| Literature DB >> 32344805 |
Sandra Roger1, Carmen Botella1, Juan J Pérez-Solano1, Joaquin Perez2.
Abstract
Vehicle platoons involve groups of vehicles travelling together at a constant inter-vehicle distance, with different common benefits such as increasing road efficiency and fuel saving. Vehicle platooning requires highly reliable wireless communications to keep the group structure and carry out coordinated maneuvers in a safe manner. Focusing on infrastructure-assisted cellular vehicle to anything (V2X) communications, the amount of control information to be exchanged between each platoon vehicle and the base station is a critical factor affecting the communication latency. This paper exploits the particular structure and characteristics of platooning to decrease the control information exchange necessary for the channel acquisition stage. More precisely, a scheme based on radio environment map (REM) reconstruction is proposed, where geo-localized received power values are available at only a subset of platoon vehicles, while large-scale channel parameters estimates for the rest of platoon members are provided through the application ofEntities:
Keywords: 5G; Kriging; channel acquisition; intelligent transportation systems; radio environment maps; spatial interpolation; vehicular communications
Mesh:
Year: 2020 PMID: 32344805 PMCID: PMC7249169 DOI: 10.3390/s20092440
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1Scenarios under consideration comprising a platoon of vehicles assisted by a base station (BS). (a) Asymmetric case, where the BS is aligned with the antenna of the platoon leader. (b) Symmetric case, where the line connecting the BS with the platoon leader forms an angle with the perpendicular line, so that the BS is aligned with the platoon middle point.
Figure 2Example of the proposed reconstruction architectures in a platoon of five vehicles. (a) Centralized, (b) distributed. Vehicles 1, 3 and 5 access actual radio environment map (REM) values, while estimates are needed for vehicles 2 and 4.
Figure 3Example of spherical, exponential and Gaussian semivariogram modeling fitting versus empirical semivariogram.
Semivariogram modeling (mean square error (MSE) and Akaike information criterion (AIC)) in the symmetric case for and . Minimums are highlighted in violet color.
| Spherical | Exponential | Gaussian | ||||
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| 2.59 | 5.56 | 4.15 | 6.97 | 4.09 | 6.93 |
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| 2.43 | 4.01 | 4.22 | 6.21 | 3.93 | 5.93 |
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| 2.08 | 1.61 | 3.64 | 4.41 | 3.31 | 3.94 |
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| 1.47 | −2.44 | 2.94 | 1.72 | 2.59 | 0.96 |
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| 0.90 | −8.36 | 2.23 | −2.00 | 1.95 | −2.95 |
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| 0.54 | −15.57 | 1.76 | −6.11 | 1.43 | −7.77 |
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| 0.31 | −24.32 | 1.46 | −10.37 | 1.14 | −12.60 |
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| 122.49 | 17.13 | 248.56 | 19.25 | 226.98 | 18.98 |
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| 127.76 | 19.86 | 260.69 | 22.71 | 230.58 | 22.22 |
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| 115.53 | 21.70 | 229.26 | 25.13 | 205.41 | 24.58 |
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| 87.75 | 22.10 | 194.89 | 26.88 | 174.08 | 26.21 |
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| 60.08 | 21.05 | 158.15 | 27.82 | 138.80 | 26.91 |
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| 42.53 | 19.37 | 133.84 | 28.54 | 111.24 | 27.06 |
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| 32.35 | 17.51 | 118.10 | 29.17 | 94.52 | 27.16 |
Semivariogram modeling (MSE and AIC) in the asymmetric case for and . Minimums are highlighted in violet color.
| Spherical | Exponential | Gaussian | ||||
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| 18.07 | 11.37 | 14.82 | 10.79 | 4.98 | 7.52 |
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| 20.00 | 12.44 | 17.79 | 11.97 | 5.08 | 6.96 |
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| 19.83 | 12.89 | 18.06 | 12.42 | 4.92 | 5.92 |
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| 19.10 | 12.95 | 17.69 | 12.49 | 3.90 | 3.42 |
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| 18.10 | 12.65 | 16.67 | 12.07 | 2.64 | −0.83 |
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| 17.29 | 12.17 | 15.79 | 11.44 | 1.58 | −6.98 |
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| 16.18 | 11.28 | 15.71 | 11.01 | 0.80 | −15.78 |
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| 278.89 | 19.60 | 228.51 | 19.00 | 41.83 | 13.91 |
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| 292.43 | 23.17 | 261.93 | 22.73 | 35.65 | 14.75 |
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| 296.11 | 26.41 | 269.92 | 25.94 | 31.15 | 15.15 |
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| 293.34 | 29.34 | 272.68 | 28.90 | 22.70 | 13.98 |
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| 291.02 | 32.10 | 275.34 | 31.70 | 14.57 | 11.13 |
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| 285.06 | 34.59 | 268.62 | 34.11 | 9.38 | 7.27 |
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| 284.00 | 37.10 | 269.47 | 36.59 | 6.37 | 2.89 |
Figure 4Optimal patterns of vehicles’ positions with available REM values that achieve the minimum MSE of REM reconstruction for different values of P in a platoon with .
Figure 5Path-loss and shadowing estimation results versus shadowing correlation distance in the symmetric case with m.
Figure 6Minimum MSE of path-loss and shadowing estimation versus shadowing correlation distance in the symmetric case with m.
Figure 7Minimum MSE of path-loss and shadowing estimation versus shadowing correlation distance in the asymmetric case with m.
Figure 8Estimated cost versus number of vehicles for the centralized (symmetric and asymmetric) and distributed REM reconstruction schemes with m and m.