CN109142368A - Lithium battery pole slice is crumpled detection method and tab welding detection system - Google Patents

Lithium battery pole slice is crumpled detection method and tab welding detection system Download PDF

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Publication number
CN109142368A
CN109142368A CN201810811911.0A CN201810811911A CN109142368A CN 109142368 A CN109142368 A CN 109142368A CN 201810811911 A CN201810811911 A CN 201810811911A CN 109142368 A CN109142368 A CN 109142368A
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tab
welding
detection
crumpled
lithium battery
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赵大兵
张俊峰
叶长春
李功果
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Guangzhou Supersonic Automation Technology Co Ltd
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Guangzhou Supersonic Automation Technology Co Ltd
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    • GPHYSICS
    • G01MEASURING; TESTING
    • G01NINVESTIGATING OR ANALYSING MATERIALS BY DETERMINING THEIR CHEMICAL OR PHYSICAL PROPERTIES
    • G01N21/00Investigating or analysing materials by the use of optical means, i.e. using sub-millimetre waves, infrared, visible or ultraviolet light
    • G01N21/84Systems specially adapted for particular applications
    • G01N21/88Investigating the presence of flaws or contamination
    • G01N21/8851Scan or image signal processing specially adapted therefor, e.g. for scan signal adjustment, for detecting different kinds of defects, for compensating for structures, markings, edges
    • GPHYSICS
    • G01MEASURING; TESTING
    • G01NINVESTIGATING OR ANALYSING MATERIALS BY DETERMINING THEIR CHEMICAL OR PHYSICAL PROPERTIES
    • G01N21/00Investigating or analysing materials by the use of optical means, i.e. using sub-millimetre waves, infrared, visible or ultraviolet light
    • G01N21/84Systems specially adapted for particular applications
    • G01N21/88Investigating the presence of flaws or contamination
    • G01N21/8851Scan or image signal processing specially adapted therefor, e.g. for scan signal adjustment, for detecting different kinds of defects, for compensating for structures, markings, edges
    • G01N2021/8883Scan or image signal processing specially adapted therefor, e.g. for scan signal adjustment, for detecting different kinds of defects, for compensating for structures, markings, edges involving the calculation of gauges, generating models
    • GPHYSICS
    • G01MEASURING; TESTING
    • G01NINVESTIGATING OR ANALYSING MATERIALS BY DETERMINING THEIR CHEMICAL OR PHYSICAL PROPERTIES
    • G01N21/00Investigating or analysing materials by the use of optical means, i.e. using sub-millimetre waves, infrared, visible or ultraviolet light
    • G01N21/84Systems specially adapted for particular applications
    • G01N21/88Investigating the presence of flaws or contamination
    • G01N21/8851Scan or image signal processing specially adapted therefor, e.g. for scan signal adjustment, for detecting different kinds of defects, for compensating for structures, markings, edges
    • G01N2021/8887Scan or image signal processing specially adapted therefor, e.g. for scan signal adjustment, for detecting different kinds of defects, for compensating for structures, markings, edges based on image processing techniques

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  • Engineering & Computer Science (AREA)
  • Computer Vision & Pattern Recognition (AREA)
  • Signal Processing (AREA)
  • Physics & Mathematics (AREA)
  • Health & Medical Sciences (AREA)
  • Life Sciences & Earth Sciences (AREA)
  • Chemical & Material Sciences (AREA)
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  • General Health & Medical Sciences (AREA)
  • General Physics & Mathematics (AREA)
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  • Pathology (AREA)
  • Investigating Materials By The Use Of Optical Means Adapted For Particular Applications (AREA)

Abstract

It crumples detection method and welding detection system and welding the invention discloses lithium battery pole slice, tab is measured in real time using tab welding detection device and establishes tab welding database and disaggregated model, method includes: data acquisition, basic data mark, generates disaggregated model and output test result, tab to be detected is measured in real time, and the data that will test are input in disaggregated model and are compared, determine whether to crumple there are pole piece simultaneously output test result.Whether the pole piece that tab welding can quickly be detected by implementing the above method by the system there is the defect problem crumpled, and improves automation and detection efficiency.

Description

Lithium battery pole slice is crumpled detection method and tab welding detection system
Technical field
It crumples detection method and tab welding detection system the present invention relates to welding field more particularly to lithium battery pole slice.
Background technique
Tab is a kind of raw material of lithium ion polymer battery product.Such as the battery of mobile phone used in our lives, Bluetooth battery, Notebook Battery etc. require to use tab.Battery divides positive and negative anodes, and tab is exactly from battery core by positive and negative anodes The metallic conductor extracted, the popular ear for saying battery positive and negative polarities are the contact points when carrying out charge and discharge.This connects Contact be not we have seen that battery appearance that copper sheet, but a kind of connection of inside battery.Tab is divided into three kinds of materials Material, the anode of battery use aluminum material, and cathode uses nickel material, and cathode also has copper to plate nickel material, they are all by film and gold Belong to band two parts to be combined, be widely used in people's day electronic devices.
But existing tab solder joint generally has a variety of defects in the actual production process, the pole piece occurred as usual is beaten The defect of wrinkle.Generally using artificial detection in factory, detection efficiency is low and effect is poor;And conventional detection device is to tab welding Defect bad adaptability.Therefore, field of lithium is badly in need of a kind of equipment detected for tab manufacturing deficiency, to improve defect The precision and detection efficiency of detection.
Currently, such as precision, high but insensitive to abnormal numerical value k- closes on (KNN) to data processing there are many algorithm is optional Algorithm, the complexity not intelligible decision tree of high output result (Decision Tree) algorithm lack under data still effectively simultaneously Multi-class NB Algorithm can be handled, the cost not high logistic regression algorithm of high-class precision is calculated, calculates cost Small SVM (Support Vector Machines, SVM) algorithm of support vector machine that should be readily appreciated that and realize, and without input Prepare the fast random forests algorithm of training speed.The adaptability of various algorithms is also different, and therefore, it is necessary to combine actual application environment Suitably selected.
Summary of the invention
For overcome the deficiencies in the prior art, it crumples detection method the purpose of the present invention is to provide lithium battery pole slice.Its The detection that pole piece is crumpled when can solve the tab welding of existing lithium battery automates low problem.
The purpose of the present invention is implemented with the following technical solutions:
Lithium battery pole slice is crumpled detection method, is measured in real time using tab welding detection device to tab and is established pole Ear welding cell and disaggregated model, method include:
Basic data obtains, by tab welding detection device to different typical welding defects and flawless pole Ear carries out the real-time detection at initial stage, obtains the basic data of the tab welding image;
Basic data mark carries out the processing of defect mark to the basic data of the tab welding image of acquisition, obtains tab The labeled data of welding image;
Disaggregated model is generated, using the basic data of classifier training tab welding image, and by tab welding image Labeled data carries out study analysis as input parameter, and the defect classification of mark is stored in tab welding database, continuous training Until the tab welding database reaches the level of real-time detection, disaggregated model is formed;
Tab to be detected is measured in real time by output test result, and the data that will test are input to disaggregated model In be compared, determine whether to crumple there are pole piece and output test result.
Preferably, the real-time detection includes the following steps:
S1: taking pictures to pole piece to be detected in place by vision-based detection camera and coaxial light source, obtains welding picture;
S2: image procossing carries out image procossing to the welding picture of acquisition, analyzes to obtain the area Han Yin of tab by blob Domain, reverse phase positioning pole piece are left white region;
S3: extracting weldering print and be left white, and carries out second-order differential processing and blob to welding region and analyzes to obtain weldering print, to being left white Region carries out second-order differential processing and blob is analyzed to obtain and is left white wrinkle;
S4: butt welding print carries out blob and analyzes to obtain specific solder joint, and analyzes to obtain non-tab to region progress blob is left white Edges of regions;
S5: extracting the image information in spot area, the ginseng for calculating weldering print region, being left white region, weldering print and specific solder joint Number data, and the supplemental characteristic is normalized, it saves normalized supplemental characteristic and obtains basic data.
Preferably, the supplemental characteristic includes minimal gray, maximum gray scale, average gray, solder joint number, solder joint largest face Product, solder joint minimum area, average area, area intermediate value, variance and solder joint circularity.
Preferably, the classifier is SVM classifier.
Preferably, the quantity of the tab with different typical welding defects is no less than 100.
Preferably, the defect mark processing includes that tab weldering is broken, tab rosin joint, tab are mixed, tab weldering is anti-, pole piece is beaten The mark of wrinkle and coating exception.
Implement the above method tab welding detection system, system include tab welding detection device, data processing module, Memory module, detection display module and input/output module.
Preferably, the data processing module includes data transmission unit, data mark unit, disaggregated model unit and sentences Order member.
Preferably, the judging unit is used to determine that the welding defect classification of tab to be crumpled defect with the presence or absence of pole piece.
Preferably, the detection display module is the system display shown to testing result real-time grading, the input Output module is mouse, keyboard and I O board card.
Compared with prior art, the beneficial effects of the present invention are detection method the degree of automation for being implemented by the system Height, detection efficiency is high, and verification and measurement ratio is quasi-.
Detailed description of the invention
Fig. 1 is tab welding detection device of the present invention;
Fig. 2 is the perspective view of a testing agency in tab welding detection device shown in Fig. 1;
Fig. 3 is the detection process schematic diagram of tab welding detection device;
Fig. 4 is tab welding qualification figure;
Fig. 5 is that pole piece is crumpled figure;
Fig. 6 is camera standard scaling board;
Fig. 7 is real-time monitoring flow chart;
Fig. 8 is the corresponding image procossing figure of S1~S4 in Fig. 7.
In figure: 100, tab welding detection device;200, testing agency;20, vision-based detection camera;21, fixing piece;30, Coaxial light source;40, fixed frame;300, stroke control mechanism;400, pole piece;401, tab;500, scaling board;501, calibration point.
Specific embodiment
With reference to the attached drawing in the embodiment of the present invention, technical solution in the embodiment of the present invention carries out clear, complete Ground description, it is clear that described embodiments are only a part of the embodiments of the present invention, instead of all the embodiments.Based on this Embodiment in invention, every other reality obtained by those of ordinary skill in the art without making creative efforts Example is applied, shall fall within the protection scope of the present invention.
It should be noted that it can be directly on another component when component is referred to as " being fixed on " another component Or there may also be components placed in the middle.When a component is considered as " connection " another component, it, which can be, is directly connected to To another component or it may be simultaneously present component placed in the middle.When a component is considered as " being set to " another component, it It can be and be set up directly on another component or may be simultaneously present component placed in the middle.Term as used herein is " vertical ", " horizontal ", "left", "right" and similar statement for illustrative purposes only.
Unless otherwise defined, all technical and scientific terms used herein and belong to technical field of the invention The normally understood meaning of technical staff is identical.Term as used herein in the specification of the present invention is intended merely to description tool The purpose of the embodiment of body, it is not intended that in the limitation present invention.Term " and or " used herein includes one or more phases Any and all combinations of the listed item of pass.
The defect occurred when for the welding of current lithium battery pole ear leads to lithium cells processing cost height, low efficiency, nothing Method meets the requirement that quick, high quality realizes lithium battery pole ear welding, uses image procossing to welding detection process, utilizes my public (referring to attached drawing 1- Fig. 2, core is CCD detection system to the tab welding detection device 100 of department's exploitation, which is non-existing skill Art) 401 welding quality of lithium battery pole ear is used for quickly detecting, detection process is as shown in figure 3, and pass through graph and image processing Software algorithm carries out pad patterns and carries out image procossing.
The tab welding detection device 100 includes testing agency 200 and stroke control mechanism 300, and testing agency 200 includes Vision-based detection camera 20, coaxial light source 30 and fixed frame 40 on fixing piece 21, vision-based detection camera 20 and axis light are set Fixed frame 40 is fixed in source 30, and coaxial light source 30 includes reflective surface and transparent surface, and vision-based detection camera 20 is towards reflective surface, pole piece 400 and tab 401 welding structure face transparent surface, pole piece 400 around stroke control mechanism 300 and pass through vision-based detection camera 20, which carry out detection, surveys tab welding point defect, and vision-based detection camera 20 is adjacent to solder joint to be detected, specific vision-based detection camera 20 It is parallel to pole piece 400, which saves the volume of whole equipment, improves space utilization rate.
In order to improve the detection efficiency to tab welding, this application provides the detection method based on image recognition, early period It generates disaggregated model, establish comparison model, obtain a large amount of normal pictures (normal tab welding of welding shown in Figure 4 Figure) and pole piece crumple image (the tab welding figure that pole piece shown in Figure 5 is crumpled), by repetition learning training extract respectively The supplemental characteristic of normal picture, the defect image crumpled including pole piece, such as solder joint area and gray feature supplemental characteristic, later period By image recognition tack weld region, feature extraction is printed by weldering, obtains solder joint area and gray feature, by with classification mould Type, which is compared, determines whether to have the defects that pole piece is crumpled, and passes through detection system output test result.
Specifically, pole piece is left white the obvious characteristic in region as there are a large amount of streaks for the defect problem that pole piece is crumpled, and It provides this kind of lithium battery pole slice to crumple detection method, tab 401 is examined in real time using tab welding detection device 100 It surveys and establishes tab welding database and disaggregated model, method includes:
Basic data obtains, by tab welding detection device 100 to different typical welding defect and zero defect Tab 401 carry out initial stage real-time detection, obtain tab welding image basic data.
Basic data mark carries out the processing of defect mark to the basic data of the tab welding image of acquisition, obtains tab The labeled data of welding image.
Wherein, the processing of drawbacks described above mark includes that tab weldering is broken, tab rosin joint, tab are mixed, tab weldering is anti-, pole piece is crumpled With the mark of coating exception.
Disaggregated model is generated, using the basic data of classifier training tab welding image, and by tab welding image Labeled data carries out study analysis as input parameter, and the defect classification of mark is stored in tab welding database, continuous training Until tab welding database reaches the level of real-time detection, disaggregated model is formed.
The data that tab 401 to be detected is measured in real time, and will test are input to classification mould by output test result It is compared in type, determine whether to crumple there are pole piece simultaneously output test result.
Wherein, shown in referring to figs. 7 and 8, real-time detection includes the following steps:
S1: taking pictures to pole piece to be detected 400 in place by vision-based detection camera 20 and coaxial light source 30, obtains weldering Map interlinking piece (referring to the corresponding picture of P1 in Fig. 8);
S2: image procossing carries out image procossing to the welding picture of acquisition, analyzes to obtain the area Han Yin of tab by blob Domain, reverse phase positioning pole piece be left white region (weldering print region and be left white region respectively referring in the corresponding picture of P2 in Fig. 8 and P3 outside Corresponding region inside and outside frame);
S3: extracting weldering print and be left white, and to welding region and is left white region and carries out second-order differential processing and blob and analyze to obtain Weldering print be left white (referring to being left white with wrinkle outside profile in the Internal periphery and Fig. 5 of the corresponding picture of P3 in Fig. 8);
S4: butt welding print carries out blob and analyzes to obtain specific solder joint, and carries out blob and analyze to obtain to be left white folding to region is left white Wrinkle (wrinkle being left white out in the spot area and Fig. 5 formed referring to the solder joint connected domain of the corresponding picture of P4 in Fig. 8);
S5: extracting the image information in spot area, the ginseng for calculating weldering print region, being left white region, weldering print and specific solder joint Number data, and the supplemental characteristic is normalized, it saves normalized supplemental characteristic and obtains basic data.
Wherein, it is to same pixel in welding image (solder joint, edge, gray scale etc.) that Blob, which analyzes (Blob Analysis), Connected domain analyzed, which is known as Blob.
Wherein, supplemental characteristic includes minimal gray, maximum gray scale, average gray, solder joint number, solder joint maximum area, solder joint Minimum area, average area, area intermediate value, variance and solder joint circularity.
Classifier in this method uses SVM (Support Vector Machine-SVM).Because the algorithm calculates generation Valence is not high, should be readily appreciated that and realizes.
In order to establish the database or disaggregated model that are suitable for real-time detection, data sample total amount has different typical cases The quantity of the tab 401 of welding defect is no less than 100, preferably 500.
The invention additionally provides a kind of tab welding detection system for implementing the above method, and system includes tab welding detection Device 100, data processing module (not shown), memory module (not shown), detection display module (not shown) and input and output Module (not shown).
Wherein, data processing module includes data transmission unit, data mark unit, disaggregated model unit and determines single Member.Judging unit is used to determine that the welding defect classification of tab 401 (to be left white region with a large amount of with the presence or absence of pole piece defect of crumpling Wrinkle).
For detecting display module, the system display to show to testing result real-time grading, input and output can be used Module is the input-output equipment such as mouse, keyboard and I O board card.
Be measured in real time by tab of the above system to welding, can real-time output test result, and it is aobvious by detection Show the classification of module display defect, the appearance of which kind of defect, the overall Eligibility requirements for detecting sample results and whether meeting product.
The detection method and system provided using the invention can significantly improve the degree of automation of tab welding, detection effect Rate is high, and verification and measurement ratio is quasi-, and can react or the pole piece that provides in a period is crumpled situation analysis, is adjusted in due course to welding machine parameter It is whole.
It should be noted that being directed to the pole piece or tab of different model, need to demarcate corresponding camera parameter.Such as Fig. 6 institute Show, be the scaling board 500 of camera, after camera and light source install, the scaling board of standard is placed on where measurement object and is put down On face, multiple and different angles are taken pictures, and the calibration point 501 on scaling board covers entire camera fields of view.The selection of scaling board, is based on The requirement of high-acruracy survey, the precision of scaling board must also reach corresponding rank, to ensure the accuracy demarcated.
It will be apparent to those skilled in the art that can make various other according to the above description of the technical scheme and ideas Corresponding change and deformation, and all these changes and deformation all should belong to the protection scope of the claims in the present invention Within.

Claims (10)

  1. The detection method 1. lithium battery pole slice is crumpled is measured in real time tab using tab welding detection device and establishes tab Welding cell and disaggregated model, which is characterized in that method includes:
    Basic data obtains, by tab welding detection device to different typical welding defects and flawless tab into The real-time detection at row initial stage obtains the basic data of the tab welding image;
    Basic data mark carries out the processing of defect mark to the basic data of the tab welding image of acquisition, obtains tab welding The labeled data of image;
    Disaggregated model is generated, using the basic data of classifier training tab welding image, and by the mark of tab welding image Data carry out study analysis as input parameter, and the defect classification of mark is stored in tab welding database, continuous training until The tab welding database reaches the level of real-time detection, forms disaggregated model;
    The data that tab to be detected is measured in real time, and will test by output test result be input in disaggregated model into Row compares analysis, and determine whether to crumple there are pole piece simultaneously output test result.
  2. The detection method 2. lithium battery pole slice according to claim 1 is crumpled, it is characterised in that: the real-time detection includes such as Lower step:
    S1: taking pictures to pole piece to be detected in place by vision-based detection camera and coaxial light source, obtains welding picture;
    S2: image procossing carries out image procossing to the welding picture of acquisition, prints region by the weldering that blob analyzes to obtain tab, Reverse phase positioning pole piece is left white region;
    S3: extracting weldering print and be left white, and to welding region and is left white region and carries out second-order differential processing and blob and analyze to obtain weldering print Be left white;
    S4: butt welding print carries out blob and analyzes to obtain specific solder joint, and carries out blob and analyze to obtain to be left white wrinkle to region is left white;
    S5: extracting the image information in spot area, the parameter number for calculating weldering print region, being left white region, weldering print and specific solder joint According to, and the supplemental characteristic is normalized, it saves normalized supplemental characteristic and obtains basic data.
  3. The detection method 3. lithium battery pole slice according to claim 2 is crumpled, it is characterised in that: the supplemental characteristic includes most Small gray scale, maximum gray scale, average gray, solder joint number, solder joint maximum area, solder joint minimum area, average area, area intermediate value, Variance and solder joint circularity.
  4. The detection method 4. lithium battery pole slice according to claim 1 is crumpled, it is characterised in that: the classifier is SVM points Class device.
  5. The detection method 5. lithium battery pole slice according to claim 1 is crumpled, it is characterised in that: described to have different typical cases The quantity of the tab of welding defect is no less than 100.
  6. The detection method 6. lithium battery pole slice according to claim 1 is crumpled, it is characterised in that: the defect mark processing packet Include the mark that tab weldering is broken, tab rosin joint, tab are mixed, tab weldering is anti-, pole piece is crumpled with coating exception.
  7. 7. implementing the tab welding detection system of any one of claim 1-6 the method, it is characterised in that: system includes tab Welding detection device, data processing module, memory module, detection display module and input/output module.
  8. 8. system according to claim 7, it is characterised in that: the data processing module includes data transmission unit, number According to mark unit, disaggregated model unit and judging unit.
  9. 9. system according to claim 8, it is characterised in that: the judging unit is used to determine the welding defect class of tab Not Shi Foucun pole piece crumple defect.
  10. 10. system according to claim 7, it is characterised in that: the detection display module is to divide in real time testing result The system display that class is shown, the input/output module are mouse, keyboard and I O board card.
CN201810811911.0A 2018-07-23 2018-07-23 Lithium battery pole slice is crumpled detection method and tab welding detection system Pending CN109142368A (en)

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CN109741323A (en) * 2019-01-09 2019-05-10 广州市顶丰自动化设备有限公司 Pole piece detection method, device, computer equipment and the storage medium of lithium battery
CN110598729A (en) * 2019-07-24 2019-12-20 华南理工大学 Method for classifying defects on surface of lithium battery electrode
WO2021169335A1 (en) * 2020-02-25 2021-09-02 华南理工大学 Visual online detection method for laser welding point of lithium battery tab
CN113723499A (en) * 2021-08-27 2021-11-30 广东奥普特科技股份有限公司 Lithium battery tab welding abnormity detection method and system
CN113723499B (en) * 2021-08-27 2022-08-12 广东奥普特科技股份有限公司 Lithium battery tab welding abnormity detection method and system
WO2023071763A1 (en) * 2021-10-26 2023-05-04 江苏时代新能源科技有限公司 Electrode sheet wrinkling detection apparatus and battery cell production equipment
WO2023071759A1 (en) * 2021-10-26 2023-05-04 江苏时代新能源科技有限公司 Electrode plate wrinkling detection method and system, terminal, and storage medium
CN115546204A (en) * 2022-11-23 2022-12-30 江苏时代新能源科技有限公司 Pole piece crumpling detection system, method and device, computer equipment and storage medium

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