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首页> 外文期刊>International Journal of Intelligent Systems >Development and application of machine learning-based prediction model for distillation column
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Development and application of machine learning-based prediction model for distillation column

机译:基于机器学习的蒸馏塔预测模型的开发与应用

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摘要

Distillation is an energy-consuming process in the chemical industry. Optimizing operating conditions can reduce the amount of energy consumed and improve the efficiency of chemical processes. Herein, we developed a machine learning-based prediction model for a distillation process and applied the developed model to process optimization. The energy consumed in the distillation process is mainly used to control the temperature of the distillation column. We developed a model that predicted temperature according to the following procedure: (1) data collection; (2) characteristic extraction from the collected data to reduce learning time; (3) min-max normalization to improve prediction performance; and (4) a case study conducted to select the artificial neural network algorithm, optimization method, and batch size, which are the most appropriate elements for predicting production stage temperature. The result of the case study revealed that the most appropriate model was observed with a root mean squared error of 0.0791 and a coefficient of determination of 0.924 when the long short-term memory algorithm, Adam optimization method, and batch size of 128 were applied. We calculated the amount of steam consumption required to consistently maintain the production stage temperature by utilizing the developed model. The calculation result indicated that the amount of steam consumption was expected to be reduced by approximately 14%, from an average flow rate of 2763-2374 kg/h. This study proposed a control method applying a machine learning-based prediction model in the distillation process and confirmed that operation energy could be reduced through efficient operation.
机译:蒸馏是化学工业中的耗能过程。优化操作条件可以减少消耗的能量量,提高化学过程的效率。这里,我们开发了一种用于蒸馏过程的基于机器学习的预测模型,并将开发模型应用于处理优化。蒸馏过程中消耗的能量主要用于控制蒸馏塔的温度。我们开发了一种根据以下步骤预测温度的模型:(1)数据收集; (2)从收集的数据中提取的特征提取以降低学习时间; (3)最大常规化以提高预测性能; (4)进行的案例研究选择人工神经网络算法,优化方法和批量尺寸,这是用于预测生产阶段温度的最合适的元件。案例研究的结果显示,当长短期记忆算法,ADAM优化方法和批量尺寸为128时,用0.0791的根部平均平方误差观察到最合适的模型和0.924的测定系数。我们计算了通过利用开发的模型一致地保持生产阶段温度所需的蒸汽消耗量。计算结果表明,预计蒸汽消耗量预计将减少约14%,从平均流速为2763-2374 kg / h。该研究提出了一种控制方法在蒸馏过程中应用基于机器学习的预测模型,并确认通过有效的操作可以减少操作能量。

著录项

  • 来源
    《International Journal of Intelligent Systems》 |2021年第5期|1970-1997|共28页
  • 作者单位

    Green Materials and Processes R&D Group Korea Institute of Industrial Technology Ulsan Republic of Korea School of Chemical and Biomolecular Engineering Pusan National University Busan Republic of Korea;

    Green Materials and Processes R&D Group Korea Institute of Industrial Technology Ulsan Republic of Korea;

    Green Materials and Processes R&D Group Korea Institute of Industrial Technology Ulsan Republic of Korea Department of Chemical and Biomolecular Engineering Yonsei University Seoul Republic of Korea;

    School of Chemical and Biomolecular Engineering Pusan National University Busan Republic of Korea;

    Green Materials and Processes R&D Group Korea Institute of Industrial Technology Ulsan Republic of Korea;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Adam optimization; distillation process; LSTM algorithm; machine learning; prediction model;

    机译:亚当优化;蒸馏过程;LSTM算法;机器学习;预测模型;
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