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28,593 Article Results

Decision making with analytical hierarchy process algorithm and prototype model for exemplary teachers

10.11591/csit.v6i3.p225-234
Sumardiono Sumardiono , Norhafizah Ismail , Wiwit Priyadi , Agus Riyanto , Indra Martha Rusmana
The selection process for exemplary teachers in vocational schools in Bekasi City has so far been carried out subjectively without a structured system, relying on internal meetings and daily notes, thus causing problems of transparency, accuracy, and efficiency. To overcome this, this study developed an online decision support system (DSS) that makes use of the analytical hierarchy process (AHP) algorithm to create an objective and measurable selection method based on five criteria: discipline, travel costs, personality, teaching administration, and learning achievement. Quantitative methods were applied by collecting data through questionnaires and observations, while the system prototype was designed through the stages of problem analysis, design, implementation, and evaluation. The AHP algorithm was used to process the decision matrix, benefit-cost-based normalization, weighting, and pairwise comparisons, with a consistency test (CR =0.044) ensuring the reliability of the results. This system successfully identified Didi Saputra, S.Pdi., as the best exemplary teacher with the highest preference value (0.92), while providing a significant impact in the form of increased accuracy (reducing subjective bias), transparency (clear ranking reports), and efficiency (faster selection process). The research findings demonstrate the effectiveness of AHP as a structured solution for exemplary teacher selection, with potential for adoption by other educational institutions and sustainability through a web-based system.
Volume: 6
Issue: 3
Page: 225-234
Publish at: 2025-11-01

Optimizing energy distribution efficiency in wireless sensor networks using the hybrid LEACH-DECAR algorithm

10.11591/csit.v6i3.p262-273
Muhammad Abyan Nizar Muntashir , Vera Noviana Sulistyawan , Noor Hudallah
Wireless sensor network (WSN) is a network system consisting of various supporting components that integrate information to the base station. In its operation, delivery is greatly influenced by energy usage because limited battery supply causes variability in energy consumption on node activity factors, communication distance, and environmental conditions. So, in order to increase performance and energy efficiency, a routing protocol is required by selecting the best path through cluster head. The technique of determining the cluster head (CH) based on energy is used to avoid irregularity (randomness). In this study, the hybrid routing protocol selects CH based on the remaining energy, considering distance, coverage radius, and energy metrics. The system test evaluation compares the implementation of low-energy adaptive clustering hierarchy (LEACH) and hybrid LEACH- Distributed, energy and coverage-aware routing (DECAR). The results of 300 rounds show that the hybrid achieves a packet delivery ratio close to 100% and a throughput of 78.22 Kbps, while LEACH achieves a packet delivery ratio of 92.18% and a throughput of 247.15 Kbps. The average energy consumption of LEACH is 99.27%, while the hybrid shows much greater efficiency at 30.55%. This study emphasizes the significance of maintaining equilibrium performance and energy consumption in the development of future routing protocols.
Volume: 6
Issue: 3
Page: 262-273
Publish at: 2025-11-01

Room energy management utilizing internet of things technology for decreasing electricity consumption

10.11591/ijres.v14.i3.pp734-744
Winasis Winasis , Suroso Suroso , Azis Wisnu Widhi Nugraha , Priswanto Priswanto
This paper proposes a novel internet of things (IoT)-based control system for energy management to reduce electricity consumption from the two most dominant loads in buildings: air conditioners (AC) and lighting. The proposed system provides a comprehensive operational control strategy that integrates scheduling, human detection, ambient temperature, and light intensity for optimal room-level energy management employed. The proposed system employs wireless fidelity (WiFi)-enabled temperature, presence, and light sensors for comprehensive room conditions monitoring. Additionally, a WiFi-connected infrared module serves as an actuator to regulate the AC unit. Testing results demonstrate compelling energy savings, achieving up to 36% for the AC and 72% for the lighting while maintaining a comfortable indoor environment. These results were obtained from an experimental test in a private room within a residence over an 8-hour daytime period with 50% occupancy time. The proposed IoT system offers a highly effective and easily deployable solution for sustainable energy reduction in residential settings.
Volume: 14
Issue: 3
Page: 734-744
Publish at: 2025-11-01

Hardware design for fast gate bootstrapping in fully homomorphic encryption over the Torus

10.11591/ijres.v14.i3.pp659-675
Saru Vig , Ahmad Al Badawi , Mohd Faizal Yusof
Fully homomorphic encryption (FHE) is a promising solution for privacy preserving computations, as it enables operations on encrypted data. Despite its potential, FHE is associated with high computational costs. As the theoretical foundations of FHE mature, mounting interest is focused towards hardware acceleration of established FHE schemes. In this work, we present a hardware implementation of the fast Fourier transform (FFT) tailored for polynomial multiplication and aimed at accelerating gate bootstrapping in Torus fully homomorphic encryption (TFHE) schemes. Our study includes an extensive design-space exploration at various implementation levels, leveraging parallel streaming data to reduce computational latency. We introduce a new algorithm to expedite modular polynomial multiplication using negative wrapped convolution. Our implementation, conducted on reconfigurable hardware, adheres to the default TFHE parameters with 1024-degree polynomials. The results demonstrate a significant performance enhancement, with improvements of up to 30-fold, depending on the FFT design parameters. Our work contributes to the ongoing efforts to optimize FHE, paving the way for more efficient and secure computations.
Volume: 14
Issue: 3
Page: 659-675
Publish at: 2025-11-01

Implementation of IoT-based water quality monitoring instruments in cantang grouper cultivation ponds

10.11591/csit.v6i3.p235-244
Hollanda Arief Kusuma , M Hasbi sidqi Alajuri , Anggarudin Anggarudin , Dwi Eny Djoko Setyono , Henky Irawan
Grouper fish farming in Indonesia has great potential, but water quality management remains a challenge. Manual monitoring at hatchery D-Marine aquaculture struggles to detect sudden changes, risking mass mortality. This study developed an IoT-based water quality monitoring system using an ESP32 microcontroller, DS18B20 temperature sensors, pH sensors, dissolved oxygen (DO) sensors, a micro-SD card, an organic light emitting diode (OLED) display, and the Ubidots platform. The methodology involved device design, sensor calibration, and field testing. Calibration showed sensor accuracy above 90%. Field tests recorded water temperatures of 26.84 °C (tank 1) and 27.74 °C (tank 2), with pH values of 6.73 and 6.87, which did not meet Indonesian national standard (SNI) standards. Data transmission to Ubidots had a 95% packet delivery ratio (PDR) for device 1 and 97% for device 2. The system successfully provided real-time water quality data, supporting effective farm management. However, improvements to the dissolved oxygen sensor and an automatic control system are needed for better stability and efficiency.
Volume: 6
Issue: 3
Page: 235-244
Publish at: 2025-11-01

Javanese and Sundanese speech recognition using Whisper

10.11591/csit.v6i3.p253-261
Alim Raharjo , Amalia Zahra
Automatic speech recognition (ASR) technology is essential for advancing human-computer interaction, particularly in a linguistically diverse country like Indonesia, where approximately 700 native languages are spoken, including widely used languages like Javanese and Sundanese. This study leverages the pre-trained Whisper Small model an end‑to‑end transformer pretrained on 680,000 hours of multilingual speech, fine tuning it specifically to improve ASR performance for these low resource languages. The primary goal is to increase transcription accuracy and reliability for Javanese and Sundanese, which have historically had limited ASR resources. Approximately 100 hours of speech from OpenSLR were selected, covering both reading and conversational prompts, the data exhibited dialectal variation, ambient noise, and incomplete demographic metadata, necessitating normalization and fixed‑length padding. with model evaluation based on the word error rate (WER) metric. Unlike approaches that combine separate acoustic encoders with external language models, Whisper unified architecture streamlines adaptation for low‑resource settings. Evaluated on held‑out test sets, the fine‑tuned models achieved Word Error Rates of 14.97% for Javanese and 2.03% for Sundanese, substantially outperforming baseline systems. These results demonstrate Whisper effectiveness in low‑resource ASR and highlight its potential to enhance transcription accuracy, support language preservation, and broaden digital access for underrepresented speech communities. 
Volume: 6
Issue: 3
Page: 253-261
Publish at: 2025-11-01

A k-nearest neighbors algorithm for enhanced clustering in wireless sensor network protocols

10.11591/ijres.v14.i3.pp605-613
Adil Hilmani , Yassine Sabri , Abderrahim Maizate , Siham Aouad , Fouad Ayoub
Wireless sensor networks (WSNs) are small, autonomous, battery-powered nodes capable of sensing, storing, and processing data, while communicating wirelessly with a central base station (BS). Optimizing energy consumption is a major challenge to extend the lifetime of these networks. In this study, we propose an innovative approach combining the k-nearest neighbors (KNN) algorithm with hierarchical and flat routing protocols to improve node selection and clustering in three key protocols: low-energy adaptive clustering hierarchy (LEACH), threshold-sensitive energy efficient sensor network protocol (TEEN), and hybrid energy-efficient distributed clustering (HEED). Concretely, KNN is used to rank nodes based on their spatial and energy proximity, thus optimizing the choice of cluster heads (CHs) and reducing long and costly connections. Simulations show a reduction in the inter-CH distance, a decrease in overall energy consumption, and an extension of the network lifetime compared to conventional versions of the protocols. These improvements not only help increase operational efficiency, but also enhance communications stability and security, providing a robust and sustainable solution for critical WSN applications.
Volume: 14
Issue: 3
Page: 605-613
Publish at: 2025-11-01

Clustering with hierarchical routing (GMMCHR): a new gaussian mixture model for wireless sensor networks

10.11591/ijres.v14.i3.pp785-809
Neetu Sikarwar , Ranjeet Singh Tomar
Military surveillance, industrial applications, and real-time environmental monitoring all depend on wireless sensor networks (WSNs). However, due to insufficient power sources for sensor nodes, energy efficiency (EE) and network lifetime (NL) extension are significant challenges. To vanquish these constraints, this investigation suggests a new GMMCHR (Gaussian Mixture Model Clustering with Hierarchical Routing) protocol that combines energy-aware routing with probabilistic clustering. The approach segregates network into NC (Near Clusters) and FC (Far Clusters) based on node distance from the BS. CHs are selected using a fitness function incorporating residual energy and spatial proximity, with FCs formed via Enhanced Gaussian Mixture Models (EGMM) and routing managed through a hierarchical structure. Simulations conducted in MATLAB R2021a under two scenarios—100 nodes in a 100×100 m² region and 200 nodes in a 200×200 m² region—demonstrate significant improvements over the benchmark EEHCHR protocol. In the 100-node scenario, GMMCHR delays the FND (First Node Dead) to 66 rounds, HND (Half Node Dead) to 911 rounds, and LND (Last Node Dead) to 1601 rounds, compared to EEHCHR’s 45, 735, and 1359, respectively. In the 200-node setup, GMMCHR achieves FND at 48 rounds, HND at 904, and LND at 1231, outperforming EEHCHR’s 31, 731, and 1024 rounds. Additionally, GMMCHR maintains over 70% coverage beyond 1200 rounds in Scenario 1 and delivers over 17,000 packets to the base station, significantly higher than EEHCHR. Moreover, the combination of soft clustering in GMM with the hierarchical routing would allow dynamic flexibility, superior load balancing, and improved scalability. Overall, GMMCHR provides an effective and capable method of enhancing the lifetime of the WSN in both small-scale and large-scale systems.
Volume: 14
Issue: 3
Page: 785-809
Publish at: 2025-11-01

Calibration and measurement of cotton moisture using real time system with statistical analysis

10.11591/ijres.v14.i3.pp687-695
Suyog Pundlikrao Jungare , Prasad V. Joshi , M. K. Sharma
Accurate moisture measurement in cotton is essential for maintaining fibre quality, ensuring safe storage, and supporting efficient processing. Improper moisture levels can result in microbial growth, fibre degradation, or mechanical damage during ginning and spinning operations. This study presents the development of a real-time moisture measurement system for cotton used in the ginning industry. The system operates on the principle of electrical resistance change to detect varying moisture levels. Cotton samples were categorized into four types: wet, new, old, and dry. The system is designed for use on moving or in-process cotton. To evaluate system performance, linear discriminant analysis (LDA), and hierarchical clustering analysis (HCA) were employed for classification. Partial least squares (PLS) regression was used to calibrate the system against the standard oven-drying method (ASTM D2495-07). Further, artificial neural network (ANN) modelling was applied for moisture prediction. The system successfully discriminated between the cotton types, achieving over 85% explained variance in classification. ANN-based prediction aligned closely with the standard reference method. The developed system provides a low-cost, fast, and real-time solution for moisture measurement in cotton, with strong potential for industrial application.
Volume: 14
Issue: 3
Page: 687-695
Publish at: 2025-11-01

Design and optimization of bail-shaped microstrip patch antenna for mid-band 5G application using a lightGBM model

10.11591/ijres.v14.i3.pp626-637
G. Vijayakumari , T. Annalakshmi
This study suggests a bail-shaped microstrip patch antenna designed for 5G applications. This antenna model operates in the 3.45 GHz wireless communication frequency range, which is a component of the so-called C-band (3.3 to 4.2 GHz), which is widely utilized for mid-band 5G deployments across the globe. Antenna size optimization is achieved at 31×28 mm2. On the patch, a slot is added to enhance the return loss features. The light gradient boosting machine (LightGBM) model for prediction acts as an objective function of the considered piranha foraging optimization algorithm (PFOA) to adjust the antenna's slot dimension, which will be used to optimize the slot width. In order to get a superior return loss value of around -39.90<-10 dB, the optimization approach that is provided seeks to achieve the ideal slot length. The proposed device exhibits remarkable radiation efficiency by partially grounding, with a peak gain of around 2.535 dBi at 3.45 GHz. A novel hybrid approach combines the LightGBM prediction model with the PFOA to fine-tune slot dimensions, achieving a superior return loss of -39.90 dB. The exclusivity of this effort is the incorporation of machine learning algorithms to attain significantly improved parameters.
Volume: 14
Issue: 3
Page: 626-637
Publish at: 2025-11-01

Smart irrigation system with internet of things for rose cultivation in a basic greenhouse in Canchis, Cusco, 2025

10.11591/ijres.v14.i3.pp754-765
Marco Antonio Roque Benique , Luis Enrique Falcon Teves , Eduar Anibal Vasquez Ortiz
A large percentage of the world’s freshwater is allocated to agriculture, which presents a significant challenge for the future in light of a growing global population and climate change. In this context, it is essential to implement technologies that enable more efficient water resource management. Consequently, a smart irrigation system with internet of things (IoT) was developed for rose cultivation in a basic greenhouse located in Canchis, in the Cusco region, in 2025. This project integrated sensors for data acquisition, ESP32 modules for control, and solenoid valves as actuators. Additionally, the ThingSpeak platform was used for monitoring. The implementation of the system in the basic greenhouse demonstrated reliable communication between the different nodes and the virtual platform, as well as full automation through the solenoid valve’s response to a defined threshold. Finally, it showed an average water consumption savings per irrigation of up to 46.26% compared to the previous system.
Volume: 14
Issue: 3
Page: 754-765
Publish at: 2025-11-01

Chirp-pulsed eddy current testing for crack detection in low-carbon steel

10.11591/ijres.v14.i3.pp676-686
Dang-Khanh Le , Sy Phuong Hoang , Duc Minh Le , Phuong Huy Pham , Trung Hieu Trieu , Minhhuy Le
This paper introduces a signal processing feature for chirp-pulsed eddy current testing (C-PECT) to improve crack detection in low-carbon steel, a common material in maritime structures. While C-PECT is an established technique, inspecting ferromagnetic materials is challenging due to significant background noise from lift-off variations and material permeability. The novelty of this work lies in the proposal of a frequency-domain integration feature designed to suppress this noise. The method utilizes a chirp-pulse-excited probe with a Hall sensor to measure the magnetic field response. By integrating the signal's magnitude spectrum, the frequency feature effectively flattens the background and enhances the signal-to-noise ratio. Experimental validation on a low-carbon steel specimen with artificial cracks demonstrates the feature's superior performance in providing clear, high-contrast crack indications compared to a conventional time-domain analysis. The results indicate that this approach offers a simple, computationally efficient, and robust solution for the qualitative detection and localization of cracks, enhancing structural integrity assessments in noisy industrial environments.
Volume: 14
Issue: 3
Page: 676-686
Publish at: 2025-11-01

Economical design of WAMS through soft computing: co-optimal PMU placement and communication infrastructure

10.11591/ijres.v14.i3.pp649-658
Banumalar Koodalsamy , Vanaja Narayanasamy , Muralidharan Srinivasan
Recently, utilities have developed and deployed wide area measurement systems (WAMS) to improve the electricity grid's ability to monitor, manage, and defend itself. In a typical WAMS setup, multiple measuring devices, communication systems, and energy management systems work together to gather, transmit, and then analyze data. Although there is substantial interdependence among these three capabilities, most research treats them independently. The work presented here minimizes the total cost of the communication infrastructure (CI) by taking into account the price of phasor measurement units (PMUs) and the placement of a phasor data concentrator (PDC) at the same time. The optimum CI and PDC placement has been built with Steiner tree optimization's help. There have also been practical operating scenarios of more realistic working conditions containing pre-installed PMU, pre-installed fiber optic and N-1 contingency. The optimization hurdle has been overcome by utilizing the binary firefly algorithm (BFFA), which has undergone testing on IEEE 14, 30, and 118 bus systems to demonstrate its effectiveness. A comparison has been offered, and it clearly demonstrates the proposed approach's superiority over previously published articles.
Volume: 14
Issue: 3
Page: 649-658
Publish at: 2025-11-01

The smart e-bike ecosystem integrates internet of things and artificial intelligence

10.11591/csit.v6i3.p307-314
Tole Sutikno , Hendril Satrian Purnama
The smart e-bike ecosystem, a combination of internet of things (IoT) and artificial intelligence (AI), has transformed urban mobility. This study aims to shed light on the transformative potential of the smart e-bike ecosystem in the context of urban transportation solutions. It includes real-time navigation, crash detection, and a smart electric drive to encourage sustainable practices and reduce reliance on traditional vehicles. The use of smart locks and parking beacon systems creates a safe and efficient urban infrastructure, encouraging e-bike use. This approach reduces traffic congestion and carbon emissions. IoT frameworks in smart e-bikes improve the user experience and contribute to urban mobility solutions. Real-time monitoring of critical parameters, such as battery levels, speed, and maintenance requirements, keeps riders informed and safe at all times. IoT-enabled features, such as navigation assistance, shorten travel times and improve the efficiency of urban transportation systems. The evolution of smart e-bikes is consistent with the anticipated improvements of 6G networks, which promise to transform communication infrastructures. AI-powered features such as real-time navigation and crash detection make rides safer. The use of smart electric drives and cloud server technology promotes a data-driven approach to transportation. Future research and development should look into the use of advanced localization techniques to improve user experience while addressing accuracy and energy consumption issues.
Volume: 6
Issue: 3
Page: 307-314
Publish at: 2025-11-01

Wideband frequency-reconfigurable antenna for sub-6 GHz wireless communication

10.11591/ijres.v14.i3.pp614-625
Tejal Tandel , Samir Trapasiya
This paper presents a compact dual-band frequency-reconfigurable monopole antenna for sub-6 GHz wireless applications. Using a single PIN diode, the antenna switches between 2.7 GHz and 3.9 GHz bands, achieving bandwidths of 472 MHz and 1130 MHz, respectively, with peak gains up to 1.65 dB. The demand for smaller devices has driven the development of compact antennas capable of operating across multiple bands. The main benefits of this antenna include its compact size, enhanced bandwidth, and design simplicity, which is achieved by integrating slots into the patch and introducing a tiny slot etched over the ground plane. The antenna is created using an FR4 material with a thickness of 1.6 mm and dimensions of 25×15 mm². The antenna prototype was fabricated and tested to validate its performance. Simulation optimization reveals that the antenna operates with a gain of 0.9–1.65 dB and a bandwidth of (472–1130 MHz). The design also achieves a VSWR of less than 1.3 and a radiation efficiency between 74% and 78%. The performance enhancement of the reconfigurable antenna was fine-tuned utilizing microwave solvers in both computer simulation technology (CST) and advance design system (ADS).
Volume: 14
Issue: 3
Page: 614-625
Publish at: 2025-11-01
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