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Reconfigurable architecture for the efficient solution of large-scale non-Hermitian eigenvalue problems

机译:可重新配置的大规模非隐士特征值解决方案的可重构架构

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The solution of large eigensystems has numerous applications in engineering and science, including circuit simulation, mechanical structure stability, and quantum physics. In particular, many optics and photonics applications, such as the design of photonic crystal slab devices, dispersion engineering, and other iterative-based design techniques, require an eigenvalue solver. Unfortunately, brute force solutions exhibit a computational complexity of O(n3), rendering them entirely impractical for medium to large matrices. Although techniques have been developed to reduce this complexity to O(n2), these algorithms are restricted to special cases such as real, symmetric, or sparse matrices, limiting the applicability of these solutions. Thus, there is a clear need for a high-performance eigenvalue solver for large, non-hermitian matrices. To this end, we are developing a novel, hardware-based platform for the analysis of eigenvalue problems. In this paper, we describe this platform and its application to eigenvalue problems, as well as our progress to date.
机译:大型Eigensystems的解决方案在工程和科学中具有许多应用,包括电路模拟,机械结构稳定性和量子物理学。特别地,许多光学和光子学应用,例如光子晶体板装置,分散工程和基于其他基于迭代的设计技术的设计,需要特征值求解器。不幸的是,蛮力解决方案表现出O(N3)的计算复杂性,对中到大矩阵完全是不切实际的。尽管已经开发了技术以将这种复杂性降低到O(N2),但这些算法仅限于特殊情况,例如真实,对称或稀疏矩阵,限制了这些解决方案的适用性。因此,对于大型非密封矩阵的高性能特征值求解器,可以清楚地存在。为此,我们正在开发一种基于硬件的基于硬件的平台,用于分析特征值问题。在本文中,我们描述了这个平台及其在特征值问题的应用,以及我们迄今为止的进展。

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