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Original scientific paper

https://doi.org/10.17559/TV-20210204092154

Prediction of Robot Grasp Robustness using Artificial Intelligence Algorithms

Sandi Baressi Šegota* orcid id orcid.org/0000-0002-3015-1024 ; Faculty of Engineering, University of Rijeka, Vukovarska 58, 51000 Rijeka
Nikola Anđelić ; Faculty of Engineering, University of Rijeka, Vukovarska 58, 51000 Rijeka
Zlatan Car ; Faculty of Engineering, University of Rijeka, Vukovarska 58, 51000 Rijeka
Mario Šercer ; Razvojno - edukacijski centar za metalsku industriju Metalska jezgra Čakovec, Bana Josipa Jelačića 22 D, 40 000 Čakovec


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Abstract

Predicting the quality of the robot end-effector grasp quality during an industrial robot manipulator operation can be an extremely complex task. As is often the case with such complex tasks, Artificial Intelligence methods may be applied to attempt the creation of a model - if sufficient data exists. The presented dataset uses a publicly available dataset, consisting of 992632 measurements of position, torque, and velocity - for each of the three joints of three fingers of the simulated end-effector. The dataset is first analyzed and pre-processed to prepare it for model training. The duplicate values are removed from the dataset, as well as the statistical outliers. Then, a multilayer perceptron (MLP) machine learning algorithm is applied to 80% of the data contained in the dataset, using the Grid Search algorithm to determine the best combination of MLP hyperparameters. As the dataset consists of torque, velocity, and speed measurements for separate joints and fingers of the tested end-effector the testing is performed to see if a subset of the inputs may be used to regress the robustness of the given grip. The normalization of the dataset is also applied, and its effect on the regression quality is tested. The results, evaluated with the coefficient of determination, show that while the best model is achieved using all the possible inputs, a satisfactory result can be obtained using only velocity and torque.The results also show that the normalization of the dataset improves the regression quality in all the observed cases.

Keywords

artificial intelligence, multilayer perceptron, regression, robot grasp robustness, shadow smart grasping system

Hrčak ID:

269488

URI

https://hrcak.srce.hr/269488

Publication date:

15.2.2022.

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