This paper presents prototyping of a recurrent type neural network (RNN) convolutional decoder using system-level design specification and design flow that enables easy mapping to the target FPGA architecture. Implementation and the performance measurement results have shown that an RNN decoder for hard-decision decoding coupled with a simple hard-limiting neuron activation function results in a very low complexity, which easily fits into standard Altera FPGA, Moreover, the design methodology allowed modeling of'complete testbed for prototyping RNN decoders in simulation and real-time environment (same FPGA), thus enabling evaluation of BER performance characteristics of the decoder for various conditions of communication channel in real time. Copyright © 2006 Hindawi Publishing corporation. All rights reserved.
CITATION STYLE
Salcic, Z., Berber, S., & Secker, P. (2006). FPGA prototyping of RNN decoder for convolutional codes. Eurasip Journal on Applied Signal Processing, 2006. https://doi.org/10.1155/ASP/2006/15640
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