GeSi Nanocrystals Photo-Sensors for Optical Detection of Slippery Road Conditions Combining Two Classification Algorithms
One of the key elements in assessing traffic safety on the roads is the detection of asphalt conditions. In this paper, we propose an optical sensor based on GeSi nanocrystals embedded in SiO<sub>2</sub> matrix that discriminates between different slippery road conditions (wet and icy as...
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doaj-22fac136ed3f4edf9a60939ff76c1ff42020-11-25T04:10:50ZengMDPI AGSensors1424-82202020-11-01206395639510.3390/s20216395GeSi Nanocrystals Photo-Sensors for Optical Detection of Slippery Road Conditions Combining Two Classification AlgorithmsCatalin Palade0Ionel Stavarache1Toma Stoica2Magdalena Lidia Ciurea3National Institute of Materials Physics, 405A Atomistilor Street, 077125 Magurele, RomaniaNational Institute of Materials Physics, 405A Atomistilor Street, 077125 Magurele, RomaniaNational Institute of Materials Physics, 405A Atomistilor Street, 077125 Magurele, RomaniaNational Institute of Materials Physics, 405A Atomistilor Street, 077125 Magurele, RomaniaOne of the key elements in assessing traffic safety on the roads is the detection of asphalt conditions. In this paper, we propose an optical sensor based on GeSi nanocrystals embedded in SiO<sub>2</sub> matrix that discriminates between different slippery road conditions (wet and icy asphalt and asphalt covered with dirty ice) in respect to dry asphalt. The sensor is fabricated by magnetron sputtering deposition followed by rapid thermal annealing. The photodetector has spectral sensitivity in the 360–1350 nm range and the signal-noise ratio is 10<sup>2</sup>–10<sup>3</sup>. The working principle of sensor setup for detection of road conditions is based on the photoresponse (photocurrent) of the sensor under illumination with the light reflected from the asphalt having different reflection coefficients for dry, wet, icy and dirty ice coatings. For this, the asphalt is illuminated sequentially with 980 and 1064 nm laser diodes. A database of these photocurrents is obtained for the different road conditions. We show that the use of both k-nearest neighbor and artificial neural networks classification algorithms enables a more accurate recognition of the class corresponding to a specific road state than in the case of using only one algorithm. This is achieved by comparing the new output sensor data with previously classified data for each algorithm and then by performing an intersection of the algorithms’ results.https://www.mdpi.com/1424-8220/20/21/6395optical sensorphotodetection of reflected light from asphaltroad conditions detection sensorroad safetysmart roadsk-nearest neighbor algorithm |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Catalin Palade Ionel Stavarache Toma Stoica Magdalena Lidia Ciurea |
spellingShingle |
Catalin Palade Ionel Stavarache Toma Stoica Magdalena Lidia Ciurea GeSi Nanocrystals Photo-Sensors for Optical Detection of Slippery Road Conditions Combining Two Classification Algorithms Sensors optical sensor photodetection of reflected light from asphalt road conditions detection sensor road safety smart roads k-nearest neighbor algorithm |
author_facet |
Catalin Palade Ionel Stavarache Toma Stoica Magdalena Lidia Ciurea |
author_sort |
Catalin Palade |
title |
GeSi Nanocrystals Photo-Sensors for Optical Detection of Slippery Road Conditions Combining Two Classification Algorithms |
title_short |
GeSi Nanocrystals Photo-Sensors for Optical Detection of Slippery Road Conditions Combining Two Classification Algorithms |
title_full |
GeSi Nanocrystals Photo-Sensors for Optical Detection of Slippery Road Conditions Combining Two Classification Algorithms |
title_fullStr |
GeSi Nanocrystals Photo-Sensors for Optical Detection of Slippery Road Conditions Combining Two Classification Algorithms |
title_full_unstemmed |
GeSi Nanocrystals Photo-Sensors for Optical Detection of Slippery Road Conditions Combining Two Classification Algorithms |
title_sort |
gesi nanocrystals photo-sensors for optical detection of slippery road conditions combining two classification algorithms |
publisher |
MDPI AG |
series |
Sensors |
issn |
1424-8220 |
publishDate |
2020-11-01 |
description |
One of the key elements in assessing traffic safety on the roads is the detection of asphalt conditions. In this paper, we propose an optical sensor based on GeSi nanocrystals embedded in SiO<sub>2</sub> matrix that discriminates between different slippery road conditions (wet and icy asphalt and asphalt covered with dirty ice) in respect to dry asphalt. The sensor is fabricated by magnetron sputtering deposition followed by rapid thermal annealing. The photodetector has spectral sensitivity in the 360–1350 nm range and the signal-noise ratio is 10<sup>2</sup>–10<sup>3</sup>. The working principle of sensor setup for detection of road conditions is based on the photoresponse (photocurrent) of the sensor under illumination with the light reflected from the asphalt having different reflection coefficients for dry, wet, icy and dirty ice coatings. For this, the asphalt is illuminated sequentially with 980 and 1064 nm laser diodes. A database of these photocurrents is obtained for the different road conditions. We show that the use of both k-nearest neighbor and artificial neural networks classification algorithms enables a more accurate recognition of the class corresponding to a specific road state than in the case of using only one algorithm. This is achieved by comparing the new output sensor data with previously classified data for each algorithm and then by performing an intersection of the algorithms’ results. |
topic |
optical sensor photodetection of reflected light from asphalt road conditions detection sensor road safety smart roads k-nearest neighbor algorithm |
url |
https://www.mdpi.com/1424-8220/20/21/6395 |
work_keys_str_mv |
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