The article presents the possibility of applying artificial intelligence to forecast necessary repairs on ordinary railway switches. Railway switch data from Katowice and Katowice Szopienice Północne Stations were used to model neural structures. Using the prepared data set (changes in values of nominal dimensions in characteristic sections of 15 railway switches), we created three variants of railway switch classifications. Then, with the results, we determined the values of classifiers and the low mean absolute error, as well as compared charts of effectivity. It was calculated that the best solution by which to evaluate necessary repairs in railway switches was, in part, to repair the crossing nose. It was assessed that a structure with ...
Track geometry degradation is a function of several interacting factors (e.g. traffic, environmental...
A method that uses machine learning to detect and localize damage in railway bridges under various e...
Over the past two decades. Artificial Neural Network (ANN) techniques have been used in many fields ...
The article presents the possibility of applying artificial intelligence to forecast necessary repai...
In recent years, railway transport has been preferred intensively in local and intercity freight and...
The diagnostics of track superstructure, which involves geometric measurements, direct observation a...
The switch and crossing (S&C) is one of the most important parts of the railway infrastructure n...
Railway switches are a crucial part of the railway system but prone to failures. Nowadays a common a...
This paper proposes an application of Artificial Neural Networks (ANN) to predict the wheel-rail imp...
In this thesis, a method to monitor the health condition of railway crossings based on vibration dat...
The increase in number of passengers and tramcars will wear down existing rail structures faster. Th...
Broken rails are the leading cause of freight train derailments in the United States. The American r...
The share of rail transport in world transport continues to rise. As the number of trains increases,...
The main goal of this paper is to model track geometry deterioration using a comprehensive field inv...
Railway switches are crucial for normal operation and during disruptions of the railroad system sinc...
Track geometry degradation is a function of several interacting factors (e.g. traffic, environmental...
A method that uses machine learning to detect and localize damage in railway bridges under various e...
Over the past two decades. Artificial Neural Network (ANN) techniques have been used in many fields ...
The article presents the possibility of applying artificial intelligence to forecast necessary repai...
In recent years, railway transport has been preferred intensively in local and intercity freight and...
The diagnostics of track superstructure, which involves geometric measurements, direct observation a...
The switch and crossing (S&C) is one of the most important parts of the railway infrastructure n...
Railway switches are a crucial part of the railway system but prone to failures. Nowadays a common a...
This paper proposes an application of Artificial Neural Networks (ANN) to predict the wheel-rail imp...
In this thesis, a method to monitor the health condition of railway crossings based on vibration dat...
The increase in number of passengers and tramcars will wear down existing rail structures faster. Th...
Broken rails are the leading cause of freight train derailments in the United States. The American r...
The share of rail transport in world transport continues to rise. As the number of trains increases,...
The main goal of this paper is to model track geometry deterioration using a comprehensive field inv...
Railway switches are crucial for normal operation and during disruptions of the railroad system sinc...
Track geometry degradation is a function of several interacting factors (e.g. traffic, environmental...
A method that uses machine learning to detect and localize damage in railway bridges under various e...
Over the past two decades. Artificial Neural Network (ANN) techniques have been used in many fields ...