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Recomputing Causality Assignments on Lumped Process Models When Adding New Simplification Assumptions

机译:添加新的简化假设时,重新计算集总过程模型上的因果关系赋值

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This paper presents a new algorithm for the resolution of over-constrained lumped process systems, where partial differential equations of a continuous time and space model of the system are reduced into ordinary differential equations with a finite number of parameters and where the model equations outnumber the unknown model variables. Our proposal is aimed at the study and improvement of the algorithm proposed by Hangos-Szerkenyi-Tuza. This new algorithm improves the computational cost and solves some of the internal problems of the aforementioned algorithm in its original formulation. The proposed algorithm is based on parameter relaxation that can be modified easily. It retains the necessary information of the lumped process system to reduce the time cost after introducing changes during the system formulation. It also allows adjustment of the system formulations that change its differential index between simulations.
机译:本文提出了一种解决超约束集总过程系统的新算法,该算法将系统的连续时间和空间模型的偏微分方程简化为带有有限数量参数的常微分方程,并且模型方程数量超过未知的模型变量。我们的建议旨在研究和改进Hangos-Szerkenyi-Tuza提出的算法。该新算法提高了计算成本,并在其原始公式中解决了上述算法的一些内部问题。所提出的算法基于可以轻松修改的参数松弛。它保留了集总过程系统的必要信息,以减少在系统制定过程中引入更改后的时间成本。它还允许调整系统公式,以改变其模拟之间的差异指数。

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