Next Generation Radio Unit
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Thapar Institute of Engineering and Technology
Abstract
This research introduces an innovative approach to optimize channel filtering and Error Vector
Magnitude (EVM) measurement in modern telecommunications radio units through the
integration of artificial intelligence and machine learning techniques. The proposed framework
addresses the limitations of traditional fixed-coefficient filtering and conventional EVM
measurement methods by implementing an adaptive, real-time system that enhances
performance while maintaining computational efficiency. Our solution combines deep learning
models with traditional digital signal processing techniques, creating a hybrid architecture that
demonstrates significant improvements in filtering efficiency and EVM measurement
accuracy. The system shows robust performance across various channel conditions and
modulation schemes, particularly in high-interference environments. This implementation
successfully addresses the challenges of real-time processing constraints and resource
optimization, providing a scalable solution for next-generation telecommunications systems.
The research contributes to advancing radio unit signal processing technology, offering
practical solutions for improving telecommunications system performance and reliability.
Keywords: Adaptive Filtering, EVM Measurements, Deep learning.
