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State Estimation Using Dependent Evidence Fusion: Application to Acoustic Resonance-Based Liquid Level Measurement

机译:相依证据融合的状态估计:在基于声共振的液位测量中的应用

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摘要

Estimating the state of a dynamic system via noisy sensor measurement is a common problem in sensor methods and applications. Most state estimation methods assume that measurement noise and state perturbations can be modeled as random variables with known statistical properties. However in some practical applications, engineers can only get the range of noises, instead of the precise statistical distributions. Hence, in the framework of Dempster-Shafer (DS) evidence theory, a novel state estimatation method by fusing dependent evidence generated from state equation, observation equation and the actual observations of the system states considering bounded noises is presented. It can be iteratively implemented to provide state estimation values calculated from fusion results at every time step. Finally, the proposed method is applied to a low-frequency acoustic resonance level gauge to obtain high-accuracy measurement results.
机译:通过噪声传感器测量来估计动态系统的状态是传感器方法和应用中的常见问题。大多数状态估计方法假设可以将测量噪声和状态扰动建模为具有已知统计属性的随机变量。但是,在某些实际应用中,工程师只能获得噪声范围,而不能获得精确的统计分布。因此,在Dempster-Shafer(DS)证据理论的框架下,提出了一种新的状态估计方法,该方法融合了从状态方程,观测方程和考虑到有限噪声的系统状态的实际观测结果中生成的相关证据。可以迭代地实现以提供在每个时间步从融合结果计算出的状态估计值。最后,将所提出的方法应用于低频声共振液位计,以获得高精度的测量结果。

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