๐”– Bobbio Scriptorium
โœฆ   LIBER   โœฆ

Robust training of microwave neural models

โœ Scribed by Vijay Kumar Devabhaktuni; Changgeng Xi; Fang Wang; Qi-Jun Zhang


Book ID
102516970
Publisher
John Wiley and Sons
Year
2001
Tongue
English
Weight
252 KB
Volume
12
Category
Article
ISSN
1096-4290

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โœฆ Synopsis


Neural networks recently gained attention as a fast and flexible vehicle to microwave modeling and design. Neural network models can be developed by learning from microwave data, through a process called training. The trained models can be used during microwave design to provide instant answers to the task they learnt. This article addresses certain key challenges in developing RF/microwave neural models. An iterative multistage (IMS) approach including a macro-level process and a stage-level process is proposed. At the macro-level, the IMS decomposes the complicated original task into several simpler subtasks or stages and at the stage-level, the IMS utilizes a variety of neural network structures and effective training techniques, including several existing techniques and a new Huber quasi-Newton (HQN) technique. The proposed HQN allows for the IMS approach to model only smooth portion of the problem behavior in one of the training stages, ignoring sharp/sudden variations. The advantages of the proposed microwave-oriented modeling techniques are demonstrated through examples.


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