Machine Learning Based Channel Modeling for Vehicular Visible Light
Communication
- URL: http://arxiv.org/abs/2002.03774v1
- Date: Mon, 3 Feb 2020 12:38:57 GMT
- Title: Machine Learning Based Channel Modeling for Vehicular Visible Light
Communication
- Authors: Bugra Turan and Sinem Coleri
- Abstract summary: Current Optical Wireless Communication (OWC) propagation channel characterization plays a key role on the design and performance analysis of Vehicular Visible Light Communication (VVLC) systems.
Current OWC channel models based on deterministic synthesis and mobility induced methods, fail to address ambient light, optical turbulence and road reflection effects on channel characterization.
Alternative machine learning schemes, considering ambient light, optical turbulence, road reflection effects in addition to intervehicular distance and geometry, are proposed to obtain accurate VVLC channel loss and channel frequency response (CFR)
- Score: 7.716156977428555
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Optical Wireless Communication (OWC) propagation channel characterization
plays a key role on the design and performance analysis of Vehicular Visible
Light Communication (VVLC) systems. Current OWC channel models based on
deterministic and stochastic methods, fail to address mobility induced ambient
light, optical turbulence and road reflection effects on channel
characterization. Therefore, alternative machine learning (ML) based schemes,
considering ambient light, optical turbulence, road reflection effects in
addition to intervehicular distance and geometry, are proposed to obtain
accurate VVLC channel loss and channel frequency response (CFR). This work
demonstrates synthesis of ML based VVLC channel model frameworks through multi
layer perceptron feed-forward neural network (MLP), radial basis function
neural network (RBF-NN) and Random Forest ensemble learning algorithms.
Predictor and response variables, collected through practical road
measurements, are employed to train and validate proposed models for various
conditions. Additionally, the importance of different predictor variables on
channel loss and CFR is assessed, normalized importance of features for
measured VVLC channel is introduced. We show that RBF-NN, Random Forest and MLP
based models yield more accurate channel loss estimations with 3.53 dB, 3.81
dB, 3.95 dB root mean square error (RMSE), respectively, when compared to
fitting curve based VVLC channel model with 7 dB RMSE. Moreover, RBF-NN and MLP
models are demonstrated to predict VVLC CFR with respect to distance, ambient
light and receiver inclination angle predictor variables with 3.78 dB and 3.60
dB RMSE respectively.
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