Litcius/Paper detail

State-of-the-Art: AI-Assisted Surrogate Modeling and Optimization for Microwave Filters

Yang Yu, Zhen Zhang, Qingsha S. Cheng, Bo Liu, Yi Wang, Cheng Guo, Terry Tao Ye

2022IEEE Transactions on Microwave Theory and Techniques57 citationsDOI

Abstract

Microwave filters are indispensable passive devices for modern wireless communication systems. Nowadays, electromagnetic (EM) simulation-based design process is a norm for filter designs. Many EM-based design methodologies for microwave filter design have emerged in recent years to achieve efficiency, automation, and customizability. The majority of EM-based design methods exploit low-cost models (i.e., surrogates) in various forms, and artificial intelligence techniques assist the surrogate modeling and optimization processes. Focusing on surrogate-assisted microwave filter designs, this article first analyzes the characteristic of filter design based on different design objective functions. Then, the state-of-the-art filter design methodologies are reviewed, including surrogate modeling (machine learning) methods and advanced optimization algorithms. Three essential techniques in filter designs are included: 1) smart data sampling techniques; 2) advanced surrogate modeling techniques; and 3) advanced optimization methods and frameworks. To achieve success and stability, they have to be tailored or combined together to achieve the specific characteristics of the microwave filters. Finally, new emerging design applications and future trends in the filter design are discussed.

Topics & Concepts

Surrogate modelComputer scienceFilter designElectronic engineeringFilter (signal processing)Electronic design automationDesign processComputer engineeringSystems engineeringEngineeringMachine learningEmbedded systemWork in processComputer visionOperations managementMicrowave Engineering and WaveguidesMillimeter-Wave Propagation and ModelingElectromagnetic Compatibility and Noise Suppression