Next-Generation of Weld Quality Assessment Using Deep Learning and Digital Radiography
M-Mahdi Naddaf-Sh1, Sadra Naddaf-Sh1, Hassan Zargaradeh, 1
Sayyed M. Zahiri2, Maxim Dalton2, Gabriel Elpers2, Amir R. Kashani 2
1 Electrical Engineering Department, Lamar University,
2 Artificial Intelligence Lab, Stanley Oil & Gas, Stanley Black & Decker
amir.kashani@sbdinc.com
The Future of Intelligent Manufacturing
Nearly one half million unfilled manufacturing positions (Deloitt), low productivity and strong competition for new products are driving significant need for increasingly intelligent, agile, and collaborative manufacturing. Significant advanced manufacturing activities are underway across the world from global manufactures in a multiplicity of verticals including pharmaceuticals, medical products, automotive, aerospace, consumer goods, construction, power and hand tools, materials, and industrials. Intelligent machines are addressing an increasingly complex range of manufacturing tasks including product design, material handling, machine tending, assembly, packaging, and distribution. Intelligent systems can provide a range of potential benefits to include speed, flexibility, accuracy. The purpose of this Spring Symposium is to bring together leading experts from across diverse communities to craft a 10-year road map for AI in manufacturing.
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