CN103899482A - Method for compressing data of status monitoring system of wind turbine generator system - Google Patents
Method for compressing data of status monitoring system of wind turbine generator system Download PDFInfo
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- CN103899482A CN103899482A CN201410152223.XA CN201410152223A CN103899482A CN 103899482 A CN103899482 A CN 103899482A CN 201410152223 A CN201410152223 A CN 201410152223A CN 103899482 A CN103899482 A CN 103899482A
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Abstract
The invention provides a method for compressing data of a status monitoring system of a wind turbine generator system. Strong features are extracted in the mode that mathematical modeling is conducted on the monitoring data locally in the wind turbine generator system, and data compression and recovery are conducted according to a high compression ratio. The method comprises the following steps of collection of the wind electricity status monitoring data, identification of operating conditions of the wind turbine generator system, filtration of the wind electricity status monitoring data, local collating of monitoring data information, wind electricity status storage mode selection, identification and matching of intelligent modeling structures, estimation of parameters of the intelligent modeling structures, local primary processing of the monitoring data and upper monitoring terminal secondary processing. By means of the method, mass data on-line transmission and long-term continuous monitoring storage are achieved.
Description
Technical field
The invention belongs to technical field of wind power generation, relate in particular to data modeling wind power generating set condition monitoring system data compression technique field.
Background technique
In existing wind-power electricity generation method for monitoring state, wind power generating set condition monitoring system need to be monitored all set state information in wind energy turbine set, monitoring parameter is huge, and because wind energy turbine set monitor data time domain specification and frequency domain character are all difficult to occur significant change in a short time, if therefore will monitor continuously reflection wind power generating set change of state by state need to store a large amount of long-term monitor datas, require high to memory storage capabilities, storing queries inefficiency, particularly in the time that needs are analyzed long-term wind power equipment change of state situation, need to carry out centralized Analysis to mass data, take greatly watch-dog data analysis resource, condition monitoring effect is poor.
Summary of the invention
A kind of method of compressing wind power generating set condition monitoring system data, carry out strong feature extraction by the mode of Monitoring Data being carried out to mathematical modeling in wind power generating set this locality, carry out data reduction and reduction in high compression ratio mode, it is characterized in that: comprise the following steps, the data capture of S1 wind-powered electricity generation condition monitoring, the identification of S2 running of wind generating set operating mode, S3 wind-powered electricity generation condition monitoring data screening, S4 monitor data information is local to be arranged, S5 wind-powered electricity generation state memory module is selected, S6 intelligent modeling Structure Identification coupling, S7 model of mind on-line identification, the local single treatment of S8 monitor data, the secondary treatment of S9 upper monitoring terminal.
In the data capture of step S1 wind-powered electricity generation condition monitoring, wind power generating set condition monitoring data acquistion system gathers and filtering operation Sensor monitoring data, noise in filtering monitors physical signal, and physics supervisory signal is converted into the digital signal with physical significance.
Monitor state information includes but are not limited to the information such as wind power generating set and assembly vibration thereof, rotating speed, temperature, pressure, stress, moment of torsion, oil product oil, video, audio frequency, wind speed, security protection, electric network information.
In the identification of step S2 running of wind generating set operating mode, the identification of running of wind generating set operating mode mainly refers to by monitor data is analyzed, the typical Operational Limits in conjunction with wind power generating set under different operating conditionss, intelligent recognition wind power generating set running state.
In step S3 wind-powered electricity generation condition monitoring data screening, wind-powered electricity generation condition monitoring data screening mainly refers to be differentiated the validity of monitor message, screens out manifest error data, and it is carried out to interpolation processing.
In the local arrangement of step S4 monitor data information, the local arrangement of monitor data information is mainly the valid data according to step S3 wind-powered electricity generation condition monitoring data screening, it,, according to set form requirement, is packaged into operating states of the units information and monitor message to the data module of fixed length.
During step S5 wind-powered electricity generation state memory module is selected, wind-powered electricity generation state memory module selects the local and outside fault alarm information of Main Basis, monitor data Query Information, the non-compression monitor data transmission information of timing etc. to carry out data model storage selection.
In step S5 wind-powered electricity generation state memory module is selected, wind-powered electricity generation state memory module selection result is that compact model directly enters step S6 intelligent modeling Structure Identification coupling; Otherwise directly jump to the local single treatment of step S8 monitor data.
In step S6 intelligent modeling Structure Identification coupling, intelligent modeling Structure Identification coupling is according to step S2 running of wind generating set operating mode identification apoplexy group of motors operation mode recognition result, Intelligent Matching monitor data under different operating modes is carried out to data model coupling according to data type.
In step S7 model of mind on-line identification, model of mind on-line identification is the model structure according to coupling, based on the local data that arrange after according to fixed format packing of monitor data information in the local arrangement of step S4 monitor data information, according to setup parameter identifying method, and estimate identification model parameter based on computational intelligence.
In the local single treatment of step S8 monitor data, the local single treatment of monitor data mainly refers to by wind-powered electricity generation unit local information processing unit carries out data processing, in the time that step S5 wind-powered electricity generation state memory module selection result is non-compact model, directly unpacked data is uploaded to upper monitoring terminal; In the time that step S5 wind-powered electricity generation state memory module selection result is compact model, will after step step S2 running of wind generating set operating mode identification apoplexy group of motors operation mode recognition result, data modeling Matching Model information, the packing of modeler model parameter information, issue upper monitoring terminal.
In the secondary treatment of step S9 upper monitoring terminal, in the time that the wind-powered electricity generation state memory module selection result of step S5 wind-powered electricity generation state memory module selection is non-compact model, directly unpacked data is stored to upper location supervisory designated storage area; In the time that the wind-powered electricity generation state memory module selection result of step S5 wind-powered electricity generation state memory module selection is compact model, the secondary treatment of upper monitoring terminal is mainly carried out Intelligent Fusion classification processing by the local single treatment data of monitor data in the local single treatment of step S8 monitor data continuously to multiple, the model parameter that make in long period section under same operating conditions, model structure the is identical set of model parameter that permeates, realizes mass data secondary compression.
In the secondary treatment of step S9 upper monitoring terminal, carry out Intelligent Fusion classification processing method by the local single treatment data of monitor data in the local single treatment of step S8 monitor data continuously to multiple, its mathematic(al) manipulation unified approach can adopt direct weighted mean method to realize, and directly the identical model parameter of model structure is weighted on average.
Of the present inventionly be not only applicable to the data reduction of wind power generating set condition monitoring based on data modeling wind power generating set condition monitoring system data compression method, be also applicable to various different occasions based on the continuous monitor data of magnanimity compression storing data and method of reducing.
accompanying drawing explanation
Fig. 1 is a kind of method schematic diagram that compresses wind power generating set condition monitoring system data.
Embodiment
A kind of method of compressing wind power generating set condition monitoring system data that the present invention proposes, can be based on PLC platform or embedded development platform, by by local to data acquisition module, data processing module, logic analysis module and monitor message memory module integration realization.
In the data capture of step S1 wind-powered electricity generation condition monitoring, monitor state information gathering can realize by PLC or embedded data acquisition board.
In the identification of step S2 running of wind generating set operating mode, the identifying method of running of wind generating set operating mode can be carried out operating mode identification according to mean wind velocity information or wind power generator rotor rotary speed information.
In step S3 wind-powered electricity generation condition monitoring data screening, wind-powered electricity generation condition monitoring data screening is mainly to consider to eliminate in data capture or transmitting procedure owing to being subject to the issuable wrong report data of influence of noise, improves the accuracy of data modeling.
Step S4 monitor data information is local to be arranged, and the valid data that screen according to step S3 wind-powered electricity generation condition monitoring data screening according to set form requirement, are packaged into operating states of the units information and monitor message the data module of fixed length to it.Wherein set form requires to refer to monitor message is converted into the reference variable information that can be convenient to state analysis, mainly comprises that filtering processing, a variable are converted into secondary or high order variable etc.For example: velocity information is converted into mean velocity information, vibration velocity is converted into vibration severity information or obtains the specific frequency domain segment data of signal etc. by wave filter.
Step S4 monitor data information is local to be arranged, and the valid data that screen according to step S3 wind-powered electricity generation condition monitoring data screening according to set form requirement, are packaged into operating states of the units information and monitor message the data module of fixed length to it.Wherein, when the data module that is packaged into fixed length mainly considers that upper location supervisory secondary compression is processed, the convenience that modeling parameters is calculated.Particularly, in the time that data model is linear model or statistical model, when processing, upper location supervisory secondary compression only need average to same model parameter under identical operating mode.
During step S5 wind-powered electricity generation state memory module is selected, wind-powered electricity generation state memory module is mainly considered directly data to be packed under normal circumstances, in the time breaking down or have query demand, detailed status monitor message is uploaded, for upper monitoring terminal provides detailed state analysis data.
In step S6 intelligent modeling Structure Identification coupling, Matching Model includes but are not limited to: statistics class model, linearity and non-new relationship mapping class model etc.Wherein, statistical model typically refers to describes the distribution character of monitored variable, can adopt to include but are not limited to the method such as data statistics, fitting of a polynomial the distribution character of monitored variable is carried out to modeling.
In step S6 intelligent modeling Structure Identification coupling, Matching Model includes but are not limited to: statistics class model, linearity and non-new relationship mapping class model etc.Wherein, linear and non-new relationship mapping class model typically refers to the mapping relations of describing between two or more variablees, can realize by including but are not limited to the linear non-linear modeling method such as transfer function, neuron network.
In step S7 model of mind on-line identification, model of mind on-line identification method can adopt intelligent search algorithms such as including but are not limited to statistical approach, polynomial fitting method, method of least squares, random search etc.
In the local single treatment of step S8 monitor data, the local single treatment of monitor data can realize by DDP, and by monitor network, monitor data is sent to upper monitoring terminal.One is preferably in scheme, and the local single treatment of monitor data can realize in wind power generating set local monitoring system, and monitor message is sent to the upper monitoring terminal that is positioned at central control chamber by wind energy turbine set fiber optic Ethernet looped network.
Step S9 upper monitoring terminal secondary treatment: the secondary treatment of upper monitoring terminal can realize by Centralized Monitoring processor, receives by Centralized Monitoring processor the single treatment data that in wind energy turbine set, each typhoon group of motors sends and concentrates secondary treatment.One is preferably in scheme, and the secondary treatment of upper monitoring terminal can realize by the Centralized Monitoring processing server that is arranged on central control chamber.
The present invention carries out strong feature extraction, carries out data reduction and reduction in high compression ratio mode in the mode of mathematical modeling Monitoring Data local realization of wind-powered electricity generation unit, replace traditional Real-time Monitoring Data with modeling parameters, and the data that can realize on statistical significance are recovered, effectively solve the online transmission of wind power generating set condition monitoring system mass data and the long-term storage problem of monitoring continuously, make up prior art defect, further promote validity and the practicability of wind power generating set condition monitoring system.
Claims (10)
1. one kind is compressed the method for wind power generating set condition monitoring system data, carry out strong feature extraction by the mode of Monitoring Data being carried out to mathematical modeling in wind power generating set this locality, carry out data reduction and reduction in high compression ratio mode, it is characterized in that: comprise the following steps, the data capture of S1 wind-powered electricity generation condition monitoring, the identification of S2 running of wind generating set operating mode, S3 wind-powered electricity generation condition monitoring data screening, S4 monitor data information is local to be arranged, S5 wind-powered electricity generation state memory module is selected, S6 intelligent modeling Structure Identification coupling, S7 model of mind on-line identification, the local single treatment of S8 monitor data, the secondary treatment of S9 upper monitoring terminal.
2. a kind of method of compressing wind power generating set condition monitoring system data according to claim 1, it is characterized in that: in the data capture of step S1 wind-powered electricity generation condition monitoring, wind power generating set condition monitoring data acquistion system gathers and filtering operation Sensor monitoring data, noise in filtering monitors physical signal, and physics supervisory signal is converted into the digital signal with physical significance.
3. a kind of method of compressing wind power generating set condition monitoring system data according to claim 1, is characterized in that: monitor state information includes but are not limited to the information such as wind power generating set and assembly vibration thereof, rotating speed, temperature, pressure, stress, moment of torsion, oil product oil, video, audio frequency, wind speed, security protection, electric network information.
4. a kind of method of compressing wind power generating set condition monitoring system data according to claim 1, it is characterized in that: in the identification of step S2 running of wind generating set operating mode, the identification of running of wind generating set operating mode mainly refers to by monitor data is analyzed, typical Operational Limits in conjunction with wind power generating set under different operating conditionss, intelligent recognition wind power generating set running state.
5. a kind of method of compressing wind power generating set condition monitoring system data according to claim 1, it is characterized in that: in step S3 wind-powered electricity generation condition monitoring data screening, wind-powered electricity generation condition monitoring data screening mainly refers to be differentiated the validity of monitor message, screen out manifest error data, and it is carried out to interpolation processing.
6. a kind of method of compressing wind power generating set condition monitoring system data according to claim 1, it is characterized in that: in the local arrangement of step S4 monitor data information, the local arrangement of monitor data information is mainly the valid data according to step S3 wind-powered electricity generation condition monitoring data screening, it,, according to set form requirement, is packaged into operating states of the units information and monitor message to the data module of fixed length.
7. a kind of method of compressing wind power generating set condition monitoring system data according to claim 1, it is characterized in that: during step S5 wind-powered electricity generation state memory module is selected, wind-powered electricity generation state memory module selects the local and outside fault alarm information of Main Basis, monitor data Query Information, the non-compression monitor data transmission information of timing etc. to carry out data model storage selection.
8. a kind of method of compressing wind power generating set condition monitoring system data according to claim 1, it is characterized in that: in step S5 wind-powered electricity generation state memory module is selected, wind-powered electricity generation state memory module selection result is that compact model directly enters step S6 intelligent modeling Structure Identification coupling; Otherwise directly jump to the local single treatment of step S8 monitor data.
9. a kind of method of compressing wind power generating set condition monitoring system data according to claim 1, it is characterized in that: in step S6 intelligent modeling Structure Identification coupling, intelligent modeling Structure Identification coupling is according to step S2 running of wind generating set operating mode identification apoplexy group of motors operation mode recognition result, Intelligent Matching monitor data under different operating modes is carried out to data model coupling according to data type.
10. a kind of method of compressing wind power generating set condition monitoring system data according to claim 1, it is characterized in that: in step S7 model of mind on-line identification, model of mind on-line identification is the model structure according to coupling, based on the local data that arrange after according to fixed format packing of monitor data information in the local arrangement of step S4 monitor data information, according to setup parameter identifying method, and estimate identification model parameter based on computational intelligence.
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