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An Approach to Validation of Stochastic Dynamic Models with Initial State Uncertainty

机译:具有初始状态不确定性的随机动力学模型的验证方法

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摘要

It has been well realized that model validation plays an important role in a modelling and simulation development process. One important validation approach is to directly compare the experimental data with the data produced by the simulation. A problem with this approach is that the residual used in the analysis is usually nonstationary and contaminated by unknown initial conditions. A new approach is proposed in this paper, in which a Luenberger observer or a Kalman filter is used to generate the residual. In this way, the generated residual conveys the information of modelling errors, and meanwhile the effect of unknown initial conditions upon it is minimized. Furthermore, the residual is Gaussian and white when no modelling errors exist, a property which can be easily tested. The approach is illustrated with the validation of a biological model, which is typically hard to validate.
机译:众所周知,模型验证在建模和仿真开发过程中起着重要作用。一种重要的验证方法是直接将实验数据与模拟产生的数据进行比较。这种方法的问题在于,分析中使用的残留物通常是不稳定的,并且被未知的初始条件所污染。本文提出了一种新方法,其中使用Luenberger观测器或卡尔曼滤波器生成残差。这样,生成的残差传达了建模误差的信息,同时将未知初始条件对其产生的影响最小化。此外,当不存在建模错误时,残差为高斯和白色,此属性可以轻松测试。通过生物学模型的验证来说明该方法,该模型通常很难验证。

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