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Identification of robotic systems with hysteresis using Nonlinear AutoRegressive eXogenous input models

机译:利用非线性自回归外源输入模型识别滞后的机器人系统

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摘要

Identification of robotic systems with hysteresis is the main focus of this article. Nonlinear AutoRegressive eXogenous input models are proposed to describe the systems with hysteresis, with no limitation on the nonlinear characteristics. The article introduces an efficient approach to select model terms. This selection process is achieved using an orthogonal forward regression based on the leave-one-out cross-validation. A sampling rate reduction procedure is proposed to be incorporated into the term selection process. Two simulation examples corresponding to two typical hysteresis phenomena and one experimental example are finally presented to illustrate the applicability and effectiveness of the proposed approach.
机译:具有滞后的机器人系统的识别是本文的主要重点。 建议非线性自回归外源输入模型描述具有滞后的系统,对非线性特性没有限制。 本文介绍了选择模型术语的有效方法。 使用基于休假交叉验证的正交前进回归来实现该选择过程。 提出了采样率降低程序将其纳入术语选择过程中。 最终提出了对应于两个典型滞后现象和一个实验例子的两个模拟实施例以说明所提出的方法的适用性和有效性。

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