An intelligent approach for improved predictive control of spray drying process

A. Azadeh, N. Neshat, M. Saberi
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引用次数: 5

Abstract

A flexible meta modelling approach is presented to predictive control of a drying process using Adaptive Neuro-Fuzzy Inference System (ANFIS), Artificial Neural Network (ANN) and Partial Least Squares (PLS) analysis. In the proposed approach, the PLS analysis is used to pre-process actual data and to provide the necessary background to apply ANN and ANFIS approaches. A reasonable section of this study is assigned to the modelling with aim at predicting the granule particle size and executing by ANFIS and ANN. ANN hold the promise of being capable of producing non-linear models, being able to work under noise conditions and being fault tolerant to the loss of neurons or connections. Also, the ANFIS approach combines the advantages of fuzzy system and artificial neural network to design architecture and is capable of dealing with both limitation and complexity in the data set. The efficiencies of ANFIS and ANN approaches in prediction are compared and the superior approach is selected. Finally, by deploying the preferred approach, several scenarios are presented to estimate the predictive control of spray drying as an accurate, fast running and inexpensive tool. This is the first study that presents a flexible intelligent approach for predictive control of drying process by ANN, ANFIS and PLS. The approach of this study may be easily applied to other drying process.
一种改进喷雾干燥过程预测控制的智能方法
采用自适应神经模糊推理系统(ANFIS)、人工神经网络(ANN)和偏最小二乘(PLS)分析,提出了一种灵活的元建模方法,用于干燥过程的预测控制。在提出的方法中,PLS分析用于预处理实际数据,并为应用ANN和ANFIS方法提供必要的背景。本研究分配了合理的部分用于建模,旨在预测颗粒粒度,并通过ANFIS和ANN执行。人工神经网络有望产生非线性模型,能够在噪声条件下工作,并且对神经元或连接的丢失具有容错能力。此外,该方法结合了模糊系统和人工神经网络的优点来设计体系结构,能够处理数据集的局限性和复杂性。比较了人工神经网络和人工神经网络的预测效率,选择了较优的方法。最后,通过部署首选方法,提出了几种情况来估计喷雾干燥的预测控制是一种准确,快速运行和廉价的工具。本研究首次提出了一种灵活的人工神经网络、人工神经网络和PLS预测控制干燥过程的智能方法,该方法可以很容易地应用于其他干燥过程。
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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