skip to main content
survey

Carpooling in Connected and Autonomous Vehicles: Current Solutions and Future Directions

Published: 13 September 2022 Publication History

Abstract

Owing to the advancements in communication and computation technologies, the dream of commercialized connected and autonomous cars is becoming a reality. However, among other challenges such as environmental pollution, cost, maintenance, security, and privacy, the ownership of vehicles (especially for Autonomous Vehicles) is the major obstacle in the realization of this technology at the commercial level. Furthermore, the business model of pay-as-you-go type services further attracts the consumer, because there is no need for upfront investment. In this vein, the idea of car-sharing (aka carpooling) is getting ground due to, at least in part, its simplicity, cost-effectiveness, and affordable choice of transportation. Carpooling systems are still in their infancy and face challenges such as scheduling, matching passengers interests, business model, security, privacy, and communication. To date, a plethora of research work has already been done covering different aspects of carpooling services (ranging from applications to communication and technologies); however, there is still a lack of a holistic, comprehensive survey that can be a one-stop-shop for the researchers in this area to (i) find all the relevant information and (ii) identify the future research directions. To fill these research challenges, this article provides a comprehensive survey on carpooling in autonomous and connected vehicles and covers architecture, components, and solutions, including scheduling, matching, mobility, pricing models of carpooling. We also discuss the current challenges in carpooling and identify future research directions. This survey is aimed to spur further discussion among the research community for the effective realization of carpooling.

References

[1]
Hillary Abraham, Chaiwoo Lee, Samantha Brady, Craig Fitzgerald, Bruce Mehler, Bryan Reimer, and Joseph F. Coughlin. 2016. Autonomous vehicles, trust, and driving alternatives: A survey of consumer preferences. Massachusetts Inst. Technol, AgeLab, Cambridge 1 (2016), 16.
[2]
Niels Agatz, Alan Erera, Martin Savelsbergh, and Xing Wang. 1 December 2012. Optimization for dynamic ride-sharing: A review. Eur. J. Operat. Res. 223, 2 (1 December 2012), 295–303.
[3]
Niels Agatz, Alan L. Erera, Martin W. P. Savelsbergh, and Xing Wang. 2011. Dynamic ride-sharing: A simulation study in metro Atlanta. Proc. Soc. Behav. Sci. 17 (2011), 532–550.
[4]
Ulrich Matchi Aïvodji, Sébastien Gambs, Marie-José Huguet, and Marc-Olivier Killijian. 2016. Meeting points in ridesharing: A privacy-preserving approach. Transport. Res. C: Emerg. Technol. 72 (2016), 239–253.
[5]
Ulrich Matchi Aïvodji, Kévin Huguenin, Marie-José Huguet, and Marc-Olivier Killijian. 2018. Sride: A privacy-preserving ridesharing system. In Proceedings of the 11th ACM Conference on Security & Privacy in Wireless and Mobile Networks. 40–50.
[6]
Sunghi An, Daisik Nam, and R. Jayakrishnan. 2019. Impacts of integrating shared autonomous vehicles into a Peer-to-Peer ridesharing system. Proc. Comput. Sci. 151 (1 2019), 511–518.
[7]
Magnus Andersson, Anders Hjalmarsson, and Michel Avital. 2013. Peer-to-Peer service sharing platforms: Driving share and share alike on a mass-scale. In Proceedings of the 34th International Conference on Information Systems (ICIS’13).
[8]
Konstantinos N. Androutsopoulos and Konstantinos G. Zografos. 2009. Solving the multi-criteria time-dependent routing and scheduling problem in a multimodal fixed scheduled network. Eur. J. Operat. Res. 192, 1 (2009), 18–28.
[9]
Constantinos Antoniou, Dimitrios Efthymiou, and Emmanouil Manos Chaniotakis. 2019. Demand for Emerging Transportation Systems: Modeling Adoption, Satisfaction, and Mobility Patterns. Elsevier.
[10]
Mohammad Asghari, Dingxiong Deng, Cyrus Shahabi, Ugur Demiryurek, and Yaguang Li. 2016. Price-aware real-time ride-sharing at scale: An auction-based approach. In Proceedings of the 24th ACM SIGSPATIAL International Conference on Advances in Geographic Information Systems. 1–10.
[11]
F. Bakkal, S. Eken, N. S. Savaş, and A. Sayar. 2017. Modeling and querying trajectories using Neo4j spatial and TimeTree for carpool matching. In Proceedings of the IEEE International Conference on INnovations in Intelligent SysTems and Applications (INISTA’17). 219–222.
[12]
Venkatraman Balasubramanian, Moayad Aloqaily, Olufogorehan Tunde-Onadele, Zhengyu Yang, and Martin Reisslein. 2020. Reinforcing cloud environments via index policy for bursty workloads. In Proceedings of the IEEE/IFIP Network Operations and Management Symposium (NOMS’20). IEEE, 1–7.
[13]
Venkatraman Balasubramanian, Moayad Aloqaily, Faisal Zaman, and Yaser Jararweh. 2018. Exploring computing at the edge: A multi-interface system architecture enabled mobile device cloud. In Proceedings of the IEEE 7th International Conference on Cloud Networking (CloudNet’18). IEEE, 1–4.
[14]
Venkatraman Balasubramanian, Safa Otoum, Moayad Aloqaily, Ismaeel Al Ridhawi, and Yaser Jararweh. 2020. Low-latency vehicular edge: A vehicular infrastructure model for 5G. Simul. Model. Pract. Theory 98 (2020), 101968.
[15]
Venkatraman Balasubramanian, Faisal Zaman, Moayad Aloqaily, Ismaeel Al Ridhawi, Yaser Jararweh, and Haythem Bany Salameh. 2019. A mobility management architecture for seamless delivery of 5G-IoT services. In Proceedings of the IEEE International Conference on Communications (ICC’19). IEEE, 1–7.
[16]
Venkatraman Balasubramanian, Faisal Zaman, Moayad Aloqaily, Saed Alrabaee, Maria Gorlatova, and Martin Reisslein. 2019. Reinforcing the edge: Autonomous energy management for mobile device clouds. In Proceedings of the IEEE Conference on Computer Communications Workshops (INFOCOM WKSHPS’19). IEEE, 44–49.
[17]
D. Banerjee and B. Srivastava. 2015. Promoting carpooling with distributed schedule coordination and incentive alignment of contacts. In Proceedings of the IEEE 18th International Conference on Intelligent Transportation Systems. 1837–1842.
[18]
Dimitris Bertsimas, Patrick Jaillet, and Sébastien Martin. 2019. Online vehicle routing: The edge of optimization in large-scale applications. Operat. Res. 67, 1 (2019), 143–162.
[19]
C. Bonhomme, G. Arnould, and D. Khadraoui. 2012. Dynamic carpooling mobility services based on secure multi-agent platform. In Proceedings of the Global Information Infrastructure and Networking Symposium (GIIS’12). 1–6.
[20]
Flavio Bonomi, Rodolfo Milito, Jiang Zhu, and Sateesh Addepalli. 2012. Fog computing and its role in the internet of things. In Proceedings of the 1st MCC Workshop on Mobile Cloud Computing. 13–16.
[21]
C. M. Boukhater, O. Dakroub, F. Lahoud, M. Awad, and H. Artail. 2014. An intelligent and fair GA carpooling scheduler as a social solution for greener transportation. In Proceedings of the17th IEEE Mediterranean Electrotechnical Conference (MELECON’14). 182–186.
[22]
Nils Boysen, Dirk Briskorn, Stefan Schwerdfeger, and Konrad Stephan. 2021. Optimizing carpool formation along high-occupancy vehicle lanes. Eur. J. Operat. Res. 293, 3 (2021), 1097–1112.
[23]
C. Bresciani, A. Colorni, F. Costa, A. Luè, and L. Studer. 2018. Carpooling: Facts and new trends. In Proceedings of the International Conference of Electrical and Electronic Technologies for Automotive. 1–4.
[24]
Cándido Caballero-Gil, Pino Caballero-Gil, Jezabel Molina-Gil, Francisco Martín-Fernández, and Vincenzo Loia. 2017. Trust-based cooperative social system applied to a carpooling platform for smartphones. Sensors 17, 2 (2017), 245.
[25]
S. C. Calvert, W. J. Schakel, and C. J. W. van Lint. 2017. Will automated vehicles negatively impact traffic flow?J. Adv. Transport. (2017), 1–17.
[26]
Roberto Wolfler Calvo, Fabio de Luigi, Palle Haastrup, and Vittorio Maniezzo. 2004. A distributed geographic information system for the daily car pooling problem. Comput. Operat. Res. 31, 13 (2004), 2263–2278.
[27]
Nelson D. Chan and Susan A. Shaheen. 2012. Ridesharing in North America: Past, present, and future. Transp. Rev. 32, 1 (2012), 93–112.
[28]
Sondes Ben Cheikh and Slim Hammadi. 2014. The alliance between optimization and multi-agent system for the management of the dynamic carpooling. In Agent and Multi-Agent Systems: Technologies and Applications. Springer, 193–202.
[29]
Sondes Ben Cheikh-Graiet, Mariagrazia Dotoli, and Slim Hammadi. 2020. A Tabu Search based metaheuristic for dynamic carpooling optimization. Comput. Industr. Eng. 140 (2020), 106217.
[30]
Lu Chen, Qilu Zhong, Xiaokui Xiao, Yunjun Gao, Pengfei Jin, and Christian S. Jensen. 2018. Price-and-time-aware dynamic ridesharing. In Proceedings of the IEEE 34th International Conference on Data Engineering (ICDE’18). IEEE, 1061–1072.
[31]
Rui Chen, Benjamin C. M. Fung, Noman Mohammed, Bipin C. Desai, and Ke Wang. 2013. Privacy-preserving trajectory data publishing by local suppression. Inf. Sci. 231 (2013), 83–97.
[32]
Tong Donna Chen et al. 2015. Management of a Shared, Autonomous, Electric Vehicle Fleet: Vehicle Choice, Charging Infrastructure & Pricing Strategies. Ph.D. Dissertation. The University of Virginia.
[33]
T. Donna Chen and Kara M. Kockelman. 2016. Management of a shared autonomous electric vehicle fleet: Implications of pricing schemes. Transport. Res. Rec. 2572, 1 (2016), 37–46.
[34]
T. Donna Chen, Kara M. Kockelman, and Josiah P. Hanna. 2016. Operations of a shared, autonomous, electric vehicle fleet: Implications of vehicle & charging infrastructure decisions. Transport. Res. A: Policy Pract. 94 (2016), 243–254.
[35]
Mung Chiang, Sangtae Ha, I. Chih-Lin, Fulvio Risso, and Tao Zhang. 2017. Clarifying fog computing and networking: 10 questions and answers. IEEE Commun. Mag. 55, 4 (2017), 18–20.
[36]
Chih-Hsiang Lin, Ming-Kai Jiau, and Shih-Chia Huang. 2012. A cloud computing framework for real-time carpooling services. In Proceedings of the 6th International Conference on New Trends in Information Science, Service Science and Data Mining (ISSDM’12). 266–271.
[37]
S. Chou, M. Jiau, and S. Huang. 2016. Stochastic set-based particle swarm optimization based on local exploration for solving the carpool service problem. IEEE Trans. Cybernet. 46, 8 (2016), 1771–1783.
[38]
Francesco Ciari, Milos Balac, and Michael Balmer. 2015. Modelling the effect of different pricing schemes on free-floating carsharing travel demand: A test case for Zurich, Switzerland. Transportation 42, 3 (2015), 413–433.
[39]
Lewis M. Clements and Kara M. Kockelman. 2017. Economic effects of automated vehicles. J. Transport. Res. Board2606 (2017), 106–114.
[40]
Marc-Antoine Coindreau, Olivier Gallay, and Nicolas Zufferey. 2018. Synchronizing heterogeneous vehicles in a routing and scheduling context. In Proceedings of the 16th International Conference on Project Management and Scheduling. 79.
[41]
M. Collotta, G. Pau, V. M. Salerno, and G. Scatà. 2012. A novel trust based algorithm for carpooling transportation systems. In Proceedings of the IEEE International Energy Conference and Exhibition (ENERGYCON’12). 1077–1082.
[42]
M. O. Cruz, H. Macedo, and A. Guimarães. 2015. Grouping similar trajectories for carpooling purposes. In Proceedings of the Brazilian Conference on Intelligent Systems (BRACIS’15). 234–239.
[43]
Lisa Créno and Beatrice Cahour. 2015. Perceived risks and trust experience in a service of Carpooling. In Proceedings of the 22nd ITS World Congress.
[44]
Zaher Dawy, Ahmad Husseini, Elias Yaacoub, and Lina Al-Kanj. 2010. A wireless communications laboratory on cellular network planning. IEEE Trans. Educ. 53, 4 (2010), 653–661.
[45]
Patricia Delhomme and Alexandra Gheorghiu. 2016. Comparing French carpoolers and non-carpoolers: Which factors contribute the most to carpooling?Transport. Res. D: Transport Environ. 42 (2016), 1–15.
[46]
Xuan Di and Xuegang Jeff Ban. 2019. A unified equilibrium framework of new shared mobility systems. Transport. Res. B: Methodol. 129 (2019), 50–78.
[47]
Marco Diana. 2006. The importance of information flows temporal attributes for the efficient scheduling of dynamic demand responsive transport services. J. Adv. Transport. 40, 1 (2006), 23–46.
[48]
Dejan Dimitrijević, Vladimir Dimitrieski, and Nemanja Nedić. 2014. Prototype implementation of a scalable real-time dynamic carpooling and ride-sharing application. Informatica 38, 3 (2014).
[49]
D. Dimitrijević, N. Nedić, and V. Dimitrieski. 2013. Real-time carpooling and ride-sharing: Position paper on design concepts, distribution and cloud computing strategies. In Proceedings of the Federated Conference on Computer Science and Information Systems. 781–786.
[50]
Y. Duan, T. Mosharraf, J. Wu, and H. Zheng. 2018. Optimizing carpool scheduling algorithm through partition merging. In Proceedings of the IEEE International Conference on Communications (ICC’18). 1–6.
[51]
A. Elbery, M. ElNainay, and H. Rakha. 2016. Proactive and reactive carpooling recommendation system based on spatiotemporal and geosocial data. In Proceedings of the IEEE 12th International Conference on Wireless and Mobile Computing, Networking and Communications (WiMob’16). 1–8.
[52]
Miriam Enzi, Sophie N. Parragh, David Pisinger, and Matthias Prandtstetter. 2020. Modeling and solving the multimodal car-and ride-sharing problem. arXiv:2001.05490. Retrieved from https://arxiv.org/abs/2001.05490.
[53]
H. Feng, Y. Sengbin, H. Ruichun, and W. Xiaoyao. 2015. Research on optimization model of taxi-carpooling expenses based on the passengers’ personalized demand. In Proceedings of the International Conference on Transportation Information and Safety (ICTIS’15). 246–249.
[54]
Erik Ferguson. 1997. The rise and fall of the American carpool: 1970–1990. Transportation 24, 4 (1997), 349–376.
[55]
Emilio Ferrari, Riccardo Manzini, Arrigo Pareschi, Alessandro Persona, and Alberto Regattieri. 2003. The car pooling problem: Heuristic algorithms based on savings functions. J. Adv. Transport. 37, 3 (2003), 243–272.
[56]
A. Fougères, P. Canalda, T. Ecarot, A. Samaali, and L. Guglielmetti. 2012. A push service for carpooling. In Proceedings of the IEEE International Conference on Green Computing and Communications. 685–691.
[57]
Jesús Friginal, Sébastien Gambs, Jérémie Guiochet, and Marc-Olivier Killijian. 2014. Towards privacy-driven design of a dynamic carpooling system. Perv. Mobile Comput. 14 (2014), 71–82.
[58]
Masabumi Furuhata, Maged Dessouky, Fernando Ordóñez, Marc-Etienne Brunet, Xiaoqing Wang, and Sven Koenig. November 2013. Ridesharing: The state-of-the-art and future directions. Transport. Res. B: Methodol. 57 (November 2013), 28–46.
[59]
E. Gadsby, S. Jaimes, L. Najarian, M. Sanchez, R. Sujlana, G. L. Donohue, and M. Coyne. 2003. George Mason University (GMU) Fairfax campus transportation system. In Proceedings of the IEEE Systems and Information Engineering Design Symposium. 77–82.
[60]
William L. Garrison, Barry Wellar, Ross MacKinnon, William R. Black, and Arthur Getis. 2011. Research Commentary: Increasing the Flexibility of Legacy Systems. Int. J. Appl. Geospat. Res. 2, 2 (2011), 39–55.
[61]
Preeti Goel, Lars Kulik, and Kotagiri Ramamohanarao. 2016. Optimal pick up point selection for effective ride sharing. IEEE Trans. Big Data 3, 2 (2016), 154–168.
[62]
Preeti Goel, Lars Kulik, and Kotagiri Ramamohanarao. 2016. Privacy-aware dynamic ride sharing. ACM Trans. Spatial Algor. Syst. 2, 1 (2016), 1–41.
[63]
Daniel Graziotin. 2013. An Analysis of issues against the adoption of Dynamic Carpooling. arxiv:1306.0361. Retrieved from http://arxiv.org/abs/1306.0361.
[64]
Riccardo Guidotti, Mirco Nanni, Salvatore Rinzivillo, Dino Pedreschi, and Fosca Giannotti. 2017. Never drive alone: Boosting carpooling with network analysis. Inf. Syst. 64 (2017), 237–257.
[65]
Per Hallgren, Claudio Orlandi, and Andrei Sabelfeld. 2017. PrivatePool: Privacy-preserving ridesharing. In Proceedings of the IEEE 30th Computer Security Foundations Symposium (CSF’17). IEEE, 276–291.
[66]
M. B. Hariz, D. Said, and H. T. Mouftah. 2019. Mobility traffic model based on combination of multiple transportation forms in the smart city. In Proceedings of the 15th International Wireless Communications Mobile Computing Conference (IWCMC’19). 14–19.
[67]
Irith Ben-Arroyo Hartman, Daniel Keren, Abed Abu Dbai, Elad Cohen, Luk Knapen, Davy Janssens, et al. 2014. Theory and practice in large carpooling problems. Proc. Comput. Sci. 32 (2014), 339–347.
[68]
Raza Hasan, Abdul Hadi Bhatti, Mohammad Sohail Hayat, Haftamu Menker Gebreyohannes, Syed Imran Ali, and Abeer Javed Syed. 2016. Smart peer car pooling system. In Proceedings of the 3rd MEC International Conference on Big Data and Smart City (ICBDSC’16). IEEE, 1–6.
[69]
M. Hassine, P. Canalda, and I. Hassine. 2017. Dynamic intra-modal carpooling with transhipment: Formalization and first combinatorial exact solution. In Proceedings of the IEEE SmartWorld, Ubiquitous Intelligence Computing, Advanced Trusted Computed, Scalable Computing Communications, Cloud Big Data Computing, Internet of People and Smart City Innovation (SmartWorld/SCALCOM/UIC/ATC/CBDCom/IOP/SCI’17). 1–8.
[70]
W. He, K. Hwang, and D. Li. 2014. Intelligent carpool routing for urban ridesharing by mining gps trajectories. IEEE Trans. Intell. Transport. Syst. 15, 5 (2014), 2286–2296.
[71]
Y. He, J. Ni, X. Wang, B. Niu, F. Li, and X. Shen. 2018. Privacy-Preserving partner selection for ride-sharing services. IEEE Trans. Vehic. Technol. 67, 7 (2018), 5994–6005.
[72]
Wesam Herbawi and Michael Weber. 2012. The ridematching problem with time windows in dynamic ridesharing: A model and a genetic algorithm. In Proceedings of the IEEE Congress on Evolutionary Computation. IEEE, 1–8.
[73]
Zihan Hong, Ying Chen, Hani S. Mahmassani, and Shuang Xu. 2017. Commuter ride-sharing using topology-based vehicle trajectory clustering: Methodology, application and impact evaluation. Transport. Res. C: Emerg. Technol. 85 (2017), 573–590.
[74]
J. Huang, J. Wu, and L. Chen. 2018. Coalitional game based carpooling algorithms for quality of experience. In Proceedings of the IEEE 24th International Conference on Parallel and Distributed Systems (ICPADS’18). 1–5.
[75]
J. Huang, J. Wu, L. Chen, and J. Yan. 2019. Utility-Aware batch-processing algorithms for dynamic carpooling based on double auction. In Proceedings of the IEEE International Conference on Parallel Distributed Processing with Applications, Big Data Cloud Computing, Sustainable Computing Communications, Social Computing Networking (ISPA/BDCloud/SocialCom/SustainCom’19). 1059–1063.
[76]
S. Huang, M. Jiau, and K. Chong. 2018. A heuristic multi-objective optimization algorithm for solving the carpool services problem featuring high-occupancy-vehicle itineraries. IEEE Trans. Intell. Transport. Syst. 19, 8 (2018), 2663–2674.
[77]
S. Huang, M. Jiau, and C. Lin. 2015. A genetic-algorithm-based approach to solve carpool service problems in cloud computing. IEEE Trans. Intell. Transport. Syst. 16, 1 (2015), 352–364.
[78]
S. Huang, M. Jiau, and Y. Liu. 2019. An ant path-oriented carpooling allocation approach to optimize the carpool service problem with time windows. IEEE Syst. J. 13, 1 (2019), 994–1005.
[79]
Shih-Chia Huang, Ming-Kai Jiau, and Chih-Hsiang Lin. 2014. Optimization of the carpool service problem via a fuzzy-controlled genetic algorithm. IEEE Trans. Fuzzy Syst. 23, 5 (2014), 1698–1712.
[80]
Yan Huang, Ruoming Jin, Favyen Bastani, and Xiaoyang Sean Wang. 2013. Large scale real-time ridesharing with service guarantee on road networks. arXiv:1302.6666. Retrieved from https://arxiv.org/abs/1302.6666.
[81]
R. Hussain, F. Abbas, J. Son, H. Eun, and H. Oh. 2013. Privacy-aware route tracing and revocation games in VANET-based clouds. In Proceedings of the IEEE 9th International Conference on Wireless and Mobile Computing, Networking and Communications (WiMob’13). 730–735.
[82]
Rasheed Hussain, Fatima Hussain, and Sherali Zeadally. 2019. Integration of VANET and 5G Security: A review of design and implementation issues. Fut. Gener. Comput. Syst. 101 (2019), 843–864.
[83]
R. Hussain, J. Lee, and S. Zeadally. 2018. Autonomous cars: Social and economic implications. IT Profess. 20, 6 (November 2018), 70–77.
[84]
R. B. Jadhao and J. M. Patil. 2017. Recommendation system for carpooling and regular taxicab services. In Proceedings of the International Conference on Inventive Systems and Control (ICISC’17). 1–8.
[85]
M. N. Jean. 2014. France falls out of love with the car. The Guardian. Retrieved from https://www.theguardian.com/world/2014/nov/09/france-car-ownership-sales-downturn.
[86]
Karama Jeribi, Hinda Mejri, Hayfa Zgaya, and Slim Hammadi. 2011. Vehicle sharing services optimization based on multi-agent approach. IFAC Proc. Vol. 44, 1 (2011), 13040–13045.
[87]
M. Jiau and S. Huang. 2015. Services-Oriented computing using the compact genetic algorithm for solving the carpool services problem. IEEE Trans. Intell. Transport. Syst. 16, 5 (2015), 2711–2722.
[88]
M. Jiau and S. Huang. 2019. Self-Organizing neuroevolution for solving carpool service problem with dynamic capacity to alternate matches. IEEE Trans. Neural Netw. Learn. Syst. 30, 4 (2019), 1048–1060.
[89]
M. Jiau, S. Huang, and C. Lin. 2013. Optimizing the carpool service problem with genetic algorithm in service-based computing. In Proceedings of the IEEE International Conference on Services Computing. 478–485.
[90]
Fanglei Jin, Enjian Yao, and Kun An. 2020. Analysis of the potential demand for battery electric vehicle sharing: Mode share and spatiotemporal distribution. J. Transport Geogr. 82 (2020), 102630.
[91]
Arne Kesting, Martin Treiber, Martin Schönhof, Florian Kranke, and Dirk Helbing. 2007. Jam-avoiding adaptive cruise control (ACC) and its impact on traffic dynamics. In Traffic and Granular Flow’05. Springer, 633–643.
[92]
Hasan Ali Khattak, Munam Ali Shah, Sangeen Khan, Ihsan Ali, and Muhammad Imran. 2019. Perception layer security in Internet of Things. Fut. Gener. Comput. Syst. 100 (2019), 144–164.
[93]
Adrienne Lafrance. 2016. Your Grandmother’s Driverless Car. Retrieved from https://www.theatlantic.com/technology/archive/2016/06/beep-beep/489029/.
[94]
Desheng Li, Qian He, Chunli Liu, and Hongjie Yu. 2017. Real-Time carpooling system on android terminal using session initiation protocol and location based service. J. Comput. Theoret. Nanosci. 14, 4 (2017), 2069–2076.
[95]
J. Li, T. Huang, S. Chen, and Y. Yang. 2018. Optimization based on taxi carpooling preferences and pricing. In Proceedings of the 14th International Conference on Natural Computation, Fuzzy Systems and Knowledge Discovery (ICNC-FSKD’18). 108–112.
[96]
M. Li, L. Zhu, and X. Lin. 2019. Efficient and privacy-preserving carpooling using blockchain-assisted vehicular fog computing. IEEE IoT J. 6, 3 (2019), 4573–4584.
[97]
Meng Li, Liehuang Zhu, Zijian Zhang, and Rixin Xu. 2017. Achieving differential privacy of trajectory data publishing in participatory sensing. Inf. Sci. 400 (2017), 1–13.
[98]
Qing Li, Feixiong Liao, Harry J. P. Timmermans, Haijun Huang, and Jing Zhou. 2018. Incorporating free-floating car-sharing into an activity-based dynamic user equilibrium model: A demand-side model. Transport. Res. B: Methodol. 107 (2018), 102–123.
[99]
Ruimin Li, Zhiyong Liu, and Ruibo Zhang. 2018. Studying the benefits of carpooling in an urban area using automatic vehicle identification data. Transport. Res. C: Emerg. Technol. 93 (2018), 367–380.
[100]
S. Li, F. Fei, D. Ruihan, S. Yu, and W. Dou. 2016. A dynamic pricing method for carpooling service based on coalitional game analysis. In Proceedings of the IEEE 18th International Conference on High Performance Computing and Communications; IEEE 14th International Conference on Smart City; IEEE 2nd International Conference on Data Science and Systems (HPCC/SmartCity/DSS’16). 78–85.
[101]
Shuai Li, Haojin Zhu, Zhaoyu Gao, Xinping Guan, Kai Xing, and Xuemin Shen. 2012. Location privacy preservation in collaborative spectrum sensing. In Proceedings of the IEEE International Conference on Computer Communications (INFOCOM’12). IEEE, 729–737.
[102]
J. Lin, S. Huang, and M. Jiau. 2019. An evolutionary multiobjective carpool algorithm using set-based operator based on simulated binary crossover. IEEE Trans. Cybernet. 49, 9 (2019), 3432–3442.
[103]
Nianbo Liu, Ming Liu, Jiannong Cao, Guihai Chen, and Wei Lou. 2010. When transportation meets communication: V2P over VANETs. In Proceedings of the IEEE 30th International Conference on Distributed Computing Systems. IEEE, 567–576.
[104]
Zhidan Liu, Zengyang Gong, Jiangzhou Li, and Kaishun Wu. 2020. Mobility-Aware dynamic taxi ridesharing. In Proceedings of the IEEE 36th International Conference on Data Engineering (ICDE’20). IEEE, 961–972.
[105]
Roger Lloret-Batlle, Neda Masoud, and Daisik Nam. 2017. Peer-to-Peer ridesharing with ride-back on high-occupancy-vehicle lanes: Toward a practical alternative mode for daily commuting. Transport. Res. Rec. 2668, 1 (2017), 21–28.
[106]
Yingyan Lou, Yafeng Yin, and Jorge A. Laval. 2011. Optimal dynamic pricing strategies for high-occupancy/toll lanes. Transport. Res. C: Emerg. Technol. 19, 1 (2011), 64–74.
[107]
Y. Luo, X. Jia, S. Fu, and M. Xu. 2019. pRide: Privacy-Preserving Ride Matching Over Road Networks for Online Ride-Hailing Service. IEEE Trans. Inf. Forens. Secur. 14, 7 (2019), 1791–1802.
[108]
Changxi Ma, Ruichun He, and Wei Zhang. 2018. Path optimization of taxi carpooling. PLoS One 13, 8 (2018).
[109]
Jiaqi Ma, Xiaopeng Li, Fang Zhou, and Wei Hao. 2017. Designing optimal autonomous vehicle sharing and reservation systems: A linear programming approach. Transport. Res. C: Emerg. Technol. 84 (2017), 124–141.
[110]
Rui Ma and H. M. Zhang. 2017. The morning commute problem with ridesharing and dynamic parking charges. Transport. Res. B: Methodol. 106 (2017), 345–374.
[111]
Shuo Ma, Yu Zheng, and Ouri Wolfson. 2013. T-share: A large-scale dynamic taxi ridesharing service. In Proceedings of the IEEE 29th International Conference on Data Engineering (ICDE’13). IEEE, 410–421.
[112]
Shuo Ma, Yu Zheng, and Ouri Wolfson. 2014. Real-time city-scale taxi ridesharing. IEEE Trans. Knowl. Data Eng. 27, 7 (2014), 1782–1795.
[113]
Sayyam Malik, Hasan Ali Khattak, Zoobia Ameer, Umar Shoaib, Hafiz Tayyab Rauf, and Houbing Song. 2021. Proactive scheduling and resource management for connected autonomous vehicles: A data science perspective. IEEE Sens. J. 21, 22 (2021), 25151–25160.
[114]
Matteo Mallus, Giuseppe Colistra, Luigi Atzori, Maurizio Murroni, and Virginia Pilloni. 2017. Dynamic carpooling in urban areas: Design and experimentation with a multi-objective route matching algorith. Sustainability 9, 2 (2017), 254.
[115]
Lina Mao, Wenquan Li, Pengsen Hu, Guiliang Zhou, Huiting Zhang, and Xuanyu Zhou. 2019. Urban arterial road optimization and design combined with hov carpooling under connected vehicle environment. J. Adv. Transport. 2019 (2019).
[116]
Hector Marco-Gisbert and Ismael Ripoll. 2013. Preventing brute force attacks against stack canary protection on networking servers. In Proceedings of the IEEE 12th International Symposium on Network Computing and Applications. IEEE, 243–250.
[117]
Francisco Martín-Fernández, Cándido Caballero-Gil, and Pino Caballero-Gil. 2015. A trustworthy distributed social carpool method. In European Conference on Parallel Processing. Springer, 324–335.
[118]
Neda Masoud and R. Jayakrishnan. 2017. A decomposition algorithm to solve the multi-hop peer-to-peer ride-matching problem. Transportation Research Part B: Methodological 99 (2017), 1–29.
[119]
Neda Masoud and R. Jayakrishnan. 2017. A real-time algorithm to solve the peer-to-peer ride-matching problem in a flexible ridesharing system. Transport. Res. B: Methodol. 106 (2017), 218–236.
[120]
Neda Masoud, Roger Lloret-Batlle, and R. Jayakrishnan. 2017. Using bilateral trading to increase ridership and user permanence in ridesharing systems. Transport. Res. E: Logist. Transport. Rev. 102 (2017), 60–77.
[121]
Neda Masoud, Daisik Nam, Jiangbo Yu, and R. Jayakrishnan. 2017. Promoting peer-to-peer ridesharing services as transit system feeders. Transport. Res. Rec. 2650, 1 (2017), 74–83.
[122]
Dominic W. Massaro, Benjamin Chaney, Stephanie Bigler, Jessica Lancaster, Suresh Iyer, Mrunal Gawade, Michael Eccleston, Edith Gurrola, and Angelica Lopez. 2009. Just-in-Time carpooling without elaborate preplanning. In Proceedings of the 5th International Conference on Web Information Systems and Technologies (Webist’09). 219–224.
[123]
R. K. Megalingam, R. N. Nair, and V. Radhakrishnan. 2011. Automated wireless carpooling system for an eco-friendly travel. In Proceedings of the 3rd International Conference on Electronics Computer Technology, Vol. 4. 325–329.
[124]
Hui Meng, Lun Ran, Jing Chen, and Zihao Jiao. 2017. Goal-Driven approach to optimize matching mechanism in electric vehicles ride-sharing system. Energy Proc. 105 (2017), 2273–2280.
[125]
Daniel Y. Mo, Yue Wang, Y. C. E. Lee, and Mitchell M. Tseng. 2018. Mass customizing paratransit services with a ridesharing option. IEEE Trans. Eng. Manage. (2018).
[126]
Rosana Montes, Ana M. Sanchez, Pedro Villar, and Francisco Herrera. 2018. Teranga Go!: Carpooling Collaborative Consumption Community with multi-criteria hesitant fuzzy linguistic term set opinions to build confidence and trust. Appl. Soft Comput. 67 (2018), 941–952.
[127]
Behzad Moradi. 2019. The new optimization algorithm for the vehicle routing problem with time windows using multi-objective discrete learnable evolution model. Soft Comput. (2019), 1–29.
[128]
Abood Mourad, Jakob Puchinger, and Chengbin Chu. 2019. A survey of models and algorithms for optimizing shared mobility. Transport. Res. B: Methodol. 123 (2019), 323–346.
[129]
Deepak B. Nagare, Kishor L. More, Nitin S. Tanwar, S. S. Kulkarni, and Kalyan C. Gunda. 2013. Dynamic carpooling application development on Android platform. Int. J. Innovat. Technol. Explor. Eng. 2, 3 (2013), 136–139.
[130]
Jianbing Ni, Kuan Zhang, Xiaodong Lin, and Xuemin Sherman Shen. 2017. Securing fog computing for internet of things applications: Challenges and solutions. IEEE Commun. Surv. Tutor. 20, 1 (2017), 601–628.
[131]
Jianbing Ni, Kuan Zhang, Xiaodong Lin, Haomiao Yang, and Xuemin Sherman Shen. 2016. AMA: Anonymous mutual authentication with traceability in carpooling systems. In Proceedings of the IEEE Int. Conf. Commun. (ICC’16). IEEE, 1–6.
[132]
Rajendra Pamula and Rini Chakraborty. 2017. Taxi recommender system using ridesharing service. In Proceedings of the 4th International Conference on Advanced Computing and Communication Systems (ICACCS’17). IEEE, 1–6.
[133]
Sunil Paul, Jahan Khanna, Robert Wong, and Robert Moran. 2016. Systems and methods for providing transportation discounts in shared rides. US Patent App. 14/794,425.
[134]
Siani Pearson and Boris Balacheff. 2003. Trusted Computing Platforms: TCPA Technology in Context. Prentice Hall Professional.
[135]
Dominik Pelzer, Jiajian Xiao, Daniel Zehe, Michael H. Lees, Alois C. Knoll, and Heiko Aydt. 2015. A partition-based match making algorithm for dynamic ridesharing. IEEE Trans. Intell. Transport. Syst. 16, 5 (2015), 2587–2598.
[136]
Pengfei Gong and Wenquan Li. 2011. Urban traffic demand control based on carpooling: A case of Nanjing. In Proceedings of the International Conference on Remote Sensing, Environment and Transportation Engineering. 1863–1866.
[137]
Guido Perboli, Francesco Ferrero, Stefano Musso, and Andrea Vesco. 2018. Business models and tariff simulation in car-sharing services. Transport. Res. A: Policy Pract. 115 (2018), 32–48.
[138]
Anh Pham, Italo Dacosta, Guillaume Endignoux, Juan Ramon Troncoso Pastoriza, Kévin Huguenin, and Jean-Pierre Hubaux. 2017. Oride: A privacy-preserving yet accountable ride-hailing service. In Proceedings of the 26th USENIX Security Symposium (USENIX Security’17). 1235–1252.
[139]
Anh Pham, Italo Dacosta, Bastien Jacot-Guillarmod, Kévin Huguenin, Taha Hajar, Florian Tramèr, Virgil Gligor, and Jean-Pierre Hubaux. 2017. Privateride: A privacy-enhanced ride-hailing service. Proc. Priv. Enhanc. Technol. 2017, 2 (2017), 38–56.
[140]
H. Qadir, O. Khalid, M. U. S. Khan, A. U. R. Khan, and R. Nawaz. 2018. An optimal ride sharing recommendation framework for carpooling services. IEEE Access 6 (2018), 62296–62313.
[141]
X. Qi, L. Wang, and X. Wang. 2016. Optimization of carpooling based on complete subgraphs. In Proceedings of the 35th Chinese Control Conference (CCC’16). 9294–9299.
[142]
Fengzhong Qu, Zhihui Wu, Fei-Yue Wang, and Woong Cho. 2015. A security and privacy review of VANETs. IEEE Trans. Intell. Transport. Syst. 16, 6 (2015), 2985–2996.
[143]
Lisa Rayle, Danielle Dai, Nelson Chan, Robert Cervero, and Susan Shaheen. 2016. Just a better taxi? A survey-based comparison of taxis, transit, and ridesourcing services in San Francisco. Transport Pol. 45 (2016), 168–178.
[144]
Jackeline Rios-Torres and Andreas A. Malikopoulos. 2016. A survey on the coordination of connected and automated vehicles at intersections and merging at highway on-ramps. IEEE Trans. Intell. Transport. Syst. 18, 5 (2016), 1066–1077.
[145]
Robert Metcalfe and Robert Hahn. 2017. The Ridesharing Revolution: Economic Survey and Synthesis, Vol. IV. Oxford University Press.
[146]
Athanasios Salamanis, Dionysios D. Kehagias, Dimitrios Tsoukalas, and Dimitrios Tzovaras. 2019. Reputation assessment mechanism for carpooling applications based on clustering user travel preferences. Int. J. Transport. Sci. Technol. 8, 1 (2019), 68–81.
[147]
David Sánchez, Sergio Martínez, and Josep Domingo-Ferrer. 2016. Co-utile P2P ridesharing via decentralization and reputation management. Transport. Res. C: Emerg. Technol. 73 (2016), 147–166.
[148]
Hamid R. Sayarshad and H. Oliver Gao. 2018. A scalable non-myopic dynamic dial-a-ride and pricing problem for competitive on-demand mobility systems. Transport. Res. C: Emerg. Technol. 91 (2018), 192–208.
[149]
Manel Sghaier, Hayfa Zgaya, Slim Hammadi, and Christian Tahon. 2010. A distributed dijkstra’s algorithm for the implementation of a Real Time Carpooling Service with an optimized aspect on siblings. In Proceedings of the 13th International IEEE Conference on Intelligent Transportation Systems. IEEE, 795–800.
[150]
Manel Sghaier, Hayfa Zgaya, Slim Hammadi, and Christian Tahon. 2010. Ortic: A novel approach towards optimized real time carpooling with an advanced network representation model on siblings. IFAC Proc. Vol. 43, 8 (2010), 367–375.
[151]
Manel Sghaier, Hayfa Zgaya, Slim Hammadi, and Christian Tahon. 2011. A distributed optimized approach based on the multi agent concept for the implementation of a real time carpooling service with an optimization aspect on siblings. Int. J. Eng. 5, 2 (2011), 217.
[152]
M. Sghaier, H. Zgaya, S. Hammadi, and C. Tahon. 2011. A novel approach based on a distributed dynamic graph modeling set up over a subdivision process to deal with distributed optimized real time carpooling requests. In Proceedings of the 14th International IEEE Conference on Intelligent Transportation Systems (ITSC’11). 1311–1316.
[153]
Susan A. Shaheen and Timothy E. Lipman. 2007. Reducing greenhouse emissions and fuel consumption: Sustainable approaches for surface transportation. IATSS Res. 31, 1 (2007), 6–20.
[154]
Susan Shaheen, Adam Cohen, and Alexandre Bayen. 2018. The Benefits of Carpooling. Institute of Transportation Studies, Research Reports, Working Papers, Proceedings qt7jx6z631. Institute of Transportation Studies, UC Berkeley.
[155]
Z. Z. Shao, H. G. Wang, H. Liu, C. Song, C. Meng, and H. Yu. 2013. Heuristic optimization algorithms of multi-carpooling problem based on two-stage clustering. J. Comput. Res. Dev. (2013).
[156]
Surbhi Sharma and Baijnath Kaushik. 2019. A survey on internet of vehicles: Applications, security issues & solutions. Vehic. Commun. 20 (2019), 100182.
[157]
Brent R. Heard and Shelie A. Miller. 2016. The environmental impact of autonomous vehicles depends on adoption patterns. Environ. Sci. Technol. 50, 12 (2016), 6119–6121.
[158]
Zukang Shen, Aris Papasakellariou, Juan Montojo, Dirk Gerstenberger, and Fangli Xu. 2012. Overview of 3GPP LTE-advanced carrier aggregation for 4G wireless communications. IEEE Commun. Mag. 50, 2 (2012), 122–130.
[159]
A. B. T. Sherif, K. Rabieh, M. M. E. A. Mahmoud, and X. Liang. 2017. Privacy-Preserving ride sharing scheme for autonomous vehicles in big data era. IEEE IoT J. 4, 2 (2017), 611–618.
[160]
Q. Shi and X. Chen. 2020. Carpool for big data: Enabling efficient crowd cooperation in data market for pervasive AI. IEEE Trans. Vehic. Technol. (2020), 1–1.
[161]
Steven E. Shladover. 2009. Cooperative (rather than autonomous) vehicle-highway automation systems. IEEE Intell. Transport. Syst. Ma. 1, 1 (2009), 10–19.
[162]
Steven E. Shladover, Dongyan Su, and Xiao-Yun Lu. 2012. Impacts of cooperative adaptive cruise control on freeway traffic flow. Transport. Res. Rec. 2324, 1 (2012), 63–70.
[163]
Shrawani Silwal, Md Osman Gani, and Vaskar Raychoudhury. 2019. A survey of taxi ride sharing system architectures. In Proceedings of the IEEE International Conference on Smart Computing (SMARTCOMP’19). IEEE, 144–149.
[164]
Fei Song, Rong Li, and Huachun Zhou. 2015. Feasibility and issues for establishing network-based carpooling scheme. Perv. Mobile Comput. 24 (2015), 4–15.
[165]
Craig Standing, Susan Standing, and Sharon Biermann. 2019. The implications of the sharing economy for transport. Transport Rev. 39, 2 (2019), 226–242.
[166]
Mitja Stiglic, Niels Agatz, Martin Savelsbergh, and Mirko Gradisar. 2015. The benefits of meeting points in ride-sharing systems. Transport. Res. B: Methodol. 82 (2015), 36–53.
[167]
Mitja Stiglic, Niels Agatz, Martin Savelsbergh, and Mirko Gradisar. 2016. Making dynamic ride-sharing work: The impact of driver and rider flexibility. Transport. Res. E: Logist. Transport. Rev. 91 (2016), 190–207.
[168]
C. R. Storck and F. Duarte-Figueiredo. 2020. A survey of 5G technology evolution, standards, and infrastructure associated with vehicle-to-everything communications by internet of vehicles. IEEE Access 8 (2020), 117593–117614.
[169]
Shahram Tahmasseby, Lina Kattan, and Brian Barbour. 2016. Propensity to participate in a peer-to-peer social-network-based carpooling system. J. Adv. Transport. 50, 2 (2016), 240–254.
[170]
Christian Tahon, Slim Hammadi, et al. 2016. An evolutionary approach to solve the dynamic multi-hop ridematching problem. SIMULATION (2016).
[171]
F. Tang, Y. Kawamoto, N. Kato, and J. Liu. 2020. Future intelligent and secure vehicular network toward 6G: Machine-Learning approaches. Proc. IEEE 108, 2 (2020), 292–307.
[172]
Wei Tong, Jingyu Hua, and Sheng Zhong. 2017. A jointly differentially private scheduling protocol for ridesharing services. IEEE Trans. Inf. Forens. Secur. 12, 10 (2017), 2444–2456.
[173]
Amit Kumar Tyagi and Sreenath Niladhuri. 2016. Ensuring trust and privacy in large carpooling problems. In Proceeding of the International Conference on Computational Intelligence and Communication (CIC’16), Vol. 14. 1–11.
[174]
Amit Kumar Tyagi and N. Sreenath. 2016. Providing together security, location privacy and trust for moving objects. Int. J. Hybrid Inf. Technol. 9, 3 (2016), 221–240.
[175]
Amit Kumar Tyagi and N. Sreenath. 2016. Vehicular Ad Hoc Networks: New challenges in carpooling and parking services. In Proceeding of International Conference on Computational Intelligence and Communication (CIC’16), Vol. 14.
[176]
Fengwei Wang, Hui Zhu, Ximeng Liu, Rongxing Lu, Fenghua Li, Hui Li, and Songnian Zhang. 2018. Efficient and privacy-preserving dynamic spatial query scheme for ride-hailing services. IEEE Trans. Vehic. Technol. 67, 11 (2018), 11084–11097.
[177]
W. Wang, Y. Chen, Q. Zhang, K. Wu, and J. Zhang. 2016. Less transmissions, more throughput: Bringing carpool to public WLANs. IEEE Trans. Mobile Comput. 15, 5 (2016), 1168–1181.
[178]
Xing Wang, Niels Agatz, and Alan Erera. 2018. Stable matching for dynamic ride-sharing systems. Transport. Sci. 52, 4 (2018), 850–867.
[179]
Xiaolei Wang, Fang He, Hai Yang, and H. Oliver Gao. 2016. Pricing strategies for a taxi-hailing platform. Transport. Res. E: Logist. Transport. Rev. 93 (2016), 212–231.
[180]
Steve Wright, John D. Nelson, and Caitlin D. Cottrill. 2020. MaaS for the suburban market: Incorporating carpooling in the mix. Transport. Res. A: Policy Pract. 131 (2020), 206–218.
[181]
Yongzhong Wu, Xiangying Chen, and Jingwen Ma. 2018. Modeling passengers’ choice in ride-hailing service with dedicated-ride option and ride-sharing option. In Proceedings of the 4th International Conference on Industrial and Business Engineering. 94–98.
[182]
Yong Xi, Loren Schwiebert, and Weisong Shi. 2014. Privacy preserving shortest path routing with an application to navigation. Perv. Mobile Comput. 13 (2014), 142–149.
[183]
Jizhe Xia, Kevin M. Curtin, Jiajun Huang, Di Wu, Wenqun Xiu, and Zhengdong Huang. 2019. A carpool matching model with both social and route networks. Comput. Environ. Urban Syst. 75 (2019), 90–102.
[184]
Qiang Xiao, Ruichun He, Changxi Ma, and Wei Zhang. 2019. Evaluation of urban taxi-carpooling matching schemes based on entropy weight fuzzy matter-element. Appl. Soft Comput. 81 (2019), 105493.
[185]
Qiang Xiao, RuiChun He, Wei Zhang, and C. X. Ma. 2014. Algorithm research of taxi carpooling based on fuzzy clustering and fuzzy recognition. J. Transport. Syst. Eng. Inf. Technol. 14, 5 (2014), 119–125.
[186]
Qiang Xiao and R.-C. He. 2017. Carpooling scheme selection for taxi carpooling passengers: A multi-objective model and optimisation algorithm. Arch. Transport 42 (2017).
[187]
Zehui Xiong, Shaohan Feng, Wenbo Wang, Dusit Niyato, Ping Wang, and Zhu Han. 2018. Cloud/fog computing resource management and pricing for blockchain networks. IEEE IoT J. 6, 3 (2018), 4585–4600.
[188]
S. Yan, C. Chen, and S. Chang. 2014. A car pooling model and solution method with stochastic vehicle travel times. IEEE Trans. Intell. Transport. Syst. 15, 1 (2014), 47–61.
[189]
Wangcheng Yan, Wenjun Zhou, Chang Tan, and Lei Fan. 2019. Employee ridesharing: Reinforcement learning and choice modeling. In Proceedings of the 25th Americas Conference on Information Systems (AMCIS’19).
[190]
Hai Yang and Hai-Jun Huang. 1999. Carpooling and congestion pricing in a multilane highway with high-occupancy-vehicle lanes. Transport. Res. A: Policy Pract. 33, 2 (1999), 139–155.
[191]
S. Yeung, H. M. A. Aziz, and S. Madria. 2019. Activity-Based shared mobility model for smart transportation. In Proceedings of the 20th IEEE International Conference on Mobile Data Management (MDM’19). 599–604.
[192]
H. Yu, X. Jia, H. Zhang, X. Yu, and J. Shu. 2019. PSRide: Privacy-Preserving shared ride matching for online ride hailing systems. IEEE Trans. Depend. Secure Comput. (2019), 1–1.
[193]
H. Yu, J. Shu, X. Jia, H. Zhang, and X. Yu. 2019. lpRide: Lightweight and privacy-preserving ride matching over road networks in online ride hailing systems. IEEE Trans. Vehic. Technol. 68, 11 (2019), 10418–10428.
[194]
Xiaojuan Yu, Vincent A. C. van den Berg, and Erik T. Verhoef. 2019. Carpooling with heterogeneous users in the bottleneck model. Transport. Res. B: Methodol. 127 (2019), 178–200.
[195]
Yunfei Hou, X. Li, and C. Qiao. 2012. TicTac: From transfer-incapable carpooling to transfer-allowed carpooling. In Proceedings of the IEEE Global Communications Conference (GLOBECOM’12). 268–273.
[196]
Cheng Zeng and Nir Oren. 2014. Dynamic taxi pricing. Front. Artif. Intell. Appl. (2014).
[197]
Liteng Zha, Yafeng Yin, and Yuchuan Du. 2017. Surge pricing and labor supply in the ride-sourcing market. Transport. Res. Proc. 23, 2–21 (2017), 5–2.
[198]
Chaoli Zhang, Jiapeng Xie, Fan Wu, Xiaofeng Gao, and Guihai Chen. 2020. Pricing and allocation algorithm designs in dynamic ridesharing system. Theor. Comput. Sci. 803 (2020), 94–104.
[199]
D. Zhang, T. He, Y. Liu, S. Lin, and J. A. Stankovic. 2014. A carpooling recommendation system for taxicab services. IEEE Trans. Emerg. Top. Comput. 2, 3 (2014), 254–266.
[200]
Desheng Zhang, Tian He, Yunhuai Liu, and John A. Stankovic. 2013. CallCab: A unified recommendation system for carpooling and regular taxicab services. In Proceedings of the IEEE International Conference on Big Data. IEEE, 439–447.
[201]
Desheng Zhang, Tian He, Fan Zhang, Mingming Lu, Yunhuai Liu, Haengju Lee, and Sang H. Son. 2016. Carpooling service for large-scale taxicab networks. ACM Trans. Sens. Netw. 12, 3 (2016), 1–35.
[202]
F. Zhang, Z. J. Yang, Y. Wang, and F. Kuang. 2016. An augmented estimation of distribution algorithm for multi-carpooling problem with time window. In Proceedings of the IEEE 83rd Vehicular Technology Conference (VTC Spring). 1–5.
[203]
J. T. Zhang. 2016. A research the dynamic pricing strategy of taxi software. J. Tangsh. Univ. 29, 6 (2016), 78–84.
[204]
Wei Zhang, Ruichun He, Yong Chen, Mingxia Gao, and Changxi Ma. 2019. Research on taxi pricing model and optimization for carpooling detour problem. J. Adv. Transport. (2019).
[205]
Wei Zhang, Ruichun He, Changxi Ma, and Mingxia Gao. 2018. Research on taxi driver strategy game evolution with carpooling detour. J. Adv. Transport. (2018).
[206]
Wei Zhang, Ruichun He, Qiang Xiao, and Changxi Ma. 2017. Taxi carpooling model and carpooling effects simulation. Int. J. Simul. Process Model. 12, 3–4 (2017), 338–346.
[207]
Z. Zhang, G. Wang, B. Cao, and Y. Han. 2015. Data services for carpooling based on large-scale traffic data analysis. In Proceedings of the IEEE International Conference on Services Computing. 672–679.
[208]
Tianlu Zhao, Yongjian Yang, and En Wang. 2020. Minimizing the average arriving distance in carpooling. Int. J. Distrib. Sens. Netw. 16, 1 (2020), 1550147719899369.
[209]
Guiliang Zhou, Mengru Lv, Tianwen Bao, Lina Mao, and Kai Huang. 2019. Design of intelligent carpooling program based on big data analysis and multi-information perception. Clust. Comput. 22, 1 (2019), 521–532.
[210]
Zhuping Zhou, Kai Zhang, Wenbo Zhu, and Yinhai Wang. 2019. Modeling lane-choice behavior to optimize pricing strategy for HOT lanes: A support vector regression approach. J. Transport. Eng. A: Syst. 145, 4 (2019), 04019004.
[211]
Liehuang Zhu, Meng Li, Zijian Zhang, and Zhan Qin. 2018. ASAP: An anonymous smart-parking and payment scheme in vehicular networks. IEEE Trans. Depend. Secure Comput. (2018).

Cited By

View all

Recommendations

Comments

Information & Contributors

Information

Published In

cover image ACM Computing Surveys
ACM Computing Surveys  Volume 54, Issue 10s
January 2022
831 pages
ISSN:0360-0300
EISSN:1557-7341
DOI:10.1145/3551649
Issue’s Table of Contents

Publisher

Association for Computing Machinery

New York, NY, United States

Publication History

Published: 13 September 2022
Online AM: 14 January 2022
Accepted: 16 November 2021
Revised: 06 September 2021
Received: 26 April 2021
Published in CSUR Volume 54, Issue 10s

Permissions

Request permissions for this article.

Check for updates

Author Tags

  1. Connected autonomous vehicles
  2. carpooling
  3. ride-sharing
  4. vehicular networks
  5. intelligent transportation systems

Qualifiers

  • Survey
  • Refereed

Contributors

Other Metrics

Bibliometrics & Citations

Bibliometrics

Article Metrics

  • Downloads (Last 12 months)588
  • Downloads (Last 6 weeks)52
Reflects downloads up to 31 Jan 2025

Other Metrics

Citations

Cited By

View all

View Options

Login options

Full Access

View options

PDF

View or Download as a PDF file.

PDF

eReader

View online with eReader.

eReader

Full Text

View this article in Full Text.

Full Text

HTML Format

View this article in HTML Format.

HTML Format

Figures

Tables

Media

Share

Share

Share this Publication link

Share on social media