This electronic version was submitted by the student author. The certified thesis is available in the Institute Archives and Special Collections.Thesis: S.M., Massachusetts Institute of Technology, Department of Electrical Engineering and Computer Science, February, 2020Cataloged from student-submitted PDF version of thesis.Includes bibliographical references (pages 53-55).In this thesis, we present deep learning models for designing distributed circuits. Today, designing distributed circuits is a slow process that can take months from an expert engineer. Our model both automates and speeds up the process. The model learns to simulate the electromagnetic (EM) properties of distributed circuits. Hence, it can be used to replace traditional E...
Recent years have seen an explosion of machine learning applications implemented on Field-Programmab...
The 21st century will be the information age characterized by an ever-increasing need for advanced c...
This paper presents a non-iterative topology optimizer for conductive heat transfer structures with ...
The use of behavioral models based on deep learning (DL) to accelerate electromagnetic field computa...
Many complex engineering systems can be represented in a topological form, such as graphs. This pape...
Deep neural networks significantly power the success of machine learning and artificial intelligence...
Purpose - To present a neural network-based approach to the design of electromagnetic devices. Desig...
© 2020 IEEE. Automatic transistor sizing is a challenging problem in circuit design due to the large...
We are interested in exploring the limit in using deep learning (DL) to study the electromagnetic (E...
International audienceThis work addresses the use of emerging data-driven techniques based on deep l...
In this work a novel approach is presented for topology optimization of low frequency electromagneti...
This Chapter aims at reviewing the relevant work in electromagnetics-based design and optimization o...
Design of microwave structures and tuning parameters have mostly relied on the domain expertise of c...
The latest Deep Learning (DL) methods for designing Deep Neural Networks (DNN) have significantly ex...
AbstractIn the neural network field, many application models have been proposed. Previous analog neu...
Recent years have seen an explosion of machine learning applications implemented on Field-Programmab...
The 21st century will be the information age characterized by an ever-increasing need for advanced c...
This paper presents a non-iterative topology optimizer for conductive heat transfer structures with ...
The use of behavioral models based on deep learning (DL) to accelerate electromagnetic field computa...
Many complex engineering systems can be represented in a topological form, such as graphs. This pape...
Deep neural networks significantly power the success of machine learning and artificial intelligence...
Purpose - To present a neural network-based approach to the design of electromagnetic devices. Desig...
© 2020 IEEE. Automatic transistor sizing is a challenging problem in circuit design due to the large...
We are interested in exploring the limit in using deep learning (DL) to study the electromagnetic (E...
International audienceThis work addresses the use of emerging data-driven techniques based on deep l...
In this work a novel approach is presented for topology optimization of low frequency electromagneti...
This Chapter aims at reviewing the relevant work in electromagnetics-based design and optimization o...
Design of microwave structures and tuning parameters have mostly relied on the domain expertise of c...
The latest Deep Learning (DL) methods for designing Deep Neural Networks (DNN) have significantly ex...
AbstractIn the neural network field, many application models have been proposed. Previous analog neu...
Recent years have seen an explosion of machine learning applications implemented on Field-Programmab...
The 21st century will be the information age characterized by an ever-increasing need for advanced c...
This paper presents a non-iterative topology optimizer for conductive heat transfer structures with ...