Predictive as well as preventive maintenance are tools of maintenance programs that aim to increase or maintain the life expectancy of an equipment through computational techniques and tools. Bearing in mind that the power generation industry has a high maintenance rate with machines and / or electric generators stopped, this research aims to develop a computational model for predicting the Reliability Key Performance Indicator (KPI) to identify how available the equipment will be in a time span of 22 days, for this the methodology to be used will be based on analyzes and tests of artificial neural network (ANN) architectures using the Bayesian Regularizers training algorithm, alternating the transfer functions in the layers hidden to find ...
Unplanned downtime in industries poses significant challenges, affecting production efficiency and p...
Forecasting or predicting future events is important to take into account in order for an activity t...
Abstract: We present a new Bayesian network modeling that learns the behavior of an unknown system f...
Predictive as well as preventive maintenance are tools of maintenance programs that aim to increase ...
In an effort to achieve an optimal availability time of induction motors via fault probabilities red...
Forecasting or predicting future events is important to take into account in order for an activity t...
[[abstract]]Traditionally, decisions on the use of machinery are based on previous experience, histo...
The work done in this paper has focused on the prediction of failures of a complex and highly stress...
With smart electronic devices delving deeper into our everyday lives, predictive maintenance solutio...
The objective of this study is to compare the predictive ability of Bayesian regularization with Lev...
The combination of Condition Based monitoring techniques with the predictive capabilities of neural ...
In this paper two artificially intelligent methodologies are proposed and developed for degradation ...
This paper presents a new prognostics model based on neural network technique for supporting industr...
Due to the nature of software faults and the way they cause system failures new methods are needed f...
To improve the viability of nuclear power plants, there is a need to reduce their operational costs....
Unplanned downtime in industries poses significant challenges, affecting production efficiency and p...
Forecasting or predicting future events is important to take into account in order for an activity t...
Abstract: We present a new Bayesian network modeling that learns the behavior of an unknown system f...
Predictive as well as preventive maintenance are tools of maintenance programs that aim to increase ...
In an effort to achieve an optimal availability time of induction motors via fault probabilities red...
Forecasting or predicting future events is important to take into account in order for an activity t...
[[abstract]]Traditionally, decisions on the use of machinery are based on previous experience, histo...
The work done in this paper has focused on the prediction of failures of a complex and highly stress...
With smart electronic devices delving deeper into our everyday lives, predictive maintenance solutio...
The objective of this study is to compare the predictive ability of Bayesian regularization with Lev...
The combination of Condition Based monitoring techniques with the predictive capabilities of neural ...
In this paper two artificially intelligent methodologies are proposed and developed for degradation ...
This paper presents a new prognostics model based on neural network technique for supporting industr...
Due to the nature of software faults and the way they cause system failures new methods are needed f...
To improve the viability of nuclear power plants, there is a need to reduce their operational costs....
Unplanned downtime in industries poses significant challenges, affecting production efficiency and p...
Forecasting or predicting future events is important to take into account in order for an activity t...
Abstract: We present a new Bayesian network modeling that learns the behavior of an unknown system f...