利用反向传播的系统识别方法

IF 4.9 2区 计算机科学 Q1 AUTOMATION & CONTROL SYSTEMS
Loris Di Natale;Muhammad Zakwan;Philipp Heer;Giancarlo Ferrari-Trecate;Colin Neil Jones
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引用次数: 0

摘要

本文详细介绍并扩展了利用先前工作中提出的反向传播(SIMBa)工具箱的系统识别方法,该工具箱使用成熟的机器学习工具进行离散时间线性多步前移状态空间系统识别(SI)。SIMBa利用基于线性矩阵不等式的舒尔矩阵的自由参数化来保证设计识别模型的稳定性。在本文中,以Schur矩阵的新颖自由参数化为支持,我们扩展了工具箱,以展示SIMBa如何结合已知的稀疏模式或状态空间矩阵的真值来识别而不损害稳定性。在从模拟和真实数据中识别具有不同属性的不同系统时,我们广泛地研究了SIMBa的行为。总体而言,我们发现它始终优于传统的稳定子空间识别方法(SIMs),并且有时显着优于传统的子空间识别方法,特别是在强制执行所需的模型属性时。这些结果暗示了SIMBa为通用结构非线性SI铺平道路的潜力。这个工具箱是开源的,网址是https://github.com/Cemempamoi/simba。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SIMBa: System Identification Methods Leveraging Backpropagation
This manuscript details and extends the system identification methods leveraging the backpropagation (SIMBa) toolbox presented in previous work, which uses well-established machine learning tools for discrete-time linear multistep-ahead state-space system identification (SI). SIMBa leverages linear-matrix-inequality-based free parameterizations of Schur matrices to guarantee the stability of the identified model by design. In this article, backed up by novel free parameterizations of Schur matrices, we extend the toolbox to show how SIMBa can incorporate known sparsity patterns or true values of the state-space matrices to identify without jeopardizing stability. We extensively investigate SIMBa’s behavior when identifying diverse systems with various properties from both simulated and real-world data. Overall, we find it consistently outperforms traditional stable subspace identification methods (SIMs), and sometimes significantly, especially when enforcing desired model properties. These results hint at the potential of SIMBa to pave the way for generic structured nonlinear SI. The toolbox is open-sourced at https://github.com/Cemempamoi/simba.
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来源期刊
IEEE Transactions on Control Systems Technology
IEEE Transactions on Control Systems Technology 工程技术-工程:电子与电气
CiteScore
10.70
自引率
2.10%
发文量
218
审稿时长
6.7 months
期刊介绍: The IEEE Transactions on Control Systems Technology publishes high quality technical papers on technological advances in control engineering. The word technology is from the Greek technologia. The modern meaning is a scientific method to achieve a practical purpose. Control Systems Technology includes all aspects of control engineering needed to implement practical control systems, from analysis and design, through simulation and hardware. A primary purpose of the IEEE Transactions on Control Systems Technology is to have an archival publication which will bridge the gap between theory and practice. Papers are published in the IEEE Transactions on Control System Technology which disclose significant new knowledge, exploratory developments, or practical applications in all aspects of technology needed to implement control systems, from analysis and design through simulation, and hardware.
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