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An adaptive ensemble of on-line Extreme Learning Machines with variable forgetting factor for dynamic system prediction

机译:可变遗忘因子在线极限学习机的自适应集成用于动态系统预测

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摘要

A demand for predictive models for on-line estimation of variables is increasing in industry. As industrial processes are time-varying, on-line learning algorithms should be adaptive to capture process changes. On-line ensemble methods have been shown to provide better generalization performance than single models in changing environments. However, most on-line ensembles do not include and exclude models during on-line operation. As a result, the ensembles have limited adaptation capability. Moreover, a higher performance can be obtained by combining a selected set of most relevant models of the ensemble for the current situation, rather than combining all the models. This paper proposes a new on-line learning ensemble of regressor models using an ordered aggregation (OA) technique which is able to provide on-line predictions of variables in changing environments. OA dynamically selects an optimal size and composition of a subset of models based on the minimization of the ensemble error on the newest sample. The proposed strategy overcomes the problem of defining the optimal ensemble size, and in most cases it obtains better performance than aggregating all the models. Models are added or removed for assuring adaptation of the ensemble in changing environments. Furthermore, this paper proposes and integrates a new on-line Extreme Learning Machine (ELM) neural network model with variable forgetting factor (FF) using the directional FF method which shows superior performance in industrial applications when compared to the well-known On-line Sequential ELM (OS-ELM) algorithm. Experiments are reported to demonstrate the performance and effectiveness of the proposed methods. (C) 2015 Elsevier B.V. All rights reserved.
机译:在线估计变量的预测模型的需求在工业中正在增长。由于工业过程是随时间变化的,因此在线学习算法应适用于捕获过程变化。在变化的环境中,在线集成方法已显示出比单个模型更好的泛化性能。但是,大多数在线合奏在在线操作过程中并不包括和排除模型。结果,合奏的适应能力有限。而且,通过组合针对当前情况的一组最相关的集成模型可以获得更高的性能,而不是组合所有模型。本文提出了一种新的使用有序聚合(OA)技术的回归模型在线学习集合,它能够在变化的环境中提供变量的在线预测。 OA基于最小化最新样本上的整体误差,动态选择模型子集的最佳大小和组成。所提出的策略克服了定义最佳集合大小的问题,并且在大多数情况下,其获得的性能优于汇总所有模型的性能。添加或删除模型以确保在不断变化的环境中调整集合。此外,本文提出并整合了一种新的具有可变遗忘因子(FF)的在线极限学习机(ELM)神经网络模型,该模型使用定向FF方法,与知名的在线技术相比,在工业应用中显示出卓越的性能。顺序ELM(OS-ELM)算法。据报道,实验证明了所提出方法的性能和有效性。 (C)2015 Elsevier B.V.保留所有权利。

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