CN114841679A - Intelligent management system for vehicle running data - Google Patents

Intelligent management system for vehicle running data Download PDF

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CN114841679A
CN114841679A CN202210747977.4A CN202210747977A CN114841679A CN 114841679 A CN114841679 A CN 114841679A CN 202210747977 A CN202210747977 A CN 202210747977A CN 114841679 A CN114841679 A CN 114841679A
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vehicle
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CN114841679B (en
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张凯元
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Shaanxi Junkai Electronic Technology 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
    • G06Q10/10Office automation; Time management
    • G06Q10/103Workflow collaboration or project management
    • GPHYSICS
    • G06COMPUTING; CALCULATING OR COUNTING
    • G06FELECTRIC DIGITAL DATA PROCESSING
    • G06F16/00Information retrieval; Database structures therefor; File system structures therefor
    • G06F16/10File systems; File servers
    • G06F16/17Details of further file system functions
    • G06F16/172Caching, prefetching or hoarding of files
    • GPHYSICS
    • G06COMPUTING; CALCULATING OR COUNTING
    • G06FELECTRIC DIGITAL DATA PROCESSING
    • G06F16/00Information retrieval; Database structures therefor; File system structures therefor
    • G06F16/10File systems; File servers
    • G06F16/17Details of further file system functions
    • G06F16/174Redundancy elimination performed by the file system
    • G06F16/1744Redundancy elimination performed by the file system using compression, e.g. sparse files
    • GPHYSICS
    • G06COMPUTING; CALCULATING OR COUNTING
    • G06FELECTRIC DIGITAL DATA PROCESSING
    • G06F16/00Information retrieval; Database structures therefor; File system structures therefor
    • G06F16/20Information retrieval; Database structures therefor; File system structures therefor of structured data, e.g. relational data
    • G06F16/24Querying
    • G06F16/245Query processing
    • G06F16/2458Special types of queries, e.g. statistical queries, fuzzy queries or distributed queries
    • G06F16/2462Approximate or statistical queries
    • GPHYSICS
    • G07CHECKING-DEVICES
    • G07CTIME OR ATTENDANCE REGISTERS; REGISTERING OR INDICATING THE WORKING OF MACHINES; GENERATING RANDOM NUMBERS; VOTING OR LOTTERY APPARATUS; ARRANGEMENTS, SYSTEMS OR APPARATUS FOR CHECKING NOT PROVIDED FOR ELSEWHERE
    • G07C5/00Registering or indicating the working of vehicles
    • G07C5/08Registering or indicating performance data other than driving, working, idle, or waiting time, with or without registering driving, working, idle or waiting time
    • G07C5/0841Registering performance data
    • G07C5/085Registering performance data using electronic data carriers

Abstract

The invention relates to the technical field of data processing, in particular to an intelligent management system for vehicle driving data, which comprises: the vehicle terminal comprises a vehicle real-time positioning module, an operation statistical module, an alarm module, a vehicle terminal of a travel statistical module, a vehicle application module and a user terminal of a vehicle management module, wherein wireless communication is carried out between the vehicle terminal and the user terminal, the vehicle terminal comprises a data acquisition module, a first calculation unit, a data segmentation unit, a second calculation unit, a third calculation unit and a compression storage module, the influence data of a vehicle are acquired through the vehicle terminal, the influence data are calculated and analyzed to obtain the importance degree of the segmentation data, and the mode of compressing and storing the segmentation data is selected according to the importance degree and the importance degree threshold value.

Description

Intelligent management system for vehicle running data
Technical Field
The invention relates to the technical field of data processing, in particular to an intelligent management system for vehicle driving data.
Background
Vehicle management has been a management key point of enterprises, public institutions, individual organizations and the like, most of management has unclear, inaccurate and nonuniform loopholes when vehicles are managed, such as unclear vehicle outgoing journey and position, inaccurate expense reimbursement of outgoing vehicles and no uniform expense reimbursement standard, so that difficulty is brought to vehicle management.
However, in the course of vehicle management, the course statistical module can record the data of the vehicle running process of the vehicle state and the running time in real time, however, the data volume of the vehicle running process is large, which affects the data transmission efficiency, and the data can be replaced only by storing for a certain time, if important data is lost, the analysis of the subsequent vehicle data is affected.
Therefore, it is desirable to provide an intelligent management system for vehicle driving data to solve the above problems.
Disclosure of Invention
The invention provides an intelligent management system for vehicle driving data, which aims to solve the existing problems.
The intelligent management system for the vehicle driving data adopts the following technical scheme:
the method comprises the following steps: vehicle terminal and user terminal, vehicle terminal and user terminal carry out wireless communication through cloud ware, vehicle terminal includes:
the data acquisition module is used for acquiring influence data of surrounding vehicles and the vehicle on the driving influence of the vehicle in the driving process of the vehicle in real time, wherein the influence data comprise: the speed of the vehicle, the braking force, the rotating speed and the rotating angle of the steering wheel, the speed and the number of surrounding vehicles and the distance between the vehicle and the surrounding vehicles;
a data analysis processing module, comprising: the first calculation unit is used for acquiring a first influence degree of surrounding vehicles on the vehicle in the driving process of the vehicle and each mutation degree corresponding to the influence data of the vehicle according to the influence data; the data segmentation unit is used for constructing a corresponding mutation degree curve of which the mutation degree changes along with time according to the mutation degree, acquiring maximum mutation time and minimum mutation time according to all the mutation degree curves, and dividing the influence data into a plurality of segmented data according to the maximum mutation time and the minimum mutation time; a second calculation unit for calculating a second degree of influence of each of the segmented data, respectively, based on the corresponding degree of mutation of each of the segmented data; a third calculation unit for calculating the degree of importance of each segment data to the vehicle based on the first degree of influence and the second degree of influence of each segment data;
and the compression storage module is used for selecting the compression mode of each piece of section data and the storage mode of the compression data according to the importance degree of each piece of section data to the vehicle and the importance degree threshold value.
Further, the first calculation unit includes:
an average speed calculation unit for calculating an average speed of speeds of all surrounding vehicles;
a minimum distance calculation unit that calculates a minimum distance between the vehicle and a surrounding vehicle;
and the first influence degree calculation unit is used for calculating a first influence degree according to the average speed, the minimum distance and the speed of the vehicle.
Further, the first calculation unit includes:
a direction sudden change degree calculation unit for calculating a direction sudden change degree of the steering wheel based on the speed of the vehicle itself and the rotational speed of the steering wheel, which affect data at each time;
a speed sudden change degree calculation unit for calculating a speed sudden change degree of the own speed of the vehicle in each period according to the own speed of the vehicle of the influence data at each moment;
and the braking force mutation degree calculating unit is used for calculating the braking force mutation degree of the vehicle per se in each time interval according to the vehicle braking force of the influence data at each moment.
Further, the data segmentation unit includes:
the curve construction unit is used for constructing mutation degree curves of which each mutation degree changes along with time in the same coordinate system;
the time point screening unit is used for acquiring mutation starting time points and mutation ending time points corresponding to the time periods in which mutation occurs in each mutation degree curve from the same coordinate system of the curve construction unit, and selecting the minimum mutation starting time point in all the mutation starting time points and the maximum mutation ending time point in all the mutation ending time points;
the time period segmenting unit is used for recording data corresponding to the time from the minimum mutation starting time point to the maximum mutation ending time point as a mutation time period, selecting time periods corresponding to the same time length before and after the mutation time period as a pre-mutation time period and a post-mutation time period, and recording other data as non-segmented time periods;
and the segmentation determining unit is used for sequentially recording each segmentation data corresponding to the pre-mutation period, the post-mutation period and the non-segmentation period which are screened by the time period screening unit as pre-mutation data, mutation period data, post-mutation data and non-segmentation data.
Further, the compression storage module comprises:
a threshold setting unit for setting an importance threshold in advance;
the judging unit is used for respectively judging the importance degree corresponding to each segmented data and the size of the importance degree threshold;
the compression selection unit is used for selecting the compression mode of each segment data according to the judgment result of the judgment unit;
and the storage selection unit is used for selecting the storage mode of each segment data according to the judgment result of the judgment unit.
Further, the compression selection unit includes:
the first compression unit is used for carrying out lossy compression on each segment data corresponding to all the sections with the importance degrees smaller than the importance degree threshold;
and the second compression unit is used for performing lossless compression on all the segmented data corresponding to the importance degrees larger than the importance degree threshold value.
Further, the storage selection unit includes:
the first storage unit is used for storing each segment data of which all the importance degrees are smaller than the importance degree threshold value into a cache region;
the sorting unit is used for sorting all the segmented data with the importance degrees larger than the importance degree threshold value according to the corresponding importance degrees from large to small;
and the second storage unit is used for sequentially storing the compressed data according to the magnitude sequence of the importance degrees and storing the compressed data in a stable storage area.
Further, the compressed storage module further comprises:
the buffer area updating unit is used for calculating the difference value between each influence data of the segment data corresponding to each compressed data to be stored and each influence data corresponding to the previous moment stored in the buffer area during each storage, storing the difference value and the segment data of the current moment into the buffer area and covering the segment data corresponding to the previous moment;
and the stable storage area updating unit is used for overwriting the stored compressed data with the importance degree smaller than that corresponding to the compressed data in the stable storage area when the compressed data corresponding to the segmented data is stored each time after the stable storage area is full.
The invention has the beneficial effects that: according to the intelligent management system for the vehicle driving data, the influence data acquired in real time is analyzed, the data are segmented according to the mutation degree of the influence data, the distinction between the abnormal segment data and the normal segment data is realized, the compression mode and the storage mode of each segment of data are selected according to the importance degree of the segment data, and the lossless compression, preferential storage and stable storage of the segment data corresponding to high importance degree are realized according to the importance degree sequence, so that the storage of the important data is ensured, and the data transmission efficiency is improved.
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In order to more clearly illustrate the embodiments of the present invention or the technical solutions in the prior art, the drawings used in the description of the embodiments or the prior art will be briefly described below, and it is obvious that the drawings in the following description are only some embodiments of the present invention, and for those skilled in the art, other drawings can be obtained according to these drawings without creative efforts.
FIG. 1 is a system block diagram illustrating the general steps of an embodiment of the intelligent management system for vehicle travel data of the present invention;
FIG. 2 is a schematic diagram of the data analysis processing module of FIG. 1;
FIG. 3 is a graph of the degree of mutation with time for each degree of mutation;
fig. 4 is a schematic diagram of various time periods after segmentation.
Detailed Description
The technical solutions in the embodiments of the present invention will be clearly and completely described below with reference to the drawings in the embodiments of the present invention, and it is obvious that the described embodiments are only a part of the embodiments of the present invention, and not all of the embodiments. All other embodiments, which can be derived by a person skilled in the art from the embodiments given herein without making any creative effort, shall fall within the protection scope of the present invention.
In the embodiment of the system for intelligently managing the vehicle driving data, the vehicles covered in the scheme include but are not limited to: the present embodiment describes the management of vehicles, vehicles and equipment in all types of vehicles, such as buses, public vehicles, private vehicles, operation vehicles (all operation vehicles such as taxies, taxi appointments, buses, long and short distance passenger cars), operation vehicles (all operation vehicles such as water sprinklers, fog gun cars, cleaning cars), and the like, and as shown in fig. 1, the system includes: vehicle terminal and user terminal, vehicle terminal and user terminal carry out wireless communication through cloud server, and vehicle terminal, user terminal and cloud server constitute a management platform, and is specific, and vehicle terminal includes: data acquisition module 1, data analysis and processing module 2 and compression storage module 3, data acquisition module 1 is used for obtaining in real time that the vehicle goes in-process surrounding vehicle, this vehicle self to the influence data that this vehicle went the influence, and is concrete, and the influence data includes: the speed and the braking force of the vehicle, the rotating speed and the rotating angle of a steering wheel, the speed and the number of surrounding vehicles and the distance between the vehicle and the surrounding vehicles are acquired by utilizing corresponding sensors or cameras; secondly, the data acquisition module 1 further includes a vehicle track acquisition module and a travel statistics module to make the whole system more complete, as shown in fig. 2, the data analysis processing module 2 includes: the system comprises a first calculating unit 201, a data segmenting unit 202, a second calculating unit 203 and a third calculating unit 204, wherein the first calculating unit 201 is used for acquiring a first influence degree of surrounding vehicles on the vehicles and each mutation degree corresponding to influence data of the vehicles according to the influence data acquired by the data acquisition module 1 in the running process; the data segmenting unit 202 is configured to construct a mutation degree curve of which the corresponding mutation degree changes with time according to the mutation degree calculated by the first calculating unit 201, obtain maximum mutation time and minimum mutation time according to all the mutation degree curves, and segment the influence data into a plurality of segmented data according to the maximum mutation time and the minimum mutation time; the second calculating unit 203 is used for calculating a second degree of influence of each piece of segment data according to the corresponding degree of mutation of each piece of segment data, the third calculating unit 204 is used for calculating the degree of importance of each piece of segment data to the vehicle according to the first degree of influence and the second degree of influence of each piece of segment data, and the compression storage module 3 is used for selecting a compression mode of each piece of segment data and a storage mode of the compressed data according to the degree of importance and the degree of importance threshold of each piece of segment data to the vehicle.
Specifically, the first calculation unit includes: the system comprises an average speed calculation unit, a minimum distance calculation unit, a first influence degree calculation unit, a direction mutation degree calculation unit, a speed mutation degree calculation unit and a brake force mutation degree calculation unit, wherein the average speed calculation unit is used for calculating the average speed of the speeds of all vehicles around the vehicle, which are acquired by a data acquisition module; the minimum distance calculation unit is used for calculating the minimum distance between the vehicle and the surrounding vehicles; the first influence degree calculation unit is configured to calculate a first influence degree of the vehicle according to the average speed, the minimum distance, and the speed of the vehicle, and specifically, calculate the first influence degree according to the following equation (1):
Figure 426478DEST_PATH_IMAGE001
(1)
wherein, the first and the second end of the pipe are connected with each other,
Figure 233897DEST_PATH_IMAGE002
indicating vehicles
Figure 795329DEST_PATH_IMAGE003
To a first degree of influence of (a),
Figure 219357DEST_PATH_IMAGE004
as vehicles
Figure 399802DEST_PATH_IMAGE003
Is calculated from the average of all the vehicle speeds around,
Figure 359930DEST_PATH_IMAGE005
indicating vehicles
Figure 561105DEST_PATH_IMAGE003
The minimum distance to the surrounding vehicle,
Figure 206850DEST_PATH_IMAGE006
indicating vehicles
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The speed of the motor vehicle is set to be,
Figure 504156DEST_PATH_IMAGE007
indicating vehicles
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Number of surrounding vehicles.
Wherein the abrupt direction change degree calculation unit is configured to calculate the abrupt direction change degree of the steering wheel based on the speed of the vehicle itself and the rotational speed of the steering wheel, which affect the data at each time, and calculate the abrupt direction change degree based on the following equation (2):
Figure 651683DEST_PATH_IMAGE008
(2)
wherein the content of the first and second substances,
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indicating the degree of abrupt change in direction of the steering wheel of the vehicle from time t-1 to time t,
Figure 561181DEST_PATH_IMAGE010
is the angle of rotation of the steering wheel of the vehicle,
Figure 900895DEST_PATH_IMAGE011
indicating the rotational speed of the vehicle steering wheel at the end of the jump at the ith instant,
Figure 52391DEST_PATH_IMAGE012
indicating that the steering wheel is at
Figure 207691DEST_PATH_IMAGE013
The moment is the rotational speed at which the jump starts,
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representing the number of moments, takes the empirical value of 10,
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to represent
Figure 457910DEST_PATH_IMAGE014
Figure 446594DEST_PATH_IMAGE016
Indicating the rotational speed of the vehicle steering wheel at the ith moment,
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indicating the rotational speed of the vehicle steering wheel at the i-1 th instant.
Wherein the speed sudden change degree calculation unit is configured to calculate the speed sudden change degree of the vehicle own speed in each period from the vehicle own speed of the influence data at each time, and calculate the speed sudden change degree according to the following expression (3):
Figure 912790DEST_PATH_IMAGE017
(3)
wherein the content of the first and second substances,
Figure 38878DEST_PATH_IMAGE018
a speed abrupt change degree representing the speed of the vehicle itself from t-1 to t,
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indicating the vehicle's own speed at the end of the sudden change at the ith time,
Figure 906657DEST_PATH_IMAGE020
indicating that the vehicle is at
Figure 396893DEST_PATH_IMAGE021
The individual moment is the vehicle's own speed at the beginning of the sudden change,
Figure 885643DEST_PATH_IMAGE014
representing the number of moments, takes the empirical value of 10,
Figure 216130DEST_PATH_IMAGE015
to represent
Figure 37718DEST_PATH_IMAGE014
Figure 936404DEST_PATH_IMAGE016
Indicating the vehicle's own speed at the ith time,
Figure 505925DEST_PATH_IMAGE015
which represents the vehicle's own speed at the i-1 th instant.
Wherein, the brake dynamics sudden change degree calculating unit is used for calculating the dynamics sudden change degree of the self brake dynamics of the vehicle in each time interval according to the vehicle brake dynamics of the influence data at each moment, and the dynamics sudden change degree is calculated according to the following formula (4):
Figure 374524DEST_PATH_IMAGE022
(4)
wherein the content of the first and second substances,
Figure 486837DEST_PATH_IMAGE023
indicating the degree of sudden change of the braking force of the vehicle from t-1 to t,
Figure 884320DEST_PATH_IMAGE019
the braking force of the vehicle is shown to be the braking force at the end of sudden change at the ith moment,
Figure 911444DEST_PATH_IMAGE020
indicating that the steering wheel is at
Figure 583734DEST_PATH_IMAGE021
The moment is the braking force at the beginning of the sudden change, the experimental value is 10,
Figure 409607DEST_PATH_IMAGE015
to represent
Figure 712413DEST_PATH_IMAGE014
Figure 397472DEST_PATH_IMAGE016
Indicating the braking force of the vehicle at the ith moment,
Figure 640497DEST_PATH_IMAGE015
the braking force of the vehicle at the i-1 th moment is shown.
Specifically, the second calculation unit calculates the second degree of influence of each of the segmented data using the following equation (5):
Figure 461822DEST_PATH_IMAGE024
(5)
wherein the content of the first and second substances,
Figure 794583DEST_PATH_IMAGE025
a degree coefficient indicating the degree of directional mutation,
Figure 763676DEST_PATH_IMAGE026
a degree coefficient indicating the degree of the abrupt change in velocity,
Figure 279234DEST_PATH_IMAGE027
degree coefficient for representing degree of force mutation, and each second influence degree of the vehicle in time before and after the change of the data is different, so that the setting is carried out
Figure 79699DEST_PATH_IMAGE028
Indicates the degree of directional mutation of the nth segmented data,
Figure 193149DEST_PATH_IMAGE009
indicates the degree of speed mutation of the nth segmented data,
Figure 711855DEST_PATH_IMAGE009
indicating the degree of force mutation of the nth segmented data.
Specifically, the third calculation unit calculates the degree of importance of each piece of segment data to the vehicle using the following equation (6):
Figure 670584DEST_PATH_IMAGE029
(6)
wherein the content of the first and second substances,
Figure 92600DEST_PATH_IMAGE030
indicates the degree of importance of the nth segmented data,
Figure 845792DEST_PATH_IMAGE031
indicating a first degree of influence of the surrounding vehicle on the vehicle,
Figure 117374DEST_PATH_IMAGE032
a second degree of influence of each piece of segment data on the vehicle,
Figure DEST_PATH_IMAGE033
a coefficient representing a first degree of influence,
Figure 207690DEST_PATH_IMAGE034
representing the second influence degree coefficient.
Specifically, the data segmentation unit includes: the system comprises a curve construction unit, a time point screening unit, a time period segmentation unit and a segmentation determination unit, wherein the curve construction unit is used for constructing mutation degree curves of each mutation degree changing along with time in the same coordinate system, specifically, as shown in fig. 3, a direction mutation degree curve is constructed according to the direction mutation degree in the same time period, a speed mutation degree curve is constructed according to the speed mutation degree, and a force mutation degree curve is constructed according to the force mutation degree, the three mutation degree curves are constructed in the same coordinate system, the coordinate system takes a time point as a horizontal coordinate, and each corresponding mutation degree is taken as a vertical coordinate; the time point screening unit is used for acquiring mutation starting time points and mutation ending time points corresponding to the time periods in which mutation occurs in each mutation degree curve from the same coordinate system of the curve construction unit, and selecting the minimum mutation starting time point in all the mutation starting time points and the maximum mutation ending time point in all the mutation ending time points; the time period segmenting unit is configured to record data corresponding to a time period from a minimum mutation starting time point to a maximum mutation ending time point as a mutation time period, select time periods corresponding to the same time length before and after the mutation time period as a pre-mutation time period and a post-mutation time period, record other data as non-segmented time periods, and set the time length as K, and as shown in fig. 4, the segment determining unit is configured to record each segment data corresponding to the pre-mutation time period, the post-mutation time period, and the non-segmented time period screened by the time period screening unit as pre-mutation data, post-mutation data, and non-segment data in sequence.
Specifically, the compression storage module includes: the device comprises a threshold setting unit, a judging unit, a compression selecting unit and a storage selecting unit, wherein the threshold setting unit is used for presetting an importance degree threshold; the judging unit is used for respectively judging the importance degree corresponding to each segment data and the size of the importance degree threshold; the compression selecting unit is configured to select a compression mode of each segment data according to a judgment result of the judging unit, and specifically, the compression selecting unit includes: the first compression unit is used for carrying out lossy compression on all the segmented data corresponding to the importance degree smaller than the importance degree threshold; the storage selecting unit is configured to select a storage manner of each piece of segment data according to a judgment result of the judging unit, and specifically, the storage selecting unit includes: the device comprises a first storage unit, a sorting unit and a second storage unit, wherein the first storage unit is used for storing each segment data of which all importance degrees are smaller than the importance degree threshold value in a cache region; the sorting unit is used for sorting all the segmented data with the importance degree larger than the importance degree threshold value according to the corresponding importance degree from large to small; and the second storage unit stores the compressed data in the order of the importance degrees and stores the compressed data in the stable storage area.
Specifically, the compressed storage module further includes: the device comprises a cache area updating unit and a stable storage area updating unit, wherein the cache area updating unit is used for calculating the difference value between each influence data of the segmented data corresponding to each compressed data to be stored and each influence data corresponding to the previous moment stored in the cache area during each storage, storing the difference value and the segmented data of the current moment into the cache area and covering the segmented data corresponding to the previous moment, and the stable storage area updating unit is used for covering the stored compressed data with the importance degree smaller than that corresponding to the compressed data in the stable storage area during each storage of the compressed data corresponding to the segmented data after the stable storage area is full.
The user terminal further includes: the system comprises an administrator port and a member port, wherein the administrator port is used for registering an administrator account, uploading an identity card photo and selecting an individual user or an organization user through face recognition, and organization information (information such as organization name, organization type, organization industry, organization introduction, organization number and the like) and an uploading business license are required to be established when the organization user is selected; the member port is used for registering an account number of a company member, firstly uploading an identity card photo (a driver also needs to upload a driving license photo) for face recognition authentication, searching and joining in a company organization, submitting an outgoing vehicle application by a driver through a mobile phone APP on a user terminal when the user uses the vehicle, then selecting a vehicle type (public vehicle application, private vehicle public use and the like), applying for the vehicle and filling information such as a vehicle starting point, an outgoing destination, a route point, an outgoing type (one-way or round trip), outgoing time, traffic time, vehicle number and the like, wherein the user needs to upload a vehicle driving license for the first time, fill information such as a vehicle brand, a vehicle model, a vehicle type and the like, particularly, after the vehicle use is finished, a driving track graph is automatically generated by the system, and a vehicle cost detail list of the vehicle is generated through system analysis and calculation according to the recorded actual mileage, energy consumption, vehicle loss per kilometer and the like, specifically, after each time of the outgoing vehicle, the system generates a detailed statement of the outgoing vehicle, the content comprises the date, the time, the driving track graph, the mileage, the fuel oil quantity, the fuel oil cost, the vehicle damage cost, the total cost and the like, when the abnormal state such as the violation state, the temporary increase of the travel point and the like occurs, the statement is displayed by different colors, the administrator can increase or decrease the content of the statement according to the requirement, the vehicle using personnel can export, store and print the statement through the member port, and can also automatically generate reports and reports according to the conditions of the outgoing vehicle by day, time, month, season and year, the reports and reports are sent to the appointed electronic mailbox of the member or export data, printing and the like, the mobile phone APP of the user terminal calculates the information such as the cost increase rate of the outgoing vehicle, the number of the outgoing vehicles, the total mileage of the outgoing vehicles, the place with the highest frequency of the outgoing vehicles and the like, further comprising: the driver comprehensive condition evaluation database is used for uploading identity card photos and making face recognition when a driver registers for the first time, the system identifies the basis of the driver according to the unique identity card bound by each driver, records all driving conditions of the driver according to the bound identity card, calculates and scores by the system to form a driver comprehensive quality scoring system, the scores comprise the traffic rule compliance condition during outgoing, the driving stability (judging whether the vehicle terminal equipment has rapid acceleration, rapid deceleration, rapid turning and the like) and the data of illegal driving during outgoing, and also comprises background management authorities which are used for setting multi-level management authorities at the background, can carry out hierarchical management according to the architecture set by an enterprise unit, and each level can open corresponding authorities for setting, checking, modifying and the like according to the duty of a post, thereby facilitating the management and protecting the privacy and safety, when the private car is used, the system collects user data only during the period of outgoing and using the car (the application of using the car is submitted), and does not collect any personal information at other time.
The vehicle terminal further includes: the positioning module is used for acquiring the real-time position, the driving path, the driving track, the driving mileage and the time information of the vehicle according to technologies such as GPS positioning, Beidou satellite positioning, cellular data positioning and WiFi positioning, and also acquiring the information such as the real-time position, the driving path, the driving track, the driving mileage and the time of the vehicle through terminal equipment of the vehicle or additional terminal equipment (such as OBD equipment, video acquisition equipment, audio acquisition equipment, face recognition equipment, electronic oil-float equipment and the like). Note: the mobile phone APP of the member port and the mobile phone APP of the vehicle own terminal device or the additional terminal device (such as OBD device, video acquisition device, audio acquisition device, face recognition device, electronic oil float device and the like) can be used simultaneously, or can be realized by independently utilizing the mobile phone APP of the member port, the data acquisition module also acquires energy consumption data such as fuel quantity, fuel gas quantity, power consumption (new energy automobile) and the like of the vehicle according to the vehicle type (brand, model and the like), and the actual energy consumption cost of the outgoing vehicle is automatically calculated by utilizing the data analysis processing module of the system according to the daily oil price, daily gas price and charging price data of the internet and the distance of the driving track of the map The actual energy consumption is calculated more accurately by using dynamic and static basic vehicle information such as throttle opening, fuel injection quantity, engine speed and the like, and the average vehicle loss cost per kilometer when the vehicle goes out is obtained according to vehicle types (brand, model and the like), wherein the vehicle losses include but are not limited to: the daily maintenance fee, the maintenance fee and the like, concretely, the data acquisition module acquires a map function, illegal photographing points, traffic flow data, a vehicle real-time position, a driving direction and current vehicle speed information by self-building or butting a third-party electronic map and a navigation system (such as hectometre, Gaode and the like) interface, and simultaneously records an actual driving track, actual driving mileage, rapid acceleration, rapid deceleration, rapid turning and overspeed information of a vehicle, in order to prevent the vehicle route from deviating from the track, the data acquisition module of the system acquires the actual driving position, then the route of the system which is filled according to a vehicle using application and is planned by an electronic map navigation is set as an outgoing normal route, the electronic map navigation plans a plurality of normal routes, when the actual driving position is no longer the normal route, the system judges that the current vehicle runs illegally, and the function is mainly used for platform vehicle standard management, specifically, the violation state: the system judges that a deviation planning path occurs, and if a new outgoing path point is added through system voice prompt, the system does not successfully add or respond, and temporarily increases the outgoing path point: the system judges that a deviation from the planned path occurs, and whether the new outgoing path point is added or not is prompted by the system voice, then the outgoing path point is successfully added, and the following steps are carried out: when the system judges the violation state, the system can push an early warning message to a management responsible person set by the system through modes of pushing a message, sending a short message, dialing a voice call voice prompt and the like of a mobile phone APP of a member port (a user can set the system by himself at the background), the mobile phone APP at the management port can check information such as the position, the speed, the track and the like of a vehicle, when the vehicle is delivered out, a generated report marks violation behaviors with red characters, and carries out one-time violation behavior recording on the driver, the bad record is bound with an identity card number in a database of the system, and the illegal record cannot be modified without special permission; the system judges that an outgoing path point is temporarily increased, the system can push an early warning message to a management responsible person set by the system through a mobile phone APP push message of a user side, a short message prompt sending mode and the like (a user can set the system by himself at the background), the mobile phone APP at a management port can check information such as vehicle position, vehicle speed, track and the like, meanwhile, the system automatically generates an application for increasing the new outgoing position, if the application passes, the new outgoing position is marked by yellow characters when a vehicle-using report is generated, if the application does not pass, the system automatically executes according to illegal behaviors, specifically, when the vehicle real-time track and the vehicle position are monitored, the vehicle belongs to a company and is provided with vehicle-owned terminal equipment or additional terminal equipment (such as OBD equipment, video acquisition equipment, audio acquisition equipment, face recognition equipment, electronic oil floating equipment and the like), and a manager or an account number assigned with related authority can check the vehicle position and track in real time through the mobile phone APP or a computer of the management port; the vehicle belongs to private (private public) or public vehicles, and is not provided with vehicle own terminal equipment or additional terminal equipment (such as OBD equipment, video acquisition equipment, audio acquisition equipment, face recognition equipment, electronic oil-floating equipment and the like), and an administrator or an account number assigned with related authority can view the real-time position and track of the vehicle during the period of external vehicle use (submitted vehicle use application) through a mobile phone APP or a computer of a management port.
The electronic fence module is used for setting an allowable moving range or a forbidden moving range through an electronic map circling area or a manual input area, and the system judges that the vehicle is in the violation state when the acquired vehicle position is inconsistent with the set area.
In summary, the present invention provides an intelligent management system for vehicle driving data, which analyzes impact data collected in real time, segments the data according to the degree of mutation of the impact data, and distinguishes abnormal segment data from normal segment data, selects a compression mode and a storage mode for each segment of data according to the importance degree of the segment data, and performs lossless compression, preferential storage and stable storage on the segment data corresponding to a high importance degree according to the order of importance degree, thereby ensuring the storage of important data and improving the data transmission efficiency.
The above description is only for the purpose of illustrating the preferred embodiments of the present invention and is not to be construed as limiting the invention, and any modifications, equivalents, improvements and the like that fall within the spirit and principle of the present invention are intended to be included therein.

Claims (8)

1. An intelligent management system for vehicle driving data, comprising: vehicle terminal and user terminal, vehicle terminal and user terminal carry out wireless communication through cloud ware, its characterized in that, vehicle terminal still includes:
the data acquisition module is used for acquiring influence data of surrounding vehicles and the vehicle on the driving influence of the vehicle in the driving process of the vehicle in real time, wherein the influence data comprise: the speed of the vehicle, the braking force, the rotating speed and the rotating angle of the steering wheel, the speed and the number of surrounding vehicles and the distance between the vehicle and the surrounding vehicles;
a data analysis processing module, comprising: the first calculation unit is used for acquiring a first influence degree of surrounding vehicles on the vehicle in the driving process of the vehicle and each mutation degree corresponding to the influence data of the vehicle according to the influence data; the data segmentation unit is used for constructing a corresponding mutation degree curve of which the mutation degree changes along with time according to the mutation degree, acquiring maximum mutation time and minimum mutation time according to all the mutation degree curves, and dividing the influence data into a plurality of segmented data according to the maximum mutation time and the minimum mutation time; a second calculation unit for calculating a second degree of influence of each of the segmented data, respectively, based on the corresponding degree of mutation of each of the segmented data; a third calculation unit for calculating the degree of importance of each segment data to the vehicle based on the first degree of influence and the second degree of influence of each segment data;
and the compression storage module is used for selecting the compression mode of each piece of section data and the storage mode of the compression data according to the importance degree of each piece of section data to the vehicle and the importance degree threshold value.
2. The intelligent management system of vehicle travel data according to claim 1, wherein the first calculation unit includes:
an average speed calculation unit for calculating an average speed of speeds of all surrounding vehicles;
a minimum distance calculation unit that calculates a minimum distance between the vehicle and a surrounding vehicle;
and the first influence degree calculation unit is used for calculating a first influence degree according to the average speed, the minimum distance and the speed of the vehicle.
3. The intelligent management system of vehicle travel data according to claim 1, wherein the first calculation unit includes:
a direction sudden change degree calculation unit for calculating a direction sudden change degree of the steering wheel based on the speed of the vehicle itself and the rotational speed of the steering wheel, which affect data at each time;
a speed sudden change degree calculation unit for calculating a speed sudden change degree of the own speed of the vehicle in each period according to the own speed of the vehicle of the influence data at each moment;
and the braking force mutation degree calculating unit is used for calculating the braking force mutation degree of the vehicle per se in each time interval according to the vehicle braking force of the influence data at each moment.
4. The intelligent management system of vehicle travel data according to claim 1, wherein the data segmentation unit includes:
the curve construction unit is used for constructing mutation degree curves of which each mutation degree changes along with time in the same coordinate system;
the time point screening unit is used for acquiring mutation starting time points and mutation ending time points corresponding to the time periods in which mutation occurs in each mutation degree curve from the same coordinate system of the curve construction unit, and selecting the minimum mutation starting time point in all the mutation starting time points and the maximum mutation ending time point in all the mutation ending time points;
the time period segmenting unit is used for recording data corresponding to the time from the minimum mutation starting time point to the maximum mutation ending time point as a mutation time period, selecting time periods corresponding to the same time length before and after the mutation time period as a pre-mutation time period and a post-mutation time period, and recording other data as non-segmented time periods;
and the segmentation determining unit is used for sequentially recording each segmentation data corresponding to the pre-mutation period, the post-mutation period and the non-segmentation period which are screened by the time period screening unit as pre-mutation data, mutation period data, post-mutation data and non-segmentation data.
5. The intelligent management system of vehicle driving data according to claim 1, wherein the compression storage module comprises:
a threshold setting unit for setting an importance threshold in advance;
the judging unit is used for respectively judging the importance degree corresponding to each segmented data and the size of the importance degree threshold;
the compression selection unit is used for selecting the compression mode of each segment data according to the judgment result of the judgment unit;
and the storage selection unit is used for selecting the storage mode of each segment data according to the judgment result of the judgment unit.
6. The intelligent management system of vehicle travel data according to claim 5, wherein the compression selection unit includes:
the first compression unit is used for carrying out lossy compression on each segment data corresponding to all the sections with the importance degrees smaller than the importance degree threshold;
and the second compression unit is used for performing lossless compression on all the segmented data corresponding to the importance degrees larger than the importance degree threshold value.
7. The intelligent management system of vehicle travel data according to claim 5, wherein the storage selection unit includes:
the first storage unit is used for storing each section data of which all the importance degrees are smaller than the importance degree threshold value into the cache region;
the sorting unit is used for sorting all the segmented data with the importance degrees larger than the importance degree threshold value according to the corresponding importance degrees from large to small;
and the second storage unit is used for sequentially storing the compressed data according to the magnitude sequence of the importance degrees and storing the compressed data in a stable storage area.
8. The intelligent management system of vehicle driving data according to claim 7, wherein the compression storage module further comprises:
the buffer area updating unit is used for calculating the difference value between each influence data of the segment data corresponding to each compressed data to be stored and each influence data corresponding to the previous moment stored in the buffer area during each storage, storing the difference value and the segment data of the current moment into the buffer area and covering the segment data corresponding to the previous moment;
and the stable storage area updating unit is used for overwriting the stored compressed data with the importance degree smaller than that corresponding to the compressed data in the stable storage area when the compressed data corresponding to the segmented data is stored each time after the stable storage area is full.
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