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A compact neural network for partial-response maximum-likelihood detectors: algorithmic study

机译:用于部分响应最大似然检测器的紧凑型神经网络:算法研究

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摘要

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.
机译:提出了一种用于部分响应最大似然(PRML)序列检测的紧凑型神经网络算法。紧凑型神经网络是一类适用于超大规模集成(VLSI)实现的局部连接神经网络。拟议算法的VLSI实现的硬件复杂度随着部分响应(PR)信令方案的故意设计的符号干扰效应的水平线性增长。对于所提出的检测器,不需要大型专用存储器来存储基于数字维特比算法的检测器中的似然矩阵。描述了针对网络拓扑的网络稳定性和模拟神经元的时间常数的详细分析。与许多实际应用中在噪声条件下的数字维特比算法相比,该检测器算法具有竞争性的误码率性能。所提出的算法适用于模拟VLSI,因为它的时间复杂度低且线性区域复杂度可用于PRML信令方案的检测。

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