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Modelling and Control of Magnetorheological Damper:Real-time implementation and experimental verification

机译:磁流变阻尼器的建模与控制:实时实施和实验验证

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摘要

This thesis considers two main issues concerning the application of a rotary type magnetorheological (MR) damper for damping of flexible structures. The first is the modelling and identification of the damper property, while the second is the formulation of effective control strategies. The MR damper is identified by both the standard parametric Bouc-Wen model and the non-parametric neural network model from an experimental data set generated by dynamic tests of the MR damper mounted in a hydraulic testing machine. The forward model represents the direct dynamics of the MR damper where velocity and current are used as input and the force as output. The inverse model represents the inverse dynamics of the MR damper where the absolute velocity and absolute force are used as input and the damper current as output. For the inverse model the current output of the network must always be positive, and it is found that the modelling error of the inverse model is significantly reduced when the corresponding input is given in terms of the absolute values of velocity and damper force. This is a new contribution to the inverse modelling techniques for the control of MR dampers. Another new contribution to the modelling of an MR damper is the use of experimental measurement data of a rotary MR damper that requires appropriate filtering. The semi-systematic optimisation procedure proposed in the thesis derives an effective neural network structure, where only velocity and damper force are essential input parameters for the MR damper modelling. Thus, for proper training, the quality of the velocity data is very important. However, direct velocity measurement is not easy. From the displacement data or the acceleration data, velocity can be determined by using simple differentiation or integration, respectively, but these processes add undesirable noise to the velocity. Instead the Kinematic Kalman Filter (KKF) is an effective means for estimation of velocity. The KKF does not directly depend on the system or structural model, as it is the case for the conventional Kalman filter. The KKF fuses the displacement and the acceleration data to get an accurate and robust estimate of the velocity. The simplicity of the network and the application of velocity in terms of KKF is a novel contribution of the thesis to the generation of a training set for neural network modelling of MR dampers. The development of the control strategies for the MR damper focuses on the introduction of apparent negative stiffness, which basically leads to an increased local motion of the damper and thereby to increased energy dissipation and damping. Optimal viscous damping (VD) is chosen as the benchmark control strategy, used as reference case for assessment of the proposed control methods with negative stiffness. Viscous damping with negative stiffness (VDNS) initially illustrates the effectiveness of the negative stiffness component in structural damping. In a linear control setting negative stiffness requires active control forces, which are not realizable by the purely dissipative MR damper. Thus, these active components are simply clipped in the final control implementation. Since MR dampers behave almost as a friction damper improved damping performance can be obtained by a suitable combination of pure friction and negative damper stiffness. This is realized by amplitude dependent friction damping with negative stiffness (FDNS), where the force level of the friction component is adaptively changed to secure the optimal balance between friction energy dissipation and apparent negative stiffness. This type of control model for semi-active dampers is rate-independent and conveniently described in terms of the desired shape of the associated hysteresis loop or force-displacement trajectory. The final method considered for control of the rotary MR damper is a model reference neural network controller (MRNNC). This novel control approach is designed and trained based on a desired reference damper model, which in this case is the amplitude dependent friction damping with negative stiffness (FDNS). The idea is to train the neural network of the controller by data derived explicitly from the desired shape of the force-displacement loop at pure harmonic motion. In this idealized representation the optimal relations between friction force level, negative stiffness and response amplitude can often be given explicitly by e.g. maximizing the damping ratio of the targeted vibration mode. Consequently the idea behind this trained neural network is that the optimal properties of the desired hysteresis loop formulation can be extrapolated to more general and non-harmonic response patterns, e.g. narrow-band stochastic response due to wind, wave, traffic or even earthquake excitation. Numerical and experimental simulations have been conducted to examine the performance of the proposed control strategies. Force tracking by using an inverse neural network of the MR damper is improved by a low-pass filter to reduce the noise in the desired current and a simple switch that truncates negative values of the desired current. The performance of the collocated control schemes for the rotary type semi-active MR damper are initially verified by closed loop dynamic experiments conducted on a 5-storey shear frame structure exposed to harmonic base excitation. The MR damper is mounted on the structure so that it operates on the relative motion between the ground base and the first floor of the shear frame. The shear frame structural model is initially experimentally identified, where mass and stiffness of the model is determined by an inverse modal analysis based on the natural frequencies obtained experimentally. The damping matrix is subsequently determined from the estimated damping ratio obtained by free decay tests. The results in the thesis demonstrate that introducing apparent negative stiffness to the control of the MR damper significantly decreases both the top floor displacement and acceleration amplitudes of the shear frame structure. The structural damping ratios obtained from the response curves of the experiments correspond well to the expected values. This indicates that the mean stiffness and mean energy dissipation of the control forces are predicted fairly accurate. A final numerical investigation is based on a classic benchmark problem for earthquake protection of a multi storey building. The seismic response of the base-isolated benchmark building with an MR damper installed between the ground and the base is illustrated, and the effectiveness of negative stiffness of the control strategies is verified numerically. Similarly, the response of another wind excited benchmark building installed with MR dampers is demonstrated and the performance shows satisfactory result. The main contributions to this thesis are the novel modelling approach to the direct and the inverse dynamics of a rotary MR damper from experimental data, the development of model based semi-active control strategies for the MR damper, the effective introduction of negative stiffness in the control of semi-active dampers and the demonstration of effectiveness and closed loop implementation of the control techniques on both a shear frame structure and a numerical benchmark problem.
机译:本文考虑了有关旋转型磁流变(MR)阻尼器在柔性结构阻尼中的应用的两个主要问题。第一个是阻尼器特性的建模和识别,第二个是有效控制策略的制定。 MR阻尼器通过标准参数Bouc-Wen模型和非参数神经网络模型从安装在液压测试机中的MR阻尼器的动态测试生成的实验数据集中进行识别。正向模型表示MR阻尼器的直接动力学特性,其中速度和电流用作输入,力用作输出。逆模型表示MR阻尼器的逆动力学,其中绝对速度和绝对力用作输入,而阻尼器电流用作输出。对于逆模型,网络的当前输出必须始终为正,并且发现当根据速度和阻尼力的绝对值给出相应的输入时,逆模型的建模误差会大大降低。这是对MR阻尼器控制的逆建模技术的新贡献。 MR阻尼器建模的另一个新贡献是使用了需要适当过滤的旋转MR阻尼器的实验测量数据。本文提出的半系统优化程序推导了一种有效的神经网络结构,其中速度和阻尼力是MR阻尼器建模的基本输入参数。因此,对于适当的训练,速度数据的质量非常重要。但是,直接速度测量并不容易。根据位移数据或加速度数据,可以分别通过简单的微分或积分来确定速度,但是这些过程会给速度增加不希望的噪声。相反,运动卡尔曼滤波器(KKF)是估算速度的有效手段。 KKF不直接依赖于系统或结构模型,传统的卡尔曼滤波器就是这种情况。 KKF将位移和加速度数据融合在一起,以获得对速度的准确而可靠的估计。网络的简单性和速度在KKF方面的应用是论文对MR阻尼器神经网络建模训练集的产生的新贡献。 MR阻尼器控制策略的发展集中于引入表观的负刚度,这基本上导致了阻尼器局部运动的增加,从而增加了能量的耗散和阻尼。选择最佳粘性阻尼(VD)作为基准控制策略,用作评估所建议的负刚度控制方法的参考案例。负刚度的粘性阻尼(VDNS)最初说明了负刚度分量在结构阻尼中的有效性。在线性控制设置中,负刚度需要主动控制力,而单纯的耗散MR阻尼器则无法实现。因此,这些有源组件仅在最终控制实现中被裁剪。由于MR阻尼器的性能几乎与摩擦阻尼器相同,因此可以通过将纯摩擦力和负阻尼器刚度进行适当的组合来提高阻尼性能。这是通过具有负刚度的振幅相关摩擦阻尼(FDNS)实现的,其中,摩擦分量的力水平会自适应地更改,以确保摩擦能量耗散和表观负刚度之间达到最佳平衡。用于半主动阻尼器的这种控制模型与速率无关,并且可以根据相关的磁滞回线或力-位移轨迹的所需形状方便地进行描述。用于控制旋转MR阻尼器的最终方法是模型参​​考神经网络控制器(MRNNC)。这种新颖的控制方法是基于所需的参考阻尼器模型进行设计和训练的,在这种情况下,该模型是具有负刚度(FDNS)的振幅相关的摩擦阻尼。这个想法是通过从纯谐波运动中力位移环的所需形状中明确得出的数据来训练控制器的神经网络。在这种理想化表示中,摩擦力水平,负刚度和响应幅度之间的最佳关系通常可以通过例如下式明确给出。最大化目标振动模式的阻尼比。因此,该训练过的神经网络背后的思想是,可以将期望的磁滞回线公式的最佳特性外推到更一般和非谐波的响应模式,例如:风,浪引起的窄带随机响应,交通甚至地震。已经进行了数值和实验仿真以检验所提出的控制策略的性能。通过使用MR阻尼器的逆神经网络进行力跟踪,可以通过低通滤波器来减少所需电流中的噪声,并通过简单的开关将所需电流的负值截断来改进。旋转式半主动MR阻尼器的并置控制方案的性能最初是通过在暴露于谐波基础激励的5层剪切框架结构上进行的闭环动态实验来验证的。 MR阻尼器安装在结构上,以便它在地基和剪切框架的第一层之间的相对运动下运行。最初通过实验确定剪切框架结构模型,其中基于实验获得的固有频率通过反模态分析确定模型的质量和刚度。随后从通过自由衰减测试获得的估计阻尼比中确定阻尼矩阵。论文的结果表明,在MR阻尼器的控制中引入明显的负刚度会显着降低剪力框架结构的顶层位移和加速度幅度。从实验的响应曲线获得的结构阻尼比与预期值非常吻合。这表明预测的控制力的平均刚度和平均能量耗散相当准确。最终的数值研究基于经典的基准问题,用于多层建筑的地震防护。举例说明了在地面与基础之间安装了MR阻尼器的基础隔离基准建筑物的地震响应,并通过数值验证了控制策略的负刚度有效性。同样,演示了另一台装有MR阻尼器的风振基准建筑物的响应,性能显示令人满意的结果。对本论文的主要贡献是根据实验数据对旋转MR阻尼器的正向和反向动力学进行建模的新颖方法,针对MR阻尼器的基于模型的半主动控制策略的开发,在轴承中有效引入负刚度的方法。半主动阻尼器的控制以及在剪切框架结构和数值基准问题上的控制技术有效性和闭环实施的演示。

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