论文标题
使用应变测量值和基于摄像头的位置测量值对自适应桁架结构进行自我调整状态估计
Self-Tuning State Estimation for Adaptive Truss Structures Using Strain Gauges and Camera-Based Position Measurements
论文作者
论文摘要
在控制智能结构的背景下,我们提出了一种具有主动负荷元素的自适应建筑物的状态估计方法。为了获取有关结构变形的信息,引入了由数码相机和光学发射器组成的系统,将其固定在选定的节点点上引入,以补充传统的应变仪传感器。对于这种新型传感器组合的传感器融合是使用通过模态分析获得的降低阶结构模型进行操作的Kalman滤波器进行的。由图像处理引起的信号延迟是通过序列测量更新来补偿的,该更新提供了灵活的模块化估计算法。由于相机系统非常精确,因此引入了一种自我调整算法,该算法与观察者参数一起调整模型,以减少系统动态模型和实际结构行为之间的差异。我们进一步采用最佳传感器放置,以限制要放置在给定结构上的传感器数量,并检查对估计精度的影响。带有驱动柱和对角线奶头的自适应高层层的实验室尺度模型用于实验证明所提出的估计方案。
In the context of control of smart structures, we present an approach for state estimation of adaptive buildings with active load-bearing elements. For obtaining information on structural deformation, a system composed of a digital camera and optical emitters affixed to selected nodal points is introduced as a complement to conventional strain gauge sensors. Sensor fusion for this novel combination of sensors is carried out using a Kalman filter that operates on a reduced-order structure model obtained by modal analysis. Signal delay caused by image processing is compensated for by an out-of-sequence measurement update which provides for a flexible and modular estimation algorithm. Since the camera system is very precise, a self-tuning algorithm that adjusts model along with observer parameters is introduced to reduce discrepancy between system dynamic model and actual structural behavior. We further employ optimal sensor placement to limit the number of sensors to be placed on a given structure and examine the impact on estimation accuracy. A laboratory scale model of an adaptive high-rise with actuated columns and diagonal bracings is used for experimental demonstration of the proposed estimation scheme.