Towards the Automation of a Chemical Sulphonation Process with Machine Learning

Enrique Garcia-Ceja, Åsmund Hugo, Brice Morin, Per Olav Hansen, E. Martinsen, An Ngoc Lam, Øystein Haugen
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引用次数: 3

Abstract

Nowadays, the continuous improvement and automation of industrial processes has become a key factor in many fields, and in the chemical industry, it is no exception. This translates into a more efficient use of resources, reduced production time, output of higher quality and reduced waste. Given the complexity of today’s industrial processes, it becomes infeasible to monitor and optimize them without the use of information technologies and analytics. In recent years, machine learning methods have been used to automate processes and provide decision support. All of this, based on analyzing large amounts of data generated in a continuous manner. In this paper, we present the results of applying machine learning methods during a chemical sulphonation process with the objective of automating the product quality analysis which currently is performed manually. We used data from process parameters to train different models including Random Forest, Neural Network and linear regression in order to predict product quality values. Our experiments showed that it is possible to predict those product quality values with good accuracy, thus, having the potential to reduce time. Specifically, the best results were obtained with Random Forest with a mean absolute error of 0.089 and a correlation of 0.978.
用机器学习实现化学磺化过程的自动化
如今,工业过程的不断改进和自动化已成为许多领域的关键因素,在化学工业中也不例外。这意味着更有效地利用资源,缩短生产时间,提高产出质量,减少浪费。考虑到当今工业流程的复杂性,如果不使用信息技术和分析,就不可能对其进行监控和优化。近年来,机器学习方法已被用于自动化流程并提供决策支持。所有这些都是基于对连续生成的大量数据的分析。在本文中,我们介绍了在化学磺化过程中应用机器学习方法的结果,目的是使目前手动执行的产品质量分析自动化。利用工艺参数数据训练随机森林、神经网络和线性回归等模型来预测产品质量值。我们的实验表明,有可能以良好的准确性预测这些产品质量值,因此,有可能减少时间。其中,随机森林的平均绝对误差为0.089,相关系数为0.978,效果最好。
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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