Design of microwave structures and tuning parameters have mostly relied on the domain expertise of circuit designers by doing many simulations, which can be prohibitively time consuming. An inverse problem approach suggests going in the opposite direction to determine design parameters from characteristics of the desired output. In this work, we propose a novel machine learning architecture that circumvents usual design method for given quality of eye characteristics by means of a Lifelong Learning Architecture. Our proposed machine learning architecture is a large-scale coupled training system in which multiple predictions and classifications are done jointly for inverse mapping of transmission line geometry from eye characteristics. Our m...
Distributed Bragg Reflectors are optical structures capable of manipulating light behaviour, which a...
We present a new machine learning (ML) deep learning (DL) synthesis algorithm for the design of a mi...
In recent years, hybrid design strategies combining machine learning (ML) with electromagnetic optim...
Modern electronic systems need to be analyzed and designed carefully for their operation at higher f...
In this work, we will give an overview of some of the most recent and successful applications of mac...
Deep learning has become the dominant approach in artificial intelligence to solve complex data-driv...
Microwave structure behavior prediction is an important research topic in radio frequency (RF) desig...
This paper presents an alternative approach for the design of high-speed link based on a preliminary...
Designing photonic structures and obtaining optimal responses is still a difficult task. A large num...
Deep learning is a promising, ultra-fast approach for inverse design in nano-optics, but despite fas...
This paper presents an inverse model for the optimization of the geometrical parameters of a paralle...
Inverse space mapping algorithms for designing with accurate but computationally expensive simulator...
Review article of 17 pages, 7 figures, 4 info-boxesInternational audienceDeep learning in the contex...
In recent years, hybrid design strategies combining machine learning (ML) with electromagnetic optim...
23 pages, 15 figuresNanophotonic devices manipulate light at sub-wavelength scales, enabling tasks s...
Distributed Bragg Reflectors are optical structures capable of manipulating light behaviour, which a...
We present a new machine learning (ML) deep learning (DL) synthesis algorithm for the design of a mi...
In recent years, hybrid design strategies combining machine learning (ML) with electromagnetic optim...
Modern electronic systems need to be analyzed and designed carefully for their operation at higher f...
In this work, we will give an overview of some of the most recent and successful applications of mac...
Deep learning has become the dominant approach in artificial intelligence to solve complex data-driv...
Microwave structure behavior prediction is an important research topic in radio frequency (RF) desig...
This paper presents an alternative approach for the design of high-speed link based on a preliminary...
Designing photonic structures and obtaining optimal responses is still a difficult task. A large num...
Deep learning is a promising, ultra-fast approach for inverse design in nano-optics, but despite fas...
This paper presents an inverse model for the optimization of the geometrical parameters of a paralle...
Inverse space mapping algorithms for designing with accurate but computationally expensive simulator...
Review article of 17 pages, 7 figures, 4 info-boxesInternational audienceDeep learning in the contex...
In recent years, hybrid design strategies combining machine learning (ML) with electromagnetic optim...
23 pages, 15 figuresNanophotonic devices manipulate light at sub-wavelength scales, enabling tasks s...
Distributed Bragg Reflectors are optical structures capable of manipulating light behaviour, which a...
We present a new machine learning (ML) deep learning (DL) synthesis algorithm for the design of a mi...
In recent years, hybrid design strategies combining machine learning (ML) with electromagnetic optim...