This article presents a methodology to automate the prediction of maintenance intervention alerts in transport linear infrastructures. It combines current and predicted asset conditions with operational and historical maintenance data, to predict the needed tasks to avoid later severe degradation. By means of data analytics and machine learning models, a prioritised listing ranked on severity level corresponding to the alerts generated for all assets of the infrastructure is inferred. The scientific part presents: a discussion on relevant data to train machine learning algorithms in order to generate reliable predictions of the interventions to be carried out in further time scenarios, a schematic flow chart of the automatic learning proced...
Predictive maintenance is a concept linked to Industry 4.0, the fourth industrial revolution that mo...
I believe it’s essential to take advantage of data to provide governments and organizations with sma...
The increasing availability of data, gathered by sensors and intelligent machines, is chang-ing the ...
A methodology to support and automate the prediction of maintenance intervention alerts in transport...
The importance of maintaining transport infrastructure is increasingly recognized as we witness the ...
With the shift from manual to computerized solutions, many railway agencies are storing and managing...
Data-driven decision support can substantially aid in smart and efficient maintenance planning of ro...
Vehicle uptime is getting increasingly important as the transport solutions become more complex and ...
With growing service demands, rapid deterioration due to extensive usage, and limited maintenance du...
The on-going H2020 project INFRALERT aims to increase rail and road infrastructure capacity in the c...
Transportation networks undergo permanent changes influenced by a variety of human-induced and natur...
The use of big data has contaminated industries 4.0 revolutionizing their maintenance strategies. Ra...
\u3cp\u3eWith growing service demands, rapid deterioration due to extensive usage, and limited maint...
Condition monitoring together with predictive maintenance of electric motors and other equipment use...
Predictive maintenance is a concept linked to Industry 4.0, the fourth industrial revolution that mo...
I believe it’s essential to take advantage of data to provide governments and organizations with sma...
The increasing availability of data, gathered by sensors and intelligent machines, is chang-ing the ...
A methodology to support and automate the prediction of maintenance intervention alerts in transport...
The importance of maintaining transport infrastructure is increasingly recognized as we witness the ...
With the shift from manual to computerized solutions, many railway agencies are storing and managing...
Data-driven decision support can substantially aid in smart and efficient maintenance planning of ro...
Vehicle uptime is getting increasingly important as the transport solutions become more complex and ...
With growing service demands, rapid deterioration due to extensive usage, and limited maintenance du...
The on-going H2020 project INFRALERT aims to increase rail and road infrastructure capacity in the c...
Transportation networks undergo permanent changes influenced by a variety of human-induced and natur...
The use of big data has contaminated industries 4.0 revolutionizing their maintenance strategies. Ra...
\u3cp\u3eWith growing service demands, rapid deterioration due to extensive usage, and limited maint...
Condition monitoring together with predictive maintenance of electric motors and other equipment use...
Predictive maintenance is a concept linked to Industry 4.0, the fourth industrial revolution that mo...
I believe it’s essential to take advantage of data to provide governments and organizations with sma...
The increasing availability of data, gathered by sensors and intelligent machines, is chang-ing the ...