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arXiv 提交日期: 2026-05-20
📄 Abstract - Enhanced Reinforcement Learning-based Process Synthesis via Quantum Computing

In this work, we present quantum reinforcement learning (RL) as a solution strategy for process synthesis problems. Building on our prior work, we develop a generalized framework that formally poses process synthesis as a Markov decision process and introduces quantum-enhanced RL algorithms to solve it with improved scalability. Earlier implementations of quantum-based RL for process synthesis were limited by qubit requirements, which scaled poorly with problem complexity. This work overcomes this challenge by introducing state encoding algorithms to decouple qubit requirements from problem size. A classical RL-based solution strategy is used as a baseline to benchmark the quantum algorithms under identical training conditions. All algorithms are evaluated across a flowsheet synthesis problem of increasing unit counts to analyze their performance and scalability. Results show that all approaches are capable of identifying the optimal flowsheet designs in small design spaces. For moderate-scale unit counts, quantum approaches demonstrate competitive performance on a per-episode basis and improved efficiency on a per-parameter basis versus the classical RL benchmark. This work provides a foundation for future quantum computing applications within process systems engineering, establishes a controlled benchmark for comparing classical and quantum algorithms, and shows that the proposed quantum variants remain competitive for the process synthesis problem examined in this work.

顶级标签: reinforcement learning machine learning systems
详细标签: quantum reinforcement learning process synthesis scalability state encoding benchmark 或 搜索:

基于量子计算的增强型强化学习过程合成方法 / Enhanced Reinforcement Learning-based Process Synthesis via Quantum Computing


1️⃣ 一句话总结

本文提出一种利用量子强化学习来优化化工流程设计的新方法,通过创新的状态编码技术大幅降低所需的量子比特数量,使量子算法在中小规模流程合成问题中能高效找到最优方案,并首次建立了与传统强化学习的公平对比基准。

源自 arXiv: 2605.21213