CN106682795A - Data analysis based automobile part information processing method - Google Patents

Data analysis based automobile part information processing method Download PDF

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Publication number
CN106682795A
CN106682795A CN201510745284.1A CN201510745284A CN106682795A CN 106682795 A CN106682795 A CN 106682795A CN 201510745284 A CN201510745284 A CN 201510745284A CN 106682795 A CN106682795 A CN 106682795A
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data
parts
failure
information processing
processing method
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卢星旺
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Continental Automotive Asia Pacific Beijing Co Ltd
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Continental Automotive Asia Pacific Beijing Co Ltd
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    • GPHYSICS
    • G06COMPUTING; CALCULATING OR COUNTING
    • G06QINFORMATION AND COMMUNICATION TECHNOLOGY [ICT] SPECIALLY ADAPTED FOR ADMINISTRATIVE, COMMERCIAL, FINANCIAL, MANAGERIAL OR SUPERVISORY PURPOSES; SYSTEMS OR METHODS SPECIALLY ADAPTED FOR ADMINISTRATIVE, COMMERCIAL, FINANCIAL, MANAGERIAL OR SUPERVISORY PURPOSES, NOT OTHERWISE PROVIDED FOR
    • G06Q10/00Administration; Management
    • G06Q10/06Resources, workflows, human or project management; Enterprise or organisation planning; Enterprise or organisation modelling
    • G06Q10/063Operations research, analysis or management
    • G06Q10/0639Performance analysis of employees; Performance analysis of enterprise or organisation operations
    • YGENERAL TAGGING OF NEW TECHNOLOGICAL DEVELOPMENTS; GENERAL TAGGING OF CROSS-SECTIONAL TECHNOLOGIES SPANNING OVER SEVERAL SECTIONS OF THE IPC; TECHNICAL SUBJECTS COVERED BY FORMER USPC CROSS-REFERENCE ART COLLECTIONS [XRACs] AND DIGESTS
    • Y04INFORMATION OR COMMUNICATION TECHNOLOGIES HAVING AN IMPACT ON OTHER TECHNOLOGY AREAS
    • Y04SSYSTEMS INTEGRATING TECHNOLOGIES RELATED TO POWER NETWORK OPERATION, COMMUNICATION OR INFORMATION TECHNOLOGIES FOR IMPROVING THE ELECTRICAL POWER GENERATION, TRANSMISSION, DISTRIBUTION, MANAGEMENT OR USAGE, i.e. SMART GRIDS
    • Y04S10/00Systems supporting electrical power generation, transmission or distribution
    • Y04S10/50Systems or methods supporting the power network operation or management, involving a certain degree of interaction with the load-side end user applications

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  • Entrepreneurship & Innovation (AREA)
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  • Game Theory and Decision Science (AREA)
  • Quality & Reliability (AREA)
  • Tourism & Hospitality (AREA)
  • Physics & Mathematics (AREA)
  • General Business, Economics & Management (AREA)
  • General Physics & Mathematics (AREA)
  • Theoretical Computer Science (AREA)
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Abstract

The invention relates to a data analysis based automobile part information processing method, which comprises the steps of collecting historical operation data, historical fault data from a certain part of multiple automobiles and historical environment data of corresponding vehicles; forming a fault model for the part based o the collected historical data, wherein the fault model represents the relevance between the operation data of the part and the environment data of the automobiles and a fault; and providing content services related with the part for a user based on the fault model of the certain part. According to the automobile part information processing method, content services related with a corresponding part can be provided accurately based on the fault model.

Description

Auto parts and components information processing method based on data analysis
Technical field
The present invention relates to big data analysis application technology, the more particularly to auto parts and components based on data analysis Information processing method.
Background technology
Currently, the quality analysis and control of the parts of automobile, is all by artificial receipts after failure occurs The collection type of component failure, phenomenon carry out statistical analysis to study the quality of parts and possible change Enter measure.But, the state after this mode can only occur according to failure is analyzed, and conjecture failure is former Cause.For the reason for initiating failure and how to cause, can not effectively not analyzed, and after drawing It is continuous to be effectively improved mode.
The content of the invention
The problem that the present invention is solved is to provide a kind of auto parts and components information processing side based on data analysis Method, is targetedly predicted with providing the generation of failure.
In order to solve the above problems, auto parts and components information processing method of the present invention based on data analysis, Including:
Collection comes from history data, the historical failure data of a certain parts of many automobiles, with And the history environment data residing for corresponding vehicle;
Fault model for the parts, the fault model are formed based on collected historical data Characterize the relevance of the environmental data residing for the service data and the vehicle of the parts and failure;
Content service about the parts is provided a user with based on the fault model of a certain parts.
Compared with prior art, such scheme has advantages below:By collecting vehicle within the duration The data of parts, are studied using big data.In view of a certain parts failure generally all and at that time The running status of vehicle local environment, parts itself is relevant, thus the operation number based on parts at that time The fault model obtained according to the environmental data residing for, fault data and vehicle can pointedly embody failure The factor and process of generation.So as to just can accurately provide relevant corresponding zero based on fault model The content service of part, for example, predicts that the generation of failure, offer avoid drive advice of failure etc..
Description of the drawings
Fig. 1 is a kind of embodiment of the present invention based on the auto parts and components information processing method of data analysis Schematic diagram;
Fig. 2 is a kind of embodiment configuration diagram for realizing the inventive method;
Fig. 3 is the signal of high in the clouds and many automobile interworking in a kind of embodiment for realize the inventive method Figure.
Specific embodiment
In the following description, elaborate many details to make person of ordinary skill in the field The present invention is appreciated more fully.But, for the technical staff in art it is evident that originally Realizing for invention can not be with some in these details.However, it should be understood that of the invention It is not limited to introduced specific embodiment.On the contrary, it may be considered that any with following feature and key element Combine to implement the present invention, regardless of whether whether they are related to different embodiments.Aspect therefore, below, Feature, embodiment and advantage are used for illustrative purposes only and are not construed as key element or the restriction of claim, Unless clearly proposed in the claims.
As background technology is referred to, prior art for parts quality analysis only in accordance with fail result come Conjecture failure cause.This mode without reliable data due to supporting, thus whether its analysis result is accurate Really remain to be discussed.Because current many vehicles have been assembled multiple sensors, what these sensors had can To obtain the running status of parts, what is had can monitor the phase of vehicle environment residing in the process of moving Close data, etc..Therefore, according to the present invention it is possible to obtain parts generation using these sensors Before failure, failure when, the related data after failure, according to these data, failure generation should be able to be obtained Relation between related data, so as to obtain the model of accurate description component failure.
Specifically, with reference to shown in Fig. 1, according to auto parts and components information processing of the present invention based on data analysis A kind of embodiment of method, it includes:
Step 10, collection comes from history data, the historical failure of a certain parts of many automobiles Data, and the history environment data residing for corresponding vehicle;
Step 20, based on collected historical data the fault model for the parts is formed, described Fault model characterizes the pass of the environmental data residing for the service data and the vehicle of the parts and failure Connection property;
Step 30, based on the fault model of a certain parts the content clothes about the parts are provided a user with Business.
It should be noted that in order to obtain accurate fault model, needs go the phase for obtaining many automobiles Data are closed, to avoid because the chance cause of some automobiles is (such as purely for the transient error behaviour of user Failure caused by making) and produce the modeling result of mistake.Thus, current big data application mode will make Obtain output result of the invention more accurate.Also, in order that output result is more accurate, except obtaining very Outside the related data of many automobiles, to same automobile, it is also possible to obtain above-mentioned in distance History data, historical failure data and history environment data.
Include multiple subsystems in current automotive system, be respectively used to perform the various functions of automobile. For example, engine system is responsible for controlling the running of engine;Chassis and brakes are responsible for the braking of automobile And the stable control of vehicle body in vehicle traveling process;Body control system is responsible for the antitheft and auto lamp of automobile The control of light;And the sensor of various internal or external data snooping functions is provided, etc..For this purpose, Each vehicle sub-systems can all have an electronic control unit (ECU) to be responsible for realizing needed for respective function Communication, data processing etc. are operated.Also, due to being all configured with vehicle bus in current automotive system, Each electronic control unit can easily by the service data of related components, event in respective system The environmental data that barrier data and sensor are detected uploads to vehicle bus.It is other by vehicle bus Vehicle sub-systems are also obtained in that related data.The realization of the inventive method is also based on this mode to grasp Make.
Fig. 2 is illustrated to realize a kind of framework of embodiment of the inventive method.With reference to shown in Fig. 2, vapour The electronic control unit of the subsystems of car all establishes communication connection with vehicle bus, vehicle-mounted end also with Vehicle bus establish communication connection.
Vehicle-mounted end includes:
Vehicle bus communication module, it provides vehicle bus communication interface, to set up vehicle-mounted end and vehicle The communication connection of bus;
Data communication module, it provides the communication interface of automobile access network, to set up vehicle-mounted end and cloud The communication connection of end analysis platform;
Data acquisition module, by the communication of vehicle bus communication module and vehicle bus, can be from vehicle The information that the electronic control unit of other vehicle sub-systems is uploaded on vehicle bus is obtained in bus, these The service data of related components in each vehicle sub-systems, fault data and environment number are just included in information According to;
Message processing module, arranges to the Various types of data that data acquisition module is obtained, for example will be all kinds of Data carry out classifying packing etc. by parts;After arrangement, by data communication module by related data It is sent to high in the clouds Data Analysis Platform;Subsequently, for the data that high in the clouds Data Analysis Platform is issued are solved Analysis, process, and by the data is activation after process to human-computer interaction module;Certainly, pacify for information transfer Full demand, message processing module can be to be encrypted after disposal data to data, only will be encrypted Data is activation give high in the clouds Data Analysis Platform;
High in the clouds Data Analysis Platform, obtain vehicle-mounted end send parts service data, fault data and After environmental data, stored and these data are analyzed, to form the fault model of parts, The data type of correlative factor of the fault model model comprising initiating failure, and the data type pair In the impact relation (can be characterized by formula or other forms) that failure occurs;And, quantify meter Calculate correlative factor change for the impact that failure occurs, and and then predict failure generation time (failure Prediction);Further, the preventive suggestions for component failure can also be formed and (avoids the driving of failure Suggestion), the quality report (such as comprising parts production suggestion) of relevant parts, etc.;High in the clouds number Fault model, failure prediction data, preventive suggestions, quality report formed according to analysis platform etc. can be below It is sent to vehicle-mounted end and thinks that message processing module is obtained;
Human-computer interaction module, its data sent according to message processing module, by image and/or sound Mode presents to user;For example, failure predication is audibly reminded user;By preventive suggestions scheming Image space formula is shown to user, etc..
Refer to as aforementioned, be to cause the output result of the inventive method more accurate, big data can be applied The mode of process.Thus, in a kind of embodiment of the present invention, between each automobile and high in the clouds Data Analysis Platform Interworking can be as shown in Figure 3.Assume that each automobile is all employed and the vehicle-mounted end identical shown in Fig. 2 Structure (also can adopt completely different structures) certainly, and with reference to shown in Fig. 2 and Fig. 3, each automobile will be respective Parts service data, fault data and environmental data be uploaded to high in the clouds Data Analysis Platform, work as high in the clouds Data platform complete data analysis obtain fault model, just can going through with combination failure model and automobile History data carry out failure predication, generate drive advice (for example, to avoid failure which should be avoided drive row For), then related data is issued in corresponding automobile, so that corresponding information is in by the vehicle-mounted end in automobile Now give user.So as to user can make in advance preparation to failure, also enhance traffic safety; Additionally, can also form the quality report comprising production suggestion according to fault model, vehicle system is supplied to Manufacturer or subsupplier business are made, to improve the quality of product.
Process is described further to be realized to the inventive method below by way of concrete application example.
By taking tire as an example, can be summarized as using the process of the present invention:According in a large number use same brand and Such as road conditions during the history tire pressure delta data of the tire of model, historical failure data and its use, The history environment such as temperature data are forming the fault model of the tire of the brand model.
So that the framework that Fig. 2, Fig. 3 illustrate realizes the present invention as an example, it is assumed that be assembled with tire on current automobile Pressure monitoring system (TPMS, Tire Pressure Monitoring System).In simple terms, tire pressure Monitoring system includes:The tyre pressure sensor being assemblied on tire, antenna integrated, it can be to tire pressure, tire temperature Detected Deng tire operating condition;And electronic control unit, receive tyre pressure sensor signal to obtain Tire operating condition data, and such as tire pressure and tire temperature letter are provided by the process to operating condition data The tire pressure monitoring functions such as breath shows, tire fault identification, tire fault warning.This electronic control unit is same Sample can be set up with vehicle bus (such as CAN) and communicate to connect, by tire operating condition data, failure Data are uploaded to vehicle bus.So as to vehicle-mounted end also can obtain tire operating condition number from vehicle bus According to, fault data.Similarly, the vehicle speed data detected by wheel speed sensors for assembling on current automobile, Also can be directly or indirectly through corresponding subsystem (such as chassis and brakes, body control system etc.) Vehicle bus are uploaded to, and are obtained for vehicle-mounted end.
Additionally, current automobile has also been increasingly being equipped with the various biographies for outside vehicle environment detection Sensor, by these sensors such as direct environment data such as gas epidemic disaster can be detected.These are straight Connecing environmental data can also be uploaded to vehicle bus, and be obtained by vehicle-mounted end.Also, connect due to having Enter the function of network, automobile can also obtain the indirect environmental data such as real-time traffic information (such as by car The message processing module for carrying end is obtained by data communication module networking).
After above-mentioned data are obtained, above-mentioned data can be uploaded to high in the clouds data analysis by message processing module Platform.High in the clouds Data Analysis Platform, will be per brand model together after the mass data for uploading is obtained Data and the corresponding fault data such as tire pressure data, speed, temperature, road conditions of tire when breaking down Associate.Then, analyzed by the data for having associated, find the same tire fault (example of generation Such as blow out) when data related to failure.For example, compared by mass data and found, speed is more than 110km/ Hour, tire pressure would generally be raised so that blow out extremely, now it is considered that this speed be to blow out it is related Data.Again for example, compared by mass data and found, when temperature is more than 35 degrees Celsius, tire pressure is usual Abnormal rising is understood so that blowing out, now it is considered that this temperature is and related data of blowing out.
After the data related to each failure are obtained, so that it may set up the brand model tire therefore Barrier model.Specifically, the content of the fault model contains the related data class for causing various tire faults Type and the data type are for the impact relation that corresponding tire fault occurs..Thus, can by fault model What situation to be easier to what type of failure in the tire for predicting the brand model.High in the clouds Data Analysis Platform can select the vehicle-mounted end by each automobile is issued to based on the prediction data of fault model. Or, it is also possible to it is handled as follows:When the current environment residing for certain car of discovery, vehicle operational mode symbol During the factor of the possibility initiating failure described in conjunction fault model, issue failure predication to the automobile and remind, User is presented to by the human-computer interaction module of vehicle-mounted end.As a example by finding that current temperature may cause to blow out, Failure predication remind mode can be:With text importing or voice at the human-computer interaction module of vehicle-mounted end The description below --- " current temperature may cause to blow out, and continue the probability of blowing out for travelling longer than X hours for report For Y%, please don't continue to drive!”.
Illustrated by described above and practical application, auto parts and components of the present invention based on data analysis Information processing method exists following significantly different relative to the failure analysis methods of prior art:1) number is collected According to type it is different:Not only as prior art collects result data (historical failure data), process is also collected Data (history data, history environment data);2) mode of Data Collection is different:By automobile The each subsystem being equipped with is collected in vehicle traveling process, rather than if existing only a few is after failure generation Just collect;3) history data and history environment number high with the failure degree of correlation is found based on mass data According to, and be derived from causing the factor of corresponding failure, rather than such as prior art based on failure by rule of thumb guessing Survey reason.Therefore, the present invention can provide the content service for being more accurately directed to parts, for example accurately Failure predication result.
Although the present invention is disclosed as above with preferred embodiment, the present invention is not limited to this.Any Art personnel, the various changes made without departing from the spirit and scope of the present invention and modification, Should include in protection scope of the present invention, therefore protection scope of the present invention should be limited with claim Scope be defined.

Claims (9)

1. a kind of auto parts and components information processing method based on data analysis, it is characterised in that include:
Collection comes from history data, the historical failure data of a certain parts of many automobiles, with And the history environment data residing for corresponding vehicle;
Fault model for the parts, the fault model are formed based on collected historical data Characterize the relevance of the environmental data residing for the service data and the vehicle of the parts and failure;
Content service about the parts is provided a user with based on the fault model of a certain parts.
2. the auto parts and components information processing method of data analysis is based on as claimed in claim 1, and its feature exists In the content service includes:The factor of initiating failure is obtained according to fault model;Finding currently to deposit When the factor of initiating failure is met, there is provided remind about the failure predication of the parts.
3. the auto parts and components information processing method of data analysis is based on as claimed in claim 2, and its feature exists In, the failure predication remind include it is following any one or combine:It is several that offer parts break down The possibility time that rate, offer parts break down.
4. the auto parts and components information processing method of data analysis is based on as claimed in claim 1, and its feature exists In the content service includes:Offer avoids the drive advice of component failure.
5. the auto parts and components information processing method of data analysis is based on as claimed in claim 1, and its feature exists In the content service includes:Quality report about parts is provided.
6. the auto parts and components information processing method of data analysis is based on as claimed in claim 1, and its feature exists In the history data includes:The mode setting information of electronic component, each function mould of parts The state-detection data of block.
7. the auto parts and components information processing method of data analysis is based on as claimed in claim 1, and its feature exists In the historical failure data includes:The fault message of parts when time of failure, failure occur.
8. the auto parts and components information processing method of data analysis is based on as claimed in claim 1, and its feature exists Include following any one or combinations in, history environment data:Temperature, humidity, weather, road conditions, Vehicle location, front-and-rear vehicle distance, distance travelled.
9. the auto parts and components information processing method of data analysis is based on as claimed in claim 1, and its feature exists In, parts include it is following any one:Tire, air-conditioning, engine, power transmission, Brake system.
CN201510745284.1A 2015-11-05 2015-11-05 Data analysis based automobile part information processing method Pending CN106682795A (en)

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Cited By (10)

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CN109298902A (en) * 2017-07-24 2019-02-01 Sap欧洲公司 The telematics of big data driving with AR/VR user interface
CN110600112A (en) * 2019-08-12 2019-12-20 东软医疗系统股份有限公司 Method, device and equipment for discovering quality problems of parts
CN110637327A (en) * 2017-06-20 2019-12-31 宝马股份公司 Method and apparatus for content push
CN111105522A (en) * 2019-12-10 2020-05-05 郑州嘉晨电器有限公司 Vehicle health prediction system and method
CN111142499A (en) * 2019-12-19 2020-05-12 大众问问(北京)信息科技有限公司 Vehicle fault detection method, device and equipment
CN112041819A (en) * 2018-06-29 2020-12-04 罗伯特·博世有限公司 Method for monitoring and identifying sensor faults in an electric drive system
CN113033860A (en) * 2019-12-25 2021-06-25 宁波吉利汽车研究开发有限公司 Automobile fault prediction method and device, electronic equipment and storage medium
CN113268640A (en) * 2020-02-17 2021-08-17 中国航发商用航空发动机有限责任公司 Metal filing fault analysis system and method
CN113687642A (en) * 2021-08-13 2021-11-23 合肥维天运通信息科技股份有限公司 Intelligent early warning method and system for potential hazards of logistics vehicles
CN114076680A (en) * 2020-08-17 2022-02-22 北京福田康明斯发动机有限公司 Engine assembly detection method, system, storage medium and electronic device

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Cited By (13)

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CN110637327A (en) * 2017-06-20 2019-12-31 宝马股份公司 Method and apparatus for content push
US11453412B2 (en) 2017-06-20 2022-09-27 Bayerische Motoren Werke Aktiengesellschaft Method and device for pushing content
CN109298902A (en) * 2017-07-24 2019-02-01 Sap欧洲公司 The telematics of big data driving with AR/VR user interface
CN112041819A (en) * 2018-06-29 2020-12-04 罗伯特·博世有限公司 Method for monitoring and identifying sensor faults in an electric drive system
CN110600112A (en) * 2019-08-12 2019-12-20 东软医疗系统股份有限公司 Method, device and equipment for discovering quality problems of parts
CN111105522A (en) * 2019-12-10 2020-05-05 郑州嘉晨电器有限公司 Vehicle health prediction system and method
CN111142499B (en) * 2019-12-19 2021-11-30 大众问问(北京)信息科技有限公司 Vehicle fault detection method, device and equipment
CN111142499A (en) * 2019-12-19 2020-05-12 大众问问(北京)信息科技有限公司 Vehicle fault detection method, device and equipment
CN113033860A (en) * 2019-12-25 2021-06-25 宁波吉利汽车研究开发有限公司 Automobile fault prediction method and device, electronic equipment and storage medium
CN113268640A (en) * 2020-02-17 2021-08-17 中国航发商用航空发动机有限责任公司 Metal filing fault analysis system and method
CN113268640B (en) * 2020-02-17 2022-09-13 中国航发商用航空发动机有限责任公司 Metal filing fault analysis system and method
CN114076680A (en) * 2020-08-17 2022-02-22 北京福田康明斯发动机有限公司 Engine assembly detection method, system, storage medium and electronic device
CN113687642A (en) * 2021-08-13 2021-11-23 合肥维天运通信息科技股份有限公司 Intelligent early warning method and system for potential hazards of logistics vehicles

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Application publication date: 20170517