基于人工智能的软触觉传感器接触定位与力估计

D. Kim, Yong‐Lae Park
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引用次数: 15

摘要

柔软的人造皮肤传感器可以检测接触力及其位置,在各种软机器人应用中具有吸引力。然而,由高分子材料制成的软传感器具有固有的响应滞后和非线性的局限性,这使得传统的校准技术很难实现,并且产生较差的估计性能。在本文中,我们提出了基于机器学习和逻辑的智能算法,可以提高软传感器的性能。本文提出的方法可以解决上述长期存在的问题。它们还可以通过减少信号线的数量来简化系统的复杂性。本文讨论了三种机器学习技术:人工神经网络(ANN)、k近邻(k-NN)算法和递归神经网络(RNN)。采用Preisach滞回模型和简单逻辑来支持这些算法。我们证明了使用简单的算法对软传感器上的接触位置进行实时分类是可能的。此外,可以使用带有Preisach方法的人工神经网络对单个接触进行力估计。最后,我们通过预测混合RNN结果的输出,成功地估计了多个接触位置的力。
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Contact Localization and Force Estimation of Soft Tactile Sensors Using Artificial Intelligence
Soft artificial skin sensors that can detect contact forces as well as their locations are attractive in various soft robotics applications. However, soft sensors made of polymer materials have inherent limitations of hysteresis and nonlinearity in response, which makes it highly difficult to implement traditional calibration techniques and yields poor estimation performance. In this paper, we propose intelligent algorithms based on machine learning and logics that can improve the performance of soft sensors. The proposed methods in this paper could be solutions to the aforementioned long-standing problems. They can also be used to simplify the system complexity by reducing the number of signal wires. Three machine learning techniques are discussed in this paper: an artificial neural network (ANN), the k-nearest neighbors (k-NN) algorithm, and a recurrent neural network (RNN). The Preisach model of hysteresis and simple logics were used to support these algorithms. We proved that classifying contact locations on a soft sensor is possible using simple algorithms in real time. Also, force estimation of a single contact was possible using an ANN with the Preisach method. Finally, we successfully estimated forces of multiple contact locations by predicting the outputs of mixed RNN results.
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