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Improved Kalman filter with unknown inputs based on data fusion of partial acceleration and displacement measurements

机译:基于部分加速度和位移测量的数据融合,改进了输入未知的卡尔曼滤波器

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摘要

The classical Kalman filter (KF) provides a practical and efficient state estimation approach for structural identification and vibration control. However, the classical KF approach is applicable only when external inputs are assumed known. Over the years, some approaches based on Kalman filter with unknown inputs (KF-UI) have been presented. However, these approaches based solely on acceleration measurements are inherently unstable which leads poor tracking and so-called drifts in the estimated unknown inputs and structural displacement in the presence of measurement noises. Either on-line regularization schemes or post signal processing is required to treat the drifts in the identification results, which prohibits the real-time identification of joint structural state and unknown inputs. In this paper, it is aimed to extend the classical KF approach to circumvent the above limitation for real time joint estimation of structural states and the unknown inputs. Based on the scheme of the classical KF, analytical recursive solutions of an improved Kalman filter with unknown excitations (KF-UI) are derived and presented. Moreover, data fusion of partially measured displacement and acceleration responses is used to prevent in real time the so-called drifts in the estimated structural state vector and unknown external inputs. The effectiveness and performance of the proposed approach are demonstrated by some numerical examples.
机译:经典的卡尔曼滤波器(KF)为结构识别和振动控制提供了一种实用而有效的状态估计方法。但是,经典的KF方法仅在假定外部输入已知的情况下适用。多年来,提出了一些基于带有未知输入的卡尔曼滤波器(KF-UI)的方法。但是,这些仅基于加速度测量的方法本质上是不稳定的,这会导致跟踪效果差,并且在存在测量噪声的情况下,估计的未知输入中的所谓漂移以及结构位移。需要在线正则化方案或后信号处理来处理识别结果中的漂移,这会阻止实时识别关节结构状态和未知输入。本文旨在扩展经典的KF方法,以克服结构状态和未知输入的实时联合估计的上述限制。基于经典KF方案,推导并给出了一种改进的未知激励卡尔曼滤波器的解析递归解。而且,使用部分测量的位移和加速度响应的数据融合来实时防止估计的结构状态向量和未知外部输入中的所谓漂移。一些数值例子证明了该方法的有效性和性能。

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