The main objective of this paper is to present a new method of predictive maintenance which can detect the states of coal grinding mills in thermal power plants using Bayesian networks. Several possible structures of Bayesian networks are proposed for solving this problem and one of them is implemented and tested on an actual system. This method uses acoustic signals and statistical signal pre-processing tools to compute the inputs of the Bayesian network. After that the network is trained and tested using signals measured in the vicinity of the mill in the period of 2 months. The goal of this algorithm is to increase the efficiency of the coal grinding process and reduce the maintenance cost by eliminating the unnecessary maintenance check...
The main goal of our bachelor thesis is to create a quantitave model which describes real biogas pla...
Considering the classification of failures in electrical machines, the present paper aims to use sup...
In the structure learning of the large-scale Bayesian network (BN) model for the coal mill process, ...
In the present paper we focus on online monitoring system for predictive maintenance based on sensor...
The integrated gasification combined cycle technology in combination with coal as a natural resource...
To improve the viability of nuclear power plants, there is a need to reduce their operational costs....
The UK has the largest installed capacity of offshore wind and this is set to increase significantly...
© 2015, IFAC (International Federation of Automatic Control) Hosting by Elsevier Ltd. All rights res...
Abstract. A methodology for on-line diagnosis and prediction of power plant disturbances has been de...
Climate change caused by pollution is considered as one of threats facing humankind. Industrial emis...
The performance of a building decreases with time and this process is accelerated if proper maintena...
Bayesian networks have been widely used for classification problems. These models, structure of the ...
Predictive as well as preventive maintenance are tools of maintenance programs that aim to increase ...
Besides detecting failures and predicting future health conditions of technical systems, fault diagn...
In Industry, the maintenance policy is devoted to avoid sudden failures that can cause the stop of t...
The main goal of our bachelor thesis is to create a quantitave model which describes real biogas pla...
Considering the classification of failures in electrical machines, the present paper aims to use sup...
In the structure learning of the large-scale Bayesian network (BN) model for the coal mill process, ...
In the present paper we focus on online monitoring system for predictive maintenance based on sensor...
The integrated gasification combined cycle technology in combination with coal as a natural resource...
To improve the viability of nuclear power plants, there is a need to reduce their operational costs....
The UK has the largest installed capacity of offshore wind and this is set to increase significantly...
© 2015, IFAC (International Federation of Automatic Control) Hosting by Elsevier Ltd. All rights res...
Abstract. A methodology for on-line diagnosis and prediction of power plant disturbances has been de...
Climate change caused by pollution is considered as one of threats facing humankind. Industrial emis...
The performance of a building decreases with time and this process is accelerated if proper maintena...
Bayesian networks have been widely used for classification problems. These models, structure of the ...
Predictive as well as preventive maintenance are tools of maintenance programs that aim to increase ...
Besides detecting failures and predicting future health conditions of technical systems, fault diagn...
In Industry, the maintenance policy is devoted to avoid sudden failures that can cause the stop of t...
The main goal of our bachelor thesis is to create a quantitave model which describes real biogas pla...
Considering the classification of failures in electrical machines, the present paper aims to use sup...
In the structure learning of the large-scale Bayesian network (BN) model for the coal mill process, ...