Data-driven, sensor-based taxonomy for environmental life cycle assessment of pallets
DOI:
https://doi.org/10.2195/lj_proc_franke_en_202410_01Schlagworte:
logistics, warehousing, taxonomy, activity recognition, inertial measurement unit, life cycleAbstract
Pallets are one of the most important load carriers for international supply chains. Yet, continuously tracking activities such as Driving, Lifting or Standing along their life cycle is hardly possible. This contribution is the first to propose a taxonomy for sensor-based activity recognition of pallets. Different types of acceleration sensors are deployed in three logistical scenarios for creating a benchmark dataset. A random forest classifier is deployed for supervised learning. The results demonstrate that automated, sensor-based life cycle assessment based on the proposed taxonomy is feasible. All data and corresponding videos are published in the SPARL dataset [1].
Downloads
Veröffentlicht
30.10.2024
Zitationsvorschlag
Franke, S., Bommert, A., Brandt, M. J., Kuhlmann, J. L., Olivier, M.-C., Schorning, K., … Kirchheim, A. (2024). Data-driven, sensor-based taxonomy for environmental life cycle assessment of pallets. Logistics Journal: Proceedings, (20). https://doi.org/10.2195/lj_proc_franke_en_202410_01
Ausgabe
Rubrik
Artikel
Lizenz
Copyright (c) 2024 Logistics Journal

Dieses Werk steht unter der Lizenz Creative Commons Namensnennung 4.0 International.



