Abstract

Increasing traffic congestion and the advancements in technology have fostered the growth of alternative transportation modes such as dynamic ride-sharing. Smartphone technologies have enabled dynamic ride-sharing to thrive, as this type of transportation aims to establish ride matches between people with similar routes and schedules on short notice. Many automated matching methods are designed to improve system performance; such methods include minimizing process time, minimizing total system cost or maximizing total distance savings. However, the results may not provide the maximum benefits for the participants. This paper intends to develop an algorithm for optimizing matches when considering participants’ gender, age, employment status and social tendencies. The proposed matching algorithm also splits unmatched parts of drivers’ routes and creates new travel requests to find additional matches using these unmatched parts. Accordingly, this paper performs an extensive simulation study to assess the performance of the proposed algorithm. The simulation results indicate that route splits may increase the number of matches significantly when there is a shortage of drivers. Furthermore, the paper demonstrates the effects and potential benefits of utilizing a social compatibility score in the objective function.

Highlights

  • Introduction and backgroundAs traffic congestion worsens by the day, the rate of global warming accelerates as well

  • In contrast with existing studies, this paper considers social characteristics and choices of participants and utilizes them in the objective function; more people may be willing to participate in a ride-sharing system in real life

  • As mentioned earlier in this paper, social compatibility of participants is scored using the joint socialness score (JSS), and the objective function of the proposed matching algorithm is set to maximize the sum of JSSs

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Summary

Introduction and background

As traffic congestion worsens by the day, the rate of global warming accelerates as well . The current era of ride-sharing includes the use of software packages, real-time services, financial incentives, and social networking platforms [9] This has resulted in a dramatic increase in dynamic ride-sharing studies in recent decades [1, 10]. The paper intends to develop an algorithm that finds matches between riders and drivers on reasonably short notice by exploiting the capacities of drivers and by considering the characteristics and choices of the participants. In this regard, there are two main contributions of this paper to the literature.

Related studies
Problem definition
Feasible match
Matching problem
Solution approach
Route feasibility
Compute the scores starting from the top-left cell using following equation
Splitting drivers’ routes and recording extra stops
Matching process
Data generation and experiments
Performance
Validation of heuristic solution
Benefits of route split
Effects of the joint socialness score
Findings
Conclusions
Full Text
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