利用深度学习神经网络对双管间隙内的电磁混合纳米流体流动进行定量分析

IF 1.7 4区 材料科学 Q3 MATERIALS SCIENCE, MULTIDISCIPLINARY
Majid Amin, Fuad A. Awwad, Emad A. A. Ismail, Muhammad Ishaq, T. Gul, Tahir Saeed Khan
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引用次数: 0

摘要

目的(1) 利用混合纳米流体流动的数学模型作为药物输送的载体。(2)控制流动条件,使含有药物的纳米流体能够流过两个管道之间较小的间隙。(3) 分析了由银(Ag)和二氧化钛(TiO2)纳米粒子制成的混合纳米流体(HNFs)在药物输送方面的应用。银(Ag)和二氧化钛(TiO2)(NPs)具有良好的生物相容性、高光活性和低毒性,适合用于癌症治疗。(4) 采用人工神经网络(ANN)这一基于机器的新策略,在验证和与其他技术的比较中更为突出。研究结果(1) 从获得的结果可以看出,混合纳米流体引起的对流运动将改善药物纳米粒子在体内的分散和分布。在均匀流动和均匀间隙的基础上,药物输送到靶组织或器官的有效性和均匀性得到改善。(2) 加入磁场后,纳米流体的靶向效率会进一步提高。(研究局限性/影响 (1)流动现象被认为是层流,人们可以在湍流情况下使用相同的想法。(实践意义(1)要将药物输送到目标区域,需要一个合适的数学模型。(2) 为达到给药目的,对银(Ag)和二氧化钛(TiO2)纳米粒子衍生的混合纳米流体(HNFs)进行了分析。银(Ag)和二氧化钛(TiO2)(NPs)的生物相容性、高光活性和低毒性使它们成为治疗癌症的理想候选物质。(3) 基于机器的人工神经网络(ANN)是一种新策略,与其他技术相比,它在验证方面更为突出。(1) 他们可以利用非均匀间隙扩展这一想法。(2) 流动被认为是均匀的,新研究人员可以利用湍流情况扩展这一想法。(3) 其他混合纳米流体的流动,在同一模型中用于其他工业用途也是可能的。热物理实验结果来自现有文献,并提供了参考文献。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Quantitative analysis of the electromagnetic hybrid nanofluid flow within the gap of two tubes using deep learning neural networks
Purpose(1) A mathematical model for the Hybrid nanofluids flow is used as carriers for delivering drugs. (2) The flow conditions are controlled to enable drug-loaded nanofluids to flow through the smaller gap between the two tubes. (3) Hybrid nanofluids (HNFs) made from silver (Ag) and titanium dioxide (TiO2) nanoparticles are analyzed for applications of drug delivery. (Ag) and (TiO2) (NPs) are suitable candidates for cancer treatment due to their excellent biocompatibility, high photoactivity, and low toxicity. (4) The new strategy of artificial neural networks (ANN) is used which is machine-based and more prominent in validation, and comparison with other techniques.Design/methodology/approachThe two Tubes are settled in such a manner that the gap between them is uniform. The Control Volume Finite Element Method; Rk-4 and Artificial Neural Network (ANN).Findings(1) From the obtained results it is observed that the dispersion and distribution of drug-loaded nanoparticles within the body will be improved by the convective motion caused by hybrid nanofluids. The effectiveness and uniformity of drug delivery to target tissues or organs is improved based on the uniform flow and uniform gap. (2) The targeting efficiency of nanofluids is further improved with the addition of the magnetic field. (3) The size of the cylinders, and flow rate, are considered uniform to optimize the drug delivery.Research limitations/implications(1)The flow phenomena is considered laminar, one can use the same idea through a turbulent flow case. (2) The gap is considered uniform and will be interesting if someone extends the idea as non-uniform.Practical implications(1) To deliver drugs to the targeted area, a suitable mathematical model is required. (2) The analysis of hybrid nanofluids (HNFs) derived from silver (Ag) and titanium dioxide (TiO2) nanoparticles is conducted for the purpose of drug delivery. The biocompatibility, high photoactivity, and low toxicity of (Ag) and (TiO2) (NPs) make them ideal candidates for cancer treatment. (3) Machine-based artificial neural networks (ANN) have a new strategy that is more prominent in validation compared to other techniques.Social implicationsThe drug delivery model is a useful strategy for new researchers. (1) They can extend this idea using a non-uniform gap. (2) The flow is considered uniform, the new researchers can extend the idea using a turbulent case. (3) Other hybrid nanofluids flow, in the same model for other industrial usages are possible.Originality/valueAll the obtained results are new. The experimental thermophysical results are used from the existing literature and references are provided.
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来源期刊
CiteScore
3.70
自引率
5.00%
发文量
60
期刊介绍: Multidiscipline Modeling in Materials and Structures is published by Emerald Group Publishing Limited from 2010
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