频谱泄漏 Resources

Showing items tagged with "频谱泄漏"

Power spectrum estimation has broad applications across various disciplines and application domains, receiving significant attention. In the "Modern Signal Processing" course, we studied two primary spectral estimation methods: classical spectral estimation and modern spectral estimation. Classical spectral estimation, based on Fourier transform, offers high computational efficiency but suffers from low spectral resolution and severe side lobe leakage, making it suitable for long sequences. To overcome these limitations, researchers developed modern spectral estimation methods based on parametric models of stochastic processes, including maximum likelihood estimation, maximum entropy method, AR model approach, and predictive filtering techniques. Modern spectral estimation provides higher accuracy for short sequences, complementing classical methods. After thorough study, I selected modern spectral estimation for implementation, particularly focusing on AR model parameter estimation using techniques like the Yule-Walker equations or Burg's algorithm for efficient computation.

MATLAB 270 views Tagged

Windowed Discrete Fourier Transform - Conduct spectral analysis of discrete signals using DFT, employing various window functions to suppress spectral leakage caused by signal truncation

MATLAB 237 views Tagged

Three phenomena in DFT-based spectrum analysis: 1. Aliasing: Requires band-limited continuous signals with sufficiently high sampling frequency (Fs ≥ 2Fmax per Nyquist theorem), often implemented using anti-aliasing filters. 2. Spectral Leakage: Caused by time-domain truncation through window functions, where rectangular windows can be replaced with Hanning/Hamming windows using MATLAB's window functions. 3. Picket Fence Effect: DFT only samples discrete frequency points, requiring zero-padding for finer spectral resolution visualization.

MATLAB 266 views Tagged

This program simulates three critical phenomena in signals and systems: spectral aliasing, spectral leakage, and the fence effect. It includes three key components: pinpufenxi.m (MATLAB script implementing signal processing and spectral analysis), pinpufenxi.fig (GUI interface for interactive parameter adjustments), and a comprehensive Word documentation file explaining theoretical foundations and implementation details.

MATLAB 275 views Tagged