Abstract

The freeway service patrol problem involves patrol routing design and fleet allocation on freeways that would help transportation agency decision-makers when developing a freeway service patrols program and/or altering existing route coverage and fleet allocation. Based on the actual patrol process, our model presents an overlapping patrol model and addresses patrol routing design and fleet allocation in a single integrated model. The objective is to minimize the overall average incident response time. Two strategies—overlapping patrol and non-overlapping patrol—are compared in our paper. Matrix encoding is applied in the genetic algorithm (GA), and to maintain population diversity and avoid premature convergence, a niche strategy is incorporated into the traditional genetic algorithm. Meanwhile, an elitist strategy is employed to speed up the convergence. Using numerical experiments conducted based on data from the Sioux Falls network, we clearly show that: overlapping patrol strategy is superior to non-overlapping patrol strategy; the GA outperforms the simulated annealing (SA) algorithm; and the computational efficiency can be improved when LINGO software is used to solve the problem of fleet allocation.

Highlights

  • The freeway service patrol problem considered in this paper consists of the number of patrol route optimization, patrol route design, and patrol vehicle allocation

  • Many studies have proven that freeway service patrol (FSP) is an effective method for freeway incident management [4,5]

  • Due to FSP being able to patrol the freeway regularly and provide help to stranded drivers, the FSP is more spontaneous compared with the traditional incident response dispatching system, where tow trucks are placed at depots waiting for dispatching commands [7]

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Summary

Introduction

The freeway service patrol problem considered in this paper consists of the number of patrol route optimization, patrol route design, and patrol vehicle allocation. This paper is concerned with resolving the number of patrol beats/routes, designing patrol beats/routes, and assigning patrol vehicles to optimize the performance of a FSP system. Zhao et al (2017) proposed a method based on travel time prediction to solve the dynamic vehicle routing problem [13].

Model Formulation
Genetic Algorithm
Fitness Function
Map the relationship of the missing segment
Elitist Strategy and Niche Strategy
Numerical Example
Summary and Conclusions
Findings
Discussion
Full Text
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