showed greater improvements in the MADL group. These findings indicate that the MADL module is an effective and pedagogically grounded tool for enhancing Chinese character learning in primary education. The study contributes empirical evidence supporting the integration of MADL strategies into early literacy instruction.
Volume: 15
Issue: 1
Page: 660-669
Publish at: 2026-02-01

Enhancing academic performance prediction in online learning through hybrid machine learning models

10.11591/ijere.v15i1.33590
Jamal Eddine Rafiq , Zakrani Abdelali , Mohammed Amraouy , Said Nouh
Faced with the rise of online learning platforms, predicting learners’ academic performance has become a major concern to personalize and enhance educational journeys. However, traditional predictive models struggle to effectively integrate emotional and social factors. This article introduces a hybrid predictive model that combines random forests (RF) for selecting the most relevant features and multiple regression (MR) to forecast academic performance. The data is sourced from three online learning platforms and encompasses both implicit traces (learner interactions and behaviors) and explicit traces (demographic characteristics). Following a selection and merging process, the final dataset comprises 1,003,392 records and 42 features, categorized into six types of indicators: cognitive, emotional, social, normative, contextual, and demographic. The results demonstrate that this hybrid model outperforms traditional approaches and other machine learning (ML) techniques in terms of predictive accuracy, achieving an R² of 0.9372 and a root mean square error (RMSE) of 0.1022. The incorporation of explicit and implicit traces helps better capture the intricate interactions among the different data dimensions, significantly enhancing prediction quality. This work represents a notable advancement in the field of academic performance prediction. It also sheds light on challenges associated with the increasing complexity of models, paving the way for future research to develop more generalizable approaches.
Volume: 15
Issue: 1
Page: 436-447
Publish at: 2026-02-01

Analysis of factors in integrated internship models for preservice Islamic education teachers using exploratory factor analysis

10.11591/ijere.v15i1.35767
Karwadi Karwadi , Abd Razak Zakaria , Adhi Setiawan , Moh. Ferdi Hasan
This research identifies key success factors of integrated internship models for prospective Islamic Religious Education (PAI) teachers using exploratory factor analysis (EFA), addressing critical gaps where empirical evidence in religious teacher preparation remains limited. Analyzing 218 PAI students across four Yogyakarta universities through mixed-methods design, EFA revealed a four-factor structure explaining 63.4% variance: observation competence (28.7%), microteaching (13.8%), teaching practice (11.2%), and spiritual reflection (9.7%). The identification of spiritual reflection as an independent factor represents a novel contribution not documented in international teacher education literature, empirically validating integration of spiritual competencies within professional preparation frameworks. The internship component assessment scale (ICAS) demonstrates strong psychometric properties (CVI=0.87, α=0.84), providing the first culturally responsive instrument for Islamic education contexts. This study proposes the integrated internship spiral model (IISM) emphasizing cyclical reinforcement rather than linear progression, challenging conventional designs. Educational implications include redesigning PAI teacher professional education curriculum with proportional resource allocation, implementing mentor training for assessing spiritual-pedagogical dimensions, and embedding technology integration across internship phases. Future research should pursue longitudinal validation, cross-contextual studies in other religious education settings, instrument development strengthening spiritual factor reliability, and comparative effectiveness studies. This research demonstrates that culturally responsive teacher preparation can honor religious authenticity while advancing professional excellence, contributing to holistic transformation of PAI internship programs with potential global application.
Volume: 15
Issue: 1
Page: 342-359
Publish at: 2026-02-01

Graduate students’ competence and readiness for research

10.11591/ijere.v15i1.31938
Marie Ann S. Gonzales , Merilyn P. Juacalla , Benny B. Juacalla
Research competence forms the foundation of graduate students’ academic success and their ability to contribute meaningfully to scholarly output. This study examines the relationship between research competence and research readiness among 224 graduate students from MA in education, EdD, and PhD in Laguna State Polytechnic University selected through a non- random sampling technique, specifically purposive sampling. These participants, who had all completed a research subject, responded to a validated, researcher-developed 5-point Likert scale questionnaire. The study employed quantitative methods, including mean comparison, Spearman rank correlation, and Mann-Whitney U tests, to analyze the data. Findings revealed a strong positive correlation between students’ research competence and their readiness to engage in the research process. Notably, doctoral students demonstrated higher levels of both competence and readiness compared to master’s students. While competence levels were relatively consistent across programs, readiness significantly differed. These results highlight the need for program-level interventions that provide targeted research training and support, contributing to more effective curriculum design and evidence-based policy-making in graduate education.
Volume: 15
Issue: 1
Page: 157-165
Publish at: 2026-02-01

An enhanced improved adaptive backstepping–second-order sliding mode hybrid control strategy for high-performance electric vehicle drives

10.11591/ijece.v16i1.pp121-134
Huu Dat Tran , Ngoc Thuy Pham
This paper proposes an enhanced hybrid speed control strategy, termed improved adaptive backstepping–second-order sliding mode (IABSSOSM), for six-phase induction motor (SPIM) drives in electric vehicle (EV) propulsion systems. The proposed method combines the systematic design framework of Backstepping in the outer speed and flux loops with a second-order sliding mode controller in the inner current loop. An innovation of the approach is the integration of a variable-gain super-twisting algorithm (VGSTA), which dynamically adjusts the control effort based on disturbance levels, thereby minimizing chattering and enhancing robustness against system uncertainties. To further improve disturbance rejection, a predictive torque estimator is incorporated using a forward Euler discretization, enabling accurate torque prediction and proactive compensation. This hybrid structure significantly improves convergence speed, enhances reference speed tracking accuracy, and ensures fast and precise torque response, and its strong resilience to external load disturbances, system parameter variations enable stable and reliable operation under challenging conditions. The effectiveness of the proposed approach is validated through comprehensive simulations using the MATLAB/Simulink.
Volume: 16
Issue: 1
Page: 121-134
Publish at: 2026-02-01

Credit card fraud data analysis using proposed sampling algorithm and deep ensemble learning

10.11591/ijece.v16i1.pp311-320
Aye Aye Khine , Zin Thu Thu Myint
Credit card fraud detection is challenging due to the severe imbalance between legitimate and fraudulent transactions, which hinders accurate fraud identification. To address this, we propose a deep learning-based ensemble model integrated with a proposed sampling algorithm based on random oversampling. Unlike traditional methods, the proposed sampling algorithm addresses the oversight of parameter selection and manages class imbalance without eliminating any legitimate samples. The ensemble framework combines the strengths of convolutional neural networks (CNN) for spatial feature extraction, long short-term memory (LSTM) networks for capturing sequential patterns, and multilayer perceptrons (MLP) for efficient classification. Three ensemble strategies—Weighted average, unweighted average, and unweighted majority voting—are employed to aggregate predictions. Experimental results show that all ensemble methods achieve perfect scores (1.00) in precision, recall, and F1-score for both fraud and non-fraud classes. This study demonstrates the effectiveness of ensemble model with optimized sampling approach for robust and accurate fraud detection.
Volume: 16
Issue: 1
Page: 311-320
Publish at: 2026-02-01

Evaluating plant growth performance in a greenhouse hydroponic salad system using the internet of things

10.11591/ijece.v16i1.pp505-517
Chonthisa Rattanachu , Wiyuda Phetjirachotkul , Isara Chaopisit , Kronsirinut Rothjanawan
Hydroponic salad cultivation is becoming increasingly popular. However, a common challenge is the lack of time to maintain hydroponic vegetables due to other responsibilities. This study presents a hydroponic system based on the internet of things (IoT) technique, designed to save time by enabling remote control through a mobile application connected to a NodeMCU microcontroller. Various sensors are integrated with the NodeMCU for real-time monitoring and automation. The study also explores the use of RGB LEDs, which significantly accelerated plant growth and reduced cultivation time. A comparative experimental design was employed to evaluate the growth rate of green oak salad vegetables under two different greenhouse systems. The primary factor compared was the greenhouse system type, with plant growth rate as the outcome variable. Each treatment was replicated 10 times. F-tests were used to statistically determine significant differences in growth rates between the two systems across measured intervals. Results showed that the automated greenhouse system produced the highest leaf width and plant weight values. The use of RGB LEDs reduced the cultivation period from 45 days to 30 days, enabling more planting cycles and ultimately increasing overall yield.
Volume: 16
Issue: 1
Page: 505-517
Publish at: 2026-02-01

Accessibility in e-government portals: a systematic mapping study

10.11591/ijece.v16i1.pp357-372
Mohammed Rida Ouaziz , Laila Cheikhi , Ali Idri , Alain Abran
In recent years, several researchers have investigated the challenges of accessibility in e-government portals and have contributed to many proposals for improvements. However, no comprehensive review has been conducted on this topic. This study aimed to survey and synthesize the published work on the accessibility of e-government portals for people with disabilities. We carried out a review using a systematic mapping study (SMS) to compile previous findings and provide comprehensive state-of-the-art. The SMS collected studies published between January 2000 and March 2025 were identified using an automated search in five known databases. In total, 112 primary studies were selected. The results showed a notable increase in interest and research activities related to accessibility in e-government portals. Journals are the most widely used publication channel; studies have mainly focused on evaluation research and show a commitment to inclusivity. “AChecker” and “Wave validator” are the most used accessibility evaluation tools. The findings also identified various accessibility guidelines, with the most frequently referenced being the web content accessibility guidelines (WCAG). Based on this study, several key implications emerge for researchers, and addressing them would be beneficial for researchers to advance e-government website accessibility in a meaningful way.
Volume: 16
Issue: 1
Page: 357-372
Publish at: 2026-02-01

Autonomous mobile robot implementation for final assembly material delivery system

10.11591/ijece.v16i1.pp158-173
Ahmad Riyad Firdaus , Imam Sholihuddin , Fania Putri Hutasoit , Agus Naba , Ika Karlina Laila Nur Suciningtyas
This study presents the development and implementation of an autonomous mobile robot (AMR) system for material delivery in a final assembly environment. The AMR replaces conventional transport methods by autonomously moving trolleys between the warehouse, production stations, and recycling areas, thereby reducing human intervention in repetitive logistics tasks. The proposed system integrates a laser-SLAM navigation approach, customized trolley design, RoboShop programming, and robot dispatch system coordination, enabling real-time route planning, obstacle detection, and material scheduling. Experimental validation demonstrated high accuracy in path following, with root mean square error values ranging between 0.001 to 0.020 meters. The AMR achieved an average travel distance of 118.81 meters and a cycle time of 566.90 seconds across three final assembly stations. The overall efficiency reached 57%, primarily due to reduced idle time and optimized material replenishment. These results confirm the feasibility of AMR deployment as a scalable and flexible intralogistics solution, supporting the transition toward Industry 4.0 smart manufacturing systems.
Volume: 16
Issue: 1
Page: 158-173
Publish at: 2026-02-01

Artificial intelligence of things solution for Spirulina cultivation control

10.11591/ijece.v16i1.pp488-504
Abdelkarim Elbaati , Mariem Kobbi , Jihene Afli , Abdelrahim Chiha , Riadh Haj Amor , Bilel Neji , Taha Beyrouthy , Youssef Krichen , Adel M. Alimi
In the evolving field of Spirulina cultivation, the integration of the internet of things (IoT) has facilitated the optimization of spirulina growth and significantly enhanced biomass yield in the culture medium. This study outlines a control open-pond system for Spirulina cultivation that employs generative artificial intelligence (AI) and edge computing within an IoT framework. This transformative approach maintains optimal conditions and automates tasks traditionally managed through labor-intensive manual processes. The system is designed to detect, acquire, and monitor basin data via electronic devices, which is then analyzed by a large language model (LLM) to generate precise, context-aware recommendations based on domain-specific knowledge. The final output comprises SMS notifications sent to the farm manager, containing the generated recommendations, which keep them informed and enable timely intervention when necessary. To ensure continued autonomous operation in case of connectivity loss, pre-trained TinyML models were integrated into the Raspberry Pi. These models display alarm signals to alert the farm owner to any irregularities, thereby maintaining system stability and performance. This system has substantially improved the growth rate, biomass yield, and nutrient content of Spirulina. The results highlight the potential of this system to transform Spirulina cultivation by offering an adaptable, autonomous solution.
Volume: 16
Issue: 1
Page: 488-504
Publish at: 2026-02-01

Students performance clustering for future personalized in learning virtual reality

10.11591/ijece.v16i1.pp297-310
Ghalia Mdaghri Alaoui , Abdelhamid Zouhair , Ilhame Khabbachi
This study investigates five clustering algorithms—K-Means, Gaussian mixture model (GMM), hierarchical clustering (HC), k-medoids, and spectral clustering—applied to student performance in mathematics, reading, and writing to support the development of virtual reality (VR)-based adaptive learning systems. Cluster quality was assessed using Davies-Bouldin and Calinski-Harabasz indices. Spectral clustering achieved the best results (DBI = 0.75, CHI = 1322), followed by K-Means (DBI = 0.79, CHI = 1398), while HC demonstrated superior robustness to outliers. Three distinct student profiles—beginner, intermediate, and advanced—emerged, enabling targeted adaptive interventions. Supervised classifiers trained on these clusters reached up to 99% accuracy (logistic regression) and 97.5% (support vector machine (SVM)), validating the discovered groupings. This work introduces a novel, data-driven methodology integrating unsupervised clustering with supervised prediction, providing a practical framework for designing immersive VR learning environments.
Volume: 16
Issue: 1
Page: 297-310
Publish at: 2026-02-01

Application of deep learning and machine learning techniques for the detection of misleading health reports

10.11591/ijece.v16i1.pp373-382
Ravindra Babu Jaladanki , Garapati Satyanarayana Murthy , Venu Gopal Gaddam , Chippada Nagamani , Janjhyam Venkata Naga Ramesh , Ramesh Eluri
In the current era of vast information availability, the dissemination of misleading health information poses a considerable obstacle, jeopardizing public health and overall well-being. To tackle this challenge, experts have utilized artificial intelligence methods, especially machine learning (ML) and deep learning (DL), to create automated systems that can identify misleading health-related information. This study thoroughly investigates ML and DL techniques for detecting fraudulent health news. The analysis delves into distinct methodologies, exploring their unique approaches, metrics, and challenges. This study explores various techniques utilized in feature engineering, model architecture, and evaluation metrics within the realms of machine learning and deep learning methodologies. Additionally, we analyze the consequences of our results on enhancing the efficacy of systems designed to detect counterfeit health news and propose possible avenues for future investigation in this vital area.
Volume: 16
Issue: 1
Page: 373-382
Publish at: 2026-02-01
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