Estimation Time Improvement of Heat Conduction Systems Using Balanced Truncation Method

D. K. Arif, D. Adzkiya, Mardlijah, Fatmawati, T. Asfihani, C. Imron, Fella Diandra Chrisandy
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Abstract

The model reduction process uses a balanced cut, obtains a reduced system that has fewer states than the initial system. This makes it difficult to compare the state of the reduced system with the initial system. Therefore, identification is needed to find the suitability of the state variables. In this paper, we discuss the process of identifying and estimating state variables in the reduced discrete-time linear system and implement these problems on heat conduction model. Model reduction using balanced truncation method is applied to discrete-time linear system of order s which is stable, controllable and observable in order to obtain the reduced system with order n that has a same characteristic. On the other hand, identification of the state variables from the reduced system is intended to simplify the comparison of the estimation result between the reduced system and the initial system. In this case, the Kalman filter algorithm is required for the estimation process. Furthemore as a case study, those problems are applied on heat conduction model. Model reduction using balanced truncation method is only applicable on heat conduction model which is stable, controllable and observable. Kalman filter algorithm can be implemented on the reduced system of heat conduction model, similarly identification of the state variables can be applied on the result of reduced system estimation. Based on the error values, the best estimation result is the estimation process of the initial system which obtained the smallest error, with a relative precentage change of at least 73, 2 %. In other case, based on the computational time, reduced system estimation is faster than the estimation process of the initial system.
利用平衡截断法改进热传导系统估计时间
模型约简过程使用平衡切割,得到一个比初始系统状态更少的约简系统。这使得将简化后的系统与初始系统的状态进行比较变得困难。因此,需要识别状态变量的适用性。本文讨论了简化离散线性系统中状态变量的辨识和估计过程,并在热传导模型上实现了这些问题。将平衡截断法模型约简应用于稳定、可控、可观测的s阶离散线性系统,得到具有相同特征的n阶约简系统。另一方面,从化简后的系统中识别状态变量是为了简化化简后的系统与初始系统估计结果的比较。在这种情况下,估计过程中需要使用卡尔曼滤波算法。并将这些问题作为实例应用于热传导模型。平衡截断法模型约简只适用于稳定、可控、可观察的热传导模型。卡尔曼滤波算法可以应用于热传导模型的约简系统,状态变量的辨识同样可以应用于约简系统估计的结果。根据误差值,最佳估计结果是获得最小误差的初始系统估计过程,相对百分比变化至少为73.3%。在另一种情况下,基于计算时间,简化后的系统估计比初始系统的估计过程要快。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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