基于演化模糊模型的自适应推理传感器。

Plamen Angelov, Arthur Kordon
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引用次数: 54

摘要

本文提出了一种在过程工业中设计和使用推理传感器的新技术,该技术基于最近引入的演化模糊模型(efm)的概念。它们解决了当今现代过程工业面临的挑战,即开发这种自适应和自校准的在线推理传感器,以降低维护成本,同时保持高精度和可解释性/透明度。提出的新方法使推理传感器能够自动重新校准,从而大大减少了其生命周期维护的工作量。这是通过使用自适应和灵活的开放式结构EFM来实现的。本文的新颖之处在于:(1)从数据流出发,提出了具有演化和自发展结构的推理传感器的总体概念;(2)在线自动选择与预测最相关的输入变量的新方法;(3)利用簇的年龄(和模糊规则)自动检测数据模式变化的技术;(4)演化模型学习过程中使用的在线标准化技术;(5)将这种创新方法应用于化学工业的几个现实工业过程(不断发展的推理传感器,即传感器,用于预测德克萨斯州自由港陶氏化学公司不同产品的化学性质)。然而,应该指出的是,本文的方法和结论一般适用于更广泛的化学和加工工业领域。结果表明,可以根据数据流实时自动设计出可解释性好、结构简单的推理传感器,并预测各种感兴趣的过程变量。所提出的方法可以作为开发新一代自适应和不断发展的推理传感器的基础,这些传感器可以解决现代先进过程工业的挑战。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adaptive inferential sensors based on evolving fuzzy models.

A new technique to the design and use of inferential sensors in the process industry is proposed in this paper, which is based on the recently introduced concept of evolving fuzzy models (EFMs). They address the challenge that the modern process industry faces today, namely, to develop such adaptive and self-calibrating online inferential sensors that reduce the maintenance costs while keeping the high precision and interpretability/transparency. The proposed new methodology makes possible inferential sensors to recalibrate automatically, which reduces significantly the life-cycle efforts for their maintenance. This is achieved by the adaptive and flexible open-structure EFM used. The novelty of this paper lies in the following: (1) the overall concept of inferential sensors with evolving and self-developing structure from the data streams; (2) the new methodology for online automatic selection of input variables that are most relevant for the prediction; (3) the technique to detect automatically a shift in the data pattern using the age of the clusters (and fuzzy rules); (4) the online standardization technique used by the learning procedure of the evolving model; and (5) the application of this innovative approach to several real-life industrial processes from the chemical industry (evolving inferential sensors, namely, eSensors, were used for predicting the chemical properties of different products in The Dow Chemical Company, Freeport, TX). It should be noted, however, that the methodology and conclusions of this paper are valid for the broader area of chemical and process industries in general. The results demonstrate that well-interpretable and with-simple-structure inferential sensors can automatically be designed from the data stream in real time, which predict various process variables of interest. The proposed approach can be used as a basis for the development of a new generation of adaptive and evolving inferential sensors that can address the challenges of the modern advanced process industry.

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