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首页> 外文期刊>SIAM Journal on Scientific Computing >DATA-DRIVEN REDUCED MODEL CONSTRUCTION WITH TIME-DOMAIN LOEWNER MODELS
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DATA-DRIVEN REDUCED MODEL CONSTRUCTION WITH TIME-DOMAIN LOEWNER MODELS

机译:具有时域Loewner模型的数据驱动的降低模型结构

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摘要

This work presents a data-driven nonintrusive model reduction approach for large-scale time-dependent systems with linear state dependence. Traditionally, model reduction is performed in an intrusive projection-based framework, where the operators of the full model are required either explicitly in an assembled form or implicitly through a routine that returns the action of the operators on a vector. Our nonintrusive approach constructs reduced models directly from trajectories of the inputs and outputs of the full model, without requiring the full-model operators. These trajectories are generated by running a simulation of the full model; our method then infers frequency-response data from these simulated time-domain trajectories and uses the data-driven Loewner framework to derive a reduced model. Only a single time-domain simulation is required to derive a reduced model with the new data-driven nonintrusive approach. We demonstrate our model reduction method on several benchmark examples and a finite element model of a cantilever beam; our approach recovers the classical Loewner reduced models and, for these problems, yields high-quality reduced models despite treating the full model as a black box.
机译:这项工作提出了一种具有线性状态依赖性的大规模时间依赖系统的数据驱动的非典型模型减少方法。传统上,在基于侵入式投影的框架中执行模型减少,其中完整模型的运营商是必需的,或者通过返回载体上运算符的动作的例程来明确地。我们的非功能性方法直接从完整模型的输入和输出的轨迹直接从整个模型的轨迹构建,而无需要求全型号运营商。通过运行完整模型的模拟来生成这些轨迹;然后,我们的方法从这些模拟的时间域轨迹中infers频率响应数据,并使用数据驱动的Loewner框架来导出缩小模型。只需要单个时域模拟来使用新的数据驱动的非功能性方法导出缩小模型。我们展示了在若干基准示例和悬臂梁的有限元模型上的模型还原方法;我们的方法恢复了古典Loewner减少模型,并且对于这些问题,尽管将完整的模型作为黑匣子处理完整的模型,但仍产生高质量的减少模型。

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