Machine equipment state monitoring system based on deep learning and voice recognition

A machine equipment and sound recognition technology, applied in the field of machine equipment condition monitoring system, can solve the problems of difficult maintenance, inconvenient access inspection, high maintenance cost, etc., and achieve high intelligence and safety, perfect neural network model, and accurate recognition results Effect

Pending Publication Date: 2020-03-06
GUILIN UNIVERSITY OF TECHNOLOGY
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  • Abstract
  • Description
  • Claims
  • Application Information

AI Technical Summary

Problems solved by technology

[0004] (1) Major machinery and equipment or expensive large units used in production are inconvenient to access for inspection or cannot be disassembled for inspection when failure occurs
[0005] (2) Machinery and equipment with high safety requirements are not only difficult to maintain, but also costly
[0006] (3) Insufficient consideration of the importance of production, personal safety, environmental protection, social impact, etc.
[0007] (4) When analyzing and processing data, most diagnostic methods use various independent models to solve problems. This method needs to combine various models well, and needs to consider multiple situations in different problems, so it has certain advantages. limitations
[0008] (5) It is still difficult to have a good remote diagnosis method to completely solve the fault diagnosis of machinery and equipment in complex systems

Method used

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  • Machine equipment state monitoring system based on deep learning and voice recognition
  • Machine equipment state monitoring system based on deep learning and voice recognition
  • Machine equipment state monitoring system based on deep learning and voice recognition

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Embodiment

[0038] Such as figure 1 As shown, a machine equipment status monitoring system based on deep learning and sound recognition of the present invention includes: training data acquisition module 1, manual marking module 2, sound sample library 3, preprocessing 4, feature extraction 5, neural network model 6 , a real-time data collection module 7, a status recognition module 8, a recognition result module 9, a manual experience module 10, a status display module 11 and an alarm module 12. The training data acquisition module 1 is connected with the artificial marking module 2, the artificial marking module 2 is connected with the sound sample library 3 and the recognition result module 9 respectively, the sound sample library 2 is connected with the preprocessing 4, and the preprocessing 4 is respectively connected with the real-time data collection module 7 and the recognition result module 9. The feature extraction 5 is connected, the feature extraction 5 is connected with the n...

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Abstract

The invention discloses a machine equipment state monitoring system based on deep learning and voice recognition. The system comprises a training data collection module used for collecting voice signals; a manual marking module used for marking the voice signals to form a sound sample library, wherein sound samples are sent to a preset neural network model for training after being subjected to pretreatment and feature extraction; a real-time data collection module used for collecting the voice signals and sending the signals to the trained neural network model; and a state recognition module used for being combined with artificial experience to comprehensively recognize and determine a running state of a machine via the voice signal and feeding back and outputting a result. According to the system, the running state of machine equipment can be monitored in real time, and meanwhile when the machine equipment is faulted or in a dangerous state, an alarm signal is emitted to notice an equipment keeper to maintain in time, so that work efficiency is improved; and meanwhile, a deep learning algorithm is used and combined with the artificial experience to train the neural network model,so that the system has the advantages of high recognition accuracy, good safety, high efficiency and intellectualization.

Description

technical field [0001] The invention relates to the technical field of sound signal recognition, in particular to a machine equipment status monitoring system based on deep learning and sound recognition. Background technique [0002] At present, during the use of machinery and equipment in the factory environment, due to the influence of natural factors such as temperature, humidity, geographical location and human factors, the machinery and equipment are prone to wear and aging and many other problems. Machine equipment condition monitoring is a very complicated process. Although there are many researches on machine equipment condition monitoring and fault diagnosis, due to the many types of faults, the occurrence of faults is accidental or random. At the same time, due to the complexity of machine equipment itself Therefore, the status monitoring and fault diagnosis of machinery and equipment is still a problem worth exploring. [0003] According to the characteristic de...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G10L25/51G10L25/30G10L25/03G06N3/08G01M99/00G01M13/00G01H17/00
CPCG01H17/00G01M13/00G01M99/00G06N3/08G10L25/03G10L25/30G10L25/51
Inventor 刘亚荣黄昕哲谢晓兰刘鑫于顼顼
Owner GUILIN UNIVERSITY OF TECHNOLOGY
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