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Self-adaption wavelet neural network abnormity detection and fault diagnosis classification system and method

A technology of wavelet neural network and anomaly detection, applied in adaptive control, general control system, control/regulation system, etc., can solve problems such as poor adaptability, high price, and no fault diagnosis classification analysis system

Inactive Publication Date: 2011-07-13
BEIJING UNIV OF TECH
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  • Abstract
  • Description
  • Claims
  • Application Information

AI Technical Summary

Problems solved by technology

Even if there are some primary anomaly detection and fault diagnosis methods in a special field, such as template comparison method, general neural network method, and probability method, they all have application limitations, poor adaptability, and low accuracy (misdiagnosis and misdiagnosis). High judgment rate) and the problem of heavy dependence on sample data
And there is no analysis system for multi-domain anomaly detection, fault diagnosis and classification
Even if there is a dedicated fault analyzer in a specific field, the requirements for the detection object are very strict when used, especially the lack of adaptive ability to the input and output of the system, and the price is expensive

Method used

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Embodiment Construction

[0090] Attached below Figure 1 ~ Figure 3 The present invention is described in detail:

[0091] The M input devices of the acquisition device 101 in the present invention are determined according to the types of the M monitoring points when the system to be detected 110 is specifically applied to a field: when the system is applied to the field of industrial control, the monitoring points of the system to be detected 110 When the type is voltage, current, resistance, temperature, humidity, flow, force, magnetic field strength, light intensity, radiation, vibration or angle, the acquisition device is selected for the corresponding sensor; when the system is applied in the field of image and video processing When the monitoring point type of the system to be detected 110 is an image, the acquisition device 101 is selected for the corresponding camera, video camera, camera, viewfinder, image sensor, photosensitive element sensor, video recorder, player or computer; when the sys...

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Abstract

The invention relates to a self-adaption wavelet neural network abnormity detection and fault diagnosis classification system and method, which can be applied to the fields, such as economic management abnormity detection, image recognition analysis, video retrieval, audio retrieval, signal abnormity detection, safety detection, and the like. The system comprises the following seven parts: an acquisition device, a transmitter device, an A / D (Analog / Digital) conversion device, a self-adaption wavelet neural network abnormity detection and fault diagnosis classification processor, a display interaction device, an abnormity alarm device and an abnormity processing device. The abnormity detection and fault diagnosis classification object of the self-adaption wavelet neural network abnormity detection and fault diagnosis classification system is acquired from samples for which a self-adaption mechanism is automatically established by the self-adaption wavelet neural network of a system to be detected, the characteristic information of a signal can be effectively extracted through wavelet transform multi-scale analysis, and a more accurate abnormity detection and fault diagnosis locating result can be obtained. The device adopting the method has the advantages of generalization, high accuracy in the application field, capability of real-time monitoring and low cost.

Description

technical field [0001] The invention proposes an adaptive wavelet neural network anomaly detection fault diagnosis classification system and method, which can be applied to abnormal detection, fault diagnosis, pattern recognition, industry, economic management, image, video, audio, signal processing, security and other fields. Background technique [0002] At present, the application requirements of anomaly detection and fault diagnosis are extremely extensive. For example, in the field of industrial control, many devices have to send out alarms when they are working abnormally, so that administrators can take timely measures; in the field of construction, construction workers urgently need a Diagnosis methods and equipment analyze faulty equipment and systems, and make fault location. In economic management, a method for analyzing economics-related data is needed, which can analyze and locate abnormalities and problems in a timely manner. In the field of image and video pr...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G05B13/04
Inventor 王普刘经纬李会民乔俊飞杨蕾
Owner BEIJING UNIV OF TECH
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