Predicción de la fracción volumétrica del flujo bifásico líquido-líquido en tuberías horizontales mediante redes de memoria a largo plazo
Publicado 2024-08-15
Palabras clave
- redes neuronales artificiales,
- LSTM,
- aprendizaje de m´áquina,
- flujo bifásico,
- fracción de volumen
Cómo citar
Derechos de autor 2024 Revista UIS Ingenierías
Esta obra está bajo una licencia internacional Creative Commons Atribución-SinDerivadas 4.0.
Resumen
Este artículo presenta el desarrollo de una red neuronal de memoria a corto plazo diseñada para predecir la fracción volumétrica de flujos bifásicos líquido-líquido que circulan por tuberías horizontales. Para ello, se compiló una base de datos exhaustiva con información procedente de investigaciones existentes, que comprende 2156 puntos de datos experimentales utilizados para la construcción del modelo. La entrada del algoritmo consiste en un vector que contiene las velocidades superficiales de las sustancias (aceite y agua), la velocidad de la mezcla, el diámetro interno de la tubería y la viscosidad del aceite, mientras que la salida es la fracción volumétrica de aceite. Los procedimientos de entrenamiento y validación consistieron en preparar y segmentar los datos, utilizando el 80% de la información total para el entrenamiento y el 20% restante para la validación. La selección del modelo, basada en la evaluación del rendimiento, se llevó a cabo mediante 216 experimentos. El modelo predictivo con mejor rendimiento tuvo un Error Cuadrático Medio (ECM) de 3,5651E-05, un Error Medio Absoluto (EMA) de 0,0045 y un Error Medio Porcentual Absoluto (EPAA) de 3,0250%. Este rendimiento se obtuvo estructurando el modelo con una función de transferencia ReLu, 20 épocas, una tasa de aprendizaje de 0,1, una función de transferencia sigmoide, un tamaño de lote de 1, un optimizador ADAM y 150 neuronas en la capa oculta.
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