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Simultaneous Computation of Model Order and Parameter Estimation of a Heating System Based on Gravitational Search Algorithm for Autoregressive with Exogenous Inputs

机译:基于引力搜索算法的外源输入自回归加热系统模型阶数与参数估计的同时计算

摘要

System identification is a class of control system engineering that determines physical functionality of a plant and represents them in the form of mathematical expression by utilizing real experimental data. It is a process of acquiring, formatting, processing, and identifying mathematical models by considering raw data from the real-world system. Once the mathematical model is chosen, it can be characterized in terms of suitable descriptions such as transfer function that can be used for controller design. Most essential stages of model identification process can be summarized into four main stages. The first stage is collecting experimental data. Then, the model order and structure are chosen. The next stage is to estimate the parameters of the model and finally, the mathematical model is validated. Model order selection and parameter estimation are two significant aspects of determining the mathematical model for system identification. In this paper, an approach termed as Simultaneous Model Order and Parameter Estimation (SMOPE), which is basically based on Gravitational Search Algorithm (GSA), is proposed to combine these two parts into a simultaneous solution. In this technique, both the model order and the parameters of the system are computed simultaneously to obtain the best mathematical model of a system. According to heating system case study, it is proven that the proposed method is outstanding in comparison with some other approaches in literature.
机译:系统识别是一类控制系统工程,它确定工厂的物理功能,并通过利用实际实验数据以数学表达式的形式来表示它们。它是通过考虑来自实际系统的原始数据来获取,格式化,处理和识别数学模型的过程。一旦选择了数学模型,就可以根据适当的描述(例如可以用于控制器设计的传递函数)进行表征。模型识别过程的最重要阶段可以概括为四个主要阶段。第一阶段是收集实验数据。然后,选择模型顺序和结构。下一步是估计模型的参数,最后验证数学模型。模型顺序选择和参数估计是确定用于系统识别的数学模型的两个重要方面。本文提出了一种基本基于引力搜索算法(GSA)的同时模型阶数和参数估计(SMOPE)方法,将这两个部分组合为一个同时解决方案。在该技术中,同时计算系统的模型顺序和参数,以获得系统的最佳数学模型。根据供热系统的案例研究,证明了该方法与文献中的其他方法相比是杰出的。

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