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Journal : International Journal of Applied Science and Technology Application

Integrated Multi-Domain Modeling Framework for Energy Efficiency and Range Prediction in Modern Electric Vehicle Systems Khodijah, Siti; Rizki, Cindy Atika; Hasanuddin, Muhammad
International Journal of Applied Science and Technology Application Vol. 1 No. 1 (2026): March 2026
Publisher : Raskha Media Group

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.62712/ijapset.v1i1.1

Abstract

The rapid advancement of electric vehicle (EV) technology has intensified the need for comprehensive theoretical frameworks capable of accurately evaluating energy efficiency and driving range under realistic operating conditions. This study presents an integrated multi-domain modelling approach that combines drivetrain physics, battery dynamics, drive-cycle analysis, control strategy optimization, and data-driven prediction to assess energy consumption in modern EV systems. A mechanistic model was developed to capture longitudinal vehicle dynamics, resistive forces, motor–inverter efficiency, battery behavior, and regenerative braking processes. The model was evaluated under standardized driving cycles, including the New European Driving Cycle (NEDC), Worldwide Harmonized Light Vehicles Test Procedure (WLTP), and Indian Driving Cycle (IDC), to investigate the impact of speed profiles and acceleration patterns on energy performance. The results demonstrate that energy consumption varies significantly across drive cycles, with aerodynamic drag and vehicle mass emerging as dominant influencing factors. Regenerative braking contributes meaningful energy recovery in urban conditions, though its effectiveness depends on control strategy and battery constraints. Comparative analysis between mechanistic modelling and machine learning approaches reveals that data-driven models improve predictive accuracy, while physics-based models provide interpretability and theoretical robustness. Furthermore, advanced control strategies such as Model Predictive Control (MPC) show superior performance in reducing energy consumption and range uncertainty compared to conventional PI-based controllers. Overall, the findings confirm that EV energy efficiency is an emergent property shaped by the interaction of design parameters, operational conditions, and intelligent control. The proposed integrated modelling framework provides a reliable foundation for next-generation EV design optimization, accurate range estimation, and sustainable mobility planning.
Smart Home Automation Using IoT Sensors and Microcontrollers Rizki, Cindy Atika; Khairuniza, Nabila; Habibah, Muthiah
International Journal of Applied Science and Technology Application Vol. 1 No. 1 (2026): March 2026
Publisher : Raskha Media Group

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.62712/ijapset.v1i1.2

Abstract

The rapid development of Internet of Things (IoT) technology has significantly influenced the way residential environments are managed and controlled. Smart home automation has emerged as an effective solution for improving comfort, security, and energy efficiency through the integration of sensors, microcontrollers, and network communication systems. This study presents the design and implementation of a smart home automation system using IoT sensors and microcontrollers to monitor environmental conditions and automatically control household devices. The proposed system utilizes several sensors to detect parameters such as temperature, humidity, light intensity, and motion, which are processed by a microcontroller to determine appropriate system responses. Based on predefined conditions, the system can automatically activate or deactivate devices including lighting systems, ventilation fans, and security alerts. Wireless communication enables remote monitoring and control through internet-connected devices, allowing users to manage their home environment from different locations. The results show that the system operates reliably and responds quickly to environmental changes, demonstrating effective automation performance. In addition, the implementation of sensor-based control contributes to improved energy efficiency by ensuring that electrical devices operate only when necessary. Overall, the proposed IoT-based smart home automation system provides a practical and scalable approach for developing intelligent residential environments supported by modern digital technologies.