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Challenges of the application of data-driven models for the real-time optimization of an industrial air separation plant

机译:应用数据驱动模型对工业空分设备的实时优化的挑战

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摘要

The optimization of the operation of chemical plants may require the development of mathematical models of the process units of a plant. These mathematical models can be either first-principles or data-driven models. The former type of modeling may be complex for the use in optimization and especially for online applications such as real time optimization. Available measured process data can be used to develop the latter type of modeling. Although data-driven models offer several benefits for online applications, there are some very significant challenges related to their development in a practical industrial implementation. This paper discusses the important aspects of the building of data-driven models and demonstrates the effects of these types of models on the optimization results. The current work demonstrates the application of a real time optimization framework applied to an industrial air compressor station of an air separation plant when the models are based on operating data.
机译:化工厂运行的优化可能需要开发工厂过程单元的数学模型。这些数学模型可以是第一性原理,也可以是数据驱动的模型。前一种建模对于在优化中使用尤其是在线应用(例如实时优化)可能很复杂。可用的测量过程数据可用于开发后一种类型的建模。尽管数据驱动模型为在线应用程序提供了许多好处,但是与它们在实际工业实现中的开发相关的挑战仍然非常严峻。本文讨论了数据驱动模型构建的重要方面,并论证了这些类型的模型对优化结果的影响。当前的工作演示了当模型基于运行数据时,实时优化框架在空气分离工厂的工业空气压缩机站上的应用。

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