Health Monitoring Of National Highway Network Using HDM-4 and Genetic Programming To Develop Road Maintenance Management System
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Abstract
With the increasing traffic loads on National highways of India, pavements are
deteriorating at a faster rate leading to premature failure. In addition to this lack of
scientific road management system leads to lower levels of serviceability and unreliable
road network in the long term. Therefore, in order to maintain the highway network in
good condition the road administration should focus on long lasting and economical
road maintenance solutions.
The research study focuses on the development of road management system for high
volume roads using calibrated HDM-4 model. Long term pavement performance under
various maintenance strategies has been measured in terms of roughness progression
using HDM. The most appropriate maintenance strategy has been identified using the
life-cycle cost analysis based on NPV/COST ratio parameter. GP system has been
configured to develop four distress prediction models i.e., roughness, ravelling, cracking
and rutting. Adequacy of GP models has been measured using simple linear regression
analysis. Statistical significance of roughness model has been evaluated using student’s
T-Test. Variability in the output results of the two deterministic models i.e., HDM and
GP has been computed by comparing the difference between predicted and observed
roughness behaviour.
Prediction models play a crucial role in development of RMMS for systematic technical
as well as economic appraisal of road projects. Future modelling of pavement behaviour
and cost streams related to various maintenance activities will assist the highway
planners and road agencies in timely monitoring and conditioning of roads by adopting
suitable management framework.
