Computational and computer complexity of analogic cellular wave computers

T. Roska
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引用次数: 81

Abstract

Computational complexity and computer complexity issues are studied in different architectural settings. Three mathematical machines are considered: the universal machine on integers (UMZ), the universal machine on reals (UMR) and the universal machine on flows (UMF). The three machines induce different kinds of computational difficulties: combinatorial, algebraic, and dynamic, respectively. After a broader overview of computational complexity issues, it is shown, following the reasoning related the UMR, that in many cases the size is not the most important parameter related to computational complexity. Emerging new computing and computer architectures as well as their physical implementation suggest a new look at computational and computer complexities. The new analogic cellular array computer paradigm based on the CNN Universal Machine (generalized to UMF), and its physical implementation in CMOS and optical technologies, proves experimentally the relevance of the role of accuracy and problem parameter role in computational complexity, as well as the need of rigorous definition of computational complexity for UMF. It is also shown that choosing the spatial temporal elementary instructions, as well as taking into account the area and power dissipation, these choices inherently influence computational complexity and computer complexity, respectively. Comments related to biology relevance of the UMF are presented in relation to complexity theory. It is shown that algorithms using spatial-temporal continuous elementary instructions (a-recursive functions) represent not only a new world in computing, but also a more general type of logic inferencing.
模拟蜂窝波计算机的计算和计算机复杂性
计算复杂性和计算机复杂性问题研究在不同的架构设置。本文考虑了三种数学机器:整数上的通用机器(UMZ)、实数上的通用机器(UMR)和流上的通用机器(UMF)。这三种机器分别引发了不同类型的计算困难:组合、代数和动态。在对计算复杂性问题进行更广泛的概述之后,根据与UMR相关的推理,可以看到,在许多情况下,大小并不是与计算复杂性相关的最重要参数。新兴的计算和计算机体系结构及其物理实现提出了对计算和计算机复杂性的新看法。基于CNN通用机(推广到UMF)的新型模拟元胞阵列计算机范式及其在CMOS和光学技术中的物理实现,实验证明了精度和问题参数作用与计算复杂度的相关性,以及对UMF计算复杂度进行严格定义的必要性。研究还表明,时空基本指令的选择,以及考虑面积和功耗的选择,分别对计算复杂度和计算机复杂度产生内在影响。与UMF的生物学相关性相关的评论与复杂性理论有关。研究表明,使用时空连续初等指令(递归函数)的算法不仅代表了一个新的计算世界,而且是一种更一般的逻辑推理类型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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