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On the confidence bounds of Gaussian process NARX models and their higher-order frequency response functions

机译:关于高斯过程NaRX模型的置信界及其高阶频率响应函数

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摘要

One of the most powerful and versatile system identification frameworks of the last three decades is the NARMAX/NARX 1 approach, which is based on a nonlinear discrete-time representation. Recent advances in machine learning have motivated new functional forms for the NARX model, including one based on Gaussian processes (GPs), which is the focus of this paper. Because of their nonparametric form, NARX models can only provide physical insight through their frequency-domain connection to Higher-order Frequency Response Functions (HFRFS). Because of the desirable properties of the GP-NARX form (no structure detection needed, natural confidence i ntervals), the analytical derivation of the HFRFs for the model is presented here for the first time. Furthermore, an algorithm for propagating uncertainty from the GP into the HFRF estimates is presented. A valuable by-product of the latter algorithm is a new test for nonlinearity, capable of detecting the presence of odd and even system nonlinearities. The new results are illustrated via two case studies; the first is based on simulation of an asymmetric Duffing oscillator. The second case study presents a validation of the new theory in the area of wave force prediction on offshore structures. This problem is one that has been considered by some of the authors before; the current paper takes the opportunity to highlight and correct a number of weaknesses of the original study in the light of modern best practice in machine learning.
机译:NARMAX / NARX 1方法是过去三十年来功能最强大,用途最广泛的系统识别框架之一,该方法基于非线性离散时间表示。机器学习的最新进展催生了NARX模型的新功能形式,其中包括一种基于高斯过程(GPs)的形式,这是本文的重点。由于其非参数形式,NARX模型只能通过其与高阶频率响应函数(HFRFS)的频域连接来提供物理洞察力。由于GP-NARX形式的理想特性(无需结构检测,自然置信区间),此处首次介绍了该模型的HFRF的解析推导。此外,提出了一种将不确定度从GP传播到HFRF估计中的算法。后一种算法的有价值的副产品是一种新的非线性测试,能够检测奇偶系统非线性的存在。通过两个案例研究说明了新的结果。第一种是基于非对称Duffing振荡器的仿真。第二个案例研究提出了新理论在海上结构波浪力预测领域的验证。这个问题以前是一些作者考虑过的。当前的论文借此机会根据现代机器学习的最佳实践来强调和纠正原始研究的许多弱点。

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