CN106228176A - A kind of method and system based on floor data detection equipment state - Google Patents
A kind of method and system based on floor data detection equipment state Download PDFInfo
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Abstract
The invention discloses a kind of method and system based on floor data detection equipment state, belong to equipment health state evaluation and electric powder prediction, described method includes: obtain the floor data of equipment and the importance degree that each floor data is corresponding;Floor data is normalized and obtains normalization floor data;The health degree that normalization floor data is corresponding is obtained by healthy SOM model;Importance degree and health degree to each floor data are weighted merging to obtain equipment health degree.The present invention proposes and applies floor data to the method detecting equipment state, solve and prior art uses emulation data equipment state carries out the problem big with reality application gap that detection exists;It addition, present invention further contemplates that different parameters is different to the contribution degree of equipment state, by being weighted merging by health degree and importance degree, obtain equipment health degree.
Description
Method field
The present invention relates to equipment health state evaluation and electric powder prediction, particularly relate to a kind of based on floor data detection
The method and system of equipment state.
Background technology
How airplane equipment being carried out health state evaluation, realizing condition maintenarnce for ground maintenance personnel provides decision-making to prop up
Hold, be one of the study hotspot of civil aircraft health management arts.Currently for airplane equipment health evaluating also in rise a step
Section, existing a few studies is only to utilize emulation data, bigger with practical engineering application gap.
QAR(Quick Access Recorder, quick access recorder) it is civil aircraft onboard flight data recording equipment,
For recording aircraft floor data in day-to-day operation.QAR equipment is arranged in electronic compartment, can record aircraft continuously and be up to
The original flying quality of 600 hours, gathers hundreds of to thousands of parameters simultaneously, comprehensively the work of each second in record aircraft flight
Condition.After aircraft flight, QAR equipment is taken out by ground maintenance personnel, transfers to data analyst to be analyzed.From 20th century
Since the seventies, the airline of developed country uses QAR data to carry out FOQA (such as AirFASE software), it is achieved
Flight course playback and the inquiry of data time course.In recent years, CA and Beijing oceangoing voyage lead to information firm also develop QAR solve
Analysis and application system, mainly solve QAR data decoding problem and provide support for pilot training, formulation flight plan.In view of
QAR data have the advantages that data volume is big, empirical by force, temporal associativity is big, utilize QAR data to realize airplane equipment healthy
State estimation has the highest technological value.
It addition, it is critical only that of airplane equipment health state evaluation, it is desirable to have the history decline data of equipment to be assessed, logical
Cross and compare with history decline data, draw the current state situation of equipment to be assessed.Self-organizing Maps (SOM) is unsupervised learning
A kind of important kind of the neutral net of method, it is possible to detect it by its input sample association regular mutual with input sample
Between relation, and adjust network according to information self-adaptings of these input samples, make the later response of network and input sample
This is consistent.Therefore, SOM is utilized can to realize the health state evaluation of equipment to be assessed.
Prior art 1(CN201110171401) multichannel transducing signal is carried out pretreatment and feature extraction, then
Healthy quantitative evaluation and predicting residual useful life is realized based on SOM model modeling;Technical scheme 2(CN102606557A) pass through fault
Observer obtains system and normally exports and the residual signals of output of degenerating, and utilizes residual error characteristic quantity to build self organizing maps model and obtains
To corresponding hydraulic system health degree;Technical scheme 3(CN201410664864) to add residual error on the basis of scheme 2 adaptive
Answer threshold generator, it is achieved thereby that Fault Isolation.
Existing 3 technical schemes use system emulation and test signal, is not for civil aircraft QAR data, its data
Preprocess method is not suitable for QAR data characteristics.It addition, one-parameter, multiparameter all can be carried out certainly by technical scheme 1,2,3
Organising map modeling obtains its health degree, but its processing mode is for building parameter multi-C vector as input, does not considers different ginseng
Several contribution degrees to system health state are different, the accuracy of possible impact evaluation.
The application motion to solve the technical problem that and to include 2 points: one is aloft to obtain airplane equipment shape the most difficult
In the case of state parameter, application aircraft QAR data are as the data source of health evaluating, true and reliable, improve data after boat
Engineer applied is worth;Two propose based on self organizing maps model and level Weighted Fusion for aircraft equipment QAR data
Method, can effectively realize multiparameter equipment health state evaluation.Comprehensive above 2 points, can build aircraft based on QAR data and set
Standby health state evaluation system, for ground maintenance, personnel provide analytical tool.
Summary of the invention
It is an object of the invention to provide a kind of method and system based on floor data detection equipment state, the present invention proposes
Utilize the floor data as data source, equipment state is detected;It addition, present invention further contemplates that system is good for by different parameters
The contribution degree of health state is different, by being weighted merging by health degree and importance degree, obtains equipment health degree, improves equipment
The accuracy of health evaluating.
For achieving the above object, provide one according to an aspect of the present invention and detect equipment state based on floor data
Method, described method includes: obtain the floor data of equipment and importance degree corresponding to each floor data;Floor data is entered
Row normalized obtains normalization floor data;The health degree that normalization floor data is corresponding is obtained by healthy SOM model;
Importance degree and health degree to each floor data are weighted merging to obtain equipment health degree.
Wherein, the floor data of described acquisition equipment and the step of importance degree corresponding to each floor data, including: according to
Type, equipment and parameter mapping table, determine parameter to be obtained;The floor data of the correspondence that gets parms;According to parameter with important
Degree mapping table, the importance degree of the floor data of the correspondence that gets parms.
Wherein, described floor data is normalized the step obtaining normalization floor data, including: to operating mode
Data are normalized so that the value of described normalization floor data is between [-1,1].
Wherein, described floor data is normalized the step obtaining normalization floor data before, also include:
Floor data is carried out mean value smoothing process, by floor data abnormality value removing therein, and by before and after floor data exceptional value
The average of 2 is as the value of floor data exceptional value.
Wherein, before the described step being obtained health degree corresponding to normalization floor data by healthy SOM model, also
Including: the parameter sample input SOM model being under health status by described equipment, to be trained described SOM model, obtains
To healthy SOM model.
Wherein, the described step being obtained health degree corresponding to normalization floor data by healthy SOM model, including: will
Each described normalization floor data, as a healthy SOM model of input vector input, obtains a best weight value vector;Will
Each described input vector is poor with described best weight value vector, obtains minimum quantization error MQE;To each described minimum quantization
Error MQE is normalized and obtains health degree.
Wherein, based on following formula described minimum quantization error MQE is normalized and obtains health degree h:
Wherein, Mean (MQE) represents the average of minimum quantization error MQE, hsRepresent the initial health degree of parameter sample.
Wherein, it is weighted merging to be set to the described importance degree to each floor data and health degree based on following formula
Standby health degree:
Wherein, β1,...βi,...,βnRepresent the importance degree of each floor data, h1,...hi,...,hnRepresent each work
The health degree of condition data, β1+...+βi+...+βn=1, n represent the quantity of floor data.
Provide a kind of system based on floor data detection equipment state according to another aspect of the present invention, including:
Data acquisition module, the first normalized module, health degree acquisition module and Weighted Fusion computing module;Data acquisition mould
Block, for obtaining the floor data of equipment and the importance degree that each floor data is corresponding;First normalized module, for right
Floor data is normalized and obtains normalization floor data;Health degree acquisition module, for obtaining by healthy SOM model
Take the health degree that normalization floor data is corresponding;Weighted Fusion computing module, is used for the importance degree to each floor data and is good for
Kang Du is weighted merging to obtain equipment health degree.
Wherein, described data acquisition module includes: parameter determination unit, parameter acquiring unit and importance degree acquiring unit;
Parameter determination unit, for according to type, equipment and parameter mapping table, determining parameter to be obtained;Parameter acquiring unit, is used for
The floor data of the correspondence that gets parms;Importance degree acquiring unit, for according to parameter and importance degree mapping table, get parms correspondence
The importance degree of floor data.
Wherein, described first normalized module performs following operation: be normalized floor data so that
The value of described normalization floor data is between [-1,1].
Wherein, described system also includes: mean value smoothing processing module, is used in the first normalized module operating mode number
Before being normalized and obtaining normalization floor data, perform following operation: floor data is carried out at mean value smoothing
Reason, by floor data abnormality value removing therein, and using the average of 2 before and after floor data exceptional value as described operating mode number
Value according to exceptional value.
Wherein, described system also includes: healthy SOM model acquisition module, for passing through health at health degree acquisition module
Before SOM model obtains the health degree that normalization floor data is corresponding, perform following operation: described equipment is in health status
Under parameter sample input SOM model so that SOM model is trained, obtain healthy SOM model.
Wherein, described health degree acquisition module includes: best weight value vector acquiring unit, minimum quantization error calculate single
Unit, the second normalized unit;Best weight value vector acquiring unit, is used for each described normalization floor data as one
The healthy SOM model of individual input vector input, obtains a best weight value vector;Minimum quantization error computing unit, for by every
Individual described input vector is poor with described best weight value vector, obtains minimum quantization error MQE;Second normalized unit,
Health degree is obtained for each described minimum quantization error MQE is normalized.
Wherein, described second normalized unit is normalized place based on following formula to described minimum quantization error MQE
Manage and obtain health degree h:
Wherein, Mean (MQE) represents the average of minimum quantization error MQE, hsRepresent the initial health degree of parameter sample.
Wherein, described Weighted Fusion computing module based on following formula to the described importance degree to each floor data and health degree
It is weighted merging to obtain equipment health degree:
Wherein, β1,...βi,...,βnRepresent the importance degree of each floor data, h1,...hi,...,hnRepresent each work
The health degree of condition data, β1+...+βi+...+βn=1, n represent the quantity of floor data.
A kind of method and system based on floor data detection equipment state provided by the present invention, the present invention proposes should
With floor data as the data source of detection equipment state, first, choose and type, parameter that equipment state is relevant, according to often
The significance level distribution importance degree of individual parameter;Then, parameter normal value and decline value are separately input to healthy SOM model,
Health degree under corresponding states;Finally, by relevant parameter health degree belonging to equipment and importance degree Weighted Fusion, currently set
Standby health status.
Accompanying drawing explanation
Fig. 1 is SOM model schematic of the prior art;
Fig. 2 is the schematic flow sheet of the method based on floor data detection equipment state according to the present invention;
Fig. 3 is the schematic flow sheet of step S100 of the present invention;
Fig. 4 is the schematic flow sheet of step S300 of the present invention;
Fig. 5 is the structural representation of the system based on floor data detection equipment state of the present invention;
Fig. 6 is the structural representation of the data acquisition module of the present invention;
Fig. 7 is the structural representation of the health degree acquisition module of the present invention.
Detailed description of the invention
For making the purpose of the present invention, method scheme and advantage of greater clarity, below in conjunction with detailed description of the invention and join
According to accompanying drawing, the present invention is described in more detail.It should be understood that these describe the most exemplary, and it is not intended to limit this
Bright scope.Additionally, in the following description, eliminate the description to known features and method, to avoid unnecessarily obscuring this
The concept of invention.
It should be understood that Self-organizing Maps SOM(self-organizing map) it is that Helsinki, Netherlands university is neural
Digerait Kohonen teaches the competitive mode neutral net proposed in nineteen eighty-two, and the most also referred to as Kohonen self-organizing feature reflects
Penetrate.The learning process of its simulation cerebral neuron cell, is a kind of unsupervised learning method.SOM algorithm is to data vector
While quantization, additionally it is possible to the dimensionality reduction realizing data maps, this mapping has the premium properties that topological relation keeps, thus extensively
It is applied to dimension reduction and visualization field.As it is shown in figure 1, SOM network structure only has input layer and output layer two-layer.If input vector X
Dimension be n dimension, then input layer has n node, n node to be respectively each component of input vector X;Output layer is by m god
Forming two-dimensional planar array through unit, its arrangement mode can be rectangular arranged, hexagonal array or random alignment;Input layer is each
It is fully connected between node and each neuron of output layer.Briefly, SOM is aiming at each input vector, all in low-dimensional
On output plane (generally two dimension) to find out a point the most corresponding, after this corresponding relation is set up, just claim this input vector
Have activated an output neuron.
Fig. 2 is the schematic flow sheet of the method based on floor data detection equipment state according to the present invention.
As in figure 2 it is shown, the method based on floor data detection equipment state of the present invention, described method includes walking as follows
Rapid:
Step S100, obtains the floor data of equipment and the importance degree that each floor data is corresponding.
In this step, first, select equipment to be assessed, by QAR(Quick Access Recorder, quickly access
Recorder) floor data of collecting device, therefrom obtain the floor data of described equipment and the weight that each floor data is corresponding
Spend.
Here, floor data refers to that equipment is in the actual operating data of mission phase, when described floor data is one section
Interior floor data, for example, it may be equipment floor data being in steady state phase etc..
Step S200, is normalized floor data and obtains normalization floor data.
In this step, each described floor data is normalized and obtains normalization floor data;Concrete, right
Each described floor data is normalized so that the value of each described normalization floor data is between [-1,1].
In an optional embodiment, before step S200, also include: floor data is carried out mean value smoothing process,
By floor data abnormality value removing therein, and using the average of 2 before and after floor data exceptional value as floor data exceptional value
Value.In this step, owing to, in floor data, occasional occurs that limited pulses disturbs, i.e. there is floor data exceptional value, for
Ensure the effectiveness of floor data to greatest extent, before floor data is normalized, need to floor data first
Carry out mean value smoothing process, floor data exceptional value therein is rejected, with 2 equal before and after operating mode data outliers
It is worth the value as floor data exceptional value.
Step S300, obtains, by healthy SOM model, the health degree that normalization floor data is corresponding.
In this step, by healthy for the input of each described normalization floor data SOM model, obtain each normalization operating mode number
According to corresponding health degree.
In an optional embodiment, before step S300, also include: described equipment is in the ginseng under health status
Numerical example input SOM model, to be trained described SOM model, obtains healthy SOM model.In this step, choose with aforementioned
Multiple parameter samples (n parameter alpha altogether that multiple parameters are corresponding1,α2,α3,...αi,..α.n), it is designated as respectively: α1'(t),α2'
(t),α3'(t),...αn(t) ', (wherein, αi' (t) be i-th parameter alphaiParameter sample).By defeated for each described parameter sample
Enter SOM model so that described SOM model to be trained, respectively obtain multiple healthy SOM model, be designated as SOM1,SOM2,
...SOMn。
Here, the health degree h of described parameter samplesCan be 0.99, or be other numerical value close to 1.
Step S400, importance degree and health degree to each floor data are weighted merging to obtain equipment health degree.
In this step, importance degree and health degree to each floor data are weighted merging, and obtain equipment health degree.
Concrete, it is weighted merging to obtain to the described importance degree to each floor data and health degree based on following formula
Equipment health degree:
Wherein, β1,...βi,...,βnRepresent the importance degree of each floor data, h1,...hi,...,hnRepresent each work
The health degree of condition data, β1+...+βi+...+βn=1, n represent the quantity of floor data.
Fig. 3 is the schematic flow sheet of step S100 of the present invention.
As it is shown on figure 3, described step S100 farther includes following steps:
Step S110, according to type, equipment and parameter mapping table, determines parameter to be obtained.
In this step, concrete, for different aircraft models, different unit types, parameter to be obtained is different, therefore
Need to previously generate type, equipment and the mapping table of parameter, based on described mapping table, determine multiple parameters to be obtained (n altogether
Parameter), it is set to: α1,α2,α3,...αi,...αn。
Step S120, the floor data of the correspondence that gets parms.
In this step, based on each the described parameter got, further, obtain the work that each the plurality of parameter is corresponding
Condition data.
Step S130, according to parameter and importance degree mapping table, the importance degree of the floor data of the correspondence that gets parms.
In this step, different parameters, its importance degree is different, therefore needs to previously generate parameter and importance degree mapping table, base
In mapping table, determine the importance degree (n importance degree altogether) of each floor data corresponding to each parameter, be respectively as follows: β1,β2,
β3,...βn。
Fig. 4 is the schematic flow sheet of step S300 of the present invention.
As shown in Figure 4, described step S300 farther includes following steps:
Step S310, using each described normalization floor data as a healthy SOM model of input vector input, obtains
One best weight value vector.
In this step, by each described parameter sample α1'(t),α2'(t),α3'(t),...αnT () ' is as an input
Vector inputs SOM respectively1,SOM2,...SOMn, obtaining a corresponding best weight value vector, described best weight value vector is
The weight vector the shortest with described input vector distance.
Step S320, by poor to each described input vector and described best weight value vector, obtains minimum quantization error
MQE。
In this step, by poor to each described input vector and described best weight value vector, it is calculated minimum quantization by mistake
Difference MQE.Concrete, based on following formula minimum quantization error MQE:
MQE=| | Xinput-Wbmu||
Wherein, XinputFor normalization floor data, WbmuIt it is best weight value vector.
Step S330, is normalized each described minimum quantization error MQE and obtains health degree.
In this step, based on following formula, best weight value vector M QE is normalized between [0,1]:
Wherein, Mean (MQE) represents the average of minimum quantization error MQE, hsRepresent the initial health degree of parameter sample.
As it has been described above, describe the method based on floor data detection equipment state of the present invention in detail, the present invention utilizes
Equipment state, as data source, is detected by floor data;It addition, the contribution that different parameters is to the evaluation of equipment health status
Degree is different, for the importance degree that different parametric distributions is different, it is proposed that health degree and the method for importance degree Weighted Fusion, carries
The high accuracy of equipment health state evaluation.
Fig. 5 is the structural representation of the system based on floor data detection equipment state of the present invention.
As it is shown in figure 5, the system based on floor data detection equipment state of the present invention, described system includes: data obtain
Delivery block the 100, first normalized module 200, health degree acquisition module 300 and Weighted Fusion computing module 400.
Data acquisition module 100, for obtaining the floor data of equipment and the importance degree that each floor data is corresponding.
First normalized module 200 is connected with described data acquisition module 100, for floor data is carried out normalizing
Change processes and obtains normalization floor data.Described first normalized module 200 performs following operation: carry out floor data
Normalized so that the value of described normalization floor data is between [-1,1].
Health degree acquisition module 300 is connected with described first normalized module 200, for by healthy SOM model
Obtain the health degree that normalization floor data is corresponding.
Weighted Fusion computing module 400 is connected with described data acquisition module 100 and health degree acquisition module 300 respectively,
For the importance degree of each floor data and health degree being weighted fusion to obtain equipment health degree.
Concrete, Weighted Fusion computing module 400 based on following formula to the described importance degree to each floor data and health
Degree is weighted merging to obtain equipment health degree:
Wherein, β1,...βi,...,βnRepresent the importance degree of each floor data, h1,...hi,...,hnRepresent each work
The health degree of condition data, β1+...+βi+...+βn=1, n represent the quantity of floor data.
Fig. 6 is the structural representation of the data acquisition module 100 of the present invention.
Wherein, described data acquisition module 100 includes: parameter determination unit 110, parameter acquiring unit 120 and importance degree
Acquiring unit 130.
Parameter determination unit 110, for according to type, equipment and parameter mapping table, determining parameter to be obtained.
Parameter acquiring unit 120 is connected with described parameter determination unit 110, for the floor data of the correspondence that gets parms.
Importance degree acquiring unit 130 is connected with described parameter acquiring unit 120, for mapping with importance degree according to parameter
Table, the importance degree of the floor data of the correspondence that gets parms.
In an optional embodiment, described system also includes: mean value smoothing processing module 500, at the first normalizing
Floor data is normalized before obtaining normalization floor data by change processing module 200, performs following operation: to work
Condition data carry out mean value smoothing process, by floor data abnormality value removing therein, and by 2 points before and after floor data exceptional value
Average as the value of described floor data exceptional value.
In an optional embodiment, described system also includes: healthy SOM model acquisition module 600, at health degree
Before acquisition module 300 obtains, by healthy SOM model, the health degree that normalization floor data is corresponding, perform following operation: use
In the parameter sample input SOM model being under health status by described equipment so that SOM model to be trained, obtain health
SOM model.
Fig. 7 is the structural representation of the health degree acquisition module 300 of the present invention.
As it is shown in fig. 7, described health degree acquisition module 300 includes: best weight value vector acquiring unit 310, minimum quantization
Error calculation unit 320 and the second normalized unit 330.
Best weight value vector acquiring unit 310, is used for each described normalization floor data as an input vector
The healthy SOM model of input, obtains a best weight value vector.
Minimum quantization error computing unit 320 is connected with described best weight value vector acquiring unit 310, for by each institute
State input vector poor with described best weight value vector, obtain minimum quantization error MQE.
Second normalized unit 330 is connected with described minimum quantization error computing unit 320, for each described
Minimum quantization error MQE is normalized and obtains health degree.
Wherein, described minimum quantization error MQE is normalized by the second normalized unit 330 based on following formula
Obtain health degree h:
Wherein, Mean (MQE) represents the average of minimum quantization error MQE, hsRepresent the initial health degree of parameter sample.
As it has been described above, describe the system based on floor data detection equipment state of the present invention in detail, the present invention utilizes
Equipment state, as data source, is detected by floor data;It addition, the contribution that different parameters is to the evaluation of equipment health status
Degree is different, for the importance degree that different parametric distributions is different, it is proposed that health degree and the method for importance degree Weighted Fusion, carries
The high accuracy of equipment health state evaluation.
In sum, the invention provides a kind of method and system based on floor data detection equipment state, the present invention
Middle propose application floor data detection equipment state, first, choose and type, parameter that equipment state is relevant, according to each ginseng
The significance level distribution importance degree of number;Then, parameter normal value and decline value being separately input to healthy SOM model, it is right to obtain
Answer the health degree under state;Finally, by relevant parameter health degree belonging to equipment and importance degree Weighted Fusion, current device is obtained
Health status.
It should be appreciated that the above-mentioned detailed description of the invention of the present invention is used only for exemplary illustration or explains the present invention's
Principle, and be not construed as limiting the invention.Therefore, that is done in the case of without departing from the spirit and scope of the present invention is any
Amendment, equivalent, improvement etc., should be included within the scope of the present invention.Additionally, claims purport of the present invention
Whole within containing the equivalents falling into scope and border or this scope and border change and repair
Change example.
Claims (10)
1. a method based on floor data detection equipment state, including:
The floor data of acquisition equipment and importance degree corresponding to each floor data;
Floor data is normalized and obtains normalization floor data;
The health degree that normalization floor data is corresponding is obtained by healthy SOM model;
Importance degree and health degree to each floor data are weighted merging to obtain equipment health degree.
Method the most according to claim 1, wherein, floor data and each floor data of described acquisition equipment are corresponding
The step of importance degree, including:
According to type, equipment and parameter mapping table, determine parameter to be obtained;
The floor data of the correspondence that gets parms;
According to parameter and importance degree mapping table, the importance degree of the floor data of the correspondence that gets parms.
3. according to the method described in any one of claim 1-2, wherein, described by healthy SOM model acquisition normalization operating mode
The step of the health degree that data are corresponding, including:
Using each described normalization floor data as a healthy SOM model of input vector input, obtain a best weight value
Vector;
By poor to each described input vector and described best weight value vector, obtain minimum quantization error MQE;
Each described minimum quantization error MQE is normalized and obtains health degree.
Method the most according to claim 3, wherein, is normalized place based on following formula to described minimum quantization error MQE
Manage and obtain health degree h:
Wherein, Mean (MQE) represents the average of minimum quantization error MQE, hsRepresent the initial health degree of parameter sample.
5. according to the method described in any one of claim 1-2, wherein, based on following formula to described important to each floor data
Degree and health degree are weighted merging to obtain equipment health degree:
Wherein, β1,...βi,...,βnRepresent the importance degree of each floor data, h1,...hi,...,hnRepresent each operating mode number
According to health degree, β1+...+βi+...+βn=1, n represent the quantity of floor data.
6. a system based on floor data detection equipment state, including:
Data acquisition module (100), for obtaining the floor data of equipment and the importance degree that each floor data is corresponding;
First normalized module (200), obtains normalization floor data for being normalized floor data;
Health degree acquisition module (300), for obtaining, by healthy SOM model, the health degree that normalization floor data is corresponding;
Weighted Fusion computing module (400), for being weighted fusion to obtain to the importance degree of each floor data and health degree
To equipment health degree.
System the most according to claim 6, wherein, described data acquisition module (100) including:
Parameter determination unit (110), for according to type, equipment and parameter mapping table, determining parameter to be obtained;
Parameter acquiring unit (120), for the floor data of the correspondence that gets parms;
Importance degree acquiring unit (130), for according to parameter and importance degree mapping table, the weight of the floor data of the correspondence that gets parms
Spend.
8. according to the system described in any one of claim 6-7, wherein, described health degree acquisition module (300) including:
Best weight value vector acquiring unit (310), for defeated as an input vector using each described normalization floor data
Enter healthy SOM model, obtain a best weight value vector;
Minimum quantization error computing unit (320), for by poor to each described input vector and described best weight value vector, obtaining
To minimum quantization error MQE;
Second normalized unit (330), is good for for being normalized each described minimum quantization error MQE
Kang Du.
System the most according to claim 8, wherein, described second normalized unit (330) based on following formula to described
Minimum quantization error MQE is normalized and obtains health degree h:
Wherein, Mean (MQE) represents the average of minimum quantization error MQE, hsRepresent the initial health degree of parameter sample.
10. according to the system described in claim 6-7,9 any one, wherein, described Weighted Fusion computing module (400) based under
The described importance degree to each floor data and health degree are weighted merging to obtain equipment health degree by formula:
Wherein, β1,...βi,...,βnRepresent the importance degree of each floor data, h1,...hi,...,hnRepresent each operating mode number
According to health degree, β1+...+βi+...+βn=1, n represent the quantity of floor data.
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Citations (7)
Publication number | Priority date | Publication date | Assignee | Title |
---|---|---|---|---|
CN102768115A (en) * | 2012-06-27 | 2012-11-07 | 华北电力大学 | Method for dynamically monitoring health status of wind turbine gearbox in real time |
CN103617561A (en) * | 2013-12-02 | 2014-03-05 | 深圳供电局有限公司 | System and method for evaluating state of secondary equipment of power grid intelligent substation |
CN103901882A (en) * | 2014-04-15 | 2014-07-02 | 北京交通大学 | Online monitoring fault diagnosis system and method of train power system |
CN104091035A (en) * | 2014-07-30 | 2014-10-08 | 中国科学院空间应用工程与技术中心 | Health monitoring method for effective loads of space station based on data-driven algorithm |
CN105046402A (en) * | 2015-06-23 | 2015-11-11 | 国家电网公司 | State evaluating method applied to secondary equipment of intelligent transformer station |
CN105129109A (en) * | 2015-09-30 | 2015-12-09 | 北京航空航天大学 | Method for evaluating health of aircraft aileron actuator system based on multi-fractal theory and self-organizing map (SOM) network |
CN105426665A (en) * | 2015-11-03 | 2016-03-23 | 中国船舶工业系统工程研究院 | Dynamic reliability determination method based on state monitoring |
-
2016
- 2016-06-29 CN CN201610500703.XA patent/CN106228176A/en active Pending
Patent Citations (7)
Publication number | Priority date | Publication date | Assignee | Title |
---|---|---|---|---|
CN102768115A (en) * | 2012-06-27 | 2012-11-07 | 华北电力大学 | Method for dynamically monitoring health status of wind turbine gearbox in real time |
CN103617561A (en) * | 2013-12-02 | 2014-03-05 | 深圳供电局有限公司 | System and method for evaluating state of secondary equipment of power grid intelligent substation |
CN103901882A (en) * | 2014-04-15 | 2014-07-02 | 北京交通大学 | Online monitoring fault diagnosis system and method of train power system |
CN104091035A (en) * | 2014-07-30 | 2014-10-08 | 中国科学院空间应用工程与技术中心 | Health monitoring method for effective loads of space station based on data-driven algorithm |
CN105046402A (en) * | 2015-06-23 | 2015-11-11 | 国家电网公司 | State evaluating method applied to secondary equipment of intelligent transformer station |
CN105129109A (en) * | 2015-09-30 | 2015-12-09 | 北京航空航天大学 | Method for evaluating health of aircraft aileron actuator system based on multi-fractal theory and self-organizing map (SOM) network |
CN105426665A (en) * | 2015-11-03 | 2016-03-23 | 中国船舶工业系统工程研究院 | Dynamic reliability determination method based on state monitoring |
Cited By (17)
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---|---|---|---|---|
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CN106897557B (en) * | 2017-02-23 | 2020-06-02 | 中国人民解放军国防科学技术大学 | Evaluation method and evaluation system of satellite in-orbit health status based on component function map |
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CN107220713B (en) * | 2017-06-06 | 2020-10-09 | 上海理工大学 | Robot arm real-time maintenance method based on health state |
CN109613904A (en) * | 2018-10-31 | 2019-04-12 | 中国科学院自动化研究所 | Health management method and system for general aircraft |
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CN110737976A (en) * | 2019-10-10 | 2020-01-31 | 西安因联信息科技有限公司 | mechanical equipment health assessment method based on multi-dimensional information fusion |
CN110737976B (en) * | 2019-10-10 | 2023-12-08 | 西安因联信息科技有限公司 | Mechanical equipment health assessment method based on multidimensional information fusion |
CN111881213B (en) * | 2020-07-28 | 2021-03-19 | 东航技术应用研发中心有限公司 | System for storing, processing and using flight big data |
CN111881213A (en) * | 2020-07-28 | 2020-11-03 | 东航技术应用研发中心有限公司 | System for storing, processing and using flight big data |
CN112668415A (en) * | 2020-12-17 | 2021-04-16 | 震兑工业智能科技有限公司 | Aircraft engine fault prediction method |
CN112613794A (en) * | 2020-12-31 | 2021-04-06 | 天津森罗科技股份有限公司 | Health management method for high-pressure nitrogen making equipment |
CN112665651A (en) * | 2020-12-31 | 2021-04-16 | 天津森罗科技股份有限公司 | High-pressure air equipment health management method |
CN112989490A (en) * | 2021-03-29 | 2021-06-18 | 重庆长安新能源汽车科技有限公司 | Method for online real-time evaluation of health state of electric drive system of electric vehicle |
CN112991698A (en) * | 2021-04-19 | 2021-06-18 | 奇力士(武汉)智慧水务科技有限公司 | Pump room health degree detection method and system based on secondary water supply equipment |
CN112988547A (en) * | 2021-04-22 | 2021-06-18 | 南京铉盈网络科技有限公司 | Method for evaluating working condition of court self-help filing terminal based on software and hardware states |
CN115270993A (en) * | 2022-08-23 | 2022-11-01 | 南通思诺船舶科技有限公司 | Diesel engine unit state detection method and system |
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