Advanced Space Mapping Technique Integrating a Shared Coarse Model for Multistate Tuning-Driven Multiphysics Optimization of Tunable Filters
Haitian Hu, Wei Zhang, Feng Feng, Zhiguo Zhang, Qi-Jun Zhang

TL;DR
This paper presents a novel space mapping method that uses a shared coarse electromagnetic model combined with neural networks to efficiently optimize tunable filters across multiple states, improving accuracy and reducing computational costs.
Contribution
The proposed technique integrates a shared EM-based coarse model with neural network mappings to enhance multiphysics optimization of tunable filters, requiring fewer samples and less computation.
Findings
Achieves higher multiphysics modeling accuracy
Reduces training sample requirements
Lowers computational costs
Abstract
This article introduces an advanced space mapping (SM) technique that applies a shared electromagnetic (EM)-based coarse model for multistate tuning-driven multiphysics optimization of tunable filters. The SM method combines the computational efficiency of EM single-physics simulations with the precision of multiphysics simulations. The shared coarse model is based on EM single-physics responses corresponding to various nontunable design parameters values. Conversely, the fine model is implemented to delineate the behavior of multiphysics responses concerning both nontunable and tunable design parameter values. The proposed overall surrogate model comprises multiple subsurrogate models, each consisting of one shared coarse model and two distinct mapping neural networks. The responses from the shared coarse model in the EM single-physics filed offer a suitable approximation for the fine…
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