Qualitative Analysis Method of Influencing Factors of Circuit Breaker Fault Based on Data
A technology of influencing factors and qualitative analysis, applied in special data processing applications, instruments, design optimization/simulation, etc., can solve problems such as the stability verification of circuit breaker failures with unknown causes of qualitative analysis, and achieve extended iterative computing capabilities and approximation accuracy. High, avoid the effect of dimensional disaster
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Embodiment 1
[0025] At present, the cause analysis of switchgear failures in the power grid industry is mainly based on manual experience, which is highly subjective, has large errors, lacks pertinence in maintenance, and insufficient utilization of equipment information and fault data. The preprocessing part process is too simple to deal with high-dimensional data characteristics, and the stability of the analysis model is insufficient, and there is too little work in the verification stage, which is not conducive to the expansion of data, and the results are not objective and accurate enough.
[0026] Aiming at the problems of fault data processing, analysis model construction and model verification in the existing circuit breaker fault cause analysis method, the present invention proposes a data-based qualitative analysis method for circuit breaker fault influencing factors. For the main process, see figure 1 , mainly including the preprocessing of fault data, the construction and verifi...
Embodiment 2
[0040] The data-based qualitative analysis method of circuit breaker fault influencing factors is the same as embodiment 1, and the Gaussian mixture model described in step (3) of the present invention is mainly to provide a reasonable continuous attribute discretization method to adapt to the characteristics of switchgear fault data, and to ensure The accuracy of CMAR classification, the Gaussian mixture model believes that the probability density function curve of the data is obtained by mixing and weighting multiple single Gaussian distributions.
[0041] (3.1) Suppose a set of vector points x i (i=1,2...n'), a total of n' observations, the distribution of this group of points is composed of K Gaussian distribution mixture, which means that the sample points are discretized into K intervals during the discretization process, where the Gaussian mixture The definition of the model is:
[0042]
[0043] where π k ∈[0,1], Indicates the influence factor of each Gaussian d...
Embodiment 3
[0054] The qualitative analysis method of data-based circuit breaker fault influencing factors is the same as that of embodiment 1-2, and the fault data reduction described in the step (4) of the present invention is to calculate the information gain rate of each attribute, and perform sorting selection, information gain The specific calculation formula of the rate is as follows:
[0055]
[0056] In the formula, A represents an attribute, Gain(A) represents the information gain of attribute A, and SplitInfo A (S) represents the information generated after the attribute A in the dataset is divided.
[0057] The formula for calculating the information gain Gain(A) is as follows:
[0058]
[0059] Intrinsic information value SplitInfo A (S) The calculation formula is as follows:
[0060]
[0061] Among them, Info(S) and Info A (S) represent the entropy values before and after the attribute division of the data set S, respectively, pi Indicates that any tuple in S ...
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