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Fault tree optimization retrieval method based on experience vector and feature vector

A feature vector, fault tree technology, applied in special data processing applications, instruments, electrical digital data processing, etc., can solve the problems of difficult to solve the problem of rapid retrieval of complex fault trees, low retrieval efficiency, etc., to improve retrieval efficiency and facilitate implementation. , the effect of easy implementation

Active Publication Date: 2017-12-19
BEIJING INST OF SPACE LAUNCH TECH +1
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Problems solved by technology

[0005] In order to solve the problem of low retrieval efficiency and difficulty in fast retrieval of complex fault trees in conventional fault tree retrieval methods, the present invention innovatively proposes a fault tree optimization retrieval method based on experience vectors and feature vectors, based on adding hierarchical auxiliary information to fault trees and other technical means to realize the retrieval efficiency of the fault tree at a relatively small cost, and the present invention effectively ensures the scalability of the fault tree structure

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  • Fault tree optimization retrieval method based on experience vector and feature vector
  • Fault tree optimization retrieval method based on experience vector and feature vector
  • Fault tree optimization retrieval method based on experience vector and feature vector

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Embodiment Construction

[0025] The fault tree optimization retrieval method based on experience vectors and feature vectors of the present invention will be explained and described in detail below in conjunction with the accompanying drawings.

[0026] like figure 1 , 2 , 3, the present invention specifically discloses a fault tree optimization retrieval method based on experience vectors and eigenvectors. After a specific fault occurs, the present invention first refines the basic fault tree according to expert knowledge, similar to image 3 The fault tree structure shown in . The method specifically includes the following steps.

[0027] Step 1, initialize experience vector and feature vector for middle event and bottom event:

[0028] (1) In the fault tree, in addition to the top event, experience vectors are assigned to the middle event and the bottom event in the fault tree, and the experience vector constructed based on the experience knowledge of system experts is used to describe the relat...

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Abstract

The invention discloses a fault tree optimization retrieval method based on an experience vector and a feature vector. The method includes the following steps of 1, attaching the experience vector and the feature vector for both an intermediate event and a bottom event in a fault tree; 2, firstly, planning the traversal sequence of current interlayer events according to the experience vector, conducting traversal according to the traversal sequence, when traversing the intermediate event or the bottom event, determining whether or not a current event occurs according to the feature vector, and then, determining whether or not traversal is conducted downward along the current event according to a determined result; 3, finally, based on the traversal sequence and the determined result, determining the bottom event of a primary cause which leads to a fault. The method innovatively uses a technological means of adding the experience vector and the feature vector for the intermediate event and the bottom event in the fault tree, achieves the optimal retrieval mechanism of the same-layer events and the automatic retrieval mechanism of the current events, and therefore effectively improves the retrieval efficiency of the fault tree of a complex system.

Description

technical field [0001] The present invention relates to the field of fault tree technology, more specifically, the present invention is a fault tree optimization retrieval method based on experience vectors and feature vectors. Background technique [0002] The fault tree analysis method is currently the most widely used and recognized as the most effective fault analysis technology for complex systems. It can quickly troubleshoot and locate the cause of the target fault. Specifically, the fault tree organizes fault phenomena, fault causes, and logical relationships in the form of a tree, and the logical relationships include logical relationships between fault phenomena and fault causes, and logical relationships between fault causes. The main elements of the fault tree include top event, intermediate event, bottom event and logical objects, among which, the top event represents the fault phenomenon, the intermediate event represents the intermediate fault cause, the bottom...

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06F17/30
CPCG06F16/2246G06F16/2453
Inventor 曹向荣刘耀聪赵旭昌郝欣伟
Owner BEIJING INST OF SPACE LAUNCH TECH
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