Efficiency and safety are primary requirements for oil & gas fluid filled transportation system. However, the complexity of the asset makes it challenging to derive a theoretical framework for managing the control parameters. The current frontier for a real time monitoring exploits the "digital tansformation", i.e. the acquisition and the analysis of large datasets recorded along the whole asset lifecycle, which are used to infer "data driven" relations and to predict the evolution of the asset integrity. This paper presents some results of a research project for the design, implementation and testing of a "machine learning" approach to vibroacoustic data recorded continuously by acquisition units installed every 10-20 km along a pipeli...