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Integrasi Faktor Manusia dalam Tata Kelola Keamanan Siber Berbasis Cloud: Studi Pengembangan Framework Kevin Maulana Firdaus
Jurnal Manajemen Teknologi Informatika Vol. 3 No. 3 (2025): Jurnal Manajemen Teknologi Informatika
Publisher : JENTIK

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.70038/jentik.v3i3.194

Abstract

This study aims to develop a cloud-based cybersecurity governance framework that integrates human factors as a central element. A qualitative approach with a conceptual framework development design was employed through literature review, needs analysis, People–Process–Technology model design, and conceptual implementation simulation. The results indicate that integrating human factors, governance processes, and technical controls into a unified framework provides a more holistic and adaptive approach to cybersecurity management in digital organizations. The proposed framework positions humans as active actors in the security system, supported by policies, standard operating procedures, and cloud security technologies. This study contributes theoretically to the development of cybersecurity governance research and practically serves as an initial reference for organizations in designing human-centered cybersecurity strategies in cloud environments.
Smart Seismic Intelligence Machine Learning for Spatial Clustering and Earthquake Magnitude Prediction in Indonesia Setya Hadi, Harry; Rauf, Rosnita; Agus Salim; Kevin Maulana Firdaus
ZETROEM Vol 8 No 1 (2026): ZETROEM
Publisher : Prodi Teknik Elektro Universitas PGRI Banyuwangi

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.36526/ztr.v8i1.7615

Abstract

Indonesia is located within the Pacific Ring of Fire, one of the most seismically active regions in the world due to the interaction of multiple major tectonic plates. Understanding the spatial distribution of earthquakes and accurately estimating their magnitudes is essential for effective disaster risk assessment and mitigation planning. This study aims to analyze earthquake distribution patterns and develop a machine learning-based approach to predict earthquake magnitude using seismic data from the Meteorology, Climatology, and Geophysics Agency (BMKG). The study employs two machine learning methods: K-Means Clustering to identify spatial groupings of earthquake events and Random Forest Regression to predict magnitude based on spatial and temporal features. The dataset consists of 67 earthquake events recorded in February 2026, including attributes such as latitude, longitude, depth, magnitude, and occurrence time. Clustering results indicate that the optimal number of clusters is k = 4, with a Silhouette Score of 0.3444, suggesting a moderate clustering structure. This implies that spatial patterns are present, although cluster separation is not yet well-defined. The Random Forest model achieved an R² of 0.7382 on training data and 0.0975 on testing data, indicating overfitting likely due to the limited dataset size. Feature importance analysis reveals that longitude contributes the most (43.7%), followed by depth (29.6%), latitude (20.6%), and time (6.0%). These findings highlight the dominant role of spatial factors in Indonesia’s seismic activity. However, the limited dataset restricts model generalization; therefore, future studies should use larger datasets and incorporate additional geophysical parameters to improve predictive performance.