Abstract: Studying the influence of imperfect prognostics information on maintenance decisions is an underexplored area. To bridge this gap, a new comprehensive maintenance support system is proposed. First, a survival theory‐based prognostics module employing the Weibull time‐to‐event recurrent neural network was deployed in which prognostics competence was enhanced by predicting the parameters of failure distribution. In conjunction with this, a new predictive maintenance (PdM) planning model was framed via a trade‐off between corrective maintenance and time lost due to PdM. This optimises maintenance time based on operational and maintenance cost parameters from the historical data. The performance of the proposed framework is demonstrat...
Predictive maintenance allows industries to keep their production systems available as much as possi...
In the era of the fourth industrial revolution, several concepts have arisen in parallel with this n...
In view of the trend towards Industry 4.0, intelligent predictive monitoring and decision-making pro...
Studying the influence of imperfect prognostics information on maintenance decisions is an underexpl...
Abstract Studying the influence of imperfect prognostics information on maintenance decisions is an ...
A comprehensive framework (from real-time prognostics to maintenance decisions) studying the influen...
In Prognostic Health and Management (PHM) literature, the predictive maintenance studies can be clas...
Condition-based maintenance (CBM) has emerged as a proactive strategy for determining the best time ...
In recent years, current maintenance strategies have extensively evolved in condition-based maintena...
The technology of prognosis has become a significant approach but its implementation in maintenance ...
Condition-based maintenance strategy is considered popular and received high demand in industry to e...
Predictive maintenance needs to forecast the numbers of rejections at any overhaul point before any ...
This paper presents a new prognostics model based on neural network technique for supporting indust...
Machine availability and reliability are two of the most important Parameters for an industry. Incre...
The perception of predictive maintenance as a proactive maintenance strategy to anticipate and reduc...
Predictive maintenance allows industries to keep their production systems available as much as possi...
In the era of the fourth industrial revolution, several concepts have arisen in parallel with this n...
In view of the trend towards Industry 4.0, intelligent predictive monitoring and decision-making pro...
Studying the influence of imperfect prognostics information on maintenance decisions is an underexpl...
Abstract Studying the influence of imperfect prognostics information on maintenance decisions is an ...
A comprehensive framework (from real-time prognostics to maintenance decisions) studying the influen...
In Prognostic Health and Management (PHM) literature, the predictive maintenance studies can be clas...
Condition-based maintenance (CBM) has emerged as a proactive strategy for determining the best time ...
In recent years, current maintenance strategies have extensively evolved in condition-based maintena...
The technology of prognosis has become a significant approach but its implementation in maintenance ...
Condition-based maintenance strategy is considered popular and received high demand in industry to e...
Predictive maintenance needs to forecast the numbers of rejections at any overhaul point before any ...
This paper presents a new prognostics model based on neural network technique for supporting indust...
Machine availability and reliability are two of the most important Parameters for an industry. Incre...
The perception of predictive maintenance as a proactive maintenance strategy to anticipate and reduc...
Predictive maintenance allows industries to keep their production systems available as much as possi...
In the era of the fourth industrial revolution, several concepts have arisen in parallel with this n...
In view of the trend towards Industry 4.0, intelligent predictive monitoring and decision-making pro...