Low-Complexity MIMO Detection
From iis-projects
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Short Description
Iterative detection and decoding (IDD) is a performant, near-capacity achieving, MIMO detection and decoding scheme. However, due to multiple iterations, the complexity of the soft-input soft-output MIMO detector is of high relevance to outperform non-iterative methods. This project addresses the performance/complexity trade-off of state-of-the-art MIMO detection algorithms, with a special focus on GPU-based implementations. The objective of this project is to implement a low complexity MIMO detection algorithm and to optimize its performance with state-of-the-art machine learning methods. Therefore, a novel 5G-compliant link-level simulation and machine learning framework will be applied to implement performant GPU-based simulations.
Status: Available
- Looking for 1-2 Semester/Bachelor/Master students
- Contact: Reinhard Wiesmayr
Prerequisites
- Basic programming skills (e.g. MATLAB, or Python/Numpy/Tensorflow)
- Wireless Communications
Character
- 70% Programming (e.g. with MATLAB, Python, Tensorflow)
- 20% Theory
- 10% Literature research