The increasing availability of data and computing capacity drives optimization potential. In the industrial context, predictive maintenance is particularly promising and various algorithms are available for implementation. For the evaluation and selection of predictive maintenance algorithms, hitherto, statistical measures such as absolute and relative prediction errors are considered. However, algorithm selection from a purely statistical perspective may not necessarily lead to the optimal economic outcome as the two types of prediction errors (i.e., alpha error ignoring system failures versus beta error falsely indicating system failures) are negatively correlated, thus, cannot be jointly optimized and are associated with different costs....
The paper develops a goal programming-based multi-criteria methodology, for assessing different mach...
Combining data analytics and process knowledge to predict machine failures in advance: Tomorrow’s pr...
Abstract—It has been a long interest from researchers to have an effective approach optimizing maint...
The increasing availability of data and computing capacity drives optimization potential. In the ind...
Predictive maintenance has made considerable progress within the framework of Industry 4.0, making t...
This paper presents a comparison of three algorithm types (Bayesian Networks, Random Forest and Line...
Prognostics has taken center stage in condition based maintenance (CBM) where it is desired to estim...
Today, the manufacturing industry seeks to improve competitiveness by converging on new technologies...
Predictive maintenance has emerged as a powerful approach to optimize the maintenance of complex sys...
A comprehensive framework (from real-time prognostics to maintenance decisions) studying the influen...
In the production, the efficient employment of machines is realized as a source of industry competit...
Abstract Studying the influence of imperfect prognostics information on maintenance decisions is an ...
In corporate data mining applications, cost-sensitive learning is firmly established for predictive ...
Recent advances in Artificial Intelligence extend the boundaries of what machines can do in all indu...
Industry 4.0 must respond to some challenges such as the flexibility and robustness of unexpected co...
The paper develops a goal programming-based multi-criteria methodology, for assessing different mach...
Combining data analytics and process knowledge to predict machine failures in advance: Tomorrow’s pr...
Abstract—It has been a long interest from researchers to have an effective approach optimizing maint...
The increasing availability of data and computing capacity drives optimization potential. In the ind...
Predictive maintenance has made considerable progress within the framework of Industry 4.0, making t...
This paper presents a comparison of three algorithm types (Bayesian Networks, Random Forest and Line...
Prognostics has taken center stage in condition based maintenance (CBM) where it is desired to estim...
Today, the manufacturing industry seeks to improve competitiveness by converging on new technologies...
Predictive maintenance has emerged as a powerful approach to optimize the maintenance of complex sys...
A comprehensive framework (from real-time prognostics to maintenance decisions) studying the influen...
In the production, the efficient employment of machines is realized as a source of industry competit...
Abstract Studying the influence of imperfect prognostics information on maintenance decisions is an ...
In corporate data mining applications, cost-sensitive learning is firmly established for predictive ...
Recent advances in Artificial Intelligence extend the boundaries of what machines can do in all indu...
Industry 4.0 must respond to some challenges such as the flexibility and robustness of unexpected co...
The paper develops a goal programming-based multi-criteria methodology, for assessing different mach...
Combining data analytics and process knowledge to predict machine failures in advance: Tomorrow’s pr...
Abstract—It has been a long interest from researchers to have an effective approach optimizing maint...