Fault Detection of Electric Impact Drills and Coffee Grinders Using Acoustic Signals

Increasing demand for higher safety of motors can be noticed in recent years. Developing of new fault detection techniques is related with higher safety of motors. This paper presents fault detection technique of an electric impact drill (EID), coffee grinder A (CG-A), and coffee grinder B (CG-B) us...

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Main Author: Adam Glowacz
Format: Article
Language:English
Published: MDPI AG 2019-01-01
Series:Sensors
Subjects:
RMS
fan
Online Access:http://www.mdpi.com/1424-8220/19/2/269
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spelling doaj-5376f96d9654484281455cd28c9139c82020-11-24T23:51:20ZengMDPI AGSensors1424-82202019-01-0119226910.3390/s19020269s19020269Fault Detection of Electric Impact Drills and Coffee Grinders Using Acoustic SignalsAdam Glowacz0Department of Automatic Control and Robotics, Faculty of Electrical Engineering, Automatics, Computer Science and Biomedical Engineering, AGH University of Science and Technology, al. A. Mickiewicza 30, 30-059 Kraków, PolandIncreasing demand for higher safety of motors can be noticed in recent years. Developing of new fault detection techniques is related with higher safety of motors. This paper presents fault detection technique of an electric impact drill (EID), coffee grinder A (CG-A), and coffee grinder B (CG-B) using acoustic signals. The EID, CG-A, and CG-B use commutator motors. Measurement of acoustic signals of the EID, CG-A, and CG-B was carried out using a microphone. Five signals of the EID are analysed: healthy, with 15 broken rotor blades (faulty fan), with a bent spring, with a shifted brush (motor off), with a rear ball bearing fault. Four signals of the CG-A are analysed: healthy, with a heavily damaged rear sliding bearing, with a damaged shaft and heavily damaged rear sliding bearing, motor off. Three acoustic signals of the CG-B are analysed: healthy, with a light damaged rear sliding bearing, motor off. Methods such as: Root Mean Square (RMS), MSAF-17-MULTIEXPANDED-FILTER-14 are used for feature extraction. The MSAF-17-MULTIEXPANDED-FILTER-14 method is also developed and described in the paper. Classification is carried out using the Nearest Neighbour (NN) classifier. An acoustic based analysis is carried out. The results of the developed method MSAF-17-MULTIEXPANDED-FILTER-14 are very good (total efficiency of recognition of all classes—TED = 96%, TECG-A = 97%, TECG-B = 100%).http://www.mdpi.com/1424-8220/19/2/269motormechanical faultdetectionRMSsounddrillsafetypatternbearingfanshaft
collection DOAJ
language English
format Article
sources DOAJ
author Adam Glowacz
spellingShingle Adam Glowacz
Fault Detection of Electric Impact Drills and Coffee Grinders Using Acoustic Signals
Sensors
motor
mechanical fault
detection
RMS
sound
drill
safety
pattern
bearing
fan
shaft
author_facet Adam Glowacz
author_sort Adam Glowacz
title Fault Detection of Electric Impact Drills and Coffee Grinders Using Acoustic Signals
title_short Fault Detection of Electric Impact Drills and Coffee Grinders Using Acoustic Signals
title_full Fault Detection of Electric Impact Drills and Coffee Grinders Using Acoustic Signals
title_fullStr Fault Detection of Electric Impact Drills and Coffee Grinders Using Acoustic Signals
title_full_unstemmed Fault Detection of Electric Impact Drills and Coffee Grinders Using Acoustic Signals
title_sort fault detection of electric impact drills and coffee grinders using acoustic signals
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2019-01-01
description Increasing demand for higher safety of motors can be noticed in recent years. Developing of new fault detection techniques is related with higher safety of motors. This paper presents fault detection technique of an electric impact drill (EID), coffee grinder A (CG-A), and coffee grinder B (CG-B) using acoustic signals. The EID, CG-A, and CG-B use commutator motors. Measurement of acoustic signals of the EID, CG-A, and CG-B was carried out using a microphone. Five signals of the EID are analysed: healthy, with 15 broken rotor blades (faulty fan), with a bent spring, with a shifted brush (motor off), with a rear ball bearing fault. Four signals of the CG-A are analysed: healthy, with a heavily damaged rear sliding bearing, with a damaged shaft and heavily damaged rear sliding bearing, motor off. Three acoustic signals of the CG-B are analysed: healthy, with a light damaged rear sliding bearing, motor off. Methods such as: Root Mean Square (RMS), MSAF-17-MULTIEXPANDED-FILTER-14 are used for feature extraction. The MSAF-17-MULTIEXPANDED-FILTER-14 method is also developed and described in the paper. Classification is carried out using the Nearest Neighbour (NN) classifier. An acoustic based analysis is carried out. The results of the developed method MSAF-17-MULTIEXPANDED-FILTER-14 are very good (total efficiency of recognition of all classes—TED = 96%, TECG-A = 97%, TECG-B = 100%).
topic motor
mechanical fault
detection
RMS
sound
drill
safety
pattern
bearing
fan
shaft
url http://www.mdpi.com/1424-8220/19/2/269
work_keys_str_mv AT adamglowacz faultdetectionofelectricimpactdrillsandcoffeegrindersusingacousticsignals
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