首页> 外文期刊>Arabian Journal for Science and Engineering. Section A, Sciences >Fluid Velocity Prediction Inside Bubble Column Reactor Using ANFIS Algorithm Based on CFD Input Data
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Fluid Velocity Prediction Inside Bubble Column Reactor Using ANFIS Algorithm Based on CFD Input Data

机译:基于CFD输入数据的ANFIS算法,使用基于CFD输入数据的气泡柱反应器内的流体速度预测

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摘要

Since machine learning and smart methods can be used to study hydrodynamics in the bubble column reactor, it is possible to create highly intelligent bubble column reactors that have not been previously simulated and optimized them with computational fluid dynamics (CFD) methods. The previous studies considered the position of each node (in three directions) inside the bubble column reactor as the input in the artificial intelligence model. Machine learning methods have been used for processing big data related to the bubble column reactor. These big data are associated with the points inside the bubble column reactor, which represent the gas volume fraction and the fluid velocity in the x-direction. In this study, adaptive-network- based fuzzy inference system (ANFIS) was used to find out the relationship between the outputs of the bubble column reactor. The present study also intends to investigate the relationship between two outputs, namely the amount of gas in the bubble column reactor and the velocity of the fluid in the x-direction. Various parameters were investigated in this system, including the number of rules, the type of membership function, and the amount of input data. The mentioned parameters were regularly changed to find out the state where the system can achieve its intelligence. In this study, the best parameter that helped the system was the amount of data in the training process. The results showed that the lower the amount of data used in training, the better the prediction.
机译:由于机器学习和智能方法可用于研究气泡柱反应器中的流体动力学,因此可以使用计算流体动力学(CFD)方法来创建尚未模拟和优化它们的高度智能气泡柱反应器。以前的研究被认为是泡沫柱反应器内部的每个节点(三个方向)的位置,作为人工智能模型中的输入。机器学习方法已被用于处理与泡沫柱反应器相关的大数据。这些大数据与气泡柱反应器内部的点相关联,该点表示气体体积分数和X方向上的流体速度。在该研究中,基于自适应网络的模糊推理系统(ANFIS)用于找出泡沫柱反应器的输出之间的关系。本研究还旨在研究两个输出之间的关系,即气泡柱反应器中的气体量和X方向上的流体的速度。在该系统中研究了各种参数,包括规则数,隶属函数的类型,以及输入数据的数量。所提到的参数经常改变以找出系统可以实现其智能的状态。在本研究中,帮助系统的最佳参数是培训过程中的数据量。结果表明,训练中使用的数据量越低,预测越好。

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