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Modeling of multiple-input, time-varying systems with recursively estimated basis expansions

机译:具有递归估计基础扩展的多输入时变系统建模

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摘要

We present novel computational schemes for estimating single- (SI) and multiple-input (MI) time-varying (TV) systems, combining a Laguerre-Volterra model formulation with improved recursive schemes based on conventional Recursive Least Squares (RLS) and Kalman Filtering (KF). The proposed recursive estimators achieve superior performance, particularly in the case of TV systems with multiple-inputs or systems that exhibit mixed-mode variations. RLS-based schemes were found to perform better in the case of TV linear systems, while the KF-based schemes were found to perform considerably better in the case of TV nonlinear systems. Model order selection and tuning of the estimator hyperparameters were implemented using Genetic Algorithms (GA), significantly improving performance and reducing computation time. Furthermore, exploiting the search efficiency in hyperparameter space yielded by the proposed GA, we rigorously examined the correlations between the hyperparameter values, the model complexity and the TV characteristics of the true underlying system. The performance of the proposed TV system identification framework was assessed using simulations and experimental data from patients undergoing head-up tilt testing for the diagnosis of vasovagal syncope. (C) 2018 Elsevier B.V. All rights reserved.
机译:我们提出了一种估计单(SI)和多输入(MI)时变(TV)系统的新颖计算方案,将Laguerre-Volterra模型公式与基于常规递归最小二乘(RLS)和卡尔曼滤波的改进递归方案相结合(KF)。所提出的递归估计器实现了卓越的性能,特别是在具有多路输入的电视系统或显示混合模式变化的系统的情况下。发现基于RLS的方案在电视线性系统的情况下表现更好,而基于KF的方案在电视非线性系统的情况下表现更好。使用遗传算法(GA)实现了模型顺序的选择和估计器超参数的调整,从而显着提高了性能并减少了计算时间。此外,利用提出的遗传算法在超参数空间中的搜索效率,我们严格检查了超参数值,模型复杂度和真实底层系统的电视特征之间的相关性。拟议的电视系统识别框架的性能是使用模拟和实验数据评估的,这些模拟和实验数据来自进行平视倾斜测试以诊断血管迷走性晕厥的患者。 (C)2018 Elsevier B.V.保留所有权利。

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