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Optimal location of measurements for parameter estimation of distributed parameter systems

机译:分布式参数系统参数估计的最佳测量位置

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Systematic methodologies for the optimal location of spatial measurements, for efficient estimation of parameters of distributed systems, are investigated. A review of relevant methods in the literature is presented, and a comparison between the results obtained with three distinctive existing techniques is given. In addition, a new approach based on the Proper Orthogonal Decomposition (POD), to address this important problem is introduced and discussed with the aid of illustrative benchmark case studies from the literature. Based on the results obtained here, it was observed that the method based on the Gram determinant evolution (Vande Wouwer et al., 2000), does not always produce accurate results. It is strongly dependent on the behaviour of sensitivity coefficients and requires extensive calculations. The method based on max-min optimisation (Alonso, Kevrekidis, Banga, & Frouzakis, 2004) assigns optimal sensor locations to the positions where system outputs reach their extrema values; however, in some cases it produces more than one optimal solution. The D-optimal design method, Ucinski (2003, June 18-20), produces as results the optimal number and spatial positions of measurements based on the behaviour (rather than the magnitude) of the sensitivity functions. Here we show that the extrema values of POD modes can be used directly to compute optimal sensor locations (as opposed e.g. to Alonso, Kevrekidis, et al., 2004, where PODs are merely used to reduce the system and further calculations are needed to compute sensor locations). Furthermore, we demonstrate the equivalence between the extrema of POD modes and of sensitivity functions. The added value of directly using PODs for the computation of optimal sensor locations is the computational efficiency of the method, side-stepping the tedious computation of sensitivity coefficient Jacobian matrices and using only system responses and/or experimental results directly. Furthermore, the inherent combination of model reduction and sensor location estimation in this method becomes more important as the complexity of the original distributed parameter system increases.
机译:研究了用于空间测量的最佳位置,有效估计分布式系统参数的系统方法。本文对文献中的相关方法进行了综述,并对使用三种独特的现有技术获得的结果进行了比较。另外,在文献的说明性基准案例研究的帮助下,引入并讨论了基于正确正交分解(POD)的新方法来解决此重要问题。根据此处获得的结果,可以观察到基于革兰氏决定因素演化的方法(Vande Wouwer等,2000)并不总是能产生准确的结果。它在很大程度上取决于灵敏度系数的行为,需要大量的计算。基于最大-最小优化的方法(Alonso,Kevrekidis,Banga和Frouzakis,2004年)将最佳传感器位置分配给系统输出达到其极值的位置。但是,在某些情况下,它会产生多个解决方案。 D最优设计方法Ucinski(2003年6月18日至20日)根据灵敏度函数的行为(而非幅度)得出最优的测量数量和空间位置。在这里,我们表明POD模式的极值可以直接用于计算最佳传感器位置(例如,与Alonso,Kevrekidis等人(2004年)相反,在POD中,POD仅用于简化系统,需要进一步的计算才能计算出传感器位置)。此外,我们证明了POD模式的极值和灵敏度函数之间的等价性。直接使用POD来计算最佳传感器位置的附加值是该方法的计算效率,避免了敏感系数Jacobian矩阵的繁琐计算,而仅直接使用系统响应和/或实验结果。此外,随着原始分布参数系统的复杂性增加,此方法中模型简化和传感器位置估计的内在组合变得更加重要。

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