Mean-field coherent Ising machines with artificial Zeeman terms

Author:

Mastiyage Don Sudeera Hasaranga Gunathilaka1ORCID,Inui Yoshitaka2ORCID,Kako Satoshi2ORCID,Yamamoto Yoshihisa2ORCID,Aonishi Toru13ORCID

Affiliation:

1. School of Computing, Tokyo Institute of Technology 1 , Tokyo, Japan

2. Physics and Informatics Laboratories, NTT Research Inc. 2 , 940 Stewart Dr., Sunnyvale, California 94085, USA

3. Graduate School of Frontier Sciences, The University of Tokyo 3 , Kashiwa, Chiba, Japan

Abstract

Coherent Ising Machine (CIM) is a network of optical parametric oscillators that solve combinatorial optimization problems by finding the ground state of an Ising Hamiltonian. In CIMs, a problem arises when attempting to realize the Zeeman term because of the mismatch in size between interaction and Zeeman terms due to the variable amplitude of the optical parametric oscillator pulses corresponding to spins. There have been three approaches proposed so far to address this problem for CIM, including the absolute mean amplitude method, the auxiliary spin method, and the chaotic amplitude control (CAC) method. This paper focuses on the efficient implementation of Zeeman terms within the mean-field CIM model, which is a physics-inspired heuristic solver without quantum noise. With the mean-field model, computation is easier than with more physically accurate models, which makes it suitable for implementation in field programmable gate arrays and large-scale simulations. First, we examined the performance of the mean-field CIM model for realizing the Zeeman term with the CAC method, as well as their performance when compared to a more physically accurate model. Next, we compared the CAC method to other Zeeman term realization techniques on the mean-field model and a more physically accurate model. In both models, the CAC method outperformed the other methods while retaining similar performance.

Funder

NTT Research

NSF CIM Expedition award

Publisher

AIP Publishing

Subject

General Physics and Astronomy

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