基于人工神经网络模型的挡板立方混合器药物混合性能建模与预测

IF 2.7 4区 医学 Q2 PHARMACOLOGY & PHARMACY
Amina Bouhaouche, Kamel Daoud
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引用次数: 0

摘要

本研究旨在利用人工神经网络(ANN)对制药行业中广泛使用的转臂式混合器进行建模和优化,重点了解挡板几何形状和操作参数对混合性能的影响。为了改善混合均匀性,研究了三种挡板配置:(i)位于每面墙中点的四个平板挡板,(ii)位于混合器每个角落的四个平板挡板,以及(iii)带有四个轴向臂的十字形挡板(+)。研究的其他变量包括挡板宽度和粉末粘聚强度。实验在不同的操作条件下进行,包括转速从10到20 rpm,填充水平在35%到50%之间,自上而下的加载方式,固定的混合时间为20分钟。共进行了80次实验来构建人工神经网络训练数据集。隐含层由15个神经元组成的最优ANN结构达到了极好的预测精度,其均方误差为3.053 × 10⁻¹¹,决定系数(R²)接近于1。利用Garson算法进行敏感性分析,发现挡板宽度对混合性能的影响最大,占混合性能总体影响的32%。这一发现突出了挡板设计在提高颗粒流动和混合均匀性方面的关键作用。因此,为每个挡板形状和位置选择最佳宽度对于实现理想的混合性能至关重要。值得注意的是,与未使用挡板的情况相比,使用挡板可以降低相对标准偏差(RSD),这清楚地证明了插入挡板在增强混合均匀性方面的有效性。结果表明,人工神经网络模型在准确捕捉复杂混合行为和指导混合系统的设计和优化方面具有强大的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Modeling and Prediction of Pharmaceutical Mixing Performance in a Cubic Mixer Equipped with Baffles Using the Artificial Neural Network Model

Modeling and Prediction of Pharmaceutical Mixing Performance in a Cubic Mixer Equipped with Baffles Using the Artificial Neural Network Model

This study aims to model and optimize the mixing performance in a baffled cubic mixer, belonging to the tumbler category of mixers widely used in the pharmaceutical industry, using artificial neural networks (ANN), with a focus on understanding the effects of baffle geometry and operating parameters. Three baffle configurations were investigated to improve mixing homogeneity: (i) four flat baffles located at the midpoints of each wall, (ii) four flat baffles placed at each corner of the mixer, and (iii) a cross-shaped baffle (+) with four axial arms. Additional variables studied include baffle width and powder cohesion strength. Experiments were conducted under varying operational conditions, including rotational speeds ranging from 10 to 20 rpm, fill levels between 35% and 50%, a top-bottom loading profile, and a fixed mixing time of 20 min. A total of 80 experiments were performed to construct the ANN training dataset. The optimal ANN architecture, composed of 15 neurons in the hidden layer, achieved excellent predictive accuracy, with a mean squared error of 3.053 × 10⁻¹¹ and a coefficient of determination (R²) close to 1. Sensitivity analysis using Garson’s algorithm revealed that baffle width is the most influential factor, contributing 32% to the overall effect on mixing performance. This finding highlights the critical role of baffle design in enhancing particle flow and mixing uniformity. Therefore, selecting the optimal width for each baffle shape and position is essential to achieve the desired mixing performance. Notably, the use of baffles led to a reduction in the relative standard deviation (RSD) compared to the unbaffled case, clearly demonstrating the effectiveness of baffle insertion in enhancing mixing homogeneity. The results demonstrate the strong potential of ANN models for accurately capturing complex mixing behavior and guiding the design and optimization of mixing systems.

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来源期刊
Journal of Pharmaceutical Innovation
Journal of Pharmaceutical Innovation PHARMACOLOGY & PHARMACY-
CiteScore
3.70
自引率
3.80%
发文量
90
审稿时长
>12 weeks
期刊介绍: The Journal of Pharmaceutical Innovation (JPI), is an international, multidisciplinary peer-reviewed scientific journal dedicated to publishing high quality papers emphasizing innovative research and applied technologies within the pharmaceutical and biotechnology industries. JPI''s goal is to be the premier communication vehicle for the critical body of knowledge that is needed for scientific evolution and technical innovation, from R&D to market. Topics will fall under the following categories: Materials science, Product design, Process design, optimization, automation and control, Facilities; Information management, Regulatory policy and strategy, Supply chain developments , Education and professional development, Journal of Pharmaceutical Innovation publishes four issues a year.
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