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Neuro-Genetic Optimization of the Diffuser Elements for Applications in a Valveless Diaphragm Micropumps System

机译:扩散器元件的神经遗传学优化用于无阀隔膜微型泵系统

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摘要

In this study, a hybridized neuro-genetic optimization methodology realized by embedding numerical simulations trained artificial neural networks (ANN) into a genetic algorithm (GA) is used to optimize the flow rectification efficiency of the diffuser element for a valveless diaphragm micropump application. A higher efficiency ratio of the diffuser element consequently yields a higher flow rate for the micropump. For that purpose, optimization of the diffuser element is essential to determine the maximum pumping rate that the micropump is able to generate. Numerical simulations are initially carried out using CoventorWare® to analyze the effects of varying parameters such as diffuser angle, Reynolds number and aspect ratio on the volumetric flow rate of the micropump. A limited range of simulation results will then be used to train the neural network via back-propagation algorithm and optimization process commence subsequently by embedding the trained ANN results as a fitness function into GA. The objective of the optimization is to maximize the efficiency ratio of the diffuser element for the range of parameters investigated. The optimized efficiency ratio obtained from the neuro-genetic optimization is 1.38, which is higher than any of the maximum efficiency ratio attained from the overall parametric studies, establishing the superiority of the optimization method.
机译:在这项研究中,通过将经过数值模拟训练的人工神经网络(ANN)嵌入遗传算法(GA)中实现的混合神经遗传优化方法,可用于优化无阀隔膜微型泵应用中的扩散器元件的整流效率。因此,扩散器元件的效率比越高,微型泵的流量越高。为此目的,优化扩散器元件对于确定微型泵能够产生的最大泵送速度至关重要。首先使用CoventorWare®进行数值模拟,以分析各种参数(例如扩散器角度,雷诺数和纵横比)对微型泵的体积流量的影响。然后,将有限范围的仿真结果用于通过反向传播算法来训练神经网络,然后通过将训练后的ANN结果作为适应度函数嵌入到GA中来开始优化过程。优化的目的是在所研究的参数范围内最大化扩散器元件的效率比。通过神经遗传优化获得的优化效率比为1.38,高于所有参数研究获得的最大效率比,从而确立了优化方法的优越性。

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