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Experimental identification of a self-sensing magnetorheological damper using soft computing

机译:利用软计算对自感磁流变阻尼器进行实验识别

摘要

This paper presents the development and application of a soft-computing technique in identification of forward and inverse dynamics of a self-sensing magnetorheological (MR) damper based on experimental measurements. This technique is developed by the synthesis of an NARX (nonlinear autoregressive with exogenous inputs) model structure and neural network within a Bayesian inference framework. The Bayesian inference procedures essentially eschew overfitting that could occur in network learning and improve generalization (prediction) capability by regularizing the complexity of learning. In applying the developed technique to the self-sensing MR damper, the present and past information of its input and output quantities, which contain the physical knowledge of the damper, is used to formulate its nonlinear dynamics. The NARX network architecture is then optimized to enhance modeling effectiveness, efficiency, and robustness. Experimental data of the damper subjected to both harmonic and random excitations are used for model identification and assessment. Assessment results show that the formulated Bayesian NARX network accurately emulates the nonlinear forward dynamics of the self-sensing MR damper. Improved generalization (prediction) capability of the NARX network model by the Bayesian regulation is observed by comparing the modeling results with and without considering regularization. An inverse dynamic model for the self-sensing MR damper is further formulated by the developed technique. The proposed soft-computing technique is viable to formulate dynamic models of the self-sensing MR damper for structural control applications.
机译:本文介绍了一种基于实验测量的软计算技术在自感磁流变(MR)阻尼器正向和反向动力学识别中的开发和应用。该技术是通过在贝叶斯推理框架内综合NARX(具有外生输入的非线性自回归)模型结构和神经网络而开发的。贝叶斯推理过程实质上避免了网络学习中可能发生的过度拟合,并通过规范化学习的复杂性来提高泛化(预测)能力。在将开发的技术应用于自感MR阻尼器时,包含阻尼器的物理知识的输入和输出量的当前和过去信息被用来制定其非线性动力学。然后优化NARX网络体系结构,以增强建模效果,效率和鲁棒性。阻尼器经受谐波和随机激励的实验数据用于模型识别和评估。评估结果表明,公式化的贝叶斯NARX网络可以准确地模拟自感应MR阻尼器的非线性前向动力学。通过比较建模结果(不考虑正则化),可以观察到贝叶斯规则提高了NARX网络模型的泛化(预测)能力。通过所开发的技术进一步建立了用于自感MR阻尼器的逆动力学模型。所提出的软计算技术对于构造用于结构控制应用的自感MR阻尼器的动力学模型是可行的。

著录项

  • 作者

    Ni YQ; Chen Z; Or SW;

  • 作者单位
  • 年度 2015
  • 总页数
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类

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