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Steady data reconciliation and gross error detection based on the assumption of bounded error distribution

机译:基于有界误差分布的假设进行稳定的数据对账和粗差检测

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Reliable process data are the key to the efficient operation of chemical plants. As a result of random and possibly gross errors, these measurements do not generally satisfy the process constraints. Thus data reconciliation and gross error detection are needed before the measurements can be used successfully. Almost all existing rectification methods are developed on the hypothesis that the measurement errors are normally distributed with zero mean and a known covariance matrix. However the errors are bounded distinctly in nature, whereas normal distribution is unbounded in both sides. A new method for simultaneous steady data reconciliation and gross error detection is presented assuming that the errors are subject to the bounded contaminated normal distribution. The effectiveness of the method is demonstrated on an atmospheric distillation tower.
机译:可靠的过程数据是化工厂高效运行的关键。由于随机误差和可能的总体误差,这些测量结果通常不满足过程约束。因此,在成功使用测量之前,需要进行数据协调和总错误检测。几乎所有现有的校正方法都是基于这样的假设:测量误差以零均值和已知协方差矩阵正态分布。但是,错误在本质上有明显的界线,而正态分布在两侧都是无界的。假设误差服从有界污染正态分布,则提出了一种同时进行稳定数据协调和总误差检测的新方法。在常压蒸馏塔上证明了该方法的有效性。

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