A Comprehensive Evaluation Study for the Maintenance Management System of Roadways: A Review

Authors

  • Mahmood K. Al-Obaidi Civil Engineering Department, Al-Farabi University College, Baghdad, Iraq
  • Husam M. Al-Faris Civil Engineering Department, Al-Farabi University College, Baghdad, Iraq
  • Raghdah H. Al-Sherif Civil Engineering Department, Al-Farabi University College, Baghdad, Iraq

DOI:

https://doi.org/10.59746/jfes.v2i1.61

Keywords:

Pavement Management Systems, PCI, PSI, RRMS, Sharp IR-Based Sensor

Abstract

Pavement infrastructure is essential and must be protected with limited resources. For decades, industrialized nations have used Pavement Management Systems (PMS) and pavement distress assessment to examine network and project-level pavement conditions. Pavement condition models can anticipate pavement degradation, schedule maintenance, and create multi-year rehabilitation plans based on historical data. Pavement condition surveys are done annually or biannually to calibrate pavement condition models and reduce network maintenance costs. This study highlights road system deficiencies to meet traffic demand, improper systematic methods of maintaining networks, budget constraints for decision makers, deficiencies in road geometrics, poor construction and maintenance practices, the need for proper planning and resource management, and improper planning. The technique comprises a theoretical element of PMS and a review of performance evaluation studies. A PMS lets users export data in an easy-to-understand manner, helping them manage their roadways better. Manual pavement distress surveys need certified raters.

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Published

2023-07-31