Systems and methods of generating datasets for training neural networks
US-2021142467-A1 · May 13, 2021 · US
US2021327043A1 · US · A1
| Field | Value |
|---|---|
| Publication number | US-2021327043-A1 |
| Application number | US-202016854235-A |
| Country | US |
| Kind code | A1 |
| Filing date | Apr 21, 2020 |
| Priority date | Apr 21, 2020 |
| Publication date | Oct 21, 2021 |
| Grant date | — |
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A method to evaluate the integrity of spot welds includes one or more of the following: projecting light from a light source at a spot weld to illuminate the spot weld; capturing an image of the illuminated spot weld with a camera; transmitting information about the image of the illuminated spot weld to a central processing unit (CPU); and evaluating with the CPU the information about the image of the illuminated spot weld coupled with an artificial intelligence neural networked-based algorithm to determine the integrity of the spot weld in real time.
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What is claimed is: 1 . A method to evaluate the integrity of spot welds in the manufacturing of motor vehicles, the method comprising: projecting light from a light source at a spot weld to illuminate the spot weld; capturing an image of the illuminated spot weld with a camera; transmitting information about the image of the illuminated spot weld to a central processing unit (CPU); and evaluating with the CPU the information about the image of the illuminated spot weld coupled with an artificial intelligence neural networked-based algorithm to determine the integrity of the spot weld in real time. 2 . The method of claim 1 , wherein the neural network-based algorithm includes a training data base that is continuously updated. 3 . The method of claim 2 , wherein the training data base that is continuously updated is a first input data and the information about the image of the illuminated spot weld is a second input data. 4 . The method of claim 3 , wherein the first input data includes process and material data, lab test data, sensitivity analysis data and correlation data. 5 . The method of claim 4 , wherein the sensitivity analysis includes changing one welding parameter while other welding parameters are kept constant and analysis of variations in mechanical and electrical machine setup of the process to produce spot welds. 6 . The method of claim 3 , wherein the spot weld is illuminated with different patterns, the second input data being a picture image or a video image of the spot weld that is colored or black and white, the picture image or the video image being converted to pixels. 7 . The method of claim 1 , wherein the camera and the light source are housed in an assembly, each of the camera and the light source being independently movable. 8 . The method of claim 7 , wherein the assembly is static. 9 . The method of claim 7 , wherein the assembly is movable by a robot. 10 . The method of claim 1 , wherein the artificial intelligence neural networked-based algorithm is stored as software in a non-transitory memory system that communicates with the CPU. 11 . A method to evaluate the integrity of spot welds in the manufacturing of motor vehicles, the method comprising: projecting light with different patterns from at least one light source at a spot weld to illuminate the spot weld; capturing an image of the illuminated spot weld with at least one camera; transmitting information about the image of the illuminated spot weld to a central processing unit (CPU); and evaluating with the CPU the information about the image of the illuminated spot weld coupled with an artificial intelligence neural networked-based algorithm to determine the integrity of the spot weld in real time, the neural network-based algorithm including a training data base that is continuously updated, the training data base that is continuously updated being a first input data and the information about the image of the illuminated spot weld being a second input data. 12 . The method of claim 11 , wherein the first input data includes process and material data, lab test data, sensitivity analysis data and correlation data. 13 . The method of claim 12 , wherein the sensitivity analysis includes changing one welding parameter while other welding parameters are kept constant and analysis of variations in mechanical and electrical machine setup of the process to produce spot welds. 14 . The method of claim 11 , wherein the second input data is a picture image or a video image of the spot weld that is colored or black and white, the picture image or the video image being converted to pixels. 15 . The method of claim 11 , wherein the at least one camera and the at least one light source are housed in an assembly, each of the at least one camera and the at least one light source being independently movable. 16 . The method of claim 1 , wherein the artificial intelligence neural networked-based algorithm is stored as software in a non-transitory memory system that communicates with the CPU. 17 . A system to evaluate the integrity of spot welds in the manufacturing of motor vehicles, the system comprising: at least one light source that projects light different patterns at a spot weld to illuminate the spot weld; a camera that captures an image of the illuminated spot weld; and a central processing unit (CPU) that receives information about the image of the illuminated spot weld, wherein the CPU evaluates the information about the image of the illuminated spot weld coupled with an artificial intelligence neural networked-based algorithm to determine the integrity of the spot weld in real time, the artificial intelligence neural networked-based algorithm being stored as software in a non-transitory memory system that communicates with the CPU, and wherein the neural network-based algorithm includes a training data base that is continuously updated, the training data base that is continuously updated being a first input data and the information about the image of the illuminated spot weld being a second input data. 18 . The system of claim 17 , wherein the first input data includes process and material data, lab test data, sensitivity analysis data and correlation data, the sensitivity analysis including changing one welding parameter while other welding parameters are kept constant and analysis of variations in the mechanical and electrical machine setup of the process to produce spot welds. 19 . The system of claim 17 , wherein the second input data is a picture image or a video image of the spot weld that is colored or black and white, the picture image or the video image being converted to pixels. 20 . The system of claim 17 , wherein the at least one camera and the at least one light source are housed in an assembly, each of the at least one camera and the at least one light source being independently movable.
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