© 2017 by the authors. In this paper, a deep learning model using a Recurrent Neural Network (RNN) was developed and employed to predict the injury severity of traffic accidents based on 1130 accident records that have occurred on the North-South Expressway (NSE), Malaysia over a six-year period from 2009 to 2015. Compared to traditional Neural Networks (NNs), the RNN method is more effective for sequential data, and is expected to capture temporal correlations among the traffic accident records. Several network architectures and configurations were tested through a systematic grid search to determine an optimal network for predicting the injury severity of traffic accidents. The selected network architecture comprised of a Long-Short Term ...
Traffic safety has always been an important issue in sustainable transportation development, and the...
Engineers and researchers in the automobile industry have tried to design and build safer automobile...
Machine-learning technology powers many aspects of modern society. Compared to the conventional mach...
In this paper, a deep learning model using a Recurrent Neural Network (RNN) was developed and employ...
In this paper, a deep learning model using a Recurrent Neural Network (RNN) was developed and employ...
© Springer Nature Singapore Pte Ltd. 2019. This study investigates the power of deep learning in pre...
Future prediction is a fascinating topic for human endeavor and is identified as a critical tool in ...
Traffic accidents pose a significant public safety concern, leading to numerous injuries and fatalit...
Traffic accidents on highways are a leading cause of death despite the development of traffic safety...
Abstract —Road accidents are an inevitable part of everyday life. In most daily news reports, there ...
A better understanding of circumstances contributing to the severity outcome of traffic crashes is a...
The paper introduces a new dataset to assess the performance of machine learning algorithms in the p...
Traffic accidents are the leading causes beyond deathit is the concern of most countries that strive...
Traffic accidents impose significant problems in our daily life due to the huge social, environmenta...
Traffic accidents are a major concern worldwide, since they have a significant impact on people’s sa...
Traffic safety has always been an important issue in sustainable transportation development, and the...
Engineers and researchers in the automobile industry have tried to design and build safer automobile...
Machine-learning technology powers many aspects of modern society. Compared to the conventional mach...
In this paper, a deep learning model using a Recurrent Neural Network (RNN) was developed and employ...
In this paper, a deep learning model using a Recurrent Neural Network (RNN) was developed and employ...
© Springer Nature Singapore Pte Ltd. 2019. This study investigates the power of deep learning in pre...
Future prediction is a fascinating topic for human endeavor and is identified as a critical tool in ...
Traffic accidents pose a significant public safety concern, leading to numerous injuries and fatalit...
Traffic accidents on highways are a leading cause of death despite the development of traffic safety...
Abstract —Road accidents are an inevitable part of everyday life. In most daily news reports, there ...
A better understanding of circumstances contributing to the severity outcome of traffic crashes is a...
The paper introduces a new dataset to assess the performance of machine learning algorithms in the p...
Traffic accidents are the leading causes beyond deathit is the concern of most countries that strive...
Traffic accidents impose significant problems in our daily life due to the huge social, environmenta...
Traffic accidents are a major concern worldwide, since they have a significant impact on people’s sa...
Traffic safety has always been an important issue in sustainable transportation development, and the...
Engineers and researchers in the automobile industry have tried to design and build safer automobile...
Machine-learning technology powers many aspects of modern society. Compared to the conventional mach...