Automatic Groove Measurement and Evaluation with High Resolution Laser Profiling Data

Grooving is widely used to improve airport runway pavement skid resistance during wet weather. However, runway grooves deteriorate over time due to the combined effects of traffic loading, climate, and weather, which brings about a potential safety risk at the time of the aircraft takeoff and landin...

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Main Authors: Lin Li, Wenting Luo, Kelvin C. P. Wang, Guangdong Liu, Chao Zhang
Format: Article
Language:English
Published: MDPI AG 2018-08-01
Series:Sensors
Subjects:
Online Access:http://www.mdpi.com/1424-8220/18/8/2713
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spelling doaj-332900ac8a774426b26b3d682f6c83402020-11-25T00:45:31ZengMDPI AGSensors1424-82202018-08-01188271310.3390/s18082713s18082713Automatic Groove Measurement and Evaluation with High Resolution Laser Profiling DataLin Li0Wenting Luo1Kelvin C. P. Wang2Guangdong Liu3Chao Zhang4College of Transportation and Civil Engineering, Fujian Agriculture and Forestry University, Fuzhou 350002, ChinaCollege of Transportation and Civil Engineering, Fujian Agriculture and Forestry University, Fuzhou 350002, ChinaSchool of Civil and Environmental Engineering, Oklahoma State University, Stillwater, OK 74078, USAFujian Provincial Expressway Technology Consulting Co., Ltd. Fuzhou 350002, ChinaFujian Provincial Expressway Technology Consulting Co., Ltd. Fuzhou 350002, ChinaGrooving is widely used to improve airport runway pavement skid resistance during wet weather. However, runway grooves deteriorate over time due to the combined effects of traffic loading, climate, and weather, which brings about a potential safety risk at the time of the aircraft takeoff and landing. Accordingly, periodic measurement and evaluation of groove performance are critical for runways to maintain adequate skid resistance. Nevertheless, such evaluation is difficult to implement due to the lack of sufficient technologies to identify shallow or worn grooves and slab joints. This paper proposes a new strategy to automatically identify airport runway grooves and slab joints using high resolution laser profiling data. First, K-means clustering based filter and moving window traversal algorithm are developed to locate the deepest point of the potential dips (including noises, true grooves, and slab joints). Subsequently the improved moving average filter and traversal algorithms are used to determine the left and right endpoint positions of each identified dip. Finally, the modified heuristic method is used to separate out slab joints from the identified dips, and then the polynomial support vector machine is introduced to distinguish out noises from the candidate grooves (including noises and true grooves), so that PCC slab-based runway safety evaluation can be performed. The performance of the proposed strategy is compared with that of the other two methods, and findings indicate that the new method is more powerful in runway groove and joint identification, with the F-measure score of 0.98. This study would be beneficial in airport runway groove safety evaluation and the subsequent maintenance and rehabilitation of airport runway.http://www.mdpi.com/1424-8220/18/8/2713airport runwayK-means clusteringgroove dimensionNaïve Bayes ClassifierSupport Vector Machinepoint laserprofiling data
collection DOAJ
language English
format Article
sources DOAJ
author Lin Li
Wenting Luo
Kelvin C. P. Wang
Guangdong Liu
Chao Zhang
spellingShingle Lin Li
Wenting Luo
Kelvin C. P. Wang
Guangdong Liu
Chao Zhang
Automatic Groove Measurement and Evaluation with High Resolution Laser Profiling Data
Sensors
airport runway
K-means clustering
groove dimension
Naïve Bayes Classifier
Support Vector Machine
point laser
profiling data
author_facet Lin Li
Wenting Luo
Kelvin C. P. Wang
Guangdong Liu
Chao Zhang
author_sort Lin Li
title Automatic Groove Measurement and Evaluation with High Resolution Laser Profiling Data
title_short Automatic Groove Measurement and Evaluation with High Resolution Laser Profiling Data
title_full Automatic Groove Measurement and Evaluation with High Resolution Laser Profiling Data
title_fullStr Automatic Groove Measurement and Evaluation with High Resolution Laser Profiling Data
title_full_unstemmed Automatic Groove Measurement and Evaluation with High Resolution Laser Profiling Data
title_sort automatic groove measurement and evaluation with high resolution laser profiling data
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2018-08-01
description Grooving is widely used to improve airport runway pavement skid resistance during wet weather. However, runway grooves deteriorate over time due to the combined effects of traffic loading, climate, and weather, which brings about a potential safety risk at the time of the aircraft takeoff and landing. Accordingly, periodic measurement and evaluation of groove performance are critical for runways to maintain adequate skid resistance. Nevertheless, such evaluation is difficult to implement due to the lack of sufficient technologies to identify shallow or worn grooves and slab joints. This paper proposes a new strategy to automatically identify airport runway grooves and slab joints using high resolution laser profiling data. First, K-means clustering based filter and moving window traversal algorithm are developed to locate the deepest point of the potential dips (including noises, true grooves, and slab joints). Subsequently the improved moving average filter and traversal algorithms are used to determine the left and right endpoint positions of each identified dip. Finally, the modified heuristic method is used to separate out slab joints from the identified dips, and then the polynomial support vector machine is introduced to distinguish out noises from the candidate grooves (including noises and true grooves), so that PCC slab-based runway safety evaluation can be performed. The performance of the proposed strategy is compared with that of the other two methods, and findings indicate that the new method is more powerful in runway groove and joint identification, with the F-measure score of 0.98. This study would be beneficial in airport runway groove safety evaluation and the subsequent maintenance and rehabilitation of airport runway.
topic airport runway
K-means clustering
groove dimension
Naïve Bayes Classifier
Support Vector Machine
point laser
profiling data
url http://www.mdpi.com/1424-8220/18/8/2713
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AT kelvincpwang automaticgroovemeasurementandevaluationwithhighresolutionlaserprofilingdata
AT guangdongliu automaticgroovemeasurementandevaluationwithhighresolutionlaserprofilingdata
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