ARCnet: A Multi-Feature-Based Auto Radio Check Model

Author:

Pan Weijun1,Wang Yidi1,Zhang Yumei1,Han Boyuan1

Affiliation:

1. College of Air Traffic Management, Civil Aviation Flight University of China, Guanghan 618307, China

Abstract

Radio checks serve as the foundation for ground-to-air communication. To integrate machine learning for automated and reliable radio checks, this study introduces an Auto Radio Check network (ARCnet), a novel algorithm for non-intrusive speech quality assessment in civil aviation, addressing the crucial need for dependable ground-to-air communication. By employing a multi-scale feature fusion approach, including the consideration of audio’s frequency domain, comprehensibility, and temporal information within the radio check scoring network, ARCnet integrates manually designed features with self-supervised features and utilizes a transformer network to enhance speech segment analysis. Utilizing the NISQA open-source dataset and the proprietary RadioCheckSpeech dataset, ARCnet demonstrates superior performance in predicting speech quality, showing a 12% improvement in both the Pearson correlation coefficient and root mean square error (RMSE) compared to existing models. This research not only highlights the significance of applying multi-scale attributes and deep neural network parameters in speech quality assessment but also emphasizes the crucial role of the temporal network in capturing the nuances of voice data. Through a comprehensive comparison of the ARCnet approach to traditional methods, this study underscores its innovative contribution to enhancing communication efficiency and safety in civil aviation.

Funder

the National Natural Science Foundation of China

National Key R&D Program of China

Safety Capacity Building Project of Civil Aviation Administration of China

the Fundamental Research Funds for the Central Universities

Publisher

MDPI AG

Reference33 articles.

1. ICAO, D. (2024, May 06). 4444 ATM/501. Procedures for Air Navigation Services Traffic Management. Available online: https://www.ealts.com/documents/ICAO%20Doc%204444%20Air%20Traffic%20Management.pdf.

2. Doc, I. (2024, May 06). 9432 An/925. Manual of Radiotelephony. Available online: https://www.ealts.com/documents/ICAO%20Doc%209432%20Manual%20of%20Radiotelephony%20(4th%20ed.%202007).pdf.

3. Doc, I. (2024, May 06). 9870 AN/463. Manual on the Prevention of Runway Incursions. Available online: https://www.icao.int/safety/RunwaySafety/Documents%20and%20Toolkits/ICAO_manual_prev_RI.pdf.

4. Shattil, S., Alagar, A., Wu, Z., and Nassar, C. (2000, January 18–22). Wireless Communication System Design for Airport Surface Management .1. Airport Ramp Measurements at 5.8 GHz. Proceedings of the 2000 IEEE International Conference on Communications. ICC 2000. Global Convergence through Communications. Conference Record, New Orleans, LA, USA.

5. Pinska-Chauvin, E., Helmke, H., Dokic, J., Hartikainen, P., Ohneiser, O., and Lasheras, R.G. (2023). Ensuring Safety for Artificial-Intelligence-Based Automatic Speech Recognition in Air Traffic Control Environment. Aerospace, 10.

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