Parameter estimation for traffic noise models using a harmony search algorithm

Deok Soon An, Young Chan Suh, Sungho Mun, Byung Sik Ohm

Research output: Contribution to journalArticlepeer-review

1 Scopus citations

Abstract

A technique has been developed for predicting road traffic noise for environmental assessment, taking into account traffic volume as well as road surface conditions. The ASJ model (ASJ Prediction Model for Road Traffic Noise, 1999), which is based on the sound power level of the noise emitted by the interaction between the road surface and tires, employs regression models for two road surface types: dense-graded asphalt (DGA) and permeable asphalt (PA). However, these models are not applicable to other types of road surfaces. Accordingly, this paper introduces a parameter estimation procedure for ASJ-based noise prediction models, utilizing a harmony search (HS) algorithm. Traffic noise measurement data for four different vehicle types were used in the algorithm to determine the regression parameters for several road surface types. The parameters of the traffic noise prediction models were evaluated using another measurement set, and good agreement was observed between the predicted and measured sound power levels.

Original languageEnglish
Article number953641
JournalJournal of Applied Mathematics
Volume2013
DOIs
StatePublished - 2013

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