Improvement of Process Quality via Integration of Statistical Process Control and Engineering Process Control in Batch Process

N. Hamzah, Sherif Abdulbari Ali, S. Karim
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Abstract

Batch process is one of a main type of process in the chemical industry alongside continuous process. However, it is difficult for production and process engineers to complete the task of achieving optimal performance of industrial batch processes. Batch processes have many major issues such as they are big batch-to-batch variations, highly non-linear dynamics, and difficulty in real-time measurement. It is significant to control the process in real-time, in order to avoid many issues such as off-spec product. While the study of EPC and SPC is garnering attraction in controlling strategy, the implementing of the integration is still rare compare to continuous process. The objective of this study is to develop a methodology that integrates two important techniques of Statistical Process Control (SPC) and Engineering Process Control (EPC) for quality improvement. Integrating SPC/EPC is a very effective way since the features from both SPC and EPC could give a complementary performance to improve product quality in industrial process by on-line monitoring, regulating and correcting actions. The approach is applied to data collected from experimentation process of carboxylmethyl carbon, as a case study where it is a batch process. SPC method used is EWMA control chart meanwhile EPC method used Integral (I) controller of feedforward with bounded chart. Based on result, the implementation of integration of SPC and EPC managed to reduce the process variation by 32.8% and reduced the standard deviation by 18%. λ of 0.5 was the best option with target = 0.89209, stand deviation = 0.05983, variance = 0.00358 and PM = 0.00367. Therefore, EWMA of bounded chart produced new average that is closer to target, variance that is smaller, standard deviation that is improved and performance measure that has the smallest value.
批量生产中统计过程控制与工程过程控制相结合的过程质量改进
间歇过程是化学工业中与连续过程并列的一种主要过程类型。然而,对于生产和工艺工程师来说,实现工业批处理的最佳性能是很困难的。批处理过程存在着批与批之间变化大、动态高度非线性、难以实时测量等问题。为了避免产品不合规格等问题的出现,对生产过程进行实时控制具有重要意义。虽然EPC和SPC在控制策略方面的研究越来越受到关注,但与连续过程相比,集成的实施仍然很少。本研究的目的是开发一种整合统计过程控制(SPC)和工程过程控制(EPC)两种重要技术的质量改进方法。SPC/EPC集成是一种非常有效的方法,因为SPC和EPC的特性可以互补,通过在线监控、调节和纠正行动来提高工业过程中的产品质量。该方法应用于从羧甲基碳的实验过程中收集的数据,作为一个案例研究,其中它是一个批处理过程。SPC方法采用EWMA控制图,EPC方法采用有界图前馈积分(I)控制器。结果表明,SPC与EPC一体化的实施使工艺差异降低了32.8%,标准差降低了18%。λ = 0.5为最佳选择,目标= 0.89209,林分偏差= 0.05983,方差= 0.00358,PM = 0.00367。因此,有界图的EWMA产生了更接近目标的新平均值、更小的方差、改进的标准差和值最小的绩效度量。
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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