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Application of SOS-constrained regression to model unknown reaction kinetics

机译:SOS约束回归在模型未知反应动力学中的应用

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The key idea of the fourth industrial revolution is to use the huge amount of data from the increased process digitalisation in order to make better decisions at all levels: from the design and control, to operation and management. However, advanced decision support systems usually rely on good plant models. Despite the increased popularity of machine learning, in the process industry many of these approaches may fail in building reliable prediction models: that is, models whose output can be trusted even out of the region where actual data was collected. This paper illustrates how to get a reliable grey-box model of a chemical plant for optimisation purposes via sum-of-squares (SOS) constrained regression, a method that guarantees full enforcement of physical features on the identified model, no matter the quality and quantity of the collected data. The approach is used here to identify a reliable model for the reaction kinetics in a hybrid CSTR, a pilot plant where the chemical reactions are emulated over a harmless fluid.
机译:第四个工业革命的关键思想是使用增加的过程越来越多的数据量,以便在各级做出更好的决定:从设计和控制,运营和管理。然而,高级决策支持系统通常依赖于良好的植物模型。尽管机器学习的普及程度增加,但在过程中,许多这些方法可能在构建可靠的预测模型方面可能会失败:也就是说,即使在收集实际数据的区域中也可以信任其输出的模型。本文说明了如何通过正方形(SOS)约束回归来获得化学设备的可靠灰盒模型,该方法是保证在所识别的模型上完全执行身体特征的方法,无论质量和质量如何收集数据的数量。这里使用该方法以鉴定杂交CSTR中的反应动力学的可靠模型,该试验厂在无害流体上仿真化学反应。

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