Process knowledge acquisition and control by quantitative and qualitative complementarity

T. Nakagawa , Y. Sawaragi , Y. Yagihara
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Abstract

Even when an autoregressive model[1,2] is created and computer control is effected based on it, the subsequent measured values are sometimes imperfect due to disturbances in the process and noise in the measurements. This paper proposes an approach for overcoming this drawback of tight control by an AR model when it is impossible to carry out computer online control based on an autoregressive model. This approach in the broad sense of the term involves robust control in which model-based deep knowledge based on an existing AR model or mathematical model is used and converted to fuzzy qualitative oontrol. As an actual example we discuss a cement rotary kiln process, and we present an approach for process disturbances and incomplete measured values by transforming quantitative control into qualitative control and also making use of hidden information that cannot be abstracted without sensor fusion. As a feature of this method we discuss the effectiveness and purpose of the paradigm in which one does not quantify a qualitative model but rather goes in the opposite direction of qualitizing a quantitative model.

定量与定性互补的过程知识获取与控制
即使创建了自回归模型[1,2],并在此基础上进行计算机控制,由于过程中的干扰和测量中的噪声,随后的测量值有时也是不完美的。本文提出了一种克服基于自回归模型的计算机在线控制无法实现时AR模型严格控制的缺点的方法。从广义上讲,这种方法涉及鲁棒控制,其中使用基于现有AR模型或数学模型的基于模型的深度知识并将其转换为模糊定性控制。以水泥回转窑工艺为例,通过将定量控制转化为定性控制,并利用传感器融合无法提取的隐藏信息,提出了一种处理工艺扰动和不完全测量值的方法。作为这种方法的一个特点,我们讨论了这种范式的有效性和目的,在这种范式中,人们不量化定性模型,而是朝着定性模型的相反方向发展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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