Benchmarking a Wide Range of Unsupervised Learning Methods for Detecting Anomaly in Blast Furnace

Kendai Itakura, Dukka Bahadur, Hiroto Saigo

研究成果: 書籍/レポート タイプへの寄稿会議への寄与

抄録

Steel plays important roles in our daily lives, as it surrounds us in the form of various products. Blast furnace, one of the main facility in steel production process, is traditionally monitored by skilled workers to prevent incidents. However, there is a growing demand to automate the monitoring process by leveraging machine learning. This paper focuses on investigating the suitability of unsupervised learning methods for detecting anomalies in blast furnaces. Extensive benchmarking is conducted using a dataset collected from blast furnaces, encompassing a wide range of unsupervised learning methods, including both traditional approaches and recent deep learning-based techniques. The computational experiments yield results that suggest the effectiveness of traditional methods over deep learning-based methods. To validate this observation, additional experiments are performed on publicly available non time series datasets and complex time series datasets. These experiments serve to confirm the superiority of traditional methods in handling non time series datasets, while deep learning methods exhibit better performance in dealing with complex time series datasets. We have also discovered that dimensionality reduction before anomaly detection is beneficial in eliminating outliers and effectively modeling the normal data points in the blast furnace dataset.

本文言語英語
ホスト出版物のタイトルProceedings of the 13th International Conference on Pattern Recognition Applications and Methods
編集者Modesto Castrillon-Santana, Maria De Marsico, Ana Fred
出版社Science and Technology Publications, Lda
ページ641-650
ページ数10
ISBN(印刷版)9789897586842
DOI
出版ステータス出版済み - 2024
イベント13th International Conference on Pattern Recognition Applications and Methods, ICPRAM 2024 - Rome, イタリア
継続期間: 2月 24 20242月 26 2024

出版物シリーズ

名前International Conference on Pattern Recognition Applications and Methods
1
ISSN(電子版)2184-4313

会議

会議13th International Conference on Pattern Recognition Applications and Methods, ICPRAM 2024
国/地域イタリア
CityRome
Period2/24/242/26/24

!!!All Science Journal Classification (ASJC) codes

  • 人工知能
  • コンピュータ ビジョンおよびパターン認識

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