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首页> 外文期刊>Journal of Process Control >Rebooting data-driven soft-sensors in process industries: A review of kernel methods
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Rebooting data-driven soft-sensors in process industries: A review of kernel methods

机译:在过程行业中重新启动数据驱动的软传感器:核心方法综述

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摘要

Soft-sensors usually assist in dealing with the unavailability of hardware sensors in process industries, thus allowing for less fault occurrence and better control performance. However, nonlinear, non-stationary, ill-data, auto-correlated and co-correlated behaviors in industrial data always make general data-driven methods inadequate, thus resorting to kernel-based methods provide a necessary alternative. This paper gives a systematic review of various state-of-the-art kernel-based methods with applications for data pre-processing, sample selection, variable selection, model construction and reliability analysis of soft-sensors. An integrated review of various kernel-based soft-sensor modeling methods is attempted, including on-line, multi-output, small-data-driven, multi-step-ahead and semi-supervised applications. The discussion is further to provide an overview of achieving hard-to-measure variable prediction, fault detection and advanced control of process industries. Finally, data-driven soft-sensors with kernel methods perspectives on potential challenges and opportunities have been highlighted for future explorations in the process industrial communities. (C) 2020 Elsevier Ltd. All rights reserved.
机译:软传感器通常有助于处理处理行业中硬件传感器的不可用,从而允许较少的故障发生和更好的控制性能。然而,工业数据中的非线性,非稳定性,患病,自相关和共同相关行为始终使一般的数据驱动方法不足,因此借助基于内核的方法提供了必要的替代方案。本文对各种最先进的内核的方法进行了系统审查,具有用于数据预处理,采样选择,可变选择,模型构造和软传感器可靠性分析的应用。尝试了对各种内核的软传感器建模方法的综合审查,包括在线,多输出,小数据驱动,多级和半监督应用程序。讨论还概述了实现难以测量的可变预测,故障检测和过程行业的先进控制。最后,具有内核方法的数据驱动的软传感器对潜在挑战和机会的观点来说,在工艺业社区的未来探索中突出了潜在的挑战和机会。 (c)2020 elestvier有限公司保留所有权利。

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