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An artificial neural network for predicting the physiochemical properties of fish oil microcapsules obtained by spray drying

机译:人工神经网络预测喷雾干燥获得的鱼油微胶囊的理化特性

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The aim of this work was to develop an artificial neural network (ANN) to predict the physiochemical properties of fish oil microcapsules obtained by spray drying method. The relation amongst inlet-drying air temperature, outlet-drying air temperature, aspirator rate, peristaltic pump rate, and spraying air flow rate with 5 performance indices, namely capsules’ residual moisture content, particle size, bulk density, encapsulation efficiency, and peroxide value was bridged by using ANN. A multilayer perceptron ANN was developed to predict the performance indices based on the input variables. The optimal ANN model was found to be a 5-10-5 structure with tangent sigmoid transfer function, Levenberg-Marquardt error minimization algorithm, and 1,000 training epochs. This optimal network was capable to predict the outputs with R2 values higher than 0.87. It was concluded that ANN is a useful tool to investigate, approximate, and predict the encapsulation characteristics of fish oil.
机译:这项工作的目的是开发一个人工神经网络(ANN),以预测通过喷雾干燥法获得的鱼油微胶囊的理化特性。入口干燥空气温度,出口干燥空气温度,吸气速率,蠕动泵速率和喷涂空气流速之间的关系具有5个性能指标,即胶囊的残留水分含量,粒径,堆积密度,包封效率和过氧化物通过使用ANN来弥合价值。开发了多层感知器ANN以根据输入变量预测性能指标。发现最佳的ANN模型是具有正切S型传递函数,Levenberg-Marquardt误差最小化算法和1,000个训练时期的5-10-5结构。这个最佳网络能够预测R2值高于0.87的输出。得出的结论是,人工神经网络是研究,近似和预测鱼油包囊特性的有用工具。

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