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Investigating Gender Disparities in Electronics Engineering Program Enrollments at a State University in the Philippines Beltran, Joshua Kyle D.; Arboleda, Edwin R.
International Journal of Multidisciplinary: Applied Business and Education Research Vol. 5 No. 1 (2024): International Journal of Multidisciplinary: Applied Business and Education Rese
Publisher : Future Science / FSH-PH Publications

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.11594/ijmaber.05.01.03

Abstract

The study investigates gender disparities within the electronics engineering program at a state university in the Philippines from 2020 to 2023. There is a significant gender gap occurring in this area of engineering studies that necessitates further investigation to understand gender-related enrollments. The researchers employed data analysis on enrollment data, which included year, course, and gender. By means of data manipulation and visualization using the Python programming language, it facilitated data analysis with Jupyter Notebook. The findings revealed that despite fluctuations over the specified years, male student enrollees significantly outnumbered female student enrollees in the program. Male enrollees have consistently formed around 70% to 72%, on the one hand, female enrollees covered approximately 28% to 30% over the years. The research outcomes implied that gender differences remain significant, and addressing this issue is necessary. If male dominance continues in this field, significant development will not occur. Diversifying the approach to involve more women in the program is crucial to achieving greatness and fostering advancement and development in this field of study.
Intelligent Temperature-Controlled Poultry Feed Dispensing System with Fuzzy Logic Algorithm Ramizares, Ulysis V.; Teves, Winbert James A.; Arboleda, Edwin R.; Bangeles, Julliana Marie C.
International Journal of Robotics and Control Systems Vol 4, No 1 (2024)
Publisher : Association for Scientific Computing Electronics and Engineering (ASCEE)

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.31763/ijrcs.v4i1.1256

Abstract

This study introduces a novel fuzzy logic algorithm tailored to the thermoneutral zone of poultry, offering a precise and adaptive approach to feed dispensation. This involved the utilization of an LCD module to present essential information such as the selected age, real-time ambient temperature, current time, and the dispensed feed quantity. Data gathered during the process were stored in a memory device. The design of the fuzzy logic algorithm centered on the thermoneutral zone of the chicken serves as the determinant for feed dispensed by the system. It's crucial to note that while the system lacked artificial intelligence (AI), its logical analysis operated based on the fuzzy logic algorithm. Rigorous testing ensued, encompassing the comparison of feed dispensation between automated and manual systems and the assessment of feed waste and broiler weight.  Significant feed waste reduction in the first week demonstrated the efficacy of the fuzzy-based method, with consistently low p-values of 0.00069, 0.015195, and 0.034 across subsequent weeks confirming the consistent outperformance in broiler weight compared to the traditional feeding technique. The findings contribute to the advancement of temperature-based poultry feed systems, addressing key challenges in optimizing feed quantity. The study successfully met its objectives, demonstrating the system's capability to dispense feeds effectively across varying ambient temperatures.  Notably, the study revealed a consistent alignment of system outputs with those obtained from a digital thermometer and digital weighing scale, confirming the accuracy and reliability of the temperature-based feed dispensing system.
Advancements in AI-driven Cotton Fiber Quality Assessment Through Image Processing: A Comprehensive Review Prudente, Marc Joshua; Arboleda, Edwin R.; Gutierrez, Joshua Balistoy
Control Systems and Optimization Letters Vol 3, No 2 (2025)
Publisher : Peneliti Teknologi Teknik Indonesia

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.59247/csol.v3i2.164

Abstract

The integration of artificial intelligence (AI) and image processing techniques has emerged as a transformative solution to address the limitations of traditional cotton fiber quality assessment methods, particularly the High-Volume Instrument (HVI) and Advanced Fiber Information System (AFIS), which require time-consuming manual labor. This comprehensive review examines the convergence of three key technological domains: image processing, AI/machine learning, and IoT/edge computing, in revolutionizing cotton fiber quality assessment. The review focuses on three primary image processing techniques—feature extraction, segmentation, and classification—that enable precise analysis of critical fiber properties including length, fineness, strength, and maturity. Advanced AI algorithms, particularly convolutional neural networks (CNNs), have demonstrated remarkable success in automating the assessment process, achieving accuracy rates of 82-98% in fiber classification tasks. The integration of Internet of Things (IoT) devices and edge computing has further enhanced the system's capabilities, enabled real-time quality assessments and reduced processing time by up to 60% compared to traditional methods. However, several significant challenges persist, including limited availability of high-quality annotated datasets, variability in image quality due to environmental factors, model generalization across different cotton varieties, and real-time processing constraints in industrial settings. The combination of image data with additional sensor inputs, such as spectral analysis and environmental monitoring, offers potential to further enhance assessment accuracy and robustness. This review emphasizes the transformative potential of AI-driven image processing systems in revolutionizing cotton fiber quality assessment, while also identifying critical areas requiring further research for successful industrial implementation. The findings suggest that continued advancements in AI algorithms, coupled with improved IoT integration and edge computing capabilities, will be crucial for developing more robust and efficient quality assessment systems in the cotton industry.