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Modeling the Drying Kinetics of Green Bell Pepper in a Heat Pump Assisted Fluidized Bed Dryer

机译:在热泵辅助流化床干燥机中模拟青椒的干燥动力学

摘要

In this research, green bell pepper was dried in a pilot plant fluidized bed dryer equipped with a heat pump humidifier using three temperatures of 40, 50 and 60C and two airflow velocities of 2 and 3m/s in constant air moisture. Three modeling methods including nonlinear regression technique, Fuzzy Logic and Artificial Neural Networks were applied to investigate drying kinetics for the sample. Among the mathematical models, Midilli model with R=0.9998 and root mean square error (RMSE)=0.00451 showed the best fit with experimental data. Feed-Forward-Back-Propagation network with Levenberg-Marquardt training algorithm, hyperbolic tangent sigmoid transfer function, training cycle of 1,000 epoch and 2-5-1 topology, deserving R=0.99828 and mean square error (MSE)=5.5E-05, was determined as the best neural model. Overall, Neural Networks method was much more precise than two other methods in prediction of drying kinetics and control of drying parameters for green bell pepper. Practical Applications: This article deals with different modeling approaches and their effectiveness and accuracy for predicting changes in the moisture ratio of green bell pepper enduring fluidized bed drying, which is one of the most concerning issues in food factories involved in drying fruits and vegetables. This research indicates that although efficiency of mathematical modeling, Fuzzy Logic controls and Artificial Neural Networks (ANNs) were all acceptable, the modern prediction methods of Fuzzy Logic and especially ANNs were more productive and precise. Besides, this report compares our findings with previous ones carried out with the view of predicting moisture quotients of other food crops during miscellaneous drying procedures. © 2016 Wiley Periodicals, Inc.
机译:在这项研究中,青椒在装有热泵加湿器的中试流化床干燥机中干燥,在恒定的空气湿度下使用40、50和60℃的三个温度以及2和3m / s的两个气流速度。采用三种建模方法,包括非线性回归技术,模糊逻辑和人工神经网络来研究样品的干燥动力学。在数学模型中,R = 0.9998和均方根误差(RMSE)= 0.00451的Midilli模型显示出与实验数据的最佳拟合。具有Levenberg-Marquardt训练算法,双曲正切S型传递函数,1,000个历元的训练周期和2-5-1拓扑的前馈-前向传播网络,值得R = 0.99828和均方误差(MSE)= 5.5E-05被确定为最佳神经模型。总体而言,在预测青椒的干燥动力学和控制干燥参数方面,神经网络方法比其他两种方法精确得多。实际应用:本文介绍了不同的建模方法及其预测流水床干燥青椒含水率变化的有效性和准确性,这是食品工厂中涉及水果和蔬菜干燥的最关注问题之一。这项研究表明,尽管数学建模,模糊逻辑控制和人工神经网络(ANN)的效率都可以接受,但是模糊逻辑,尤其是ANN的现代预测方法却更具生产力和精确性。此外,本报告将我们的发现与以前的发现进行了比较,目的是预测其他粮食作物在干燥过程中的水分含量。 ©2016 Wiley Periodicals,Inc.

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