Mathematical Foundations for Signal Processing, Communications, and Networking Mathematical Foundations for Signal Processing, Communications, and Networking

Mathematical Foundations for Signal Processing, Communications, and Networking

Erchin Serpedin and Others
    • $164.99
    • $164.99

Publisher Description

Mathematical Foundations for Signal Processing, Communications, and Networking describes mathematical concepts and results important in the design, analysis, and optimization of signal processing algorithms, modern communication systems, and networks. Helping readers master key techniques and comprehend the current research literature, the book offers a comprehensive overview of methods and applications from linear algebra, numerical analysis, statistics, probability, stochastic processes, and optimization.

From basic transforms to Monte Carlo simulation to linear programming, the text covers a broad range of mathematical techniques essential to understanding the concepts and results in signal processing, telecommunications, and networking. Along with discussing mathematical theory, each self-contained chapter presents examples that illustrate the use of various mathematical concepts to solve different applications. Each chapter also includes a set of homework exercises and readings for additional study.

This text helps readers understand fundamental and advanced results as well as recent research trends in the interrelated fields of signal processing, telecommunications, and networking. It provides all the necessary mathematical background to prepare students for more advanced courses and train specialists working in these areas.

GENRE
Computers & Internet
RELEASED
2017
December 4
LANGUAGE
EN
English
LENGTH
858
Pages
PUBLISHER
CRC Press
SELLER
Taylor & Francis Group
SIZE
26.7
MB
Approximation, Randomization and Combinatorial Optimization. Algorithms and Techniques Approximation, Randomization and Combinatorial Optimization. Algorithms and Techniques
2008
Mathematical Foundations of Big Data Analytics Mathematical Foundations of Big Data Analytics
2021
Integer Programming and Combinatorial Optimization Integer Programming and Combinatorial Optimization
2022
Large Deviations For Performance Analysis Large Deviations For Performance Analysis
2019
Numerical Methods Using Kotlin Numerical Methods Using Kotlin
2022
Statistical Learning with Math and R Statistical Learning with Math and R
2020
Efficient Integration of 5G and Beyond Heterogeneous Networks Efficient Integration of 5G and Beyond Heterogeneous Networks
2020
Green Heterogeneous Wireless Networks Green Heterogeneous Wireless Networks
2016