@article { , title = {Pavement maintenance scheduling using genetic algorithms}, abstract = {This paper presents a new pavement management system (PMS) to achieve the optimal pavement maintenance and rehabilitation (M\&R) strategy for a highway network using genetic algorithms (GAs). Optimal M\&R strategy is a set of pavement activities that both minimise the maintenance cost of a highway network and maximise the pavement condition of the road sections on the network during a certain planning period. NSGA-II, a multi-objective GA, is employed to perform pavement maintenance optimisation because of its robust search capabilities and constraint handling method that deal with the multi-objective and multi-constrained optimisation problems. In the proposed approach, both deterministic and probabilistic pavement age gain models are utilised for evaluating the evolution of pavement condition over time because of their simplicity of application. The proposed PMS is applied to a case study network that consists of different kinds of road sections. The results obtained indicate that the model is a valuable toolbox for pavement engineers.}, eissn = {0973-1318}, issue = {2}, journal = {International Journal of Performability Engineering}, note = {Email from publishers 22.07.2016 giving permission to upload this article, on the understanding that anybody referring to the paper shall provide credit and acknowledge the permission granted by RAMS Consultants. MJB 22.07.2016.}, publicationstatus = {Published}, url = {https://nottingham-repository.worktribe.com/output/744142}, volume = {11}, keyword = {Pavement Management System, Maintenance and Rehabilitation Strategy, Genetic Algorithms, NSGA-II, Pavement Age Gain Model}, year = {2015}, author = {Yang, Chao and Remenyte-Prescott, Rasa and Andrews, John D.} }