Magna Drives Auto Industry Toward AI Inspections

Trained AI systems can not only accelerate new vehicle inspections, they can also improve processes to reduce problems.

Dan Carney, Senior Editor

November 1, 2024

3 Min Read
This AI vision system inspects finished seats at a Magna plant to ensure they meet quality requirements.
This AI vision system inspects finished seats at a Magna plant to ensure they meet quality requirements.Magna International

At a Glance

  • Human inspectors get tired over the course of their shift, leading them to miss some flaws.
  • Experienced inspectors may do things without realizing it, making it hard to capture their expertise until they train an AI.
  • Small surface defects in cast or injection-molded parts are too hard for current production line AI systems to identify.

Inspecting the components used to assemble new cars is a tiresome process that benefits from the application of artificial intelligence (AI) systems that augment human inspectors, according to Todd Deaville, the vice president for advanced manufacturing innovation at Tier 1 supplier and contract manufacturer Magna International.

“If you think about seating and fabrics getting wrinkles, you get variability in some of these processes,” he said. “They are incredibly complex processes,” he added.

This can lead to flaws in products that inspectors must catch, but that job is also hard. That’s because it requires strict attention to detail to spot issues, and that focus tends to fade over the course of a shift. “It is really, really hard to maintain that over hours,” Deaville noted.

Manufacturers are using trained AI systems to monitor production, but the utility varies depending on the application. For monitoring assembly processes where the system is just ensuring that all of the required components are present, AI works very well, according to Deaville. “Is a component present? That is relatively easy to train in a model,” he said.

But other jobs are more challenging, especially painted Class A surfaces. “It is one of the most challenging applications you can go after,” said Deaville. “Paint is subjective, so to train that into models takes some time. You have to deal with false positives and false negatives.” Nevertheless, Magna does employ some AI-based models on class A surface inspections, he said.

Related:Nissan Uses AUTIS Inspection System to Slash Paint Defects

Smart_Steam_System.png

Even tougher than that is inspecting tiny features on parts to ensure precision. “There are more metrology applications where you’re trying to measure feature size,” said Deaville. “That’s not there yet. Laser systems do that directly, but the AI-based models are not there yet.”

Magna has had success with this in its R&D department, so it could be a viable technology for production purposes within a few years, he predicts. The problems such systems identify are typically flashing on a part from material that squeezed out of the edges of a mold or flaws where a mold got dirty. “Maybe there’s an imperfect trim edge or radius,” he said.

EV batteries have proved to be very susceptible to incredibly minor assembly variations, so that is another area that will benefit from AI-based inspections. The aim of such systems is to not only catch flawed parts but to provide feedback that lets the factory reduce their occurrence or even prevent them entirely.

“That system can identify where it likely occurred and get to the root cause,” Deaville said. This is especially true of batteries. “Battery is a very high value, very high risk part,” he said. “You want complete traceability.”

Related:Magna Supercharges ADAS with 5G

Without that, carmakers are forced to recall more vehicles that were actually affected by problems because they can’t identify exactly which parts are affected.

An AI inspection system sounds exotic, but it is really just a camera connected to a computer or in some cases just a camera with some built-in intelligence to flag when it sees something that doesn’t match the pattern it's looking for. “It can be as simple as something that looks like a gamer PC,” Deaville said. “Or you can do on camera with an embedded processor if you get the software thrifted to the point it can run locally.”

Another positive aspect of training an AI based on human inspectors is that people might be doing things that are subconscious for them, so those factors might not be documented. “Operators who have a lot of experience do things they may not know they’re doing,” Deaville said. “How do you capture that? These tools help with that.”

About the Author

Dan Carney

Senior Editor, Design News

Dan’s coverage of the auto industry over three decades has taken him to the racetracks, automotive engineering centers, vehicle simulators, wind tunnels, and crash-test labs of the world.

A member of the North American Car, Truck, and Utility of the Year jury, Dan also contributes car reviews to Popular Science magazine, serves on the International Engine of the Year jury, and has judged the collegiate Formula SAE competition.

Dan is a winner of the International Motor Press Association's Ken Purdy Award for automotive writing, as well as the National Motorsports Press Association's award for magazine writing and the Washington Automotive Press Association's Golden Quill award.

AstonMartinVanquish_©AndyMorgan_025_copy_2.JPG

He has held a Sports Car Club of America racing license since 1991, is an SCCA National race winner, two-time SCCA Runoffs competitor in Formula F, and an Old Dominion Region Driver of the Year award winner. Co-drove a Ford Focus 1.0-liter EcoBoost to 16 Federation Internationale de l’Automobile-accredited world speed records over distances from just under 1km to over 4,104km at the CERAM test circuit in Mortefontaine, France.

He was also a longtime contributor to the Society of Automotive Engineers' Automotive Engineering International magazine.

He specializes in analyzing technical developments, particularly in the areas of motorsports, efficiency, and safety.

He has been published in The New York Times, NBC News, Motor Trend, Popular Mechanics, The Washington Post, Hagerty, AutoTrader.com, Maxim, RaceCar Engineering, AutoWeek, Virginia Living, and others.

Dan has authored books on the Honda S2000 and Dodge Viper sports cars and contributed automotive content to the consumer finance book, Fight For Your Money.

He is a member and past president of the Washington Automotive Press Association and is a member of the Society of Automotive Engineers

Sign up for Design News newsletters

You May Also Like