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Data-Driven Approaches for Fuzzy Prediction of Temperature Variations in Heat Exchanger Process

机译:基于数据驱动的换热器过程温度变化的模糊预测

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摘要

This paper addresses and compares data-based modeling approaches to approximate distributed dynamics of heat exchange process through universal fuzzy approximators. Clustering and swarm optimization methods are used to design nonlinear models to predict hot and cold fluids temperatures over a wide operating range. Experimental data is used to validate the identified fuzzy approximators. The performance of each data-driven fuzzy model is evaluated on both training and testing measurement data.
机译:本文讨论并比较了基于数据的建模方法,该方法通过通用模糊逼近器近似地模拟了热交换过程的分布动力学。聚类和群优化方法用于设计非线性模型,以预测较宽工作范围内的热流体和冷流体温度。实验数据用于验证所识别的模糊逼近器。在训练和测试测量数据上评估每个数据驱动的模糊模型的性能。

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