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首页> 外文期刊>Journal of Zhejiang University. Science, A >Detection of gross errors using mixed integer optimization approach in process industry
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Detection of gross errors using mixed integer optimization approach in process industry

机译:使用混合整数优化方法在工艺业中检测总误差

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摘要

A novel mixed integer linear programming (NMILP) model for detection of gross errors is presented in this paper. Yamamura et al.(1988) designed a model for detection of gross errors and data reconciliation based on Akaike information criterion (AIC). But much computational cost is needed due to its combinational nature. A mixed integer linear programming (MILP) approach was performed to reduce the computational cost and enhance the robustness. But it loses the super performance of maximum likelihood estimation. To reduce the computational cost and have the merit of maximum likelihood estimation, the simultaneous data reconciliation method in an MILP framework is decomposed and replaced by an NMILP subproblem and a quadratic programming (QP) or a least squares estimation (LSE) subproblem. Simulation result of an industrial case shows the high efficiency of the method.
机译:本文提出了一种用于检测总误差的新型混合整数线性编程(NMILP)模型。 Yamamura等人。(1988)设计了一种用于检测基于Akaike信息标准(AIC)的毛错误和数据对和解的模型。但由于其组合性质,需要多种计算成本。进行混合整数线性编程(MILP)方法以降低计算成本并增强鲁棒性。但它失去了最大似然估计的超级性能。为了降低计算成本并且具有最大似然估计的优点,MILP框架中的同时数据协调方法被NMILP子问题和二次编程(QP)或最小二乘估计(LSE)子问题替换。工业案例的仿真结果显示了该方法的高效率。

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