一个新颖的尝试,以减少工程努力建模非线性化学系统的操作员训练模拟器

Saswata Mukhopadhyay, Madhukar Gundappa, Ranganathan Srinivasan, Sridharakumar Narasimhan
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引用次数: 2

摘要

操作人员培训模拟器(OTS)的应用已经成为培训操作人员实现高效流程操作的行业规范。OTS包中基于第一性原理的建模方法实现了对化学过程的真实模拟。然而,准确地模拟动力学和热力学需要相当大的工程努力,并可能涉及实验研究,以匹配植物的行为。混合模型也称为灰盒模型,利用神经网络、多项式等泛函逼近器,用经验关系代替第一性原理模型中的未知/复杂方程。在这项工作中,我们探索使用核主成分分析(K-PCA)作为某些非线性热力学或动力学函数参数化的近似技术,使用可用的工厂存档数据。在一个复杂的二元精馏塔上的仿真结果验证了该方法的适用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Novel attempt to reduce engineering effort in modeling non-linear chemical systems for Operator Training Simulators
Operator Training Simulator (OTS) applications have become the norm of the industry in training operators to achieve efficient process operations. First principles based modeling approach in OTS packages achieves realistic simulations of chemical processes. However modeling the kinetics and thermodynamics accurately require considerable engineering efforts and may involve experimental studies to match the plant behavior. Hybrid models also known as grey-box models replace the unknown/complex equations in first principles models with empirical relationship using functional approximators such as neural networks, polynomials, etc. In this work we explore the use of Kernel Principal Component Analysis (K-PCA) as an approximation technique for certain nonlinear thermodynamics or kinetic functions parameterized using available plant archived data. Simulation results on a complex binary distillation column demonstrate the applicability of the proposed novel approach.
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