Assessment of Urban Traffic Environment Quality Based on Attribute Mathematical Theory
According to attribute mathematical theory, attribute recognition model in the assessment of urban traffic environment quality is established in this paper. Firstly, an index system is developed for assessing urban traffic environment according to automobile exhaust pollution and traffic noise; secondly, attribute measurement functions are rigorously constructed to compute attribute measurement of single index, as well as index weight is determined to compute synthetic attribute measurement; thirdly, a confidence criterion is established on the basis of the ordered evaluation sets; finally, An example is assessed to demonstrate the application of the proposed model and method, and the assessment results agree well with that of the matter-element method, which validates that the proposed model is feasible, effective and reliable in assessing urban traffic environment. The study indicates that the model is forthright in theory, simple and convenient in method, so it is applicable in practice.
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Supplemental Notes:
- © 2009 American Society of Civil Engineers.
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Corporate Authors:
American Society of Civil Engineers
1801 Alexander Bell Drive
Reston, VA United States 20191-4400 -
Authors:
- Zhou, Bin
- Wen, Changping
- Zhang, Keneng
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Conference:
- Second International Conference on Transportation Engineering
- Location: Chengdu , China
- Date: 2009-7-25 to 2009-7-27
- Publication Date: 2009-7
Language
- English
Media Info
- Media Type: Web
- Features: References;
- Pagination: pp 586-591
- Monograph Title: International Conference on Transportation Engineering 2009
Subject/Index Terms
- TRT Terms: Environmental quality; Exhaust gases; Mathematical models; Measurement; Pollution; Traffic noise; Urban areas
- Geographic Terms: China
- Subject Areas: Environment; Highways; I15: Environment;
Filing Info
- Accession Number: 01532463
- Record Type: Publication
- ISBN: 9780784410394
- Files: TRIS, ASCE
- Created Date: Jul 31 2014 9:15AM