Machine Learning-Based Time-Series Data Analysis in Edge-Cloud-Assisted Oil Industrial IoT System

Author:

Shi Feng12ORCID,Yan Liping1ORCID,Zhao Xiang1ORCID,Xian-Ke Gao Richard3ORCID

Affiliation:

1. College of Electronics and Information Engineering, Sichuan University, Chengdu 610065, China

2. Northwest Oil Field Company, Sinopec Corp., Urumqi, Xinjiang 830011, China

3. Institute of High Performance Computing, A∗STAR, Singapore

Abstract

With the rapid development of the Industrial Internet of Things (IIoT) and edge computing techniques, in situ intelligent sensors are continuously generating increasing and vast amounts of time-series data. In many industrial applications, particularly highly distributed systems positioned in remote areas, repeated transmission of large amounts of raw data onto the remote server is not possible. This poses a significant challenge to the timely processing of these data in IIoT. Analyzing and processing all the raw data remotely in the cloud server is impractical and has very low efficiency owing to network latency and the limited cloud computing resources. Failure of detecting abnormal data may result in major production safety problems. Therefore, businesses are moving machine learning capabilities to the edge to enable real-time actions in the field. In this study, we present a machine-learning-based edge-cloud framework to solve this problem. First, robust random cut forest and isolation forest algorithms are employed at the edge gateway to the collected data for the detection of anomalously changing data. Subsequently, these preprocessed time-series data are transmitted to cloud services for data trend prediction and missing data completion using the long short-term memory recurrent neural network method feed in conjunction with the original sequence of historical data combined with the first-order forward difference data. The experimental results show that the machine-learning-based edge-cloud-assisted oil production IIoT system can improve substantially the efficiency and accuracy of time-series data analyses.

Funder

National Natural Science Foundation of China

Publisher

Hindawi Limited

Subject

Computer Networks and Communications,Computer Science Applications

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1. RibesDB: A Time-Series Database at Edge for the Industrial Internet of Things;2023 IEEE 16th Malaysia International Conference on Communication (MICC);2023-12-10

2. Time Series Prediction Based on Random Convolution Kernel;2023 International Conference on Intelligent Media, Big Data and Knowledge Mining (IMBDKM);2023-03

3. Feed-Forward Neural Network Based Petroleum Wells Equipment Failure Prediction;Engineering;2023

4. Accuracy-Aware Data Reduction for Internet of Things;2022 IEEE 19th International Conference on Smart Communities: Improving Quality of Life Using ICT, IoT and AI (HONET);2022-12-19

5. Metaheuristic feature selection with deep learning enabled cascaded recurrent neural network for anomaly detection in Industrial Internet of Things environment;Cluster Computing;2022-08-25

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