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Self-active and recursively selective Gaussian process models for nonlinear distributed parameter systems

机译:非线性分布参数系统的自活动和递归选择性高斯过程模型

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Modeling a nonlinear distributed parameter system (DES) is difficult because it is usually hard to obtain the first-principle models in DES with strong spatiotemporal characteristics. In this paper, a novel data-driven model, called KL-GP, is proposed based on Karhunen-Loeve (KL) decomposition and Gaussian process (GP) models. First, la decomposition is employed for the time/space separation and dimension reduction. The spatiotemporal output is projected onto a low-dimensional la space. Subsequently, GP models are used to build the temporal system relationships. Thus, the nonlinear spatiotemporal dynamics can be reconstructed after the time/space synthesis. The advantage of the proposed model is that KL-GP provides the predictive distribution of the outputs and the estimate of the variance of its predicted outputs. The "active data" in the DES region can be found for model improvement according to the predicted variances. Then the developed self-active KL-GP model is extended to include adaptation and on-line implementation in real time Systematic design procedures are needed so that the DES modeling problems can be solved because there are no guidelines to define the architecture needed for evolution in the traditional method. This is particularly good when reducing the computational demand of the DES model. Simulation results of DES are presented to demonstrate the effectiveness of the self-active KL-GP modeling method and the recursively selective KL-GP modeling method. (C) 2014 Elsevier Ltd. All rights reserved,
机译:对非线性分布参数系统(DES)进行建模很困难,因为通常很难在DES中获得具有强时空特性的第一性原理模型。本文基于Karhunen-Loeve(KL)分解和高斯过程(GP)模型,提出了一种新的数据驱动模型KL-GP。首先,1a分解用于时间/空间分离和降维。时空输出被投影到低维空间上。随后,GP模型用于建立时态系统关系。因此,可以在时间/空间合成之后重建非线性时空动力学。提出的模型的优势在于KL-GP提供了输出的预测分布以及其预测输出的方差估计。可以根据预测的方差找到DES区域中的“活动数据”以进行模型改进。然后,将扩展已开发的主动KL-GP模型,使其包括实时的适应和在线实施。需要系统的设计程序,以便解决DES建模问题,因为没有指导方针来定义开发所需的架构。传统方法。当减少DES模型的计算需求时,这特别好。给出了DES的仿真结果,以证明主动KL-GP建模方法和递归选择性KL-GP建模方法的有效性。 (C)2014 Elsevier Ltd.保留所有权利,

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