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Recursive Estimation for Reduced-Order State-Space Models Using Polynomial Chaos Theory Applied to Vehicle Mass Estimation

机译:基于多项式混沌理论的降阶状态空间模型的递归估计

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The main contribution of this paper is to present a recursive estimation/detection technique for reduced-order state-space systems. The recursive state and parameter estimator is built on the framework of polynomial chaos theory and maximum likelihood estimation. The estimator quantifies the reliability of its estimate in real-time by recursively calculating a signal-to-noise ratio. The signal-to-noise ratio (SNR) indicates how well the output of the reduced-order estimation model matches the actual system output. A detection algorithm makes decisions to trust or distrust the current estimate by comparing the current value of the SNR ratio against a threshold value. This paper applies the proposed techniques to estimate the sprung mass of an actual vehicle. It uses a reduced-order model to approximate the complex ride dynamics of the vehicle. Despite the modeling approximations and simplifications, the proposed technique is able to reliably estimate the sprung mass of the vehicle to within 10% of the true value.
机译:本文的主要贡献是提出了用于降阶状态空间系统的递归估计/检测技术。递归状态和参数估计器建立在多项式混沌理论和最大似然估计的框架上。估计器通过递归计算信噪比来实时量化其估计的可靠性。信噪比(SNR)表示降阶估计模型的输出与实际系统输出的匹配程度。通过将SNR比的当前值与阈值进行比较,检测算法可以决定是否信任当前估计。本文应用提出的技术来估计实际车辆的弹簧质量。它使用降阶模型来近似车辆的复杂行驶动力学。尽管建模近似和简化,但所提出的技术仍能够可靠地估计车辆的弹簧质量,使其在真实值的10%以内。

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