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首页> 外文期刊>Journal of loss prevention in the process industries >Digital condition monitoring of complex (bio)chemical reaction systems in the presence of model uncertainty: Application to environmental hazard monitoring
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Digital condition monitoring of complex (bio)chemical reaction systems in the presence of model uncertainty: Application to environmental hazard monitoring

机译:存在模型不确定性的复杂(生物)化学反应系统的数字条件监测:在环境危害监测中的应用

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摘要

A new approach to the state estimation and condition monitoring problem for complex nonlinear (bio)chemical reaction systems in the presence of model uncertainty is proposed. In particular, a new robust nonlinear state estimation method is developed that can be digitally implemented with the aid of a computer. The proposed method explicitly incorporates and processes all the available pertinent information associated with two sources: (i) a dynamic process model which is inevitably characterized by various degrees of uncertainty, and (ii) a set of available sensor measurements through which the values of certain variables are recorded. Based on the above information, a robust digital state estimator is designed capable of dynamically (over time) reconstructing all other key physicochemical variables that cannot be measured online (due to physical and/or technical limitations), while remaining critical from a process condition monitoring point of view. A set of conditions are derived that ensure the existence of such a state estimator, whose algorithmic implementation can be readily realized via a simple MAPLE code. Furthermore, the convergence of the estimation error or the mismatch between the actual unmeasurable states and their estimates is analyzed and characterized in the presence of model uncertainty. Finally, the performance of the proposed digital estimator is evaluated in an environmental hazard monitoring case study, where a simple bioremediation model describing the degradation of an organic hazardous pollutant is considered that exhibits nonlinear behavior coupled with parametric uncertainty. The estimation objective is, through the use of the proposed estimator, to reliably reconstruct the dynamic profile of the unmeasurable organic pollutant (substrate) concentration using microorganism (biomass) concentration measurements, as well as the available process model. The performance characteristics of the proposed estimator in the presence of model uncertainty are assessed by conducting simulation studies.
机译:针对存在模型不确定性的复杂非线性(生物)化学反应系统的状态估计和状态监测问题,提出了一种新的方法。特别地,开发了一种新的鲁棒的非线性状态估计方法,该方法可以借助于计算机以数字方式实现。所提出的方法明确地合并并处理了与两个来源相关的所有可用的相关信息:(i)动态过程模型,不可避免地具有各种不确定性,并且(ii)一组可用的传感器测量值,通过这些测量值,某些值记录变量。基于上述信息,设计了一种强大的数字状态估算器,该估算器能够动态(随时间变化)重建所有其他无法在线测量的关键物理化学变量(由于物理和/或技术限制),同时保持对过程状态监视的关键观点看法。导出一组条件,以确保存在这种状态估计器,可以通过简单的MAPLE代码轻松实现其状态实现。此外,在存在模型不确定性的情况下,分析并表征了估计误差的收敛性或实际不可测量状态与其估计之间的不匹配。最后,在环境危害监测案例研究中对提出的数字估算器的性能进行了评估,在该案例研究中,考虑了一种描述有机有害污染物降解的简单生物修复模型,该模型具有非线性行为和参数不确定性。估计目标是通过使用建议的估计器,使用微生物(生物量)浓度测量值以及可用的过程模型来可靠地重建不可测有机污染物(底物)浓度的动态分布。通过进行仿真研究,可以评估存在模型不确定性的情况下拟议估算器的性能特征。

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