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A Method for Reliability Prediction of Rolling Bearings Based on Mathematical Morphology and ifoa-svr

A technology of mathematical morphology and rolling bearings, applied in the direction of mechanical bearing testing, etc., can solve problems such as long calculation time

Active Publication Date: 2018-10-30
HARBIN UNIV OF SCI & TECH
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Problems solved by technology

However, both of the above two solving methods need to set the search initial value based on experience, and the calculation time is relatively long

Method used

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  • A Method for Reliability Prediction of Rolling Bearings Based on Mathematical Morphology and ifoa-svr
  • A Method for Reliability Prediction of Rolling Bearings Based on Mathematical Morphology and ifoa-svr
  • A Method for Reliability Prediction of Rolling Bearings Based on Mathematical Morphology and ifoa-svr

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specific Embodiment approach 1

[0057] Specific implementation manner one: such as Figure 1 to 11 As shown, this embodiment specifically describes the implementation process of the rolling bearing reliability prediction method based on mathematical morphology and IFOA-SVR as follows:

[0058] 1 Fractal dimension based on mathematical morphology

[0059] Mathematical morphology includes two basic operators, namely expansion operation and corrosion operation. Suppose the original signal f(n) and the structural element Se(n) are respectively defined on the set F={0,1,...,N-1} and the set G={0,1,...,M-1}. A one-dimensional discrete function, and N≥M. Under each analysis scale λ, let Se(n) perform an expansion and corrosion operation on f(n), namely:

[0060]

[0061]

[0062] In the formula: ⊕ means expansion operation, Θ means corrosion operation, λ=1, 2,...,λ max , Λ max It is the largest analysis scale.

[0063] Define the coverage area A of f(n) with respect to Se(n) expansion and corrosion operations under the s...

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Abstract

The invention discloses a rolling bearing reliability prediction method based on mathematical morphology and IFOA-SVR, and relates to the technical field of rolling bearing reliability prediction. The method aims at guaranteeing the prediction precision and prolonging a prediction step at the same time. The method comprises the steps: firstly extracting an envelope signal of a vibration signal, calculating a mathematical morphology fractal dimension of the envelope signal, and enabling the mathematical morphology fractal dimension to serve as the performance degeneration state characteristics of the rolling bearing; secondly carrying out the optimizing of the parameters C, g and epsilon in SVR at the same time through IFOA and building a prediction model, and, meanwhile, building a Weibull proportion fault rate model through employing MLE (Maximum Likelihood Estimation) and combining with IFOA, thereby obtaining a reliability model; finally enabling the performance degeneration state characteristics to serve as the input of an IFOA-SVR prediction model, obtaining a characteristic prediction result through employing a long-time iteration prediction method, enabling the result to be embedded into the reliability mode, and predicting the reliability of the operation state of the rolling bearing. An experiment indicates that the method prolongs the prediction step while guaranteeing the prediction precision.

Description

Technical field [0001] The invention relates to a rolling bearing reliability prediction method based on mathematical morphology and IFOA-SVR, and relates to the technical field of rolling bearing reliability prediction. Background technique [0002] Rolling bearing is a key component in rotating machinery. Once it fails, it will cause a lot of economic losses and even endanger human life. [1-2] . Therefore, accurately predicting the working status of rolling bearings in the next stage is the prerequisite basis for a reasonable mechanical equipment maintenance plan. [3-4] . [0003] At present, the research on the feature extraction method of rolling bearing vibration signal has received extensive attention from scholars. Literature [5] proposed a rolling bearing fault diagnosis method based on morphological component analysis and envelope spectrum, which can effectively extract the fault features in the rolling bearing vibration signal. Literature [6] proposed a rolling bearing ...

Claims

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Application Information

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Patent Type & Authority Patents(China)
IPC IPC(8): G01M13/04
CPCG01M13/04
Inventor 康守强王玉静叶立强柳长源谢金宝于春雨
Owner HARBIN UNIV OF SCI & TECH
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