Intelligent reliability evaluation and service life prediction method for kilometer deep well hoist brake

US11893547B2 · US · B2

Patent metadata
FieldValue
Publication numberUS-11893547-B2
Application numberUS-202117919285-A
CountryUS
Kind codeB2
Filing dateFeb 23, 2021
Priority dateNov 19, 2020
Publication dateFeb 6, 2024
Grant dateFeb 6, 2024

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Abstract

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An intelligent reliability evaluation and service life prediction method for a kilometer deep well hoist brake, the method including: the establishment of a digital twin model for a hoist brake, data acquisition and synchronization, and reliability evaluation and service life prediction, wherein the digital twin model for the hoist brake can accurately reflect actual physical characteristics of the hoist brake, the data acquisition and synchronization can realize real-time mapping between a physical entity of the hoist brake and the digital twin model therefor, and furthermore, on the basis of the digital twin model for the hoist brake, the reliability evaluation and service life prediction are realized. Digital twin technology is combined with a reliability analysis method, so that real-time updating of reliability evaluation and service life prediction of the hoist brake are realized.

First claim

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What is claimed is: 1. An intelligent reliability evaluation and service life prediction method for a kilometer deep well hoist brake, used for an intelligent reliability evaluation on a target hoist brake, comprising: obtaining a digital twin model corresponding to the target hoist brake through following Steps i to ii; Step i, establishing, according to structural parameters, material attribute parameters and braking working condition parameters of the target hoist brake, in combination with physical action relations among a brake disc, a brake gate valve and a belleville spring, a three-dimension-structural finite element simulation model corresponding to the target hoist brake, and then entering Step ii; Step ii, adjusting, based on specified working conditions, the specified working conditions comprising a specified normal braking condition and a specified emergency braking condition, according to a difference of braking torques between a first braking torque generated by a first contact between the brake gate valve and the brake disc of the three-dimension-structural finite element simulation model and a second braking torque generated by a second contact between the brake gate valve and the brake disc of the target hoist brake, parameters for the three-dimension-structural finite element simulation model and the physical action relations among the brake disc, the brake gate valve and the belleville spring, to obtain the digital twin model corresponding to the target hoist brake; and performing following Steps A to H in accordance with a first preset period duration based on the digital twin model, to implement a real-time reliability evaluation on the target hoist brake, Steps A to H comprising: Step A, obtaining, by detecting, a first data for the target hoist brake corresponding to each of the structural parameters, each of the material attribute parameter and each of the braking working condition parameters, and a second data for the target hoist brake corresponding to each of braking performance parameters, mapping the first data and the second data into the digital twin model, to implement a synchronous updating with corresponding data in the digital twin model, and then entering Step B; Step B, establishing, for each of the structural parameters, each of the material attribute parameters and each of the braking working condition parameters respectively, a group of random data for the corresponding data of the digital twin model, wherein a distribution of the group of the random data satisfies a probability distribution of the first data obtained in Step A; further obtaining combinations of different random data among the structural parameters, the material attribute parameters and the braking working condition parameters, wherein the combinations are used as groups of combined random parameters corresponding to the digital twin model, and then entering Step C; Step C, obtaining, for the specified normal braking working condition and the specified emergency braking working condition respectively, random responses to the braking performance parameters in the digital twin model corresponding to the groups of the combined random parameters respectively under each of the specified working conditions, and then entering Step D; Step D, taking, for each braking performance parameter respectively, according to the random responses to the braking performance parameters in the digital twin model corresponding to the groups of the combined random parameters respectively under each of the specified working conditions, the groups of the combined random parameters as an input, and the braking performance parameters corresponding to the groups of the combined random parameters respectively as an output, to construct a training data sample library corresponding to the braking performance parameters, and then entering Step E; Step E, constructing, for the braking performance parameters respectively, according to the training data sample library corresponding to the braking performance parameters, model functions corresponding to the braking performance parameters respectively, wherein the model functions are used as random response surface models corresponding to the braking performance parameters respectively, and then entering Step F; Step F, establishing, according to the random response surface models corresponding to the braking performance parameters respectively, in combination with a threshold value for each of the braking performance parameters corresponding to the target hoist brake, reliability evaluation models corresponding to the braking performance parameters respectively, and then entering step G; Step G, performing, for a third data for the braking working condition parameters obtained by detecting the target hoist brake, according to the reliability evaluation models corresponding to the braking performance parameters respectively, a statistical moment analysis by adopting a knowable moment, further adopting a high-order moment approximation method based on the knowable moment to obtain reliability results corresponding to the braking performance parameters respectively, thereby obtaining a comprehensive reliability result, and then entering Step H after adjusting the braking working condition parameters for the target hoist brake when the comprehensive reliability result is lower than a preset safety threshold. 2. The intelligent reliability evaluation and service life prediction method for the kilometer deep well hoist brake according to claim 1 , wherein in Step G, after the obtaining of the reliability results corresponding to the braking performance parameters respectively, according to a correlation among the braking performance parameters, a copula function is applied to establish a system reliability model under a correlation of a multi-failure mode for the reliability results thereby obtaining the comprehensive reliability result corresponding to the target hoist brake. 3. The intelligent reliability evaluation and service life prediction method for the kilometer deep well hoist brake according to claim 1 , wherein the method further comprises: Step I, acquiring, for a preset duration range in a direction from a current time to a historical time, a fourth data for the target hoist brake corresponding to the braking working condition parameters over time in the preset duration range and specifying a fifth data for second braking performance parameters related to performance degradation, and then entering Step II; Step II, constructing, for each of the second braking performance parameters related to the performance degradation respectively, according to the fifth data for the second braking performance parameters of the target hoist brake related to the performance degradation over the time obtained in Step I, a degradation process model function as a performance degradation model corresponding to the second braking performance parameters related to the performance degradation; further acquiring a plurality of performance degradation models corresponding to the second braking performance parameters related to the performance degradation respectively, and then entering Step III; and Step III, acquiring, according to the plurality of performance degradation models corresponding to the second braking performance parameters related to the performance degradation respectively, for the fourth data for the braking working condition parameters obtained by detecting the target hoist brake, service life prediction results corresponding to the second braking performance parameters related to the performance degradation respectively; wherein the Steps I to III are performed according to a second preset period duration based on the digital twin model to implement the service life prediction on the target hoist brake. 4. The intel

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Classifications

  • G06Q10/20Primary

    Administration of product repair or maintenance · CPC title

  • G06F30/23Primary

    using finite element methods [FEM] or finite difference methods [FDM] · CPC title

  • using machine learning, e.g. artificial intelligence, neural networks, support vector machines [SVM] or training a model · CPC title

  • Reliability analysis or reliability optimisation; Failure analysis, e.g. worst case scenario performance, failure mode and effects analysis [FMEA] · CPC title

  • Ageing analysis or optimisation against ageing · CPC title

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What does patent US11893547B2 cover?
An intelligent reliability evaluation and service life prediction method for a kilometer deep well hoist brake, the method including: the establishment of a digital twin model for a hoist brake, data acquisition and synchronization, and reliability evaluation and service life prediction, wherein the digital twin model for the hoist brake can accurately reflect actual physical characteristics of…
Who is the assignee on this patent?
Univ China Mining
What technology area does this patent fall under?
Primary CPC classification G06Q10/20. Mapped technology areas include Physics.
When was this patent published?
Publication date Tue Feb 06 2024 00:00:00 GMT+0000 (Coordinated Universal Time) (B2). Legal status and post-grant events are not shown on this page.
What related patents are in patentsdb?
We list 1 related publication on this page (citations in our corpus or others sharing the same primary CPC).