SYSDAug 11, 2014

Digital Filter Designs for Recursive Frequency Analysis

arXiv:1408.2294v36 citations
Originality Synthesis-oriented
AI Analysis

This work addresses stability and performance issues in recursive frequency analysis for signal processing applications, but it is largely incremental with some new modifications.

The paper examines digital filters for recursive DFT computation and frequency spectrum estimation, focusing on magnitude-response and numerical stability, and proposes enhancements like stabilizing IIR SDFT analyzers with a fading memory and adapting windows to improve frequency responses.

Digital filters for recursively computing the discrete Fourier transform (DFT) and estimating the frequency spectrum of sampled signals are examined, with an emphasis on magnitude-response and numerical stability. In this tutorial-style treatment, existing recursive techniques are reviewed, explained and compared within a coherent framework; some fresh insights are provided and new enhancements/modifications are proposed. It is shown that the replacement of resonators by (non-recursive) modulators in sliding DFT (SDFT) analyzers with either a finite impulse response (FIR), or an infinite impulse response (IIR), does improve performance somewhat; however stability is not guaranteed, as the cancellation of marginally stable poles by zeros is still involved. The FIR deadbeat observer is shown to be more reliable than the SDFT methods, an IIR variant is presented, and ways of fine-tuning its response are discussed. A novel technique for stabilizing IIR SDFT analyzers with a fading memory, so that all poles are inside the unit circle, is also derived. Slepian and sum-of-cosine windows are adapted to improve the frequency responses for the various FIR and IIR DFT methods.

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