The University of Michigan and Applied Dynamics International (ADI) are pleased to announce the successful phase 1 commissioning of the SMART 4.0 innovation lab for manufacturing intelligence and digital twin technologies. The SMART 4.0 team tapped ADI to collaborate on the design and integration of their innovation lab to create a modular, open-architecture testbed, that offers a plug-and-play ecosystem for rapidly advancing technology.
July 13, 2023. Ann Arbor, Michigan.
SMART 4.0 is an industry-university collaboration research and innovation lab, created by Prof. Kira Barton and Prof. Dawn Tilbury at the University of Michigan's new Department of Robotics. The mission of SMART 4.0 is to advance manufacturing intelligence technology, including Digital Twin, Internet-of-Things (IoT), Open Process Automation (OPA), and human-robot collaboration, by bringing industry and university research together, building a collaborative plug-and-play ecosystem for rapidly advancing technology, and building a platform to enable workforce development for Industry 4.0, and Manufacturing 4.0, and beyond.
ADI is a digital engineering and industrial digital transformation solutions company that helps customers drive innovation within their organization using innovation testbeds, digital engineering methodologies, and real-time edge computing. The SMART 4.0 team tapped ADI to collaborate on the design and integration of their innovation lab to create a modular, open-architecture testbed, that offers a plug-and-play ecosystem for rapidly advancing technology. Furthermore, SMART 4.0 selected ADI's ADEPT edge computing and IoT connectivity software platform to provide the distributed computing and data backbone, allowing flexible plug-and-play with industrial Ethernet, connected with digital twin algorithms, and executing at the edge.
During the Phase 1 effort, a real-time "Connected Factory" was established to mechanically and electrically integrate collaborative robots, CNC machines, and 3D printers into the representative manufacturing system architecture. An Open Process Automation (OPA) computing and connectivity backbone was implemented, using ADI's ADEPT edge computing software platform, to connect the following new and legacy equipment:
- Kuka KMR mobile robot
- Kawasaki DuAro dual-arm robot
- Toyota HSR mobile collaborative robots
- Triton CNCs
- Ultimaker3 and Ultimaker5 3D printers
Early phase 1 efforts included establishing an industrial Ethernet communications backbone to connect multiple and diverse equipment platforms with varying communication protocols. The SMART 4.0 computing backbone then also added the ability to run machine learning and artificial intelligence algorithms and physics-based simulation models in real-time, using off-the-shelf edge computing servers, with plug-and-play connectivity between machines and algorithms. With easy access to all data within the SMART 4.0 testbed, graphic visualization panels were added, bringing real-time data dashboards, and digital twin health-monitoring indicators.
Starting with a fully-functional manufacturing intelligence testbed, phase 2 will expand the lab capabilities and then demonstrate how this facility can be used to rapidly advance manufacturing technology. New lab capabilities include integration of the open-source Robot Operating System (ROS) software platform, providing hardware abstraction, configuration databasing, communications, and more. In addition, the SMART 4.0 lab will also see the addition of multiple cameras to provide optical sensing to, amongst other things, advance technology in robot-to-robot, human-to-robot, and robot-to-legacy-machine collaboration.
The SMART 4.0 testbed is a state-of-the-art research testbed that incorporates a number of the latest technologies for the purpose of developing and researching digital twins for a manufacturing system. Those requirements include additive and subtractive manufacturing in one integrated testbed, flexibility and reconfigurability, ability to transition between centralized and distributed system control, wireless communication for cameras and mobile robots, robot-to-robot part transfer, human-to-robot direct interaction, integrated methods for enhanced cybersecurity, platform flexibility to accommodate third party software, and VR modeling of the complete testbed.
The UofM SMART 4.0 testbed is positioned to advance smart manufacturing research through the unique use of digital twins and a flexible open architecture, for the purpose of decision-making in critical matters such as virtual commissioning, system reconfiguration, and predictive maintenance.
About the ADEPT Plug-and-Play Industrial Computing and Connectivity Software Platform
ADEPT is an industrial computing and connectivity software platform built around the concept of time-deterministic “data frameworks” executing on industrial real-time Linux servers and operating as a single, coherent distributed resource controlled and managed via intuitive, drag-and-drop desktop tools. ADEPT is used in the largest, most demanding industrial computing and connectivity applications across the global aerospace and defense industry, but also scales down to work with low-cost computing hardware and open-source real-time Linux. The open architecture nature of ADEPT allows users to leverage best-in-class COTS and open-source technologies in a common, project-based environment. ADEPT dramatically reduces the cost and time to deploy and operate industrial open process automation capability, providing comprehensive out-of-the-box capability built on a trusted technology platform.
ADI’s ADEPT software platform can support advanced open real-time and virtual computing applications that require NIST 800-171 and CIS Security Level 2 compliance.
About Applied Dynamics
Applied Dynamics is a digital engineering and industrial digital transformation solutions company. We have been pushing the limits of simulation and real-time systems for over 60 years. Applied Dynamics flagship product, ADEPT, is the most advanced real-time, industrial Internet of Things (IoT) software platform available, providing an agile, open architecture, feature-rich environment for the complete product lifecycle from development through integration, verification, validation, certification, deployment, and sustainment. ADEPT embraces an open architecture and allows its users to leverage best-in-class COTS components. The ADEPT user base includes 14 of the global top 35 A&D companies and extends into marine, power systems, oil & gas, and the automotive industry.
About the SMARTLab located at the Ford Robotics Building led by Profs. Kira Barton and Dawn Tilbury
A new industrial system-level manufacturing testbed has been launched within the Manufacturing Robotics SMARTLab in the new Ford Robotics Building at the University of Michigan. This cyber-physical manufacturing systems testbed, called SMART 4.0, incorporates manufacturing processes and automated material handling, to enable flexibility and reconfigurability. The state-of-the-art control system in the testbed connects the different hardware elements and enables human interactions. The SMART 4.0 testbed incorporates a number of the latest technologies for the purpose of developing and researching intelligent solutions, such as digital twins, for a manufacturing system. Those requirements include additive and subtractive manufacturing in one integrated testbed, flexibility and reconfigurability, ability to transition between centralized and distributed system control, wireless communication for cameras and mobile robots, robot-to-robot part transfer, human-to-robot direct interaction, integrated methods for enhanced cybersecurity, platform flexibility to accommodate 3rd party software, and VR modeling of the complete testbed. SMART 4.0 uses the ADEPT framework with real time data collection capability. ADEPT’s open architecture, data-centric, and highly extensible real-time Linux computing paradigm provides a versatile and dynamic platform for SMART 4.0.
To learn more about how ADI and the ADEPT platform can help your team, visit www.adi.com or send an email to firstname.lastname@example.org.