Inferential (or soft) sensors are used in industry to infer the values of imprecisely and rarely measured (or completely unmeasured) variables from variables measured online (e.g., pressures, temperatures). The main challenge, akin to classical model overfitting, in designing an effective inferential sensor is the selection of a correct structure of the sensor. The sensor structure is represented by the number of inputs to the sensor, which correspond to the variables measured online and their (simple) combinations. This work is focused on the design of inferential sensors for product composition of an industrial distillation column in two oil refinery units, a Fluid Catalytic Cracking unit and a Vacuum Gasoil Hydrogenation unit. As the first design step, we use several well-known data pre-treatment (gross error detection) methods and compare the ability of these approaches to indicate systematic errors and outliers in the available industrial data. We then study effectiveness of various methods for design of the inferential sensors taking into account the complexity and accuracy of the resulting model. The effectiveness analysis indicates that the improvements achieved over the current inferential sensors are up to 19 %.
翻译:工业采用感测(或软)传感器,从在线测量的变量(例如压力、温度)中推断出不准确和很少测量(或完全没有测量的)变量的值; 设计一个有效的感测传感器的正确结构是设计一个有效的感测器的主要挑战,类似于古典模型的过度安装; 感测结构的表示是传感器的输入量,与在线测量的变量及其(简单)组合相对应; 这项工作的重点是设计两个炼油厂单位,一个液化催化器和一个蒸馏器,一个工业蒸馏柱的产品构成的推断传感器,一个液化催化器和一个真空气态液化器; 作为第一个设计步骤,我们使用几个众所周知的数据预处理(严重误差探测)方法,比较这些方法的能力,以指出现有工业数据中的系统错误和外差; 然后,我们研究各种计算感测器设计方法的有效性,同时考虑到所生成模型的复杂性和准确性。 有效性分析表明,在目前的19-绝对感测器上取得的改进是到的。