A Novel Fractional Multi-Order High-Gain Observer Design to Estimate Temperature in a Heat Exchange Process

IF 1.9 3区 数学 Q1 MATHEMATICS, APPLIED Axioms Pub Date : 2023-12-08 DOI:10.3390/axioms12121107
Vicente Borja-Jaimes, Manuel Adam-Medina, Jarniel García-Morales, Alan Cruz-Rojas, Alfredo Gil-Velasco, Antonio Coronel-Escamilla
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Abstract

In the present manuscript, we design a fractional multi-order high-gain observer to estimate temperature in a double pipe heat exchange process. For comparison purposes and since we want to prove that when using our novel technique, the estimation is more robust than the classical approach, we design a non-fractional high-gain observer, and then we compare the performance of both observers. We consider three scenarios: The first one considers the estimation of the system states by measuring only one output with no noise added on it and under ideal conditions. Second, we add noise to the measured output and then reconstruct the system states, and, third, in addition to the noise, we increase the gain parameter in both observers (non-fractional and fractional) due to the fact that we want to prove that the robustness changes in this parameter. The results showed that, using our approach, the estimated states can be recovered under noise circumstances in the measured output and under parameter change in the observer, contrary to using classical (non-fractional) observers where the states cannot be recovered. In all our tests, we used the normalized root-mean-square, integral square error, and integral absolute error indices, resulting in a better performance for our approach than that obtained using the classical approach. We concluded that our fractional multi-order high-gain observer is more robust to input noise than the classical high-gain observer.
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估算热交换过程中温度的新型分数多阶高增益观测器设计
在本文中,我们设计了一个分数阶多阶高增益观测器来估计双管换热过程中的温度。为了比较的目的,因为我们想证明当使用我们的新技术时,估计比经典方法更鲁棒,我们设计了一个非分数高增益观测器,然后我们比较两个观测器的性能。我们考虑了三种情况:第一种情况是在理想条件下,通过仅测量一个没有噪声的输出来考虑系统状态的估计。其次,我们将噪声添加到测量输出中,然后重建系统状态,第三,除了噪声之外,我们还增加了两个观测器(非分数和分数)中的增益参数,因为我们想证明该参数的鲁棒性发生了变化。结果表明,使用我们的方法,可以在测量输出中的噪声环境和观测器参数变化的情况下恢复估计状态,与使用经典(非分数)观测器的状态无法恢复相反。在我们所有的测试中,我们使用了标准化的均方根、积分平方误差和积分绝对误差指标,结果表明我们的方法比使用经典方法获得的性能更好。结果表明,分数阶多阶高增益观测器对输入噪声的鲁棒性优于传统的高增益观测器。
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来源期刊
Axioms
Axioms Mathematics-Algebra and Number Theory
自引率
10.00%
发文量
604
审稿时长
11 weeks
期刊介绍: Axiomatic theories in physics and in mathematics (for example, axiomatic theory of thermodynamics, and also either the axiomatic classical set theory or the axiomatic fuzzy set theory) Axiomatization, axiomatic methods, theorems, mathematical proofs Algebraic structures, field theory, group theory, topology, vector spaces Mathematical analysis Mathematical physics Mathematical logic, and non-classical logics, such as fuzzy logic, modal logic, non-monotonic logic. etc. Classical and fuzzy set theories Number theory Systems theory Classical measures, fuzzy measures, representation theory, and probability theory Graph theory Information theory Entropy Symmetry Differential equations and dynamical systems Relativity and quantum theories Mathematical chemistry Automata theory Mathematical problems of artificial intelligence Complex networks from a mathematical viewpoint Reasoning under uncertainty Interdisciplinary applications of mathematical theory.
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