Spatially coupled, parallel concatenated codes (SC-PCCs) have been shown to approach channel capacity when decoded using optimal iterative methods. However, under complexity constraints such decoding strategies can result in unacceptable power and latency costs. In this work, we employ convolutional self-orthogonal component codes along with low-complexity, suboptimal a posteriori probability (APP) threshold decoders with SC-PCCs to reduce decoding complexity. The proposed code design is faster, more energy efficient, and easier to implement than optimal methods, while offering significant coding gain over existing threshold decodable, turbo-like constructions of similar latency and complexity. The design also serves to further illustrate the advantages spatial coupling can provide to existing code constructions and decoder implementations.
翻译:在使用最佳迭代方法进行解码时,在使用空间结合的同时,平行连锁代码(SC-PCCs)被证明在使用最佳迭代方法解码时能够接近通道能力,但是,在复杂的限制下,这种解码战略可能导致无法接受的电力和潜伏成本;在这项工作中,我们采用集成的自旋元件代码,以及低复合性、亚光度和后生概率(APP)阈值解码器,以减少解码复杂性;拟议的代码设计比最佳方法更快、更节能、更容易实施,同时在现有的可解码阈值、类似涡轮式的类似衬隙和复杂度的构造上,提供显著的编码收益;设计还有助于进一步说明空间连接对现有代码构建和解码实施的好处。