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Peran Motivasi, Budaya dan Lingkungan Terhadap Kinerja: Pada Unit Kerja Sekda Kab. Serang Fava Fauziah; Septian Hernawan; Endiana Rahman; John Chaidir; Dian Wirtadipura
Jurnal Ilmiah Manajemen dan Kewirausahaan Vol. 5 No. 2 (2026): Mei: Jurnal Ilmiah Manajemen dan Kewirausahaan
Publisher : Lembaga Pengembangan Kinerja Dosen

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.55606/jimak.v5i2.6826

Abstract

The background of this study is the importance of performance improvement efforts in supporting the effectiveness of regional government administration, where performance is not only influenced by individuals but also by organizational factors. The purpose of this study is to discuss the analysis of the role of motivation, work culture, and work environment variables for improving the performance of civil servants at the Serang Regency Secretariat. The study is based on a quantitative approach through an explanatory survey. A total of 140 employees were surveyed using the Slovin 5% method, resulting in 104 samples. Data collection was carried out using a Likert scale questionnaire and analyzed using linear regression. This study shows that motivation, culture, and work environment, through partial and simultaneous effects, have a positive and significant impact on performance. The KD output was 0.474, meaning that 47.4% of the performance variables were influenced by the three variables. These findings indicate that performance can be improved through motivation, internalization of a positive work culture, and the creation of a conducive work environment. This study has theoretical implications for developing human resources in the public sector and practical implications for policymakers in improving the performance of government officials.
Development of a Digital Twin Based Smart Green Building Energy Management Model Integrating IoT Sensors and Predictive Sustainability Analytics Asro Asro; Solihin Solihin; John Chaidir; Febri Adi Prasetya; Tuti Susilawati; Muhamad Furqon; Bentar Priyopradono
Green Engineering: International Journal of Engineering and Applied Science Vol. 2 No. 2 (2025): April : Green Engineering: International Journal of Engineering and Applied Sci
Publisher : International Forum of Researchers and Lecturers

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.70062/greenengineering.v2i2.287

Abstract

Introduction: The integration of Digital Twin (DT) technology and the Internet of Things (IoT) into Building Energy Management Systems (BEMS) offers a transformative approach to optimizing energy consumption in buildings. This study explores the development of a Digital Twin based BEMS prototype, which leverages real time data collection, predictive analytics, and machine learning to enhance energy efficiency, reduce costs, and support sustainability goals in modern buildings. The research also addresses key gaps in current energy management systems, including real time adaptive control and integration with smart grid platforms. Literature Review: Previous research highlights the limitations of traditional BEMS, which often rely on static control strategies and lack real time adaptability. Recent advancements, including predictive maintenance and machine learning integration, have improved energy optimization. However, challenges such as data interoperability, scalability, and cybersecurity remain. This review consolidates current approaches and identifies opportunities for enhancing BEMS through the integration of DT technology, IoT, and machine learning. Materials and Method: The methodology employed involves the design of a Digital Twin based BEMS prototype, incorporating IoT sensors for real time data collection on variables such as HVAC load, occupancy, and environmental factors. The system uses time series forecasting and adaptive control strategies to optimize energy consumption. A case study building is used for validation, with performance metrics such as energy savings, CO₂ footprint reduction, and peak load reduction assessed to evaluate the system's effectiveness. Results and Discussion: The results demonstrate a significant reduction in energy consumption (up to 50%) compared to traditional BEMS, along with improved forecasting accuracy and sustainability performance. The prototype achieved a high R² score in predicting energy usage, validated through real world application in the case study building. The economic feasibility analysis showed substantial cost savings and a strong return on investment, making the system a financially viable solution for energy efficient building management.