Book contents
- Frontmatter
- Miscellaneous Frontmatter
- Dedication
- Contents
- Preface
- Notation
- 1 Introduction
- 2 Signals
- 3 Functional Approximation
- 4 Electromagnetic Propagation
- 5 Deterministic Representations
- 6 Stochastic Representations
- 7 Communication Technologies
- 8 The Space–Wavenumber Domain
- 9 The Time–Frequency Domain
- 10 Multiple Scattering Theory
- 11 Noise Processes
- 12 Information-Theoretic Quantities
- 13 Universal Entropy Bounds
- Appendix A Elements of Functional Analysis
- Appendix B Vector Calculus
- Appendix C Methods for Asymptotic Evaluation of Integrals
- Appendix D Stochastic Integration
- Appendix E Special Functions
- Appendix F Electromagnetic Spectrum
- Bibliography
- Index
3 - Functional Approximation
Published online by Cambridge University Press: 30 November 2017
- Frontmatter
- Miscellaneous Frontmatter
- Dedication
- Contents
- Preface
- Notation
- 1 Introduction
- 2 Signals
- 3 Functional Approximation
- 4 Electromagnetic Propagation
- 5 Deterministic Representations
- 6 Stochastic Representations
- 7 Communication Technologies
- 8 The Space–Wavenumber Domain
- 9 The Time–Frequency Domain
- 10 Multiple Scattering Theory
- 11 Noise Processes
- 12 Information-Theoretic Quantities
- 13 Universal Entropy Bounds
- Appendix A Elements of Functional Analysis
- Appendix B Vector Calculus
- Appendix C Methods for Asymptotic Evaluation of Integrals
- Appendix D Stochastic Integration
- Appendix E Special Functions
- Appendix F Electromagnetic Spectrum
- Bibliography
- Index
Summary
Functional analysis of infinite-dimensional spaces is never fully convincing; you don't get a feeling of having done an honest day's work.
Signals and Functional Spaces
The set of signals for the communication engineer corresponds to an infinite-dimensional functional space for the mathematician. This can be viewed as a vector space on which norm (i.e., length), inner product (i.e., angle), and limits can be defined. The engineering problem of determining the effective dimension of the signals’ space then falls in the mathematical framework of approximation theory that is concerned with finding a sequence of functions with desirable properties whose linear combination best approximates a given limit function.
Approximation is a well-studied problem in analysis. In terms of abstract Hilbert spaces, the problem is to determine what functions can asymptotically generate a given Hilbert space in the sense that the closure of their span (i.e., finite linear combinations and limits of those) is the whole space. Such a set of functions is called a basis, and its cardinality, taken in a suitable limiting sense, is the Hilbert dimension of the space.
Various differential equations arising in physics have orthogonal solutions that can be interpreted as bases of Hilbert spaces. One example is the solution of the wave equation leading to the prolate spheroidal wave functions examined in the previous chapter. Another notable example arises in quantum mechanics in the context of the Schrödinger differential equation.
In this chapter, we describe the connection between physical properties, such as the energy concentration of a wave function, and the mathematics of Hilbert spaces, showing that Slepian's concentration problem is a special case of the eigenvalue problem arising from the spectral decomposition of a self-adjoint operator on a Hilbert space. It turns out that this decomposition provides the optimal approximation for any function in the space. The effective dimension, or degrees of freedom, of the space is then defined as the cardinality of such an optimal representation.
- Type
- Chapter
- Information
- Wave Theory of Information , pp. 87 - 129Publisher: Cambridge University PressPrint publication year: 2017