New method based on neuro-fuzzy system and PSO algorithm for estimating phase equilibria properties

IF 1 4区 工程技术 Q4 CHEMISTRY, APPLIED
El Abdallah Hadj, M. Laidi, S. Hanini
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引用次数: 0

Abstract

The subject of this work is to propose a new method based on ANFIS system and PSO algorithm to conceive a model for estimating the solubility of solid drugs in sc-CO2. The high nonlinear process was modeled by neuro-fuzzy approach (NFS). The PSO algorithm was used for two purposes: replacing the standard back propagation in training the NFS and optimizing the process. The validation strategy have been carried out using a linear regression analysis of the predicted versus experimental outputs. The ANFIS approach is compared to the ANN in terms of accuracy. Statistical analysis of the predictability of the optimized model trained with PSO algorithm (ANFIS-PSO) shows very good agreement with reference data than ANN method. Furthermore, the comparison in terms of AARD deviation (%) between the predicted results, results predicted by density-based models and a set of equations of state demonstrates that the ANFIS-PSO model correlates far better the solubility of the solid drugs in scCO2.A control strategy was also developed for the first time in the field of phase equilibrium by using the neuro fuzzy inverse approach (ANFISi) to estimate pure component properties from the solubility data without passing through GCM methods.
基于神经模糊系统和粒子群算法的相平衡特性估计新方法
本文的课题是提出一种基于ANFIS系统和粒子群算法的新方法来构建固体药物在sc-CO2中的溶解度估计模型。采用神经模糊方法(NFS)对高非线性过程进行建模。将粒子群算法用于两个目的:取代NFS训练中的标准反向传播和优化过程。验证策略已使用预测与实验输出的线性回归分析进行。将ANFIS方法与人工神经网络方法在准确率方面进行了比较。用粒子群算法训练的优化模型的可预测性统计分析表明,与人工神经网络方法相比,优化模型与参考数据的一致性更好。此外,在预测结果、基于密度的模型预测结果和一组状态方程之间的AARD偏差(%)的比较表明,anfiss - pso模型与固体药物在scCO2中的溶解度的相关性要好得多。在相平衡领域首次提出了一种控制策略,即使用神经模糊逆方法(ANFISi)从溶解度数据估计纯组分性质,而无需经过GCM方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Chemical Industry & Chemical Engineering Quarterly
Chemical Industry & Chemical Engineering Quarterly CHEMISTRY, APPLIED-ENGINEERING, CHEMICAL
CiteScore
2.10
自引率
0.00%
发文量
24
审稿时长
3.3 months
期刊介绍: The Journal invites contributions to the following two main areas: • Applied Chemistry dealing with the application of basic chemical sciences to industry • Chemical Engineering dealing with the chemical and biochemical conversion of raw materials into different products as well as the design and operation of plants and equipment. The Journal welcomes contributions focused on: Chemical and Biochemical Engineering [...] Process Systems Engineering[...] Environmental Chemical and Process Engineering[...] Materials Synthesis and Processing[...] Food and Bioproducts Processing[...] Process Technology[...]
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