Guessing Random Additive Noise Decoding (GRAND) is a family of universal decoding algorithms suitable for decoding any moderate redundancy code of any length. We establish that, through the use of list decoding, soft-input variants of GRAND can replace the Chase algorithm as the component decoder in the turbo decoding of product codes. In addition to being able to decode arbitrary product codes, rather than just those with dedicated hard-input component code decoders, results show that ORBGRAND achieves a coding gain of up to 0.2dB over the Chase algorithm as a turbo component decoder, for a selection of product codes.
翻译:猜测随机添加噪声解码(GRAND)是一个通用解码算法体系,适合解码任何长度的中度冗余代码。 我们确定,通过使用列表解码,GRAND的软输入变量可以取代大通算法,作为涡轮解码产品代码的构件解码器。 除了能够解码任意产品代码,而不仅仅是那些专门使用硬输入元代码解码的代码解码器外,结果显示ORBGRAND在大通算法上取得了最多为0.2dB的编码收益,作为涡轮元解码,用于选择产品代码。