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Online model-based redesign of experiments with erratic models: A disturbance estimation approach

机译:基于在线模型的带有不稳定模型的实验的重新设计:一种干扰估计方法

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摘要

Model-based design of experiment (MBDoE) techniques are a useful tool to maximise the information content of experimental trials when the purpose is identifying the set of parameters of a deterministic model in a statistically sound way. In a conventional MBDoE procedure, the information gathered during the evolution of an experiment is exploited only at the end of the experiment itself. Conversely, online model-based redesign of experiment (OMBRE) techniques have been recently proposed to exploit the information as soon as it is generated by the running experiment, allowing for the dynamic update of the experimental conditions to yield the most informative data in order to improve the parameter identification task. However, the effectiveness of MBDoE strategies (including OMBRE) may be severely affected by the presence of systematic modelling errors as well as by disturbances acting on the system. In this paper, a novel experiment design approach (DE-OMBRE) is presented, where a model updating policy including disturbance estimation (DE) is embedded within an OMBRE strategy in order to achieve a statistically satisfactory estimation of the model parameters as well as to estimate the possible discrepancy between the real system and the model being identified. The procedure allows reducing (or even avoiding) constraint violations, preserving the optimality of the redesign even in the presence of systematic errors and/or unknown disturbances acting on the system. Two simulated case studies of different levels of complexity are used to illustrate the benefits of the novel approach.
机译:当目的是以统计学上合理的方式识别确定性模型的参数集时,基于模型的实验设计(MBDoE)技术是最大化实验试验信息内容的有用工具。在常规的MBDoE程序中,仅在实验本身结束时才利用在实验发展过程中收集的信息。相反,最近提出了基于在线模型的实验重新设计(OMBRE)技术,以在运行实验生成信息后立即对其进行利用,从而允许动态更新实验条件以产生最有用的数据,以便完善参数识别任务。但是,MBDoE策略(包括OMBRE)的有效性可能受到系统建模错误以及系统上的干扰的严重影响。在本文中,提出了一种新颖的实验设计方法(DE-OMBRE),其中将包含干扰估计(DE)的模型更新策略嵌入到OMBRE策略中,以实现统计上令人满意的模型参数估计以及估计实际系统与所识别模型之间可能存在的差异。该程序可以减少(甚至避免)约束违规,即使在系统出现错误和/或系统出现未知干扰的情况下,也可以保持重新设计的最优性。使用两个模拟的不同复杂程度的案例研究来说明这种新方法的好处。

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  • 来源
    《Computers & Chemical Engineering 》 |2012年第11期| p.138-151| 共14页
  • 作者单位

    CAPE-Lab - Computer-Aided Process Engineering Laboratory, Dipartimento di Principi e Impianti di Ingegneria Chimica, Universita di Padova, via Marzolo 9.1-35131 Padova (PD),Italy;

    CAPE-Lab - Computer-Aided Process Engineering Laboratory, Dipartimento di Principi e Impianti di Ingegneria Chimica, Universita di Padova, via Marzolo 9.1-35131 Padova (PD),Italy;

    DICCISM - Dipartimento di Ingegneria Chimica, Universita di Pisa, via DiotisaM 2,56122 Pisa (PI), Italy;

    CAPE-Lab - Computer-Aided Process Engineering Laboratory, Dipartimento di Principi e Impianti di Ingegneria Chimica, Universita di Padova, via Marzolo 9.1-35131 Padova (PD),Italy;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    model-based design of experiment; parameter estimation; disturbance estimation; model updating; model identification;

    机译:基于模型的实验设计;参数估计;干扰估计;模型更新;型号识别;

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