Priority index for road maintenance interventions of greater Kampala metropolitan area based on rout choice.
Abstract
Road infrastructure requires timely maintenance interventions to serve through its design life.
Literature indicates that natural and artificial phenomena like adverse weather negatively
impact roads resulting into permanent deformation and as such, institutions around the world
deploy different maintenance methodologies to improve resilience using different forms of
priority indices like AHP and Fuzzy Logic technique. The study discusses the limitations of
AHP and Fuzzy Logic technique while proposing the use of CCTV camera data to generate a
priority index based on user route choices. Using simple random sampling technique, roads
within GKMA with different traffic counts within a period of seven months were selected and
a route choice model was used to predict user route preferences. Pavement visual condition
analysis was also undertaken. Results revealed that roads with higher vehicular traffic volume
exhibit more extreme level of damage, consequently increase travel time and affect travel
speeds. The projected growth of traffic demand by 29.52% highlights the escalating
challenges faced by the transportation network in the GKMA. This growth underscores the
necessity for proactive planning and infrastructure development to accommodate the
increasing demand while considering the revealed preferences of commuters. The results
provided valuable insights for policymakers and urban planners by revealing the trade-offs
individuals make when choosing routes, the factors that induce indifference, and the
homogeneity of preferences within the studied population. The study provides evidence that a
maintenance specific priority index that is based on route choice will aid policy makers and
engineers to make decisions on criteria selection for road maintenance and also predict future
traffic volumes on roads to guide transport system improvements and traffic police
deployment decisions on point of traffic congestion. Route choice analysis gives valuable
insights on decision making patterns and preferences of users in aggregate context. This is
important in making decisions on allocation of resources to maintain the transport network
operating at high serviceability