Neural network (NN) is a representative data-driven method, which is one of prognostics approaches that is to predict future damage/degradation and the remaining useful life of in-service systems based on the damage data measured at previous usage conditions. Even though NN has a wide range of applications, there are a relatively small number of literature on prognostics compared to the usage in other fields such as diagnostics and pattern recognition. Especially, it is difficult to find studies on statistical aspects of NN for the purpose of prognostics. Therefore, this paper presents the aspects of statistical characteristics of NN that are presumable in practical usages, which arise from measurement data, weight parameters related to the...
The application of interval set techniques to the quantification of uncertainty in a neural network ...
The application of interval set techniques to the quantification of uncertainty in a neural network ...
ABSTRACT: One of the most critical aspects of degradation-based estimation of reliability lies in th...
There are two large groups of sources of uncertainty at various stages of construction of neural ne...
Neural networks are increasingly being seen as an addition to the statistics toolkit which should be...
Statistical methods such as the life-table, the Kaplan-Meier method and regression models, such as t...
The application of Bayesian methods to the problem of fatigue crack growth prediction has been growi...
The application of Bayesian methods to the problem of fatigue crack growth prediction has been growi...
The application of Bayesian methods to the problem of fatigue crack growth prediction has been growi...
The application of Bayesian methods to the problem of fatigue crack growth prediction has been growi...
The application of Bayesian methods to the problem of fatigue crack growth prediction has been growi...
The application of interval set techniques to the quantification of uncertainty in a neural network ...
The application of interval set techniques to the quantification of uncertainty in a neural network ...
The application of interval set techniques to the quantification of uncertainty in a neural network ...
This paper presents a new prognostics model based on neural network technique for supporting industr...
The application of interval set techniques to the quantification of uncertainty in a neural network ...
The application of interval set techniques to the quantification of uncertainty in a neural network ...
ABSTRACT: One of the most critical aspects of degradation-based estimation of reliability lies in th...
There are two large groups of sources of uncertainty at various stages of construction of neural ne...
Neural networks are increasingly being seen as an addition to the statistics toolkit which should be...
Statistical methods such as the life-table, the Kaplan-Meier method and regression models, such as t...
The application of Bayesian methods to the problem of fatigue crack growth prediction has been growi...
The application of Bayesian methods to the problem of fatigue crack growth prediction has been growi...
The application of Bayesian methods to the problem of fatigue crack growth prediction has been growi...
The application of Bayesian methods to the problem of fatigue crack growth prediction has been growi...
The application of Bayesian methods to the problem of fatigue crack growth prediction has been growi...
The application of interval set techniques to the quantification of uncertainty in a neural network ...
The application of interval set techniques to the quantification of uncertainty in a neural network ...
The application of interval set techniques to the quantification of uncertainty in a neural network ...
This paper presents a new prognostics model based on neural network technique for supporting industr...
The application of interval set techniques to the quantification of uncertainty in a neural network ...
The application of interval set techniques to the quantification of uncertainty in a neural network ...
ABSTRACT: One of the most critical aspects of degradation-based estimation of reliability lies in th...