首页> 外文期刊>Advanced Powder Technology: The internation Journal of the Society of Powder Technology, Japan >Modeling and multi-objective Pareto optimization of new cyclone separators using CFD, ANNs and NSGA II algorithm
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Modeling and multi-objective Pareto optimization of new cyclone separators using CFD, ANNs and NSGA II algorithm

机译:使用CFD,ANN和NSGA II算法对新型旋风分离器进行建模和多目标Pareto优化

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In this article, Multi-Objective Optimization (MOO) of new cyclone separators namely Karagoz cyclones is performed using Computational Fluid Dynamics (CFD), Artificial Neural Networks (ANN) and Non dominated Sorting Genetic Algorithms (NSGA II). The design of this cyclone is based on the idea of improving cyclone performance by increasing the vortex length. This cyclone differs from a conventional cyclone with the separation space. Instead of conical part, the separation space of this cyclone consists of an outer cylinder and a vortex limiter. For multi-objective optimization process at first, the flow field is solved numerically in various Karagoz cyclones using CFD techniques and collection efficiency (eta) and pressure drop (Delta P) in cyclones are calculated. In this step the Reynolds averaged Navier-Stokes equations with Reynolds stress turbulence model (RSM) are solved. The Eulerian-Lagrangian computational procedure is used to predict particles tracking in the cyclones and the velocity fluctuations are simulated using the Discrete Random Walk (DRW). In the next step, numerical data of the previous step will be applied for modeling eta and Delta P using Grouped Method of Data Handling (GMDH) type ANNs. Finally, the modeling achieved by GMDH will be used for Pareto based multi-objective optimization of geometrical parameters in new cyclones using NSGA II algorithm. It is shown that the achieved Pareto solution includes important design information on new cyclones. (C) 2016 The Society of Powder Technology Japan. Published by Elsevier B.V. and The Society of Powder Technology Japan. All rights reserved.
机译:在本文中,使用计算流体力学(CFD),人工神经网络(ANN)和非支配排序遗传算法(NSGA II)对新型旋风分离器即Karagoz旋风分离器进行了多目标优化(MOO)。该旋风器的设计基于通过增加涡旋长度来改善旋风器性能的想法。该旋风分离器与常规旋风分离器的区别在于分离空间。该旋风分离器的分离空间不是圆锥形部分,而是由外圆柱体和涡流限制器组成。首先,对于多目标优化过程,使用CFD技术对各种Karagoz旋风分离器中的流场进行数值求解,并计算旋风分离器中的收集效率(eta)和压降(Delta P)。在此步骤中,使用雷诺应力湍流模型(RSM)求解雷诺平均Navier-Stokes方程。使用欧拉-拉格朗日计算程序来预测旋风分离器中的粒子跟踪,并使用离散随机游走(DRW)模拟速度波动。在下一步中,将使用数据处理分组方法(GMDH)类型的ANN将上一步的数值数据应用于eta和Delta P建模。最后,由GMDH实现的建模将用于使用NSGA II算法的新旋风分离器中基于帕累托的几何参数多目标优化。结果表明,所获得的帕累托解决方案包括有关新旋风分离器的重要设计信息。 (C)2016日本粉末技术学会。由Elsevier B.V.和日本粉末技术学会出版。版权所有。

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