Modelling and evaluation of light railway system's noise using neural predictors

作者:Erkaya Selcuk*; Geymen Abdurrahman; Bostanci Bulent
来源:Journal of Environmental Health Science and Engineering, 2015, 13(1): 20.
DOI:10.1186/s40201-015-0173-3

摘要

Background: Noise is defined as a sound or series of sounds that are considered to be invasive, irritating, objectionable and disruptive to the quality of daily life. Noise is one of the environmental pollutants, and in cities it is usually originated from road traffic, railway traffic, airports, industry etc. The tram is generally considered as environmentally friendly, namely non-polluting and silent. However complaints from residents living along the tramway lines prove that it may sometimes cause annoyance. In this study, a Global Pointing System (GPS) receiver for determining the sampling locations and a frequency based noise measurement system for collecting the noise data are used to analyse the noise level in the city centre. Both environmental (background) and tram noises are measured. Results: Three types of neural networks are used to predict the noises of the tram and environment. The results of three approaches indicate that the proposed neural network with Radial Basis RBF) has superior performance to predict the noises of the tram and environment. Conclusions: For making a decision about transportation planning, this network model can help urban planners for evaluating and/ or isolating the tram noise in terms of human health.

  • 出版日期2015-3-17