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Journal ArticleDOI

Bayesian Networks in Fault Diagnosis

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TLDR
Current gaps and challenges on use of BNs in fault diagnosis in the last decades with focus on engineering systems are explored and several directions for future research are explored.
Abstract
Fault diagnosis is useful in helping technicians detect, isolate, and identify faults, and troubleshoot. Bayesian network (BN) is a probabilistic graphical model that effectively deals with various uncertainty problems. This model is increasingly utilized in fault diagnosis. This paper presents bibliographical review on use of BNs in fault diagnosis in the last decades with focus on engineering systems. This work also presents general procedure of fault diagnosis modeling with BNs; processes include BN structure modeling, BN parameter modeling, BN inference, fault identification, validation, and verification. The paper provides series of classification schemes for BNs for fault diagnosis, BNs combined with other techniques, and domain of fault diagnosis with BN. This study finally explores current gaps and challenges and several directions for future research.

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Citations
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Availability-Based Engineering Resilience Metric and Its Corresponding Evaluation Methodology

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Application of Bayesian Networks in Reliability Evaluation

TL;DR: A bibliographic review of BNs that have been proposed for reliability evaluation in the last decades is presented, and a few upcoming research directions that are of interest to reliability researchers are identified.
Journal ArticleDOI

Fault detection and diagnosis of large-scale HVAC systems in buildings using data-driven methods: A comprehensive review

TL;DR: The outcome of this review shows that data-driven based approaches are more promising for the FDD process of large-scale HVAC systems than model-based and knowledge-based ones.
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A Deep Learning Model for Smart Manufacturing Using Convolutional LSTM Neural Network Autoencoders

TL;DR: An end-to-end model for multistep machine speed prediction that comprises a deep convolutional LSTM encoder–decoder architecture is proposed and extensive empirical analyses demonstrate the value of the proposed method when compared with the state-of-the-art predictive models.
References
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Journal ArticleDOI

Research on Wind Turbine Generator Dynamic Reliability Test System Based on Feature Recognition

TL;DR: The wind turbine generator dynamic reliability test system is built based on GPRS technology to realize automatic control and remote intelligent monitoring and to ensure the safe and stable operation of wind farms.
Book ChapterDOI

Fault diagnosis for high-level applications based on dynamic Bayesian network

TL;DR: A fault diagnosis technique based on dynamic Bayesian network (DBN), which can deal with the system dynamics and noise and can be effectively used to diagnose the root fault in high-level applications is established.
Book ChapterDOI

Application of Bayesian Network in Failure Diagnosis of Hydro-electrical Simulation System

TL;DR: Considering the application background of hydro-electrical simulation, a new algorithm for learning Bayesian network structure is proposed according to the rule base provided by many experts, which adopts statistical strategy during extracting valid rules from rule base, discards the rules with weak causality, and only retains those with strong causality.
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