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Τίτλος: Αξιολόγηση τηλεπικοινωνιακού συστήματος με συνδυασμό μηχανικής μάθησης και κλασικών τεχνικών επεξεργασίας σήματος
Συγγραφείς: Σιόκουρου, Αιμιλία
Σούντρης Δημήτριος
Λέξεις κλειδιά: FPGA
VHDL
Digital Communication
I-Q Imbalance Correction
QAM Modulation
Machine Learning
Neural-Networks
Modulation Recognition
Accuracy
Performance
Ημερομηνία έκδοσης: 31-Μαρ-2023
Περίληψη: The past couple of years 5G wireless systems have started appearing for commercial purposes. Even thought, fully compatible systems are yet to appear, new features are continuously integrated not only on the telecommunication infrastructure but also to user equipment. As this integration continues and the needs of these systems become even more demanding, it is vital to cater them with stable, reliable and intelligent communication systems. Thus, they require high-speed digital interfaces which are capable to tackle these issues. Field Programmable Gate Arrays (FPGAs) are an excellent choice for this purpose since they provide a great trade-off of price, processing power, efficiency and parallelism. In this diploma thesis, we target the correction of I-Q imbalances in Direct Conversion Receivers with an algorithm implemented in the software suite Xilinx Vivado, using hardware description language (VHDL). The evaluation of the algorithm is performed in MATLAB by comparing the relative error between the original data and the corrected results in both MATLAB and Vivado. Next, we use an RF Dataset which includes 24 digital and analog modulation types at varying signal-to-noise ratios (SNRs) and apply I-Q imbalance to its data. Then utilizing this dataset as a test bench for the correction algorithm in Vivado we restore the imbalanced data to their original state. Finally, with the assistance of the Vitis-AI environment we perform RF-modulation recognition using Deep Neural Networks to classify the different modulations and evaluate the accuracy of the classification from the original, the imbalanced and the corrected data. The performance and accuracy, of the quantized and compiled models, is verified on the Zynq Ultrascale+ RFSoC ZCU111 board.
URI: http://artemis.cslab.ece.ntua.gr:8080/jspui/handle/123456789/18650
Εμφανίζεται στις συλλογές:Διπλωματικές Εργασίες - Theses

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