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Probabilistic observers for a class of uncertain biological processes

机译:一类不确定的生物过程的概率观察者

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In this paper, probabilistic observers are considered for a class of continuous biological processes described by mass-balance-based models. It is assumed that the probability density functions (PDFs) of the uncertain parameters and inputs of the model, as well as the PDFs of the missing initial conditions are known. Then, the PDFs of the unmeasured state variables are obtained, at any time, by considering the image of these initial PDFs by the flow of the dynamic model (differential system). In comparison to classical open-loop asymptotic and interval observers, the method provides information on the confidence level of the estimates rather than simple upper and lower bounds. Moreover, unlike Kalman filters, probabilistic observers are not restricted to Gaussian distributions for the uncertain parameters. The design and application of a probabilistic observer to an industrial wastewater treatment plant is presented. Finally, a number of practical considerations is discussed in connection to both implementation and utilization issues. Copyright (C) 2006 John Wiley & Sons, Ltd.
机译:在本文中,对于基于质量平衡模型描述的一类连续生物学过程,考虑了概率观察者。假定已知模型的不确定参数和输入的概率密度函数(PDF),以及缺失的初始条件的PDF。然后,通过动态模型(微分系统)的流动考虑这些初始PDF的图像,可以随时获取未测量状态变量的PDF。与经典的开环渐近和区间观测器相比,该方法提供的是估计值的置信度信息,而不是简单的上下限。此外,与卡尔曼滤波器不同,概率观察者不限于不确定参数的高斯分布。介绍了概率观察器在工业废水处理厂的设计与应用。最后,讨论了有关实现和使用问题的许多实际考虑因素。版权所有(C)2006 John Wiley&Sons,Ltd.

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