STRATEGIES IN MACHINE LEARNING

Descripción del Articulo

Artificial intelligence has achieved great potential in technological development, especially in the optimization of internal combustion engines. This research seeks to forecast the performance of diesel engines using regression strategies in machine learning. The study, with a quantitative and appl...

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Detalles Bibliográficos
Autores: Mendoza-Suárez, César Elías Mendoza Suárez, Chevarria Moscoso, Margarita
Formato: artículo
Fecha de Publicación:2025
Institución:Universidad de San Martín de Porres
Repositorio:Revistas - Universidad de San Martín de Porres
Lenguaje:español
OAI Identifier:oai:revistas.usmp.edu.pe:article/2934
Enlace del recurso:https://portalrevistas.aulavirtualusmp.pe/index.php/rc/article/view/2934
Nivel de acceso:acceso abierto
Materia:Artificial intelligence
Multiple linear regression
Machine learning
diesel engine
power
torque
fuel consumption
Inteligencia artificial
Regresión lineal múltiple
Aprendizaje automático
potencia
consumo de combustible
Descripción
Sumario:Artificial intelligence has achieved great potential in technological development, especially in the optimization of internal combustion engines. This research seeks to forecast the performance of diesel engines using regression strategies in machine learning. The study, with a quantitative and applied approach, collects data from a 30-liter, 1200 HP Komatsu diesel engine through dynamometric tests. Brake power, torque and fuel consumption are measured, monitoring various operating parameters. Using the data, a forecasting model was developed using multiple linear regression in Python. The results show a high correlation between the input and output parameters, highlighting the intake manifold pressure as the most relevant. The predictions reach high R² values: torque (0.96), brake power (0.97) and instantaneous consumption (0.98). The coefficients of the regression model applicable to the input parameters are also determined. In conclusion, machine learning algorithms, specifically multiple linear regression, are effective in predicting the behavior of diesel engines in dynamometric tests.
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