首页> 外文期刊>Drying technology: An International Journal >Prediction of Energy and Exergy of Carrot Cubes in a Fluidized Bed Dryer by Artificial Neural Networks
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Prediction of Energy and Exergy of Carrot Cubes in a Fluidized Bed Dryer by Artificial Neural Networks

机译:人工神经网络预测流化床干燥机中胡萝卜的能量和火用。

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In this study both static and recurrent artificial neural networks (ANNs) were used to predict the energy and exergy of carrot cubes during fluidized bed drying. Drying experiments were conducted at air temperatures of 50, 60, and 70° C; bed depths of 3, 6, and 9 cm; and square-cubed carrot dimensions of 4, 7, and 10 mm. Five hundred eighteen patterns, obtained from experiments, were used to develop the ANN models. Initially, a static ANN was applied to correlate the outputs (energy and exergy of carrot cubes) to the four exogenous inputs (drying time, drying air temperature, carrot cube size, and bed depth). In the recurrent ANNs, in addition to the four exogenous inputs, two state inputs and outputs (energy and exergy of carrot cubes) were used. To find optimum ANN models, various numbers of hidden neurons were investigated. The energy and exergy of carrot cubes were predicted with R2 values of greater than 0.95 and 0.97 using static and recurrent ANNs, respectively. Accordingly, the optimal recurrent model could be utilized for determining the appropriate drying conditions of carrot cubes to reach the optimal energy efficiency in fluidized bed drying.
机译:在这项研究中,静态和循环人工神经网络(ANN)均用于预测流化床干燥过程中胡萝卜块的能量和火用。干燥实验在50、60和70°C的空气温度下进行;床深分别为3、6和9厘米;以及方形,方形的胡萝卜尺寸分别为4、7和10毫米。从实验中获得的518个模式用于开发ANN模型。最初,使用静态ANN将输出(胡萝卜块的能量和火用)与四个外源输入(干燥时间,干燥空气温度,胡萝卜块大小和床深)相关联。在递归的人工神经网络中,除了四个外生输入外,还使用了两个状态输入和输出(胡萝卜块的能级和能级级)。为了找到最佳的人工神经网络模型,研究了许多隐藏神经元。使用静态和循环人工神经网络分别预测R2值分别大于0.95和0.97的胡萝卜块的能量和火用度。因此,最佳循环模型可用于确定胡萝卜块的适当干燥条件,以在流化床干燥中达到最佳能量效率。

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