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Hassan Khotanlou

Hassan Khotanlou

Academic rank: Professor
ORCID:
Education: PhD.
ScopusId: 14015911600
HIndex:
Faculty: Faculty of Engineering
Address:
Phone:

Research

Title
Development of a Noise Prediction Model Based on Advanced Fuzzy Approaches in Typical Industrial Workrooms
Type
JournalPaper
Keywords
Noise Prediction Model Advanced Fuzzy Industrial Workrooms
Year
2014
Journal journal of research in health science
DOI
Researchers mohsen Aliabadi ، Rostam Golmohammadi ، Hassan Khotanlou ، Muharram Mansoorizadeh ، Amir Salarpour

Abstract

Background: Noise prediction is considered to be the best method for evaluating costpreventative noise controls in industrial workrooms. One of the most important issues is the development of accurate models for analysis of the complex relationships among acoustic features affecting noise level in workrooms. In this study, advanced fuzzy approaches were employed to develop relatively accurate models for predicting noise in noisy industrial workrooms. Methods: The data were collected from 60 industrial embroidery workrooms in the Khorasan Province, East of Iran. The main acoustic and embroidery process features that influence the noise were used to develop prediction models using MATLAB software. Multiple regression technique was also employed and its results were compared with those of fuzzy approaches. Results: Prediction errors of all prediction models based on fuzzy approaches were within the acceptable level (lower than one dB). However, Neuro-fuzzy model (RMSE=0.53dB and R2=0.88) could slightly improve the accuracy of noise prediction compared with generate fuzzy model. Moreover, fuzzy approaches provided more accurate predictions than did regression technique. Conclusions: The developed models based on fuzzy approaches as useful prediction tools give professionals the opportunity to have an optimum decision about the effectiveness of acoustic treatment scenarios in embroidery workrooms.