High-frequency resonant soft switch circuit fault prediction method and high-frequency resonant soft switch circuit fault prediction device based on compressed sensing

A technology of high-frequency resonance and compressed sensing, which is applied in the direction of measuring devices, electronic circuit testing, output power conversion devices, etc., can solve the problems of high difficulty coefficient of data processing and low accuracy of fault prediction

Active Publication Date: 2016-07-20
GUANGXI NORMAL UNIV
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Problems solved by technology

[0004] The invention provides a method and device for fault prediction of high-frequency resonant soft switching circuits based on compressed sensing, which solves the problems of low fault prediction accuracy and high difficulty coefficient of data processing

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  • High-frequency resonant soft switch circuit fault prediction method and high-frequency resonant soft switch circuit fault prediction device based on compressed sensing
  • High-frequency resonant soft switch circuit fault prediction method and high-frequency resonant soft switch circuit fault prediction device based on compressed sensing
  • High-frequency resonant soft switch circuit fault prediction method and high-frequency resonant soft switch circuit fault prediction device based on compressed sensing

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Embodiment Construction

[0059] The present invention will be further described below in conjunction with examples, but the present invention is not limited to these examples.

[0060] In the high-frequency resonant soft-switching power supply, the high-frequency resonant soft-switching circuit is the core part, which is composed of a DC-DC converter and a power converter. The DC-DC converter converts the voltage value of the DC input signal, and performs isolation, noise reduction, voltage stabilization and overvoltage protection. The output signal is smooth DC, without AC harmonic components, and the output impedance is zero, with fast The ability of dynamic response and strong suppression ability. The power converter adopts the resonant switching conversion technology, and uses the resonant switch for conversion. It is a partial resonant conversion process. The switching loss is small, and the switching loss can be zero when the control is appropriate; A half-period resonance is performed during t...

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Abstract

The invention discloses a high-frequency resonant soft switch circuit fault prediction method and a high-frequency resonant soft switch circuit fault prediction device based on compressed sensing. Characteristic parameters are sampled based on compressed sensing, generation of massive data is avoided, and the difficulty coefficient of data processing is reduced. Fault prediction is carried out on a high-frequency resonant soft switch based on chaos, the maximum Lipschitz exponent is calculated by taking current and historical recovery signals as a data basis, the maximum Lipschitz exponent is used to predict the fault of the high-frequency resonant soft switch, and the accuracy of fault prediction is improved. A multivariate time series is built based on the recovery signals of seven characteristic parameters, and the multivariate time series is of information completeness and can overcome the noise effect on the accuracy of fault prediction. The input signals of the characteristic parameters are sparsely transformed, an irrelevant linear measurement matrix is designed according to the sparse transform base, and during sampling of the characteristic parameters based on compressed sensing, the linear measurement matrix is used to linearly measure original signals to provide an accurate data basis for signal recovery.

Description

technical field [0001] The invention relates to a fault prediction method and device for a switching power supply, in particular to a high-frequency resonance soft switching circuit fault prediction method and device based on compressed sensing. Background technique [0002] Because of its small size and high efficiency, switching power supply is widely used in various circuit systems. Using high-frequency resonant soft switching technology to make switching power supplies can make switching power supplies more efficient, smaller in size, higher in switching frequency, higher in reliability, and lower in noise. In the high-frequency resonant soft-switching power supply, the high-frequency resonant soft-switching circuit is its core circuit, and its performance is directly related to the technical indicators and operation stability of the circuit system. Once a failure occurs, it will cause the entire circuit system to fail or Stop work, cause economic losses, and even endan...

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): H02M3/00G01R31/28
CPCG01R31/2843H02M3/00H02M1/0058Y02B70/10
Inventor 刘世仁廖志贤唐晓虎张盛明黄国现谭祖印黄玺宁
Owner GUANGXI NORMAL UNIV
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