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Accelerating simulations of computationally intensive first principle models using accurate quasi-linear parameter varying models

机译:使用精确的准线性参数变化模型加速计算密集型第一原理模型的仿真

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摘要

First principles models are commonly obtained using finite element or finite difference methods. One of the advantages of these models is that the states in the model have a clear physical interpretation. This makes of them perfect candidates for the monitoring of the states of the system. Unfortunately, the CPU time associated with each evaluation of these complex models is often far too large for these models to be used for online monitoring purposes. This paper introduces a general method to approximate a computationally expensive first principles model with a quasi-linear parameter varying (q-LPV) model. Besides approximating the original model accurately and conserving the physical interpretation of the states, the resulting q-LPV model has generally a much simpler structure than the original model. This in turn implies that the CPU time associated with each model evaluation is generally considerably reduced, allowing the use of these models for online monitoring. Unlike other q-LPV identification techniques, the proposed method extensively uses the availability of the original first principles model.
机译:通常使用有限元或有限差分方法获得第一原理模型。这些模型的优点之一是模型中的状态具有清晰的物理解释。这使它们成为监视系统状态的理想人选。不幸的是,与这些复杂模型的每次评估相关的CPU时间对于这些模型而言通常太大了,无法用于在线监视。本文介绍了一种使用准线性参数变化(q-LPV)模型近似计算昂贵的第一原理模型的通用方法。除了精确地近似原始模型并保留状态的物理解释外,所得的q-LPV模型通常比原始模型具有更简单的结构。这反过来意味着与每个模型评估相关的CPU时间通常会大大减少,从而允许将这些模型用于在线监视。与其他q-LPV识别技术不同,该方法广泛使用了原始第一原理模型的可用性。

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