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首页> 外文期刊>Industrial & Engineering Chemistry Research >Multivariate Analysis of Industrial Biorefinery Processes: Strategy for Improved Process Understanding with Case Studies in Fatty Acid Production
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Multivariate Analysis of Industrial Biorefinery Processes: Strategy for Improved Process Understanding with Case Studies in Fatty Acid Production

机译:工业生物炼油厂的多变量分析过程:策略改进的过程理解与脂肪酸的案例研究生产

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摘要

A major difficulty in operating biorefinery processes is the large feedstock variability. A systematic multivariate analysis (sMVA) strategy for improved process understanding of industrial biorefinery processes is proposed to support identification of effects of feedstock and process variability on product quality. This sMVA strategy comprises nine steps categorized in data set organization, exploratory analysis, and regression. Different MVA techniques are used, such as principal component analysis (PCA) and partial least squares regression (PLS). As a case study, two main operations in fatty acid production are investigated: oil hydrolysis and fatty acid distillation. Key feedstock properties and process parameters affecting the product properties were identified for both operations. For fatty acid production, product quality largely depends on the type of fat or oil used, such as canola or palm oil, due to the large difference in composition and quality between the oil types. However, if a single oil type is used, the variability in product quality does not always critically depend on the variability in feedstock properties. For both operations, flow rate variations, mainly caused by planning issues, were identified as a main cause. In oil hydrolysis, the feed flow rate influences the residence time and thereby directly influences the hydrolysis and side reactions. In fatty acid distillation, a better control is required of the middle reflux ratio in relation to this changing flow rate. The case study showed that applying our proposed sMVA strategy improves the understanding of a biorefinery process by identifying critical sources of variability, which allows more targeted decisions for optimization and control.
机译:一个主要的困难操作生物炼油厂过程的大型原料的变化。系统的多变量分析(sMVA)策略为提高工业过程的理解生物炼制过程提出了支持原料和识别的影响产品质量过程的可变性。分类在数据策略包括九个步骤组组织,探索性分析,回归。如主成分分析(PCA)和偏最小二乘回归(PLS)。在脂肪酸的研究中,两个主要业务生产调查:油水解脂肪酸蒸馏。产品和工艺参数影响属性被确定为操作。在脂肪酸的生产产品质量很大程度上取决于类型的脂肪或油使用,如油菜或棕榈油,由于大成分和质量之间的差异油的类型。产品质量没有变化总是极度依赖于变化原料的性质。率变化,主要由规划造成的问题,被确定为主要原因。水解、进料流率的影响停留时间,从而直接影响水解和副反应。蒸馏,更好的控制是必需的中间回流比与这个改变流量。我们建议sMVA策略提高了生物炼制过程的理解识别关键的可变性来源,它允许更有针对性的决策优化和控制。

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