학술논문

Spin-Variable Reduction Method for Handling Linear Equality Constraints in Ising Machines
Document Type
Periodical
Source
IEEE Transactions on Computers IEEE Trans. Comput. Computers, IEEE Transactions on. 72(8):2151-2164 Aug, 2023
Subject
Computing and Processing
Optimization
Linear programming
Stationary state
Simulated annealing
Quantum annealing
Symbols
Search problems
Combinatorial optimization problem
Ising machine
Ising model
metaheuristics
quantum annealing
simulated annealing
variable reduction
Language
ISSN
0018-9340
1557-9956
2326-3814
Abstract
We propose a spin-variable reduction method for Ising machines to handle linear equality constraints in a combinatorial optimization problem. Ising machines including quantum-annealing machines can effectively solve combinatorial optimization problems. They are designed to find the lowest-energy solution of a quadratic unconstrained binary optimization (QUBO), which is mapped from the combinatorial optimization problem. The proposed method reduces the number of binary variables to formulate the QUBO compared to the conventional penalty method. We demonstrate a sufficient condition to obtain the optimum of the combinatorial optimization problem in the spin-variable reduction method and its general applicability. We apply it to typical combinatorial optimization problems, such as the graph $k$k-partitioning problem and the quadratic assignment problem. Experiments using simulated-annealing and quantum-annealing based Ising machines demonstrate that the spin-variable reduction method outperforms the penalty method. The proposed method extends the application of Ising machines to larger-size combinatorial optimization problems with linear equality constraints.