Ángel Tlatelpa Becerro, Ramiro Rico Martínez, Erick César López-Vidaña, Esteban Montiel Palacios, César Torres Segundo, José Luis Gadea Pacheco
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引用次数: 0
摘要
本研究介绍了利用人工神经网络(ANN)预测太阳能干燥器腔室温度的方法。该干燥机为强制流式间接干燥机。建立 ANN 模型时考虑了气候条件、温度、气流和几何参数。该模型是一个使用反向传播算法和 Levenberg-Marquardt 优化训练的前馈网络。进行验证和确认过程的最佳神经网络配置为:输入层九个神经元,输出层一个神经元,两个分别由十三个和十二个神经元组成的隐藏层(9-13-12-1)。预测模型的误差率低于 1%。该预测模型已成功通过测试,实现了良好的预测能力。这种一致性体现在预测温度和实验温度之间的相对误差上。在对模型进行验证和确认时,误差低于 0.25%。此外,该模型可作为开发强大的实时操作优化工具和间接太阳能干燥器优化设计的基础,以降低食品干燥过程的成本和时间。
Dynamic Behavior Forecast of an Experimental Indirect Solar Dryer Using an Artificial Neural Network
This research presents the prediction of temperatures in the chamber of a solar dryer using artificial neural networks (ANN). The dryer is a forced-flow type and indirect. Climatic conditions, temperatures, airflow, and geometric parameters were considered to build the ANN model. The model was a feed-forward network trained using a backpropagation algorithm and Levenberg–Marquardt optimization. The configuration of the optimal neural network to carry out the verification and validation processes was nine neurons in the input layer, one in the output layer, and two hidden layers of thirteen and twelve neurons each (9-13-12-1). The percentage error of the predictive model was below 1%. The predictive model has been successfully tested, achieving a predictor with good capabilities. This consistency is reflected in the relative error between the predicted and experimental temperatures. The error is below 0.25% for the model’s verification and validation. Moreover, this model could be the basis for developing a powerful real-time operation optimization tool and the optimal design for indirect solar dryers to reduce cost and time in food-drying processes.