In 2016 the average industry downtime cost was estimated to $260.000 every hour, and with Swedish industries being an important part of the national economy it would be desirable to reduce the amount of unplanned downtime to a minimum. There are currently many different solutions for system supervision for monitoring system health but none which analyse data with machine learning in an industrial gateway. The aim for this thesis is to test, compare and evaluate three different algorithms to find a classifier suitable for a gateway environment. The evaluated algorithms were Random Forest, K-Nearest Neighbour and Linear Discriminant Analysis. Load imbalance detection was used as a case study for evaluating these algorithms. The gateway rece...
Induction machines have been key components in the industrial sector for decades, owing to different...
This paper presents real-time health prediction of induction motors (IMs) utilised in a petrochemica...
This study presents an empirical investigation of the performances of machine learning algorithms ap...
AC drives are employed in process industries for varying applications resulting in a wide range of r...
This dissertation aims at the detection of short-circuit incipient fault condition in a threephase s...
Unplanned downtime in industries poses significant challenges, affecting production efficiency and p...
In day-to-day life 90% of industries use induction motors due toless maintenance, high efficiency, g...
Three-phase induction motors (IMs) are one of the most employed electric machines in industrial and ...
The health of a rotating electric machine can be evaluated by monitoring electrical and mechanical p...
In this paper, the possibility to use neural networks for the monitoring of the load torque of induc...
The study focused on three phase induction motor because it is playing a vital role in production de...
The use of machine learning for predictive maintenance has been the focus of many studies, usually ...
The application of intelligent algorithms, in electro-mechanical diagnosis systems, is increasing in...
With the fast evolution of the Industry 4.0, the increased use of sensors and the rapid development ...
With the ongoing integration of renewable energies into the electrical power grid, industrial energy...
Induction machines have been key components in the industrial sector for decades, owing to different...
This paper presents real-time health prediction of induction motors (IMs) utilised in a petrochemica...
This study presents an empirical investigation of the performances of machine learning algorithms ap...
AC drives are employed in process industries for varying applications resulting in a wide range of r...
This dissertation aims at the detection of short-circuit incipient fault condition in a threephase s...
Unplanned downtime in industries poses significant challenges, affecting production efficiency and p...
In day-to-day life 90% of industries use induction motors due toless maintenance, high efficiency, g...
Three-phase induction motors (IMs) are one of the most employed electric machines in industrial and ...
The health of a rotating electric machine can be evaluated by monitoring electrical and mechanical p...
In this paper, the possibility to use neural networks for the monitoring of the load torque of induc...
The study focused on three phase induction motor because it is playing a vital role in production de...
The use of machine learning for predictive maintenance has been the focus of many studies, usually ...
The application of intelligent algorithms, in electro-mechanical diagnosis systems, is increasing in...
With the fast evolution of the Industry 4.0, the increased use of sensors and the rapid development ...
With the ongoing integration of renewable energies into the electrical power grid, industrial energy...
Induction machines have been key components in the industrial sector for decades, owing to different...
This paper presents real-time health prediction of induction motors (IMs) utilised in a petrochemica...
This study presents an empirical investigation of the performances of machine learning algorithms ap...