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On Choosing Structure for a Machine Learning-based Reaction Force Predictor for Walking Robots

Eduard Zalyaev, Сергей Савин, Alek Salikhzyanov, Svyatoslav Golousov

发表年份
2021
引用次数
1
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摘要

Abstract This paper focuses on the topic of contact reaction prediction for walking robots, namely on the analysis of performances on different structures of the machine-learning-based predictors. Predicting reaction forces is important due to the fact that it can allow us to retrieve a simplified model of the contact scenario, as was proposed in the literature preciously. This allows to turn the problem of contact model identification into a data collection and processing problem. In order to do it effectively, both a data compression (feature extraction) and regression strategies might be used. This research provides an analysis of both with respect to the discussed problem.

关键词

RobotComputer scienceIdentification (biology)Artificial intelligenceMachine learningRegression analysisFeature extractionReactionRegressionEngineering

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