利用 CFD-DPM 和遗传算法对现实呼吸道中的颗粒沉积进行数值建模。

IF 3 3区 医学 Q2 BIOPHYSICS
Saba Khaksar, Mehrad Paknezhad, Maysam Saidi, Kaveh Ahookhosh
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引用次数: 0

摘要

本研究利用 CT 医学影像获得的呼吸道真实模型,采用欧拉-拉格朗日方法求解气流场和粒子运动,以获得粒子在支气管树中的最大沉积量,从而达到优化给药装置性能的主要目的。研究了不同参数(包括颗粒直径、颗粒形状系数和气流速度)对肺部不同区域气流场和颗粒沉积模式的影响。此外,还采用遗传算法获得了颗粒在支气管树中的最大沉积量以及上述参数对颗粒沉积的影响。反向流、涡流形成和喉喷流都会影响气流结构和颗粒沉积模式。在不同流速下,口-喉区域的沉积率最高。随着喉部沉积率的增加,沉积模式也发生了变化,这是因为颗粒的直径和形状系数增加,分别产生了较高的惯性力和阻力。颗粒沉积分析表明,形状系数、直径和速度这三个参数与颗粒沉积直接相关,其中直径是对颗粒沉积最有效的参数,其影响程度比形状系数和速度高 60%。最后,遗传算法的预测结果表明,支气管树中的最大颗粒沉积率为 17%,而根据数值结果,最大颗粒沉积率为 16%。因此,遗传算法的预测结果与数值结果相差 1%,这表明遗传算法预测的准确性很高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Numerical modeling of particle deposition in a realistic respiratory airway using CFD–DPM and genetic algorithm

Numerical modeling of particle deposition in a realistic respiratory airway using CFD–DPM and genetic algorithm

In this study, a realistic model of the respiratory tract obtained from CT medical images was used to solve the flow field and particle motion using the Eulerian–Lagrangian approach to obtain the maximum particle deposition in the bronchial tree for the main purpose of optimizing the performance of drug delivery devices. The effects of different parameters, including particle diameter, particle shape factor, and air velocity, on the airflow field and particle deposition pattern in different zones of the lung were investigated. In addition, a genetic algorithm was employed to obtain the maximum particle deposition in the bronchial tree and the effect of the aforementioned parameters on particle deposition. Reverse flow, vortex formation, and laryngeal jet all affect the airflow structure and particle deposition pattern. The mouth–throat region had the highest deposition fraction at various flow rates. A change in the deposition pattern with an increased deposition fraction in the throat was observed owing to the increased diameter and shape factor of the particles, resulting from the higher inertia and drag force, respectively. The particle deposition analysis showed that three parameters, shape factor, diameter, and velocity, are directly related to particle deposition, and the diameter is the most effective parameter for particle deposition, with an effect of 60% compared to the shape factor and velocity. Finally, the prediction of the genetic algorithm reported a maximum particle deposition in the bronchial tree of 17%, whereas, based on the numerical results, the maximum particle deposition was reported to be 16%. Therefore, there is a 1% difference between the prediction of the genetic algorithm and the numerical results, which indicates the high accuracy of the prediction of the genetic algorithm.

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来源期刊
Biomechanics and Modeling in Mechanobiology
Biomechanics and Modeling in Mechanobiology 工程技术-工程:生物医学
CiteScore
7.10
自引率
8.60%
发文量
119
审稿时长
6 months
期刊介绍: Mechanics regulates biological processes at the molecular, cellular, tissue, organ, and organism levels. A goal of this journal is to promote basic and applied research that integrates the expanding knowledge-bases in the allied fields of biomechanics and mechanobiology. Approaches may be experimental, theoretical, or computational; they may address phenomena at the nano, micro, or macrolevels. Of particular interest are investigations that (1) quantify the mechanical environment in which cells and matrix function in health, disease, or injury, (2) identify and quantify mechanosensitive responses and their mechanisms, (3) detail inter-relations between mechanics and biological processes such as growth, remodeling, adaptation, and repair, and (4) report discoveries that advance therapeutic and diagnostic procedures. Especially encouraged are analytical and computational models based on solid mechanics, fluid mechanics, or thermomechanics, and their interactions; also encouraged are reports of new experimental methods that expand measurement capabilities and new mathematical methods that facilitate analysis.
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