过程工业模糊推理传感器的进化

P. Angelov, A. Kordon, Xiaowei Zhou
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引用次数: 12

摘要

本文介绍了一种适用于过程工业的自开发自调谐推理软传感器的设计方法。该提案是一个Takagi-Sugeno-fuzzy系统框架,具有进化(开放结构)架构和在线(可能是实时)学习算法。所提出的方法是新颖的,它解决了由于操作制度、催化剂老化、工业设备磨损、污染等变化引起的数据模式漂移所引起的自我开发和自我校准问题。所提出的计算技术是数据驱动和无参数的(它只需要几个具有明确含义和建议值的参数)。本文考虑了化学性质估计的四个问题的实例研究,然而,该方法具有更广泛的有效性。采用基于多目标遗传规划的优化方法,先验和离线地确定了进化推理传感器的最优输入。不同的在线输入选择技术正在开发中。该方法在美国陶氏化学公司提供的实际数据上得到了验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evolving fuzzy inferential sensors for process industry
This paper describes an approach to design self-developing and self-tuning inferential soft sensors applicable to process industries. The proposal is for a Takagi-Sugeno-fuzzy system framework that has evolving (open structure) architecture, and an on-line (possibly real-time) learning algorithm. The proposed methodology is novel and it addresses the problems of self-development and self-calibration caused by drift in the data patterns due to changes in the operating regimes, catalysts ageing, industrial equipment wearing, contamination etc. The proposed computational technique is data-driven and parameter-free (it only requires a couple of parameters with clear meaning and suggested values). In this paper a case study of four problems of estimation of chemical properties is considered, however, the methodology has a much wider validity. The optimal inputs to the proposed evolving inferential sensor are determined a priori and off-line using a multi-objective genetic-programming-based optimization. Different on-line input selection techniques are under development. The methodology is validated on real data provided by the Dow Chemical Company, USA.
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