Adaptive Encoding Strategy for Quantum Annealing in Mixed-Variable Engineering Optimization
Fabian Key, Lukas Freinberger, Mayu Muramatsu, Norbert Hosters

TL;DR
This paper introduces an adaptive encoding strategy for quantum annealing that efficiently handles mixed discrete-continuous optimization problems, improving solution quality and resource trade-offs on current hardware.
Contribution
It proposes a novel adaptive encoding method for continuous variables in quantum annealing, enabling better performance in mixed-variable optimization problems.
Findings
Improved solution quality on benchmark problems.
Enhanced precision-resource trade-off with adaptive encoding.
Generalizable framework for encoding continuous variables in QA.
Abstract
Mixed discrete-continuous optimization is central to engineering design, where discrete choices interact with continuous fields. These problems are difficult due to high-dimensional, complex search spaces. To tackle them, Quantum Annealing (QA) is promising, yet its native binary nature supports only discrete variables, making accurate and efficient encodings of continuous quantities a central challenge. Existing approaches either split the coupled problem, mapping discrete decisions to QA while solving continuous fields classically, or use fixed-bit-depth encodings. The former compromises QA's global search advantages; the latter can underrepresent dynamic range or inflate the number of binary variables. We show that simply increasing bit depth can even degrade performance on current QA hardware, underscoring the need for alternative encodings. In response, we introduce an adaptive…
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Taxonomy
TopicsQuantum Computing Algorithms and Architecture · Low-power high-performance VLSI design · Parallel Computing and Optimization Techniques
