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首页> 外文期刊>IEEE Transactions on Signal Processing >An Approach for Adaptively Approximating the Viterbi Algorithm to Reduce Power Consumption While Decoding Convolutional Codes
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An Approach for Adaptively Approximating the Viterbi Algorithm to Reduce Power Consumption While Decoding Convolutional Codes

机译:卷积码解码时自适应近似维特比算法以降低功耗的方法

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摘要

Significant power reduction can be achieved by exploiting real-time variation in system characteristics. An approach is proposed and studied herein that exploits variation in signal transmission system characteristics to reduce power consumption while decoding convolutional codes. With this approach, Viterbi decoding is adaptively approximated by varying the pruning threshold of the T-algorithm and truncation length while employing trace-back memory management. A heuristic is given for finding and adaptively applying pairs of pruning threshold and truncation length values that significantly reduce power to variations in signal-to-noise ratio (SNR), code rate, and maximum acceptable bit-error rate (BER). The power reduction potential of different levels of adaptation is studied. High-level energy reduction estimates of 80% to 97% compared with Viterbi decoding are shown. Implementation insight and general conclusions about when applications can particularly benefit from this approach are given.
机译:通过利用系统特性的实时变化,可以显着降低功耗。本文提出并研究了一种方法,该方法利用信号传输系统特性的变化来减少功耗,同时解码卷积码。通过这种方法,在采用追溯存储器管理的同时,通过改变T算法的删减阈值和截断长度,可以自适应地近似维特比解码。给出了一种启发式方法,用于查找和自适应应用成对的修剪阈值和截短长度值,这些值会显着降低功率,以降低信噪比(SNR),编码率和最大可接受误码率(BER)的变化。研究了不同适应水平的功率降低潜力。与维特比解码相比,显示了80%至97%的高级节能估算。给出了有关应用程序何时可以从此方法中特别受益的实现见解和一般结论。

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