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Comparative study of multiple linear regression (MLR) and artificial neural network (ANN) techniques to model a solid desiccant wheel

机译:多种线性回归(MLR)和人工神经网络(ANN)技术模型的比较研究

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摘要

In recent years, the use of solid desiccant wheels has become attractive not only for air-conditioning applications, but also for food drying processes and storage due to their capacity to use waste heat in order to meet dry and hot air demand. It is very important that solid desiccant wheels be modelled for different purposes in such a way that the equipment can be well analysed in various systems. Modelling the solid desiccant wheel is a difficult and complex process because of the coexisting heat and mass transfer. In this study, six Artificial Neural Network (ANN) models with various activation functions and Multiple Linear Regression (MLR) models with six different structures have been formed to observe the process air outlet conditions of the solid desiccant wheel, and compared with each other to identify the suitability of the use of these models. In comparison, R~2, RMSE and MAE values were taken into consideration as performance criteria. At the end of the study, ANN models were observed to provide better convergence than MLR models. The best convergence for the process air outlet conditions was provided by the ANN-V model. Of all the MLR models, the best convergence was provided by MLR-Ⅵ model.
机译:近年来,使用固体干燥剂车轮不仅具有空调应用,还具有吸引力,也可用于食品干燥过程和储存,因为它们使用废热的能力以满足干燥和热空气需求。非常重要的是,固体干燥剂车轮以不同的目的为模型,使得在各种系统中可以很好地分析设备。模拟固体干燥剂轮是一种困难而复杂的过程,因为共存了热量和传质。在本研究中,已经形成了具有各种激活功能的六种人工神经网络(ANN)模型,具有六种不同结构的多元线性回归(MLR)模型,以观察固体干燥剂轮的处理空气出口条件,并彼此比较确定使用这些模型的适用性。相比之下,考虑到r〜2,RMSE和MAE值作为绩效标准。在研究结束时,观察到ANN模型以提供比MLR模型更好的收敛。 Ann-V型号提供了处理空气出口条件的最佳收敛性。在所有MLR模型中,最佳收敛是由MLR-ⅵ模型提供的。

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