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Multibody-Based Input and State Observers Using Adaptive Extended Kalman Filter

机译:基于多体型输入和状态观察者使用自适应扩展卡尔曼滤波器

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摘要

The aim of this work is to explore the suitability of adaptive methods for state estimators based on multibody dynamics, which present severe non-linearities. The performance of a Kalman filter relies on the knowledge of the noise covariance matrices, which are difficult to obtain. This challenge can be overcome by the use of adaptive techniques. Based on an error-extended Kalman filter with force estimation (errorEKF-FE), the adaptive method known as maximum likelihood is adjusted to fulfill the multibody requirements. This new filter is called adaptive error-extended Kalman filter (AerrorEKF-FE). In order to present a general approach, the method is tested on two different mechanisms in a simulation environment. In addition, different sensor configurations are also studied. Results show that, in spite of the maneuver conditions and initial statistics, the AerrorEKF-FE provides estimations with accuracy and robustness. The AerrorEKF-FE proves that adaptive techniques can be applied to multibody-based state estimators, increasing, therefore, their fields of application.
机译:这项工作的目的是探讨基于多体动力学的国家估计的适应性方法的适用性,该估算是具有严重的非线性的多体动态。卡尔曼滤波器的性能依赖于难以获得的噪声协方差矩阵的知识。通过使用自适应技术,可以克服这一挑战。基于具有力估计(Errorekf-Fe)的错误扩展卡尔曼滤波器,调整称为最大可能性的自适应方法以满足多体要求。这个新的过滤器称为自适应错误扩展卡尔曼滤波器(AERROREKF-FE)。为了呈现一般方法,在模拟环境中的两种不同机制上测试该方法。此外,还研究了不同的传感器配置。结果表明,尽管有机动条件和初始统计数据,但AerroreKF-FE提供了准确性和鲁棒性的估计。 Aerrorekf-Fe证明了自适应技术可以应用于基于多体的状态估计,因此增加了它们的应用领域。

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