Bayesian networks have been applied to many different domains to perform prognostics, reduce risk and ultimately improve decision making. However, these methods have not been applied to military field and human performance data sets in an industrial environment. Methods frequently rely on a clear understanding of causal connections leading to an undesirable event and detailed understanding of the system behavior. Methods may also require large amount of analyst teams and domain experts, coupled with manual data cleansing and classification. The research performed utilized machine learning algorithms (such as Bayesian networks) and two existing data sets. The primary objective of the research was to develop a diagnostic and prognostic tool u...
Diesel engine propulsion has been the largest driver of maritime trade and transportation since its ...
The main purpose of this research is to enhance the current procedures of designing decision support...
Our research question was whether we could develop a feasible technique, using Bayesian networks, to...
Bayesian networks have been applied to many different domains to perform prognostics, reduce risk an...
Dynamic Bayesian networks (DBNs) represent complex time-dependent causal relationships through the u...
With the increasing complexity of today's engineering systems that contain various component depende...
abstract: Bayesian networks are powerful tools in system reliability assessment due to their flexibi...
Modern aircraft, both piloted fly-by-wire commercial aircraft as well as UAVs, more and more depend ...
A Bayesian network (BN) is a powerful tool to represent the quantitative and qualitative features of...
Besides detecting failures and predicting future health conditions of technical systems, fault diagn...
International audienceThis paper presents a procedure for failure prognostic by using Dynamic Bayesi...
International audienceIn the literature, several fault diagnosis methods, qualitative as well quanti...
The purpose of this article is to present and evaluate the performance of a new procedure for indust...
The enhanced Bayesian network (eBN) methodology described in the companion paper facilitates the ass...
Fault diagnostic methods aim to recognize when a fault exists on a system and to identify the failur...
Diesel engine propulsion has been the largest driver of maritime trade and transportation since its ...
The main purpose of this research is to enhance the current procedures of designing decision support...
Our research question was whether we could develop a feasible technique, using Bayesian networks, to...
Bayesian networks have been applied to many different domains to perform prognostics, reduce risk an...
Dynamic Bayesian networks (DBNs) represent complex time-dependent causal relationships through the u...
With the increasing complexity of today's engineering systems that contain various component depende...
abstract: Bayesian networks are powerful tools in system reliability assessment due to their flexibi...
Modern aircraft, both piloted fly-by-wire commercial aircraft as well as UAVs, more and more depend ...
A Bayesian network (BN) is a powerful tool to represent the quantitative and qualitative features of...
Besides detecting failures and predicting future health conditions of technical systems, fault diagn...
International audienceThis paper presents a procedure for failure prognostic by using Dynamic Bayesi...
International audienceIn the literature, several fault diagnosis methods, qualitative as well quanti...
The purpose of this article is to present and evaluate the performance of a new procedure for indust...
The enhanced Bayesian network (eBN) methodology described in the companion paper facilitates the ass...
Fault diagnostic methods aim to recognize when a fault exists on a system and to identify the failur...
Diesel engine propulsion has been the largest driver of maritime trade and transportation since its ...
The main purpose of this research is to enhance the current procedures of designing decision support...
Our research question was whether we could develop a feasible technique, using Bayesian networks, to...