Abstract:
With the increasing volume of traffic on urban roads, the issue of congestion in urban areas has become more severe. Additionally, the rapid growth of smart devices and c...Show MoreMetadata
Abstract:
With the increasing volume of traffic on urban roads, the issue of congestion in urban areas has become more severe. Additionally, the rapid growth of smart devices and changes in driving habits have led to high-concurrency and high-volume routing requests. Traditional route planning algorithms only consider the optimization of individual route query and often fall into local suboptimal solutions in large-scale routing scenarios. Some scholars have proposed dynamic large-scale route planning methods based on greedy and correction strategies for multi-route planning. However, these methods are unable to return a combination of routes in time-sensitive scenarios. In this paper, we model dynamic large-scale route planning using distributed constraint optimization and propose a max-sum-based route planning algorithm with pruning optimization. A parallel accelerated distributed stochastic search algorithm is also proposed to meet scenarios with computational efficiency requirements. Experimental results demonstrate that the proposed algorithms can effectively reduce the global travel time.
Date of Conference: 13-15 October 2023
Date Added to IEEE Xplore: 21 November 2023
ISBN Information: