Abstract

Many real-world systems change their parameters during the operation. Thus, before the analysis of the data, there is a need to divide the raw signal into parts that can be considered as homogeneous segments. In this paper, we propose a segmentation procedure that can be applied for the signal with time-varying characteristics. Moreover, we assume that the examined signal exhibits impulsive behavior, thus it corresponds to the so-called heavy-tailed class of distributions. Due to the specific behavior of the data, classical algorithms known from the literature cannot be used directly in the segmentation procedure. In the considered case, the transition between parts corresponding to homogeneous segments is smooth and non-linear. This causes that the segmentation algorithm is more complex than in the classical case. We propose to apply the divergence measures that are based on the distance between the probability density functions for the two examined distributions. The novel segmentation algorithm is applied to real acoustic signals acquired during coffee grinding. Justification of the methodology has been performed experimentally and using Monte-Carlo simulations for data from the model with heavy-tailed distribution (here the stable distribution) with time-varying parameters. Although the methodology is demonstrated for a specific case, it can be extended to any process with time-changing characteristics.

Highlights

  • Many real-world systems change their parameters during the operation

  • The acoustic signals analyzed in the paper, obtained through the experiment described in the previous section, show some special properties

  • To identify how the parameters of the distribution change in time, we propose to fit the stable distribution to the signals in narrow windows of length L

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Summary

Introduction

Many real-world systems change their parameters during the operation. It could be a continuous progressing change (like start up of the machine) or switching from regimeA to another regime B (for example, loaded/unloaded machine). Many real-world systems change their parameters during the operation. It could be a continuous progressing change (like start up of the machine) or switching from regime. A to another regime B (for example, loaded/unloaded machine). Analysis of such timevarying processes (using acquired data) is difficult. If the analyzed data have a complex structure, before further analysis they should be divided into simpler subsignals. That requires the use of different methods. Such approaches are commonly called signal segmentation [1,2,3]

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