Abstract

Abstract. Terrestrial lidar scanners are increasingly being used in numerous indoor mapping applications. This paper presents a methodology to model rollers used in hot-rolling steel mills. Hot-rolling steel mills are large facilities where steel is processed to different shapes. In a steel sheet manufacturing process, a steel slab is reheated at one end of the mill and is passed through multiple presses to achieve the desired cross-section. Hundreds of steel rollers are used to transport the steel slab from one end of the mill to the other. Over a period of use, these rollers wore out and need replacement. Manual determination of the damage to the rollers is a time-consuming task. Moreover, manual measurements can be influenced by the operator’s judgment. This paper presents a methodology to model rollers in a hot-rolling steel mill using lidar points. A terrestrial lidar scanner was used to collect lidar points over the roller surfaces. Data from several stations were merged to create a single point cloud. Using a bounding box, lidar points on all the rollers were clipped and used in this paper. The clipped data consisted of the roller as well as outlier points. Depending on the scan angles of scanner stations, partial surfaces of the rollers were scanned. A right-handed coordinate frame was used where the X-axis passed through the centers of all the rollers, Y-axis was parallel to the length of the first roller, and the Z-axis was in the plumb direction. Using a standard diameter of the roller, model roller points were created to extract the rollers. Both the lidar data and the model points were converted to rectangular prism-shaped voxels of dimensions 15.24 mm (0.05 ft) × 15.24 mm in the X and Z directions and extending over the entire width of the roller in the Y-direction. Voxels containing at least 40 lidar points were considered valid. Binary images of both the lidar points and the model points were created in the X-Z axes using the valid voxels. The roller locations in the lidar image were located by performing 2D FFT image matching using the model roller image. The roller points at the shortlisted locations were fitted with a circle equation to determine the mean roller diameters and mean center locations (roller’s rotation axis). The outlier points were filtered in this process for each roller. The elevation at the top of every roller was determined by adding their radii and Z-coordinates of its centers. Incorrectly located and/or modeled rollers were identified by implementing moving-average filters. Positively identified roller points were further analyzed to determine surface erosions and tilts. The above methodology showed that the rollers can be effectively modeled using the lidar points.

Highlights

  • Hot-rolling steel mills are large facilities where steel is processed into different shapes

  • As explained in the 2D Fast Fourier transform (FFT) image matching, the input image was created using the voxel dataset and the roller template image was created using a standard radius of 20.7cm

  • New methodologies were presented to locate and extract roller properties that are important in the steel industry

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Summary

INTRODUCTION

Hot-rolling steel mills are large facilities where steel is processed into different shapes. The steelmanufacturing process starts with a cold slab at one end that is reheated in a furnace and passed through multiple mills to achieve the desired thickness and cross-section. Uneven reductions in radii along the length of rollers would result in uneven surface velocities causing friction and/or drag between the rollers and steel (PI tapes). This situation is shown by the third roller where a steel section could be supported by the second and fourth rollers. The main objectives are to minimize human factor error, increase the measurement level of confidence, and to make the process computationally efficient

LITERATURE REVIEW
Salient metric properties of a roller in a steel mill
DATA DESCRIPTION
METHODOLOGY
Locating the rollers using FFT matching
Determining the mean radius and mean rotation axis of individual roller
RESULTS AND DISCUSSIONS
Locating rollers
Assessment of roller location
Filtering the data
CONCLUSION
Full Text
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