Due to the complexity of aviation safety operations, the number of flight incidents continues to rise. The Aviation Safety Reporting System (ASRS) contains the largest collection of such incidents. Efficient and effective analysis of these incidents remains a challenge. This paper proposes a new approach to analyze aviation safety records using deep learning methods to improve incident classification. The proposed approach, CNN-LSTM, combines the characteristics of convolutional neural network (CNN) and long short-term memory (LSTM) neural network, and a distributed computing method to model aviation safety data. The five machine learning methods Logistic Regression, Naive Bayes, Random Forest, Support Vector Machine, Multi-layer Perceptron...
In this research, two multiclass models have been developed and implemented, namely, a standard long...
With the growth in commercial aviation traffic and the need for improved environmental performance, ...
Population density in major tourist centers of the world increases significantly during the tourist ...
Aviation is a complicated transportation system, and safety is of paramount importance because aircr...
Aviation is a complicated transportation system, and safety is of paramount importance because aircr...
Safety occurrences in the aviation industry are nowadays commonly regarded as the outcome of a compl...
With the recent advancements in Deep Learning methods, the ability to model large complex heterogene...
The safety concept primarily examines the most fatal (resulting in dead passengers) accidents of avi...
This paper investigates the use of data streaming analytics to better predict the presence of human ...
This paper investigates the use of data streaming analytics to better predict the presence of human ...
This paper investigates the use of data streaming analytics to better predict the presence of human ...
The aim of this work is to investigate the possibility of using machine learning (ML) methods in ord...
The importance of Human Factor (HF) is long been recognized in aviation industry, in order to deeply...
In recent years, the use of data mining and machine learning techniques for safety analysis, incide...
With the fabulous development of air traffic request expected throughout the following two decades, ...
In this research, two multiclass models have been developed and implemented, namely, a standard long...
With the growth in commercial aviation traffic and the need for improved environmental performance, ...
Population density in major tourist centers of the world increases significantly during the tourist ...
Aviation is a complicated transportation system, and safety is of paramount importance because aircr...
Aviation is a complicated transportation system, and safety is of paramount importance because aircr...
Safety occurrences in the aviation industry are nowadays commonly regarded as the outcome of a compl...
With the recent advancements in Deep Learning methods, the ability to model large complex heterogene...
The safety concept primarily examines the most fatal (resulting in dead passengers) accidents of avi...
This paper investigates the use of data streaming analytics to better predict the presence of human ...
This paper investigates the use of data streaming analytics to better predict the presence of human ...
This paper investigates the use of data streaming analytics to better predict the presence of human ...
The aim of this work is to investigate the possibility of using machine learning (ML) methods in ord...
The importance of Human Factor (HF) is long been recognized in aviation industry, in order to deeply...
In recent years, the use of data mining and machine learning techniques for safety analysis, incide...
With the fabulous development of air traffic request expected throughout the following two decades, ...
In this research, two multiclass models have been developed and implemented, namely, a standard long...
With the growth in commercial aviation traffic and the need for improved environmental performance, ...
Population density in major tourist centers of the world increases significantly during the tourist ...