Assessing Automatic Dependent Surveillance-Broadcast Signal Quality for Airplane Departure Using Random Forest Algorithm

Journal Title: Mechatronics and Intelligent Transportation Systems - Year 2023, Vol 2, Issue 2

Abstract

This study aims to assess the safety level of the Automatic Dependent Surveillance-Broadcast (ADS-B) signal quality during airplane departures at Sultan Mahmud Badaruddin II Airport. The Aero-track application was utilized to monitor commercial aircraft departures and collect observation data. The collected data underwent processing using data analysis algorithms and labeling processes, resulting in a comprehensive dataset for evaluating ADS-B signal quality. Signal quality was categorized into four levels, and a model was built using the Random Forest algorithm, achieving an accuracy of 99%. Comparative analysis with SVM and Naive Bayes algorithms showed accuracy values of 93% and 97% respectively. Consequently, the Random Forest Model was chosen for estimating ADS-B signal quality during commercial aircraft takeoff and landing.

Authors and Affiliations

Rani Silvani Yousnaidi, Rossi Passarella, Rizki Kurniati, Osvari Arsalan, Aditya, Indra Gifari Afriansyah, Muhammad Rifqi Fathan, Marsella Vindriani

Keywords

Related Articles

Enhancing Occluded Pedestrian Re-Identification with the MotionBlur Data Augmentation Module

In the field of pedestrian re-identification (ReID), the challenge of matching occluded pedestrian images with holistic images across different camera views is significant. Traditional approaches have predominantly addre...

Self-Tuning Parameters of a Maglev Control System Based on Q-Learning

Maglev transportation, as an innovative mode of rail transit, is regarded as an ideal future transportation system due to its wide speed range, low noise, and strong climbing ability. However, the maglev control system f...

Optimizing Vehicle Collision Safety: A Two-Mass Model with Dual Springs and Dampers for Accurate Crash Dynamics Prediction

A comprehensive analysis of vehicle collision dynamics is presented using a two-mass model that simulates the impact of a vehicle against a rigid barrier. The model incorporates dual springs and dampers to examine the in...

Optimizing Electric Vehicle Charging Infrastructure: A Site Selection Strategy for Ludhiana, India

This study investigates the spatial distribution and potential expansion of electric vehicle (EV) charging infrastructure in Ludhiana, India, with a focus on optimizing site selection to accommodate increasing demand. A...

Evaluating the Road Environment Through the Lens of Professional Drivers: A Traffic Safety Perspective

In the context of traffic safety, the interplay between the road environment and the human factor emerges as a critical determinant of the severity of road crash consequences. This study was designed to explore the perce...

Download PDF file
  • EP ID EP732236
  • DOI https://doi.org/10.56578/mits020202
  • Views 36
  • Downloads 0

How To Cite

Rani Silvani Yousnaidi, Rossi Passarella, Rizki Kurniati, Osvari Arsalan, Aditya, Indra Gifari Afriansyah, Muhammad Rifqi Fathan, Marsella Vindriani (2023). Assessing Automatic Dependent Surveillance-Broadcast Signal Quality for Airplane Departure Using Random Forest Algorithm. Mechatronics and Intelligent Transportation Systems, 2(2), -. https://europub.co.uk./articles/-A-732236