Abstract

Wireless communications in aircraft cabin environments have drawn widespread attention with the increase of application requirements. To ensure reliable and stable in-cabin communications, the investigation of channel parameters such as path loss is necessary. In this paper, four machine learning methods, including back propagation neural network (BPNN), support vector regression (SVR), random forest, and AdaBoost, are used to build path loss prediction models for an MD-82 aircraft cabin. Firstly, machine-learning-based models are designed to predict the path loss values at different locations at a fixed frequency. It is shown that these models fit the measured data well, e.g., at 2.4 GHz central frequency the root mean square errors (RMSEs) of BPNN, SVR, random forest, and AdaBoost predictors are 1.90 dB, 2.20 dB, 1.76 dB, and 2.12 dB. Subsequent research is engaged to forecast path loss at a new frequency based on available information at known frequencies. Additionally, to solve the data limitation problem at the new frequency, we propose a path loss prediction scheme combining empirical models and machine-learning-based models. This scheme uses estimated values generated by the empirical model according to prior information to expand the training set. To verify the performance of this scheme, measured samples at 2.4 GHz and 3.52 GHz, as well as samples generated by the empirical model are employed as the training set for the path loss prediction at 5.8 GHz. The RMSEs of BPNN, SVR, random forest, and AdaBoost models are 2.49 dB, 2.78 dB, 2.54 dB, and 3.76 dB. In contrast, without samples generated by the empirical model, the RMSEs of those models are 3.84 dB, 4.94 dB, 6.57 dB, and 6.77 dB. Results show that the proposed data expansion scheme improves prediction performance when there are few measurement samples at the new frequency.

Highlights

  • The key component of the fifth-generation (5G) wireless communication is unlimited access to information and the sharing of data anywhere and anytime for anyone and anything [1]

  • As one of the most fundamental channel parameters, path loss plays an important role in the planning, evaluation, and optimization of wireless communication networks

  • For the in-cabin environment, a path loss prediction modeling method based on support vector machine (SVM) was proposed in [20]

Read more

Summary

INTRODUCTION

The key component of the fifth-generation (5G) wireless communication is unlimited access to information and the sharing of data anywhere and anytime for anyone and anything [1]. J. Wen et al.: Path Loss Prediction Based on Machine Learning Methods for Aircraft Cabin Environments signal-to-noise ratio (SNR), and carrier-to-interference (C/I) ratio [4]. For the in-cabin environment, a path loss prediction modeling method based on support vector machine (SVM) was proposed in [20]. We evaluate the feasibility of different machine-learning-based models for predicting the in-cabin path loss. 1) In an aircraft cabin environment, we verified the feasibility of different path loss prediction methods by comparing with the measured data. 3) To further improve the prediction accuracy of the path loss values at a new frequency, we propose a data expansion scheme, which combines machine learning and empirical models to expand the training set. J. Wen et al.: Path Loss Prediction Based on Machine Learning Methods for Aircraft Cabin Environments TABLE 1. It is worth noting that, the aircraft was parked and no passengers were in the cabin, so the environment can be viewed as quasistationary during the measurement campaigns

DATA POST-PROCESSING
PROCESSING BEFORE MODEL TRAINING
PREDICTION PERFORMANCE IN THE SPATIAL DOMAIN
Findings
PREDICTION PERFORMANCE OF DATA EXPANSION METHOD

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call

Disclaimer: All third-party content on this website/platform is and will remain the property of their respective owners and is provided on "as is" basis without any warranties, express or implied. Use of third-party content does not indicate any affiliation, sponsorship with or endorsement by them. Any references to third-party content is to identify the corresponding services and shall be considered fair use under The CopyrightLaw.