Machine Learning for Future Fiber-Optic Communication Systems

Machine Learning for Future Fiber-Optic Communication Systems by Alan Pak Tao Lau, published by Elsevier Science on February 15, 2022, spans 402 pages and is presented in English. This book offers a comprehensive examination of machine learning concepts and techniques as they apply to optical communications and networking, reflecting current research and industrial practices. It aims to provide insights into how machine learning mechanisms will contribute to the development of intelligent optical network infrastructures capable of self-management, problem diagnosis, and efficient service delivery.
Readers will find an extensive treatment of various important topics related to machine learning in fiber-optic communication systems. The book discusses the growing significance of machine learning in modern optical communication networks and explores fundamental techniques such as artificial neural networks and support vector machines. Additionally, it covers advanced deep learning methods and individual chapters focus on specific applications of machine learning within the field. This edition serves as a valuable reference for photonics researchers and engineers, as well as a suitable text for graduate students interested in machine learning-based signal processing and networking.
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Machine Learning for Future Fiber-Optic Communication Systems provides a comprehensive and in-depth treatment of machine learning concepts and techniques applied to key areas within optical communications and networking, reflecting the state-of-the-art research and industrial practices. The book gives knowledge and insights into the role machine learning-based mechanisms will soon play in the future realization of intelligent optical network infrastructures that can manage and monitor themselves, diagnose and resolve problems, and provide intelligent and efficient services to the end users.
With up-to-date coverage and extensive treatment of various important topics related to machine learning for fiber-optic communication systems, this book is an invaluable reference for photonics researchers and engineers. It is also a very suitable text for graduate students interested in ML-based signal processing and networking.
- Discusses the reasons behind the recent popularity of machine learning (ML) concepts in modern optical communication networks and the why/where/how ML can play a unique role
- Presents fundamental ML techniques like artificial neural networks (ANNs), support vector machines (SVMs), K-means clustering, expectation-maximization (EM) algorithm, principal component analysis (PCA), independent component analysis (ICA), reinforcement learning, and more
- Covers advanced deep learning (DL) methods such as deep neural networks (DNNs), convolutional neural networks (CNNs), recurrent neural networks (RNNs), and generative adversarial networks (GANs)
- Individual chapters focus on ML applications in key areas of optical communications and networking
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