Shortest Path Computing in Directed Graphs with Weighted Edges Mapped on Random Networks of Memristors

C. Fernandez, I. Vourkas, A. Rubio
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引用次数: 1

Abstract

To accelerate the execution of advanced computing tasks, in-memory computing with resistive memory provides a promising solution. In this context, networks of memristors could be used as parallel computing medium for the solution of complex optimization problems. Lately, the solution of the shortest-path problem (SPP) in a two-dimensional memristive grid has been given wide consideration. Some still open problems in such computing approach concern the time required for the grid to reach to a steady state, and the time required to read the result, stored in the state of a subset of memristors that represent the solution. This paper presents a circuit simulation-based performance assessment of memristor networks as SPP solvers. A previous methodology was extended to support weighted directed graphs. We tried memristor device models with fundamentally different switching behavior to check their suitability for such applications and the impact on the timely detection of the solution. Furthermore, the requirement of binary vs. analog operation of memristors was evaluated. Finally, the memristor network-based computing approach was compared to known algorithmic solutions to the SPP over a large set of random graphs of different sizes and topologies. Our results contribute to the proper development of bio-inspired memristor network-based SPP solvers.
随机忆阻器网络上加权边有向图的最短路径计算
为了加速高级计算任务的执行,使用电阻存储器的内存计算提供了一个很有前途的解决方案。在这种情况下,忆阻器网络可以作为求解复杂优化问题的并行计算媒介。近年来,二维记忆网格中最短路径问题的求解得到了广泛的研究。在这种计算方法中,一些仍然存在的问题涉及到电网达到稳定状态所需的时间,以及读取结果所需的时间,这些结果存储在代表解决方案的忆阻器子集的状态中。本文提出了基于电路仿真的记忆电阻网络作为SPP求解器的性能评估方法。以前的方法被扩展到支持加权有向图。我们尝试了具有完全不同开关行为的忆阻器器件模型,以检查它们对此类应用的适用性以及对及时检测解决方案的影响。此外,还评估了忆阻器对二进制和模拟操作的要求。最后,将基于忆阻网络的计算方法与已知的基于不同大小和拓扑的随机图的SPP算法解决方案进行了比较。我们的研究结果有助于基于生物记忆电阻网络的SPP求解器的适当发展。
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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