Abstract

The main task of mineral processing plants is to further process the raw material extracted in the mining faces into a concentrate with the highest possible concentration of the final product. In practice, it is a complex process in which several stages can be distinguished. After the ore has been transported to the surface by the skip shaft, one of the first steps is sieving the ore, which is typically performed using vibrating mining screens. In a typical Ore Enrichment Plant, the screening process is carried out by several such machines. This is a typical bottleneck in the technological chain. For this reason, the main challenge for users is to achieve the highest reliability and efficiency of these technical facilities. The solution is to focus on predictive maintenance strategies based on the development of monitoring and advanced diagnostic procedures capable of estimating the time of safe operation. This work was developed as part of an advanced diagnostic system ensuring comprehensive technical conditioning and early fault detection of components such as the engine, transmission, bearings, springs, and screen. This article focuses on vibration data. The problem of damage detection in the presence of periodically impulsive components resulting from falling feed material on the screen and its further screening process has been considered. These disturbances are of a non-Gaussian noise nature, the elimination of which is essential to extract the fault-related signal of interest. One solution may be to properly smooth and filter the raw signal. In this article, a wavelet filtering technique is applied. First, the wavelet filtering procedure is described. In the next step, the performance of a wavelet filter is investigated depending on its parameters. Then, the results of wavelet filtering are compared with such methods as low-pass filtering and smoothing using a moving average. Finally, the impact of wavelet filtering on the calculation of screen trajectories is investigated.

Highlights

  • Publisher’s Note: MDPI stays neutral with regard to jurisdictional claims in published maps and institutional affiliations

  • Predictive maintenance is developed strongly based on the assumptions of the Industrial Internet of Things technologies, in which the sensed objects are connected to the Internet and can communicate with each other and the superior system [2,3,4,5,6,7]

  • The trajectory of the screen, which is a key characteristic for screen diagnostics and maintenance, as well as other diagnostic features, can be calculated

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Summary

Introduction

In the mining sector, there is a rapid development of technology ensuring operational supervision of processes and technical facilities based on online monitoring. A typical mining enterprise wishing to remain competitive in the mineral resources market must plan the production process, maintenance, and materials management in advance based on real data. In order to avoid downtime and to carry out maintenance works in a controlled manner, it is crucial to develop advanced diagnostic systems [1]. Predictive maintenance is developed strongly based on the assumptions of the Industrial Internet of Things technologies, in which the sensed objects are connected to the Internet and can communicate with each other and the superior system [2,3,4,5,6,7]

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