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Sequential decoding of convolutional codes by a compressed multiple queue algorithm

机译:通过压缩多队列算法对卷积码进行顺序解码

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摘要

The conventional multiple stack algorithm (MSA) is an-efficient approach for solving erasure problems in sequential decoding. However, the requirements of multiple stacks and large memory make its implementation difficult. Furthermore,the MSA allows only one stack to be in use at a time: the ether stacks will stay idle until the process in that stack is terminated. Thus it seems difficult to implement the MSA with parallel processing technology. A two-stack scheme is proposed to achieve similar effects to the MSA. The scheme greatly reduces the loading for data transfer and I/O complexity required in the MSA, and makes parallel processing possible. An erasure-free sequential decoding algorithm for convolutional codes, the compressed multiple-queue algorithm (CMQA), is introduced, based on systolic priority queue technology, which-can reorder the path metrics in a short and constant time. The decoding speed will therefore be much faster than in traditional sequential decoders using sorting methods. In the CMQA, a systolic priority queue is divided into two queues by adding control signals, thereby simplifying implementation. Computer simulations show that the CMQA outperforms the MSA in bit error rate, with about one-third the memory requirement of the MSA.
机译:常规的多堆栈算法(MSA)是解决顺序解码中擦除问题的一种有效方法。但是,多个堆栈和大内存的要求使其难以实现。此外,MSA一次只允许使用一个堆栈:以太堆栈将保持空闲状态,直到该堆栈中的进程终止。因此,用并行处理技术来实现MSA似乎很困难。为了达到与MSA相似的效果,提出了两种方案。该方案大大减少了MSA所需的数据传输负载和I / O复杂性,并使并行处理成为可能。基于收缩优先队列技术,提出了一种用于卷积码的无擦除顺序解码算法,即压缩多队列算法(CMQA),该算法可以在短而恒定的时间内对路径量度进行重新排序。因此,解码速度将比使用排序方法的传统顺序解码器快得多。在CMQA中,通过添加控制信号将收缩期优先级队列分为两个队列,从而简化了实现。计算机仿真表明,CMQA在误码率方面胜过MSA,其内存需求约为MSA的三分之一。

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