Industrial Data Mining and Machine Learning Applications

Special Issue Editors


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Guest Editor
Department of Industrial and Systems Engineering, The Hong Kong Polytechnic University, Hong Kong, China
Interests: decision making; blockchain; Internet of Things; industry 4.0 technologies; logistics management
Department of Supply Chain and Information Management, The Hang Seng University of Hong Kong, Hong Kong
Interests: IIoT; digital transformation; trust management; cloud security
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Guest Editor
Faulty of Engineering, The University of West Indies, St. Augustine Campus, St. Augustine, Trinidad and Tobago
Interests: industrial engineering; engineering management; quality; technology

Special Issue Information

Dear Colleagues, 

In the era of Industry 4.0, the fields of data mining and machine learning have evolved at a breakneck pace, surpassing human intelligence in uncovering data patterns and refining decision-making processes. Data mining techniques have shown promise in discerning trends and patterns that yield valuable insights for business and management. Conversely, machine learning—with its spectrum spanning supervised, unsupervised, and reinforcement learning—offers diverse functionalities such as reasoning, clustering, and optimization. These tools are instrumental in making well-informed decisions to tackle complex industrial engineering challenges. 

A plethora of research endeavors in recent years have sought to harness these advanced techniques to address industrial problems, including demand forecasting, customer relationship management, inventory control, and fleet management. Despite a robust theoretical framework and extensive exploration, the practical adoption of these technologies is not widespread, particularly within small and medium-sized enterprises (SMEs). In sectors with a high concentration of SMEs, the benefits reaped from the advancements in data mining and machine learning remain modest. Consequently, the disparity in capabilities between enterprises that do and do not employ these technologies is widening, potentially impeding the sustainable growth of entire industries. 

This Special Issue aims to address the following critical questions: (i) Why have industrial data mining and machine learning applications not achieved widespread adoption across industries? (ii) How can these applications be effectively implemented within industrial settings? When data mining and machine learning tools are put into practice, the resultant value—be it in terms of sustainability, resilience, or human-centric approaches—can be substantial, fostering the shift towards the next industrial revolution, Industry 5.0. 

We invite original research and review articles that probe and capitalize on industrial applications by leveraging big data and machine learning. Submissions should focus on both the exploration and the exploitation of these technologies within an industrial context. 

Topics of interest for this Special Issue include but are not limited to the following:

  • Industrial data mining applications;
  • Big data mining in industrial settings;
  • Machine learning applications in industry, including supervised, unsupervised, and reinforcement learning;
  • Engineering education of industrial data mining and machine learning;
  • Drivers and barriers to implementing industrial applications;
  • The impact of industrial applications on sustainability, resilience, and human centricity;
  • Solutions to industrial engineering problems in sectors such as manufacturing, logistics, supply chain management and healthcare.

We look forward to your contributions that will help bridge the gap between theoretical research and practical implementation, ultimately steering industries towards a more innovative and sustainable future.

Dr. Yung Po Tsang
Dr. C. H. Wu
Prof. Dr. Kit-Fai Pun
Guest Editors

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Keywords

  • industry 4.0
  • data mining
  • machine learning
  • industrial applications
  • supervised learning
  • unsupervised learning
  • reinforcement learning
  • small and medium-sized enterprises (SMEs)
  • industry 5.0
  • higher teaching
  • engineering education

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Published Papers (1 paper)

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Research

20 pages, 7109 KiB  
Article
Time-Series Feature Extraction by Return Map Analysis and Its Application to Bearing-Fault Detection
by Veronika Ponomareva, Olga Druzhina, Oleg Logunov, Anna Rudnitskaya, Yulia Bobrova, Valery Andreev and Timur Karimov
Big Data Cogn. Comput. 2024, 8(8), 82; https://doi.org/10.3390/bdcc8080082 - 29 Jul 2024
Viewed by 837
Abstract
Developing new features for time-series characterization is a current challenge in data science and machine learning. In this paper, we propose a new metric based on a simple and efficient algorithm, namely, the return map. The return map analysis is well established in [...] Read more.
Developing new features for time-series characterization is a current challenge in data science and machine learning. In this paper, we propose a new metric based on a simple and efficient algorithm, namely, the return map. The return map analysis is well established in the field of non-linear dynamics, in particular, for fitting the parameters of a chaotic system from a waveform, or to attack a chaotic communication channel. We show that our metrics work well for both non-linear dynamics and time-series feature extraction problems in the field of machine learning. In an experiment aiming to classify vibration signals of normal and damaged bearings, we compare our method with two other methods that reported to have excellent accuracy, based on entropy and statistical feature distribution, respectively. We show that our method achieves higher accuracy with almost the lowest time costs, which was confirmed in experiments with two different datasets containing three main classes of bearings: normal, with inner race faults, and with outer race faults, having different damage origins and recorded in various conditions. In particular, for the dataset supplied by Case Western Reserve University, our method reached an accuracy of 100% at signals of 5000 sample points length, with a total time of 0.4 s required for feature estimation, while the entropy-based method reached an accuracy of 95% with a time of 100 s, and a statistical feature distribution method reached an accuracy of 93% with a total time of 1.9 s. Results show that the developed method is better suited to real-time bearing condition monitoring applications than most of the methods reported to date. Full article
(This article belongs to the Special Issue Industrial Data Mining and Machine Learning Applications)
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