Drying kinetic for moisture content prediction of peels Tahiti lemon (Citrus latifolia): Approach by machine learning and optimization - genetic algorithms and nonlinear programming

Q1 Social Sciences
Maressa O. Camilo , Romero F. Carvalho , Ariany B.S. Costa , Esly F.C. Junior , Andréa O.S. Costa , Robson C. Sousa
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引用次数: 0

Abstract

The application of a versatile approach for modeling and prediction the moisture content of dried peels was evaluated using both empirical and semi-empirical equations (Lewis, Page, Henderson and Pabis, Modified Page, Logarithmic, and Modified Logistic) as well as machine learning models (K-nearest neighbor | KNN, Decision Tree | DT, Artificial Neural Network | ANN and Support Vector Regression | SVR). Heuristic optimization methods, including genetic algorithms (GA) and nonlinear programming (NLP), were employed to identify the best empirical and semi-empirical models for estimating moisture content during the drying process of lemon peel layers. The parameters of the drying kinetics models were optimized using GA to achieve the best results. It was found that as the number of model parameters increases, particularly in models such as the logarithmic one, the optimization problem becomes more complex. Consequently, accurate initial guesses become increasingly important, emphasizing the need for heuristic methods like genetic algorithms. This optimization approach provided excellent performance metrics (R2 > 0.9715, SSR 〈 0.0625 and MSE < 0.0026 for endocarp and R2 〉 0.9678, SSR < 0.0755 and MSE < 0.0030 for epicarp). The models proposed in this study achieved the best results with the modified logistic equation (R2 > 0.9923, MSE 〈 0.0001 and SSR < 0.0013 for endocarp and R2 〉 0.9905, MSE < 0.0001 and SSR < 0.0013 for epicarp). In particular, the multilayer perceptron neural network of the machine learning proved to be the optimal choice as it best accounts for the complexity of the drying kinetics of lemons. This neural network model outperformed traditional empirical and semi-empirical models, demonstrating superior performance metrics (R2 > 0.9979, MSE 〈 0.0002 and SSR < 0.0012 for endocarp and R2 〉 0.9989, MSE < 0.0001 and SSR < 0.0008 for epicarp) when tested against validation data.
预测大溪地柠檬(Citrus latifolia)果皮水分含量的干燥动力学:机器学习和优化方法--遗传算法和非线性编程
利用经验方程和半经验方程(Lewis、Page、Henderson 和 Pabis、修正 Page、对数和修正 Logistic)以及机器学习模型(K-近邻模型 | KNN、决策树模型 | DT、人工神经网络模型 | ANN 和支持向量回归模型 | SVR),评估了用于建模和预测干燥果皮含水量的多功能方法的应用情况。采用了启发式优化方法,包括遗传算法(GA)和非线性编程(NLP),以确定在柠檬皮层干燥过程中估算含水量的最佳经验和半经验模型。利用遗传算法对干燥动力学模型的参数进行了优化,以获得最佳结果。结果发现,随着模型参数数量的增加,特别是在对数模型中,优化问题变得更加复杂。因此,准确的初始猜测变得越来越重要,这就强调了对遗传算法等启发式方法的需求。这种优化方法提供了出色的性能指标(内果皮的 R2 〉 0.9715,SSR 〈 0.0625 和 MSE 〉 0.0026;外果皮的 R2 〉 0.9678,SSR 〉 0.0755 和 MSE 〉 0.0030)。本研究提出的模型中,改良逻辑方程的结果最好(内果皮的 R2 〉 0.9923,MSE 〈 0.0001,SSR 〉 0.0013;外果皮的 R2 〉 0.9905,MSE 〉 0.0001,SSR 〉 0.0013)。其中,机器学习的多层感知器神经网络被证明是最佳选择,因为它最能体现柠檬干燥动力学的复杂性。该神经网络模型优于传统的经验模型和半经验模型,在根据验证数据进行测试时,表现出卓越的性能指标(内果皮的 R2 〉0.9979,MSE 〈 0.0002 和 SSR 〉0.0012;外果皮的 R2 〉0.9989,MSE 〈 0.0001 和 SSR 〉0.0008)。
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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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