Over the last few decades, reliability analysis has gained more and more attention as it can be beneficial in lowering the maintenance cost. Time between failures (TBF) is an essential topic in reliability analysis. If the TBF can be accurately predicted, preventive maintenance can be scheduled in advance in order to avoid critical failures. The purpose of this paper is to research the TBF using deep learning techniques. Deep learning, as a tool capable of capturing the highly complex and non-linearly patterns, can be a useful tool for TBF prediction. The general principle of how to design deep learning model was introduced. By using a sizeable amount of automobile TBF dataset, we conduct an experiential study on TBF prediction by deep lear...
This paper describes an implementation of a deep learning-based predictive maintenance (PdM) system ...
The use of aircraft operational logs to predict potential failure that may lead to disruption poses ...
With the growing EV market, predictive maintenance of batteries is one of the key challenges faced b...
Over the last few decades, reliability analysis has gained more and more attention as it can be bene...
Predictive maintenance (PdM) has become prevalent in the industry in order to reduce maintenance cos...
Predictive maintenance strives to maximize the availability of engineering systems. Over the last de...
Industry 4.0 refers to the fourth industrial revolution, which has boosted the development of the wo...
Manufacturing systems must be supported by the availability of materials, a streamlined production p...
Predictive maintenance (PdM) cannot only avoid economic losses caused by improper maintenance but al...
Industry 4.0 is characterized by the availability of sensors to operate the so-called intelligent fa...
Accurate prediction of the throttle value and state for wheel loaders can help to achieve autonomous...
The use of aircraft operation logs to develop a data-driven model to predict probable failures that ...
Automobile maintenance has gained increasing attention in recent years. If the failure time of an au...
In recent times, there has been a growing interest in predictive maintenance for turbofan engines as...
The core of PHM (Prognostic and Health Monitoring) technology is prognostics which is able to estima...
This paper describes an implementation of a deep learning-based predictive maintenance (PdM) system ...
The use of aircraft operational logs to predict potential failure that may lead to disruption poses ...
With the growing EV market, predictive maintenance of batteries is one of the key challenges faced b...
Over the last few decades, reliability analysis has gained more and more attention as it can be bene...
Predictive maintenance (PdM) has become prevalent in the industry in order to reduce maintenance cos...
Predictive maintenance strives to maximize the availability of engineering systems. Over the last de...
Industry 4.0 refers to the fourth industrial revolution, which has boosted the development of the wo...
Manufacturing systems must be supported by the availability of materials, a streamlined production p...
Predictive maintenance (PdM) cannot only avoid economic losses caused by improper maintenance but al...
Industry 4.0 is characterized by the availability of sensors to operate the so-called intelligent fa...
Accurate prediction of the throttle value and state for wheel loaders can help to achieve autonomous...
The use of aircraft operation logs to develop a data-driven model to predict probable failures that ...
Automobile maintenance has gained increasing attention in recent years. If the failure time of an au...
In recent times, there has been a growing interest in predictive maintenance for turbofan engines as...
The core of PHM (Prognostic and Health Monitoring) technology is prognostics which is able to estima...
This paper describes an implementation of a deep learning-based predictive maintenance (PdM) system ...
The use of aircraft operational logs to predict potential failure that may lead to disruption poses ...
With the growing EV market, predictive maintenance of batteries is one of the key challenges faced b...