During the operation of a chemical plant, product quality must be consistently maintained, and the production of off-specification products should be minimized. Accordingly, process variables related to the product quality, such as the temperature and composition of materials at various parts of the plant must be measured, and appropriate operations (that is, control) must be performed based on the measurements. Some process variables, such as temperature and flow rate, can be measured continuously and instantaneously. However, other variables, such as composition and viscosity, can only be obtained through time-consuming analysis after sampling substances from the plant. Soft sensors have been proposed for estimating process variables that cannot be obtained in real time from easily measurable variables. However, the estimation accuracy of conventional statistical soft sensors, which are constructed from recorded measurements, can be very poor in unrecorded situations (extrapolation). In this study, we estimate the internal state variables of a plant by using a dynamic simulator that can estimate and predict even unrecorded situations on the basis of chemical engineering knowledge and an artificial intelligence (AI) technology called reinforcement learning, and propose to use the estimated internal state variables of a plant as soft sensors. In addition, we describe the prospects for plant operation and control using such soft sensors and the methodology to obtain the necessary prediction models (i.e., simulators) for the proposed system.
翻译:在化工厂运行期间,必须始终保持产品质量,并应尽量减少特异产品的生产,因此,必须测量与产品质量有关的工艺变量,如工厂各部分的温度和材料构成等,并根据测量结果进行适当的操作(即控制);一些工艺变量,如温度和流量率,可以连续和瞬间测量;然而,其他变量,如成分和粘度,只能在从工厂取样物质后进行耗时分析才能获得;提议采用软传感器来估计无法从易于测量的变量中实时获得的工艺变量;然而,根据记录测量结果构建的常规统计软传感器的估计准确性(即控制)在未记录的情况下(外推法)可能非常差;在本研究中,我们使用动态模拟器来估计工厂的内部变量,该模拟器可以根据化学工程知识和人工智能技术来估计和预测甚至未记录的情况;要求强化学习,并提议使用工厂的估计内部变量作为软质传感器;此外,我们用软质传感器来评估工厂的运行前景;此外,我们用必要的模型来评估工厂的运行和预测系统。