论文标题
混合量子计算 - 用于分区问题的禁忌搜索算法:有关旅行推销员问题的初步研究
Hybrid Quantum Computing -- Tabu Search Algorithm for Partitioning Problems: preliminary study on the Traveling Salesman Problem
论文作者
论文摘要
量子计算被认为是计算中的下一个领域,它引起了当前科学界的广泛关注。这种计算为具有革命性范式的研究人员提供了解决复杂的优化问题,提供了显着的速度优势和有效的搜索能力。无论如何,量子计算仍处于开发的初步阶段。因此,当前的体系结构显示出某些局限性,这激发了本文的进行。在本文中,我们介绍了一种新颖的解决方案,以混合量子计算 - 禁忌搜索算法。该方法的主要操作支柱是对量子资源的访问的更大控制,并大大减少了非营利的访问。为了评估我们方法的质量,我们使用了7种不同的旅行推销员问题实例作为基准测试。所获得的结果支持了初步结论,即我们的算法是一种方法,可在解决分区问题的同时大大降低对量子计算资源的访问,从而提供有希望的结果。我们还通过开发一种进化多形多任务算法作为初始化方法来为转移优化领域做出贡献。
Quantum Computing is considered as the next frontier in computing, and it is attracting a lot of attention from the current scientific community. This kind of computation provides to researchers with a revolutionary paradigm for addressing complex optimization problems, offering a significant speed advantage and an efficient search ability. Anyway, Quantum Computing is still in an incipient stage of development. For this reason, present architectures show certain limitations, which have motivated the carrying out of this paper. In this paper, we introduce a novel solving scheme coined as hybrid Quantum Computing - Tabu Search Algorithm. Main pillars of operation of the proposed method are a greater control over the access to quantum resources, and a considerable reduction of non-profitable accesses. To assess the quality of our method, we have used 7 different Traveling Salesman Problem instances as benchmarking set. The obtained outcomes support the preliminary conclusion that our algorithm is an approach which offers promising results for solving partitioning problems while it drastically reduces the access to quantum computing resources. We also contribute to the field of Transfer Optimization by developing an evolutionary multiform multitasking algorithm as initialization method.