School of Electrical and Computer Engineering, Purdue University, West Lafayette, IN, 47907, USA.
GLOBALFOUNDRIES Inc., Santa Clara, CA 95054, USA.
Sci Rep. 2017 Mar 15;7:44370. doi: 10.1038/srep44370.
This paper draws attention to a hardware system which can be engineered so that its intrinsic physics is described by the generalized Ising model and can encode the solution to many important NP-hard problems as its ground state. The basic constituents are stochastic nanomagnets which switch randomly between the ±1 Ising states and can be monitored continuously with standard electronics. Their mutual interactions can be short or long range, and their strengths can be reconfigured as needed to solve specific problems and to anneal the system at room temperature. The natural laws of statistical mechanics guide the network of stochastic nanomagnets at GHz speeds through the collective states with an emphasis on the low energy states that represent optimal solutions. As proof-of-concept, we present simulation results for standard NP-complete examples including a 16-city traveling salesman problem using experimentally benchmarked models for spin-transfer torque driven stochastic nanomagnets.
本文介绍了一种硬件系统,该系统可以通过工程设计使其内在物理特性由广义伊辛模型来描述,并且可以将许多重要的 NP 难问题的解决方案编码为其基态。其基本组成部分是随机纳米磁铁,它们在±1 伊辛态之间随机切换,并且可以用标准电子设备进行连续监测。它们的相互作用可以是短程或远程的,并且它们的强度可以根据需要重新配置,以解决特定问题并在室温下对系统进行退火。统计力学的自然法则以 GHz 速度引导随机纳米磁铁网络通过集体状态,重点是代表最佳解决方案的低能状态。作为概念验证,我们提出了使用实验基准的自旋转移力矩驱动随机纳米磁铁模型对标准 NP 完全问题(包括 16 城市旅行商问题)的模拟结果。