Smart City Gnosys

Smart city article details

Title Potential Of A Travel Mode Change In Smart Cities: A Review
ID_Doc 42481
Authors Moudra K.; Matowicki M.; Pribyl O.; Bruhova Foltynova H.
Year 2019
Published 2019 Smart Cities Symposium Prague, SCSP 2019 - Proceedings
DOI http://dx.doi.org/10.1109/SCSP.2019.8805724
Abstract Travel behavior is certainly an important study area in the field of smart cities. Influencing travel behavior or changing travel patterns (for example by motivating travelers to use alternative travel modes) has the potential to lower congestions and thus significantly affect the quality of life as well as the environment - the key objectives of smart city projects and initiatives. This paper provides a review of existing research into data collection methods dealing with the topic of travel behavior, mainly with changes towards using alternative travel modes. First, a theoretical classification of survey methods is provided. Next, their advantages and limitations are demonstrated on real-world examples. Finally, the findings of this analysis are formulated into recommendations for new research into the potential of smart city measures to influence transport behavior in the Usti nad Labem Region of the Czech Republic.
Author Keywords Data collection; experiments; longitudinal studies; revealed preferences; smart cities; stated preferences; travel behavior change


Similar Articles


Id Similarity Authors Title Published
60467 View0.884Poslad, S; Ma, A; Wang, ZC; Mei, HBUsing A Smart City Iot To Incentivise And Target Shifts In Mobility Behaviour-Is It A Piece Of Pie?SENSORS, 15, 6 (2015)
13996 View0.87Marchesani F.; Masciarelli F.; Bikfalvi A.Cities (R)Evolution In The Smart Era: Smart Mobility Practices As A Driving Force For Tourism Flow And The Moderating Role Of Airports In CitiesInternational Journal of Tourism Cities, 9, 4 (2023)
50444 View0.869Xiao M.; Chen L.; Feng H.; Peng Z.; Long Q.Smart City Public Transportation Route Planning Based On Multi-Objective Optimization: A ReviewArchives of Computational Methods in Engineering, 31, 6 (2024)
51211 View0.867Dash A.Smart Mobility In Smart Cities: Transforming The Experiences Of Citizens Into The Future Of Smart CitiesTransforming Government: People, Process and Policy, 18, 2 (2024)
13158 View0.866Meegahapola L.; Kandappu T.; Jayarajah K.; Akoglu L.; Xiang S.; Misra A.Buscope: Fusing Individual & Aggregated Mobility Behavior For “Live” Smart City ServicesMobiSys 2019 - Proceedings of the 17th Annual International Conference on Mobile Systems, Applications, and Services (2019)
60530 View0.863Manca F.; Daina N.; Sivakumar A.; Yi J.W.X.; Zavistas K.; Gemini G.; Vegetti I.; Dargan L.; Marchet F.Using Digital Social Market Applications To Incentivise Active Travel: Empirical Analysis Of A Smart City InitiativeSustainable Cities and Society, 77 (2022)
51091 View0.863Palanichamy V.; Vijay A.; Moorthy R.Smart Innovative Congestion Pricing Strategy For Traffic Demand Management In Smart Cities Using Structural Equation Modelling2023 Annual International Conference on Emerging Research Areas: International Conference on Intelligent Systems, AICERA/ICIS 2023 (2023)
45946 View0.863Allam Z.; Sharifi A.Research Structure And Trends Of Smart Urban MobilitySmart Cities, 5, 2 (2022)
60076 View0.861Conterno R.C.; Santos G.D.Urban Mobility In Smart Cities: Systematic Approach To Identify Gaps And Explore Opportunities; [Mobilidade Urbana Em Cidades Inteligentes: Uma Abordagem Sistemática Para Identificar Lacunas E Explorar Oportunidades]Revista Brasileira de Geografia Fisica, 18, 2 (2025)
14989 View0.86Bhosle N.; Jagtap J.; Shivakrishna D.Comparative Analysis Of Different Machine Learning Techniques For Travel Mode Prediction2024 Smart Cities Symposium Prague, SCSP 2024 - Proceedings (2024)