Next-Gen smart homes: AI-enhanced Li-Fi for superior efficiency and protection

Abstract

The system proposed optimizes dynamically the Li-Fi transmission parameters using a Deep Reinforcement Learning (DRL) adaptive modulation algorithm, resulting in a bit error rate of 0.00034 and a throughput of 986.45 Mbps. An intrusion detection system can enhance cybersecurity by utilizing Convolutional Neural Networks, which yield a detection rate of 99.81%. The future paradigm is more secure, reliable, and programmable than conventional Wi-Fi and fixed-modulation Li-Fi systems. The Li-Fi architecture with AI support possesses a unique edge in intelligent home applications because of its scalability and reliability compared to previous, less dependable wireless networks. This work promises a safe and effective form of data transmission by creating a platform for upcoming advancements in optical wireless communication based on AI. The Li-Fi system proposed that is supported by AI works far better on smart home wireless networking problems of low speeds, insufficient customization, and security. The optimized transmission parameters were used in real-time by the system through a DRL adaptive modulation approach, and this resulted in reducing the bit error rate to 0.00034 and boosting the throughput to 986.45 Mbps.

Description

This paper introduces a deep learning-based fault detection system for smart grids, leveraging IoT sensors and advanced neural networks to predict and mitigate failures in real time. The approach enhances energy reliability and efficiency, directly supporting SDG 7 (Affordable and Clean Energy) and SDG 9 (Industry, Innovation, and Infrastructure) by promoting resilient, sustainable power systems. While not focused on health or agriculture, the research aligns with Uganda’s National Development Plan IV aspirations for energy sector modernization, infrastructure development, and digital transformation. By integrating predictive analytics and smart technologies, the study fosters economic growth and sustainable industrialization.

Keywords

Adaptive systems, Bit error rate, Smart homes, Light fidelity, Throughput, Deep reinforcement learning, Security, Reliability, Artificial intelligence, Wireless fidelity

Citation

Rajasubha, J., Sathish, A., Jackson, B., Hemavathi, U., Ajay, A. P., & Ali, G. (2025, May). Next-Gen smart homes: AI-enhanced Li-Fi for superior efficiency and protection. In 2025 6th International Conference for Emerging Technology (INCET): 1-6.