Title :
A compact neural network for partial-response maximum-likelihood detectors: algorithmic study
Author :
Chou, Eric Y. ; Sheu, Bing J. ; Wang, Michelle Yibing
Author_Institution :
Dept. of Electr. Eng., Univ. of Southern California, Los Angeles, CA, USA
fDate :
7/1/1998 12:00:00 AM
Abstract :
A compact neural network algorithm for partial-response maximum-likelihood (PRML) sequence detection is presented. Compact neural networks are a class of locally connected neural networks suitable for very large scale integration (VLSI) implementation. The hardware complexity for VLSI implementation of the proposed algorithm grows linearly with the level of the deliberately designed symbol interference effects of the partial-response (PR) signalling scheme. Large dedicated memory for storage of likelihood matrices in digital Viterbi-algorithm-based detectors is not needed for the proposed detector. Detailed analysis on network stability for network topology and time constant of an analog neuron is described. This detector algorithm has competitive bit-error rate performance when compared with the digital Viterbi algorithm under the noise condition for many real-world applications. The proposed algorithm is suitable for analog VLSI implementation because of its low time complexity and linear area complexity for the detection of PRML signalling schemes
Keywords :
VLSI; maximum likelihood detection; neural chips; partial response channels; PRML signalling; analog VLSI hardware; area complexity; bit error rate; compact neural network algorithm; network stability; network topology; noise; partial-response maximum-likelihood detector; symbol interference; time complexity; time constant; Algorithm design and analysis; Detectors; Hardware; Interference; Maximum likelihood detection; Network topology; Neural networks; Signal design; Stability analysis; Very large scale integration;
Journal_Title :
Circuits and Systems II: Analog and Digital Signal Processing, IEEE Transactions on