Smart City Gnosys

Smart city article details

Title System Dynamics Modeling For Smart And Collaborative Last Mile Networks
ID_Doc 54277
Authors Nitsche A.-M.; Franczyk B.; Schumann C.-A.
Year 2022
Published 2022 IEEE 28th International Conference on Engineering, Technology and Innovation, ICE/ITMC 2022 and 31st International Association for Management of Technology, IAMOT 2022 Joint Conference - Proceedings
DOI http://dx.doi.org/10.1109/ICE/ITMC-IAMOT55089.2022.10033178
Abstract This paper presents a comprehensive model of smart and collaborative last mile supply networks. Facing a multitude of challenges such as economic pressure, demographic change, and environmental demands, urban last mile supply networks are increasingly strained. Various solutions and strategies such as the integration of novel technologies and collaborative approaches are discussed in the literature and tested in case studies. The application of artificial intelligence for supply networks holds potential for future urban logistics optimization and is thus considered a relevant research avenue. A design science approach comprising system dynamics-based modeling is chosen due to last mile networks' inherent complexity. Systems thinking has proven to be useful in urban logistics and smart city research contexts as it enables researchers and practitioners to achieve a more holistic perspective. The proposed model contributes to a better understanding of last mile network complexity as well as the underlying interdependencies. © 2022 IEEE.
Author Keywords artificial intelligence; last mile; supply chain collaboration; supply chain management; system dynamics; urban logistics


Similar Articles


Id Similarity Authors Title Published
50354 View0.884Wang J.Smart City Logistics: Leveraging Ai For Last-Mile Delivery Efficiency2025 4th International Symposium on Computer Applications and Information Technology, ISCAIT 2025 (2025)
23960 View0.872Fatorachian H.; Kazemi H.; Pawar K.Enhancing Smart City Logistics Through Iot-Enabled Predictive Analytics: A Digital Twin And Cybernetic Feedback ApproachSmart Cities, 8, 2 (2025)
37479 View0.87Wage O.; Heumann M.; Bienzeisler L.Modeling And Calibration Of Last-Mile Logistics To Study Smart-City Dynamic Space Management ScenariosSuMob 2023 - Proceedings of the 1st ACM SIGSPATIAL International Workshop on Sustainable Mobility (2023)
34781 View0.867Guerrazzi E.Last Mile Logistics In Smart Cities: An It Platform For Vehicle Sharing And RoutingLecture Notes in Information Systems and Organisation, 33 (2020)
34782 View0.864Özbekler T.M.; Akgül A.K.Last Mile Logistics In The Framework Of Smart Cities: A Typology Of City Logistics SchemesInternational Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences - ISPRS Archives, 44, 4/W3 (2020)
10428 View0.862Arzou N.; Ait Hammou I.; Kobiyh M.; Mkik M.; Hebaz A.Artificial Intelligence And Supply Chain Management : Implications For The Smart Cities Of Tomorrow2024 IEEE 15th International Colloquium of Logistics and Supply Chain Management, LOGISTIQUA 2024 (2024)
23946 View0.86Kmiecik M.; Wierzbicka A.Enhancing Smart Cities Through Third-Party Logistics: Predicting Delivery IntensitySmart Cities, 7, 1 (2024)
45050 View0.856Nolte F.P.; Wilken N.; Bartelt C.Rendezvous Delivery: Utilizing Autonomous Electric Vehicles To Improve The Efficiency Of Last Mile Parcel Delivery In Urban Areas2021 IEEE International Conference on Pervasive Computing and Communications Workshops and other Affiliated Events, PerCom Workshops 2021 (2021)
2190 View0.856Büyüközkan G.; Uztürk D.A Hybrid Methodology For Last Mile Delivery Strategy And Solution Selection At Smart CitiesTransactions on Engineering Technologies: World Congress on Engineering 2019 (2020)
53660 View0.853Deja A.; Ślączka W.; Kaup M.; Szołtysek J.; Dzhuguryan L.; Dzhuguryan T.Supply Chain Management In Smart City Manufacturing Clusters: An Alternative Approach To Urban Freight Mobility With Electric VehiclesEnergies, 17, 21 (2024)