Artiminds

Inka Krischke,

The RoboGrind research project

The aim of the RoboGrind research project is to make the remanufacturing of worn components from green technologies competitive with new production. An AI-based automation solution is to be developed for this purpose.

When deburring cut edges, the high process requirements in terms of precision and consistent quality make automated processing difficult.

© Fraunhofer IPA / Rainer Bez

For green technologies to be sustainable in the overall cycle, the remanufacturing of worn-out devices and parts is crucial. The remanufacturing of wind turbine rotors, gearwheels, battery cells or hydrogen tanks, for example, minimizes the environmental impact by requiring fewer raw materials and energy-intensive processing steps compared to new production and avoiding additional material transport. However, as wear mainly affects the shape or surface properties, remanufacturing has so far been associated with high labor costs. And even with a robot-based machining process, the current state of the art requires very frequent manual and therefore expensive adaptation of the robot program. This often makes new production more economical, although it is significantly less sustainable.

The RoboGrind research project is based on a hybrid AI approach that combines both knowledge-based and learning data-based methods.

© RoboGrind project group

The aim of the RoboGrind research project, which was launched at the end of 2021, is therefore to develop an AI-based, flexible automation solution that allows the robot to program and set itself up independently for the machining task. The project focuses on the process steps of grinding, polishing and deburring in the areas of green mobility, green energy storage and green power generation. The InvestBW-funded joint project between the University of Stuttgart, DHBW Karlsruhe and SHL is being coordinated by robotics software and solution provider ArtiMinds Robotics. The project results will be utilized in the partners' offers after the end of the project in September 2023.

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The project content

AI researcher Prof. Marco Huber from the IFF at the University of Stuttgart explains: "A cost-effective and flexible system for automated surface processing is required for the economical reconditioning of wind turbine rotor blades or electric motor gears. By using AI-based software solutions, it is possible to integrate object detection and measurement, force-controlled surface processing and downstream visual inspection in a single robot system."

In order to achieve the highest possible degree of autonomy and precision, the aim is to use a hybrid AI approach that combines both knowledge-based and learning, data-based methods. "In this way, the robot should be able to anticipate deviations and surface conditions at runtime and adapt automatically. This is achieved on the one hand through prior knowledge, which qualified workers can contribute, and on the other hand by means of sensor data, for example from force-torque sensors or vision sensors," explains Dr. Darko Katic, technical contact for the RoboGrind project and Senior Team Leader Artificial Intelligence at ArtiMinds.

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