Harmonic Analysis

🎵Harmonic Analysis Unit 11 – Plancherel Theorem and Parseval's Identity

The Plancherel Theorem and Parseval's Identity are fundamental concepts in harmonic analysis, linking time and frequency domains. These theorems establish the energy conservation principle between a function and its Fourier transform, providing a powerful tool for signal analysis and processing. These results have far-reaching applications in various fields, including signal processing, quantum mechanics, and communications. They enable engineers and scientists to analyze complex signals, design efficient filters, and optimize data transmission systems by leveraging the properties of Fourier transforms and orthonormal bases.

Key Concepts and Definitions

  • Fourier transform converts a function from the time domain to the frequency domain, representing it as a sum of sinusoidal components
  • Inverse Fourier transform converts a function from the frequency domain back to the time domain
  • L2L^2 space consists of square-integrable functions, where the integral of the square of the absolute value of the function is finite
    • Functions in L2L^2 have finite energy and are important in signal processing and quantum mechanics
  • Unitary operator is a linear transformation that preserves inner products and norms, satisfying UU=UU=IU^*U = UU^* = I
  • Isometry is a distance-preserving transformation between metric spaces, preserving the length of curves and the distance between points
  • Orthonormal basis is a set of vectors that are orthogonal (perpendicular) to each other and have unit length (normalized)
    • Orthonormal bases provide a convenient way to represent vectors and functions in a space

Historical Background

  • Joseph Fourier introduced the concept of representing functions as sums of sinusoids in the early 19th century while studying heat transfer
  • Plancherel's theorem, named after Michel Plancherel, was first published in 1910 as part of his work on the Fourier transform and its properties
  • Parseval's identity, named after Marc-Antoine Parseval, is a special case of Plancherel's theorem for orthonormal bases
    • Parseval's identity was originally discovered in the late 18th century in the context of Fourier series
  • The development of Plancherel's theorem and Parseval's identity was influenced by the work of mathematicians such as Hilbert, Riesz, and Fischer
  • These results have played a crucial role in the development of harmonic analysis, signal processing, and quantum mechanics throughout the 20th and 21st centuries

Statement of Plancherel Theorem

  • Plancherel's theorem states that the Fourier transform is an isometry between the L2L^2 spaces of the time and frequency domains
  • Formally, for any function fL2(R)f \in L^2(\mathbb{R}), the following equality holds: f(x)2dx=f^(ξ)2dξ\int_{-\infty}^{\infty} |f(x)|^2 dx = \int_{-\infty}^{\infty} |\hat{f}(\xi)|^2 d\xi
    • Here, f^\hat{f} denotes the Fourier transform of ff
  • The theorem implies that the Fourier transform preserves the inner product and norm of functions in L2L^2
  • Plancherel's theorem can be generalized to other function spaces and transforms, such as the Fourier series and the discrete Fourier transform
  • The theorem provides a powerful tool for analyzing the energy distribution of signals in the frequency domain

Parseval's Identity Explained

  • Parseval's identity is a special case of Plancherel's theorem for orthonormal bases in a Hilbert space
  • For an orthonormal basis {en}n=1\{e_n\}_{n=1}^{\infty} in a Hilbert space HH and any xHx \in H, Parseval's identity states: n=1x,en2=x2\sum_{n=1}^{\infty} |\langle x, e_n \rangle|^2 = \|x\|^2
    • Here, ,\langle \cdot, \cdot \rangle denotes the inner product, and \|\cdot\| is the norm induced by the inner product
  • In the context of Fourier series, Parseval's identity relates the sum of the squares of the Fourier coefficients to the integral of the square of the function
  • Parseval's identity is essential in proving the completeness and orthonormality of various function systems, such as trigonometric functions and wavelets
  • The identity has applications in signal processing, where it is used to calculate the energy of a signal in terms of its Fourier coefficients

Proof Techniques and Approaches

  • The proof of Plancherel's theorem typically involves showing that the Fourier transform is a unitary operator on L2L^2
  • One approach is to use the density of compactly supported smooth functions in L2L^2 and prove the theorem for this dense subset
    • The result can then be extended to all of L2L^2 by a continuity argument
  • Another approach is to use the spectral theorem for unbounded self-adjoint operators, considering the Fourier transform as a multiplication operator in the frequency domain
  • Parseval's identity can be proved using the orthonormality of the basis and the properties of the inner product
    • For Fourier series, the proof often involves integrating the square of the series term by term and using the orthogonality of the trigonometric functions
  • Proofs of Plancherel's theorem and Parseval's identity often rely on techniques from functional analysis, such as the Riesz representation theorem and the Lebesgue dominated convergence theorem

Applications in Signal Processing

  • Plancherel's theorem and Parseval's identity are fundamental in signal processing, allowing for the analysis of signals in both time and frequency domains
  • The theorems provide a way to calculate the energy of a signal using its Fourier transform or Fourier series coefficients
    • This is useful in determining the power spectrum and energy distribution of a signal
  • In image processing, Parseval's identity is used to justify the use of the discrete Fourier transform (DFT) for image compression and filtering
  • The theorems are also applied in the design of digital filters, as they relate the energy of the input and output signals
  • In wireless communications, Parseval's identity is used to analyze the performance of orthogonal frequency-division multiplexing (OFDM) systems
    • OFDM is a method for transmitting digital data using orthogonal subcarriers, and Parseval's identity ensures the preservation of signal energy

Connections to Other Theorems

  • Plancherel's theorem and Parseval's identity are closely related to the Pythagorean theorem in Hilbert spaces
    • The Pythagorean theorem states that for orthogonal vectors, the square of the norm of their sum equals the sum of the squares of their norms
  • The theorems are also connected to the spectral theorem for self-adjoint operators, which provides a way to represent operators using eigenvalues and eigenvectors
  • The Riesz-Fischer theorem, which states that the space of square-summable sequences is isomorphic to L2L^2, is another related result
  • Plancherel's theorem can be seen as a generalization of the Parseval's identity for the Fourier transform, extending the result from orthonormal bases to the continuous Fourier transform
  • The theorems are also related to the uncertainty principle in signal processing and quantum mechanics, which limits the simultaneous localization of a function and its Fourier transform

Practice Problems and Examples

  • Prove Parseval's identity for the Fourier series of a periodic function f(x)f(x) with period 2π2\pi
  • Verify Plancherel's theorem for the Gaussian function f(x)=ex2f(x) = e^{-x^2}, using the fact that its Fourier transform is also a Gaussian
  • Show that the energy of a signal x(t)x(t) can be calculated using both time and frequency domain integrals: E=x(t)2dt=X(f)2dfE = \int_{-\infty}^{\infty} |x(t)|^2 dt = \int_{-\infty}^{\infty} |X(f)|^2 df
  • Apply Parseval's identity to the Haar wavelet basis, and discuss its implications for wavelet-based signal compression
  • Prove that the Fourier basis functions {einx}n=\{e^{inx}\}_{n=-\infty}^{\infty} form an orthonormal basis for L2([π,π])L^2([-\pi, \pi]), and use Parseval's identity to derive the Fourier series coefficients
  • Use Plancherel's theorem to derive the convolution theorem, which states that the Fourier transform of the convolution of two functions is the product of their Fourier transforms


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© 2024 Fiveable Inc. All rights reserved.
AP® and SAT® are trademarks registered by the College Board, which is not affiliated with, and does not endorse this website.