Journal Article10.1109/TMTT.2003.809179
Artificial neural networks for RF and microwave design - from theory to practice
TL;DR: Fundamental concepts in this emerging area of neural-network computational modules are described at teaching RF/microwave engineers what neural networks are, why they are useful, when they can be used, and how to use them.
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Abstract: Neural-network computational modules have recently gained recognition as an unconventional and useful tool for RF and microwave modeling and design. Neural networks can be trained to learn the behavior of passive/active components/circuits. A trained neural network can be used for high-level design, providing fast and accurate answers to the task it has learned. Neural networks are attractive alternatives to conventional methods such as numerical modeling methods, which could be computationally expensive, or analytical methods which could be difficult to obtain for new devices, or empirical modeling solutions whose range and accuracy may be limited. This tutorial describes fundamental concepts in this emerging area aimed at teaching RF/microwave engineers what neural networks are, why they are useful, when they can be used, and how to use them. Neural-network structures and their training methods are described from the RF/microwave designer's perspective. Electromagnetics-based training for passive component models and physics-based training for active device models are illustrated. Circuit design and yield optimization using passive/active neural models are also presented. A multimedia slide presentation along with narrative audio clips is included in the electronic version of this paper. A hyperlink to the NeuroModeler demonstration software is provided to allow readers practice neural-network-based design concepts.
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References
Multilayer feedforward networks are universal approximators
TL;DR: It is rigorously established that standard multilayer feedforward networks with as few as one hidden layer using arbitrary squashing functions are capable of approximating any Borel measurable function from one finite dimensional space to another to any desired degree of accuracy, provided sufficiently many hidden units are available.
23.1K
•Dissertation
Constructive algorithms for structure learning in feedforward neural networks
Tin Yau Kwok
- 01 Jan 1996
TL;DR: This survey paper first describes the general issues in constructive algorithms, with special emphasis on the search strategy, then presents a taxonomy, based on the differences in the state transition mapping, the training algorithm, and the network architecture.
495
Constructive algorithms for structure learning in feedforward neural networks for regression problems
Tin-Yau Kwok,Dit-Yan Yeung +1 more
TL;DR: A survey of constructive algorithms for structure learning in feed-forward neural networks for regression problems can be found in this paper, where the authors formulate the whole problem as a state-space search, with special emphasis on the search strategy.
488
Knowledge-based neural models for microwave design
Fang Wang,Qi-Jun Zhang +1 more
TL;DR: A new microwave-oriented knowledge based neural network is proposed, in which microwave knowledge in the form of empirical functions or analytical approximations are incorporated into neural networks that enhances neural model accuracy especially for unseen data and reduces the need of large set of training data.
304
EM-ANN models for microstrip vias and interconnects in dataset circuits
P.M. Watson,K.C. Gupta +1 more
TL;DR: A novel approach for accurate and efficient modeling of monolithic microwave/millimeter wave integrated circuit (MMIC) components by using electromagnetically trained artificial neural network (EM-ANN) software modules is presented.
275