Insights Gained from the Digital Monitoring of Vibrating Screens Using Smart Acceleration Sensors of Type SES by IFE Aufbereitungstechnik GmbH

Research output: Contribution to journalArticleResearch

Abstract

This article presents key findings from the PhD thesis of this article’s first author on optimizing industrial vibrating screen operation using insights derived from vibration data. Controlled laboratory experiments were conducted to establish a basic understanding of screen behavior, revealing how vibration patterns shift under varying loads. Building on these insights, two industrial case studies were carried out using vibration sensors and machine learning models to analyze the condition states and process-related performance over a monitoring period of more than one year.

In Case Study I, a linear motion screen used for dewatering was analyzed using an MLP model that classified operating states with 88% accuracy, identifying manual cleaning as a key factor in reducing efficiency. A threshold-based expert system also detected typical failures such as loose screen decks and bearing damage. In Case Study II, a circular motion screen in an aggregate plant was monitored, and models were trained to predict feed flowrates, achieving an R2 score of 90%.

Overall, the investigations conducted as part of the dissertation and the resulting insights demonstrate that the combination of vibration monitoring, manual analysis, and machine learning enables an effective condition classification, fault detection, and real-time process prediction. Implementing vibration sensors for continuous monitoring proves to be a suitable and promising tool for significantly increasing the efficiency and reliability of industrial screening processes.
Translated title of the contributionErkenntnisse aus der digitalen Überwachung von Schwingsieben mittels smarter Beschleunigungssensoren vom Typ SES der Firma IFE Aufbereitungstechnik GmbH
Original languageEnglish
Pages (from-to)307-314
Number of pages8
JournalBerg- und hüttenmännische Monatshefte : BHM
Volume170.2025
Issue number6
DOIs
Publication statusPublished - 23 May 2025

Keywords

  • Vibrating Screens
  • Vibration Analysis
  • Digital Transformation
  • Condition Monitoring
  • Machine Learning
  • Sensors
  • Predictive Maintenance

Cite this