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首页> 外文期刊>Applied Computational Electromagnetics Society journal >Parallel Model Order Reduction for Sparse Electromagnetic/Circuit Models
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Parallel Model Order Reduction for Sparse Electromagnetic/Circuit Models

机译:稀疏电磁/电路模型的并行模型降阶

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This paper describes a parallel Model Order Reduction (MOR) technique for Linear Time Invariant (LTI) electromagnetic/circuit systems with sparse structure. The multi-point Krylov-subspace projection method is adopted as framework for the model order reduction and a parallelization strategy is proposed. More specifically, a multi-point version of the well-known PRIMA algorithm is proposed, which is parallelized with respect to the computation of the error between the original model and the reduced one. The number of moments to be matched for any expansion point is chosen adaptively as well. The numerical results show that the proposed parallelized MOR algorithm is able to preserve the accuracy of the reduced models while providing a significant compression and a satisfactory speedup with respect to the sequential one.
机译:本文介绍了一种具有稀疏结构的线性时不变(LTI)电磁/电路系统的并行模型降阶(MOR)技术。采用多点Krylov子空间投影方法作为模型降阶的框架,提出了并行化策略。更具体地,提出了众所周知的PRIMA算法的多点版本,其相对于原始模型和简化模型之间的误差的计算是并行的。还可以自适应地选择要针对任何扩展点进行匹配的矩数。数值结果表明,所提出的并行MOR算法能够保持简化模型的精度,同时相对于顺序模型可提供显着的压缩效果和令人满意的加速效果。

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