Digital Transformation of Historical Data for Advanced Predictive Maintenance

Author:

Giunta Giuseppe1,Bernasconi Giancarlo2,Giro Riccardo Angelo2,Cesari Simone1

Affiliation:

1. Eni SpA, Development Operations & Technology

2. Politecnico di Milano, DEIB Department

Abstract

Abstract In recent years, big data technologies have paved the way for digital transformation in oil and gas industry. Multi-domain measurements are collected by advanced sensor systems and processed using data-driven approaches, allowing to derive constitutive relations between the operational status of the asset and the measured variables. In addition, historical pressure measurements can be exploited for advanced pipeline monitoring. This paper presents a methodology, applied to a case history, where legacy data are repurposed and employed both to track pump health and to enhance the digital conversion. The dataset consists of past pressure signals collected by Eni for several years at the pumping terminal of a crude oil transportation pipeline, which has a length of 100 km and 16" diameter pipes, located in Italy. Pressure transients' variance, kurtosis and variation range, computed on appropriate window lengths, are fed to an unsupervised clustering procedure based on a Gaussian Mixture Model (GMM), which automatically identifies four clusters. An expert analysis of the labeled data reveals that each cluster corresponds to a well-defined and different pump operational mode, namely: standby (pumps off), transition (pumps switching on/off), normal (line flowing) and anomalous. The latter mode is connected to a high value in the pressure transients' variance and kurtosis: during such regime, pump maintenance logs report a failure and replacement of a system part. Interestingly, the anomalous condition starts to show up several days before the actual part replacement. The proposed case history reveals the potentiality of: adding value to legacy data, as they can be reprocessed, tagged and used as supervised examples in the training phase of new data-driven procedures; comparing, merging and complementing monitoring strategies of assets at different digitalization stages; aiding the development of predictive maintenance strategies.

Publisher

SPE

Cited by 5 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Integrating Maintenance Practices with Industry 4.0 in Manufacturing System;2024 International Conference on Science, Engineering and Business for Driving Sustainable Development Goals (SEB4SDG);2024-04-02

2. Online Monitoring of Inner Deposits in Crude Oil Pipelines;SPE Production & Operations;2022-06-03

3. State-of-the-art in process safety and digital system;Methods in Chemical Process Safety;2022

4. Combined principal component analysis and proportional hazard model for optimizing condition-based maintenance;IOP Conference Series: Materials Science and Engineering;2021-11-01

5. A data-driven pipeline pressure procedure for remote monitoring of centrifugal pumps;Journal of Petroleum Science and Engineering;2021-10

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