Fault Analysis And Predictive Maintenance Of Induction Motor Using Machine Learning
- URL: http://arxiv.org/abs/2409.09944v1
- Date: Mon, 16 Sep 2024 02:37:07 GMT
- Title: Fault Analysis And Predictive Maintenance Of Induction Motor Using Machine Learning
- Authors: Kavana Venkatesh, Neethi M,
- Abstract summary: This paper presents a machine learning model for the fault detection and classification of induction motor faults.
The aim of this work is to protect vital electrical components and to prevent abnormal event progression through early detection and diagnosis.
Real time data from a 0.33 HP induction motor is used to train and test the neural network.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Induction motors are one of the most crucial electrical equipment and are extensively used in industries in a wide range of applications. This paper presents a machine learning model for the fault detection and classification of induction motor faults by using three phase voltages and currents as inputs. The aim of this work is to protect vital electrical components and to prevent abnormal event progression through early detection and diagnosis. This work presents a fast forward artificial neural network model to detect some of the commonly occurring electrical faults like overvoltage, under voltage, single phasing, unbalanced voltage, overload, ground fault. A separate model free monitoring system wherein the motor itself acts like a sensor is presented and the only monitored signals are the input given to the motor. Limits for current and voltage values are set for the faulty and healthy conditions, which is done by a classifier. Real time data from a 0.33 HP induction motor is used to train and test the neural network. The model so developed analyses the voltage and current values given at a particular instant and classifies the data into no fault or the specific fault. The model is then interfaced with a real motor to accurately detect and classify the faults so that further necessary action can be taken.
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