Machine Vision ROI at Polaris Industries
Vision system reduces scrap in high-mix welding environment and paid for itself in 2 weeks, according to return on investment calculations. See images, table.
While the many logistical aspects of product assembly make the welding stage of manufacturing inherently challenging, assembling products in high-mix environments is particularly demanding, since several different product models are processed every day. Many part numbers and part scenarios increase complexity and opportunities for mistakes. Polaris Industries found machine vision to be a simple, low-cost solution for mistake proofing.
In this assembly situation, all specified parts must be placed correctly in each product variation. Any errors will reduce product quality or increase costs when faulty assemblies have to be repaired or scrapped. Reducing the number of errors—and incurring some cost to prevent them from occurring—contributes directly to a company’s bottom line. In building a case that justifies spending money to save money, experience has shown that reducing scrap rapidly surpasses all other cost benefits in any process that produces more than a trivial amount of scrap. In addition, any throughput gains will increase the company’s overall revenue.
Polaris Industries, a manufacturer of snowmobiles, all-terrain, and other recreational vehicles, can attest to the benefits of investing a relatively small amount of money in automation to reduce a lot of costly scrap. For many years, the company had relied on touch and proximity sensors to verify which parts needed welding, because they feared that a machine vision system would not be able to perform reliably in such a harsh environment.
With touch sensing, a robot uses the end or side of a weld wire or in some cases the nozzle to physically touch off on parts; this occurs after a weld cycle has been initiated. Proximity sensors are used on weld tooling to prevent a weld cycle from initiating, or to prevent other operations from occurring unless the sequence is done in a specific order, or a part has been missed.
The time and costs required to sustain this sensor-based inspection system finally drove Polaris to install a machine vision inspection system using cameras supplied by Teledyne Dalsa’s Industrial Products group. Polaris Welding Engineer Jeff Steiner worked with Tom Wright of Hartfiel Automation to design the system. Performing flawlessly, the new solution has significantly reduced both manufacturing cycle time and product scrap.
At the Polaris facility in Spirit Lake, Iowa, an operator loads frames into a fixture at the first of several stations on welding manufacturing line. These frames contain the necessary parts for a particular model of the product being manufactured. As a first station or loaded fixture is presented to arc welding robots with Ferris wheel-type and turntable-type positioners, a second station is then presented to the robot operator who unloads the previously welded part and loads new parts while the robots are working.
The frame design for a particular product family allows parts to be loaded only in the correct orientation; however, corresponding parts for different models in the same product family often look very much alike. For example, two parts might be slightly different sizes, a discrepancy small enough that a human operator may not notice. An operator also may inadvertently neglect to load one of the parts, or may load it out of position (Figure 1). Therefore, verification that each part is present and correct is critical before the robot welds it to the frame.
In the original process, the robots performed the verification using touch and proximity sensors. This approach created a bottleneck, taking as much as 30 seconds of cycle time per part. If the robot detected a wrong or missing part, the operator had to retract the robot arm, correct the problem, reposition the arm, and run the touch inspection again before allowing assembly to resume. This lengthy process resulted in considerable additional lost production time. And, even with the checks in place, the scrap rate could be as high as 5% per day at any given area. Since the frames cannot be repaired once they emerge from the weld cell, a 5% loss in materials is incurred as well as time wasted to generate scrap.
The production environment in any high output welding department does not offer the best platform for incorporating machine vision inspection. Impediments such as poor lighting and smoke from the welding equipment can obscure images being acquired, making a vision-based approach more complicated and less reliable. Initial assessment of the technique also suggested that programming a camera and keeping it clean would add considerably to cycle time and overall manufacturing costs. Nevertheless, the existing arrangement of utilizing touch-sensing technology and proximity sensor systems encouraged Polaris to look into vision as a viable alternative solution.
The solution includes one vision controller and two cameras, installed behind the operator, away from the more adverse conditions closer to the welding robot (Figure 2). The 60 frame-per-second, 640 x 480 pixel cameras verify that the frames are loaded correctly and are ready to proceed to welding, reducing inspection time to less than 200 milliseconds per part. A display shows the inspection results, coloring correct parts green and incorrect ones red. An operator can make any necessary corrections before the frame ever reaches the welding robots so that the product flow is not interrupted—another significant time-saver.
Programming touch sense routines for the robot requires downtime from several minutes to hours. More considerable time is needed when a toolmaker is required to machine tooling details to house proximity sensors; depending on the amount of proximity sensors required for a given part, this time can turn into days until completion. By contrast, Polaris engineers programmed the 22 parts in the first frame type to be used in the vision-based process in less than 15 minutes. Programming another 19 scenarios off-line took less than an hour. Updating a vision program to incorporate part or tooling changes can be accomplished in only a few minutes.
Looking at the benefits that pay back the cost of the machine vision system requires considering only the cost differences between the new process and the older one. Any costs that remain the same are irrelevant for this purpose.
The investment for cameras, controllers, and other components—including engineering time and installation labor—totaled $9,500. The new process saved Polaris approximately 4.5 minutes per hour at this robotic workcell. With the current hours of runtime per shift at one shift per day, that savings translated to an additional 1.6 extra frames per hour, or 9.8 frames per day. The increased efficiency allowed Polaris to reduce overall labor for the weldments, or welded joints, produced at this workcell by 5.5%.
In addition, the number of frames that had to be scrapped dropped by 23%, or eight per day. The cost of scrapping an assembly exactly equals the manufacturing cost of replacing it. With a manufacturing cost of $50 per frame, the vision system increased revenue by $490 per day and reduced scrap costs by $400 per day. That $890 daily benefit means that the vision system paid for itself in only 10.7 workdays, or just over two five-day weeks. Other benefits aside, payback from the scrap alone would be 23.8 days, or a little over a month (Figure 3).
The Polaris company creed, etched in steel at the entrance to each of its locations, is “Understand the riding experience, Live the riding experience, Work to make it better.” Since working to make the manufacturing process of its vehicles better in Spirit Lake, Polaris has installed similar vision solutions at several other robot systems and has benefited from similar cost savings at each of them.
Table: Cost/benefits of machine vision used at Polaris Industries
Return on investment (ROI) summary follows for installation of machine vision at Polaris Industries.
Initial system cost including labor and installation $9,500
Frame manufacturing cost $50
Time savings 4.5 min/hour
Extra frames produced 1.6 frames/hour
Added revenue from extra frames $490/day
Reduction in scrap 8 frames/day
Scrap savings $400/day
Additional revenue + scrap savings $890/day
Payback 10.7 days
Payback (scrap alone) 23.8 days
Above, ROI Polaris - Return on Investment for machine vision system
Steve Geraghty is vice president U.S. operations and director of Teledyne Dalsa’s Industrial Products.
More about the author
Steve Geraghty is vice president U.S. operations and director of Teledyne Dalsa’s Industrial Products. In this role, he is responsible for the strategic and tactical activities related to the development of Dalsa’s end-user products. He holds a degree in electrical engineering from Boston University (Boston, Mass.) and has 20 years of experience designing and deploying machine vision solutions.
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