Sistema de monitoreo de señales y control de motores eléctricos trifásicos con integración IoT para aplicaciones industriales
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Mantenimiento predictivo. Industria 4.0. Máquinas eléctricas.Resumen
Este estudio presenta el desarollo de un sistema de monitoreo de señales y control para motores de inducción, integrando IoT a través del protocolo MQTT. Em el processo de desarrolho, se buscó la Integración de sistemas industriales convencionales com nuevas tecnologias de IoT para optimizar el mantenimiento de motores. La metodologia adoptada incluyó la creación de una placa de circuito impreso para la adquisición de datos, la programación de código embebido y la implementación de una interfaz en Node-RED para el control remoto. Las pruebas en banco validaron el sistema en condiciones reales, demonstrando su compatibilidad con inversores antiguos y la comunicación redundante a través de MODBUS. En comparación con otros trabajos de la literatura, el sistema propuesto se destaca por su flexibilidade, permitindo la modernización de procesos industriales com una intervención estructural mínima.
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