Abstract
A robust grip is key to successful manipulation and joining of work pieces involved in any industrial assembly process. Stability of a grip depends on geometric and physical properties of the object as well as the gripper itself. Current state-of-the-art algorithms can usually predict if a grip would fail. However, they are not able to predict the force at which the gripped object starts to slip, which is critical as the object might be subjected to external forces, e.g. when joining it with another object. This research project aims to develop a AI-based approach for a grip metric based on tactile sensor data capturing the physical interactions between gripper and object. Thus, the maximum force that can be applied to the object before it begins to slip should be predicted before manipulating the object. The RGB image of the contact surface between the object and gripper jaws obtained from GelSight tactile sensors during the initial phase of the grip should serve as a training input for the grip metric. To generate such a data set, a pull experiment is designed using a UR 5 robot. Performing these experiments in real life to populate the data set is time consuming since different object classes, geometries, material properties and surface textures need to be considered to enhance the robustness of the prediction algorithm. Hence, a simulation model of the experimental setup has been developed to both speed up and automate the data generation process. In this paper, the design of this digital twin and the accuracy of the synthetic data are presented. State-of-the-art image comparison algorithms show that the simulated RGB images of the contact surface match the experimental data. In addition, the maximum pull forces can be reproduced for different object classes and grip scenarios. As a result, the synthetically generated data can be further used to train the neural grip metric network.
| Original language | English |
|---|---|
| Pages | 1-7 |
| Number of pages | 7 |
| DOIs | |
| Publication status | Published online - Feb 2023 |
UN SDGs
This output contributes to the following UN Sustainable Development Goals (SDGs)
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SDG 9 Industry, Innovation, and Infrastructure
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SDG 11 Sustainable Cities and Communities
Keywords
- Digital twin
- Grip prediction
- Grip stability
- Manufacturing
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Dive into the research topics of 'Learning to Predict Grip Quality from Simulation: Establishing a Digital Twin to Generate Simulated Data for a Grip Stability Metric'. Together they form a unique fingerprint.Activities
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Digital Twins, Fault Diagnosis, and Simulation Testbeds: From Automotive Engines to Advanced Manufacturing
Ng, M. (Speaker)
23 Apr 2026 → 24 Apr 2026Activity: Talk or presentation › Invited talk
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Design and Development of a Robust Tolerance Optimisation Framework for Automated Optical Inspection in Semiconductor Manufacturing
Kogileru, S., McBride, M., Bi, Y. & Ng, K. Y., 6 Jan 2026, (Published online) 2025 IEEE 23rd International Conference on Industrial Informatics (INDIN). IEEE, p. 1-4 4 p. (2025 IEEE 23rd International Conference on Industrial Informatics (INDIN)).Research output: Chapter in Book/Report/Conference proceeding › Conference contribution › peer-review
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A Robust Tolerance Optimisation Framework for Automated Optical Inspection (AOI) in Semiconductor Manufacturing
Kogileru, S., McBride, M., Bi, Y. & Ng, K. Y., Jun 2025, (Unpublished).Research output: Contribution to conference › Poster › peer-review
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Predicting Maximum Permitted Process Forces for Object Grasping and Manipulation Using a Deep Learning Regression Model
Wucherer, S., McMurray, R., Ng, K. Y. & Kerber, F., 11 Sept 2024, (Published online) 8th IEEE Conference on Control Technology and Applications (CCTA). IEEE, p. 669-674 6 p. (2024 IEEE Conference on Control Technology and Applications, CCTA 2024).Research output: Chapter in Book/Report/Conference proceeding › Conference contribution › peer-review
Open AccessFile2 Link opens in a new tab Citations (Scopus)85 Downloads (Pure)
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