Abstract

The measurements of the diameter of different layers, the thickness of different layers and the eccentricity of insulation layer in the cross-section of power cables are important items of power cable test, which currently depend on labor-intensive manual operations. To improve efficiency, automatic measurement methods are in urgent need. In this paper, a monocular vision-based framework for automatic measurement of the diameter, thickness, and eccentricity of interest in the cross-section of power cables is proposed. The proposed framework mainly consists of three steps. In the first step, the images of cable cross-section are captured and undistorted with the camera calibration parameters. In the second step, the contours of each layer are detected in the cable cross-section image. In order to detect the complete and accurate contours of each layer, the structural edges in the cross-section image are firstly detected and divided into individual layers, then unconnected edges are connected by arc-based method, and finally contours are refined by the proposed break detection and grouping (BDG) and linear trend-based correction (LTBC) algorithm. In the third step, the monocular vision-based cross-section dimension measurement is accomplished by placing a chessboard coplanar with the power cable cross-section plane. The homography matrix mapping pixel coordinates to chessboard world coordinates is estimated, and the diameter, thickness and eccentricity of specific layers are calculated by homography matrix-based measurement method. Simulated data and actual cable data are both used to validate the proposed method. The experimental results show that diameter, minimum thickness, mean thickness and insulation eccentricity of simulated image without additive noise are measured with root mean squared error (RMSE) of 0.424, 0.103 and 0.063 mm, and 0.002, respectively, those of simulated image with additive Gaussian noise and salt and pepper noise are measured with RMSE of 0.502, 0.243 and 0.058 mm and 0.001. Diameter, minimum thickness and mean thickness of actual cable images are measured with average RMSE of 0.768, 0.308 and 0.327 mm. The measurement error of insulation eccentricity of actual cable image is comparatively large, and the measurement accuracy should be improved.

Highlights

  • IntroductionMeasurements of electrical properties, thermal properties, mechanical properties and different geometric dimensions in the cross-section are included in the power cable test [1,2,3,4]

  • High voltage power cables are used for power transmission and distribution in power systems, and cable performance test is essential to reduce operational accidents and improve power supply reliability.Measurements of electrical properties, thermal properties, mechanical properties and different geometric dimensions in the cross-section are included in the power cable test [1,2,3,4]

  • To improve the geometric dimension measurement efficiency in power cable testing, a monocular vision-based cross-section measurement framework for single-core power cable was proposed in this paper

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Summary

Introduction

Measurements of electrical properties, thermal properties, mechanical properties and different geometric dimensions in the cross-section are included in the power cable test [1,2,3,4]. The geometric dimension measurements of power cables mainly involve the diameter and thickness of different layers and the eccentricity of insulation layer in the cross-section. Take the power cable with Cross-Linked Polyethylene (XLPE) insulation for rated voltage of 110 kV as an example, the specimen is first stripped layer by layer, diameters up to 25 mm are directly measured with a micrometer or a vernier caliper reading to 0.01 mm, and diameters more than 25 mm are calculated from perimeter measured with a steel tape reading to 0.1 mm. The three insulation related layers are cleaned and sliced first and the thickness is measured with a digital projector or a microscope reading to 0.01 mm

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