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Parameter estimation for externally simulated thermal network models

机译:外部模拟热网模型的参数估计

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摘要

Obtaining accurate dynamic models of building thermal behaviour requires a statistically solid foundation for estimating unknown parameters. This is especially important for thermal network grey-box models, since all their parameters normally need to be estimated from data. One attractive solution is to maximise the likelihood function, under the assumption of Gaussian distributed residuals. This technique was developed previously and implemented in the Continuous Time Stochastic Modelling framework, where an Extended Kalman Filter is used to compute residuals and their covariances. The main result of this paper is a similar method applied to a thermal network grey-box model of a building, simulated as an electric circuit in an external tool. The model is described as a list of interconnected components without deriving explicit equations. Since this model implementation is not differentiable, an alternative Kalman filter formulation is needed. The Unscented and Ensemble Kalman Filters are designed to handle non-linear models without using Jacobians, and can therefore also be used with models in a non-differentiable form. Both Kalman filter implementations are tested and compared with respect to estimation accuracy and computation time. The Profile Likelihood method is used to analyse structural and practical parameter identifiability. This method is extended to compute two-dimensional profiles, which can also be used to analyse parameter interdependence by providing insight into the parameter space topology. (C) 2019 Elsevier B.V. All rights reserved.
机译:要获得建筑物热行为的准确动态模型,需要统计上扎实的基础来估算未知参数。这对于热网络灰箱模型尤为重要,因为通常需要根据数据估算其所有参数。一种有吸引力的解决方案是在高斯分布残差的假设下最大化似然函数。该技术是先前开发的,并在连续时间随机建模框架中实现,在该框架中,扩展卡尔曼滤波器用于计算残差及其协方差。本文的主要结果是将类似的方法应用于建筑物的热网络灰箱模型,并在外部工具中模拟为电路。该模型被描述为互连组件的列表,而无需导出明确的方程式。由于此模型的实现不可区分,因此需要替代的卡尔曼滤波器公式。 Unscented和Ensemble Kalman滤波器设计为在不使用Jacobian的情况下处理非线性模型,因此也可以用于不可微形式的模型。两种卡尔曼滤波器的实现都经过了测试,并就估计精度和计算时间进行了比较。轮廓似然法用于分析结构和实际参数的可识别性。此方法已扩展为计算二维轮廓,也可以通过提供对参数空间拓扑的洞察力来分析参数相互依赖性。 (C)2019 Elsevier B.V.保留所有权利。

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