System identification of a nonlinear continuously stirred tank reactor using fractional neural network

Q1 Social Sciences
Meshach Kumar , Utkal Mehta , Giansalvo Cirrincione
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引用次数: 0

Abstract

Chemical processes are vital in various industries but are often complex and nonlinear, making accurate modeling essential. Traditional linear approaches struggle with dynamic behaviour and changing conditions. This paper explores the advantages of the new theory of fractional neural networks (FNNs), focusing on applying fractional activation functions for continuous stirred tank reactor (CSTR) modeling. The proposed approach offers promising solutions for real-time modeling of a CSTR. Various numerical analyses demonstrate the robustness of FNNs in handling data reduction, achieving better generalization, and sensitivity to noise, which is crucial for real-world applications. The identification process is more generalized and can enhance adaptability and improve industrial plant management efficiency. This research contributes to the growing field of real-time modeling, highlighting its potential to address the complexities in chemical processes.
利用分数神经网络对非线性连续搅拌罐反应器进行系统识别
化学过程在各行各业都至关重要,但通常都是复杂的非线性过程,因此精确建模至关重要。传统的线性方法难以应对动态行为和不断变化的条件。本文探讨了分数神经网络(FNN)新理论的优势,重点是将分数激活函数应用于连续搅拌罐反应器(CSTR)建模。所提出的方法为 CSTR 的实时建模提供了有前途的解决方案。各种数值分析表明,FNN 在处理数据缩减、实现更好的泛化以及对噪声的敏感性方面具有很强的鲁棒性,这对实际应用至关重要。识别过程更具通用性,可增强适应性并提高工业设备管理效率。这项研究为不断发展的实时建模领域做出了贡献,凸显了实时建模在解决化学过程复杂性方面的潜力。
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来源期刊
CiteScore
8.40
自引率
0.00%
发文量
100
审稿时长
33 weeks
期刊介绍: The journal has a particular interest in publishing papers on the unique issues facing chemical engineering taking place in countries that are rich in resources but face specific technical and societal challenges, which require detailed knowledge of local conditions to address. Core topic areas are: Environmental process engineering • treatment and handling of waste and pollutants • the abatement of pollution, environmental process control • cleaner technologies • waste minimization • environmental chemical engineering • water treatment Reaction Engineering • modelling and simulation of reactors • transport phenomena within reacting systems • fluidization technology • reactor design Separation technologies • classic separations • novel separations Process and materials synthesis • novel synthesis of materials or processes, including but not limited to nanotechnology, ceramics, etc. Metallurgical process engineering and coal technology • novel developments related to the minerals beneficiation industry • coal technology Chemical engineering education • guides to good practice • novel approaches to learning • education beyond university.
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