This content is not included in
your SAE MOBILUS subscription, or you are not logged in.
Cloud telematics supporting the logistical integration of trucks in the agricultural infrastructure
Technical Paper
2021-36-0011
ISSN: 0148-7191, e-ISSN: 2688-3627
Annotation ability available
Sector:
Event:
SAE BRASIL 2021 Web Forum
Language:
English
Abstract
The logistics process in Brazil and the world represents a significant portion of the cost of manufactured products, either for export or import. The availability of technologies that make the logistic process more efficient directly affects the product’s transportation productivity and makes them more competitive. This paper presents a telemetry model of commercial vehicles integrated with harvest machines in agriculture operations, allowing accurate scheduling of loading and unloading processes at the field. In this study, we introduce a conceptual model of a technological matrix, where the shared topologies of vehicle information processing help predict failures, identification of wear of vehicle and machine’s components. The opportunity is demonstrated to collect data from agricultural machines and combine them with data extracted from trucks. The sharing of information on farm machinery and trucks in real-time establishes an essential change in crop management in the field.
Authors
Topic
Citation
Abrahão, L., Filho, J., and YoshiokaFilho, L., "Cloud telematics supporting the logistical integration of trucks in the agricultural infrastructure," SAE Technical Paper 2021-36-0011, 2022, https://doi.org/10.4271/2021-36-0011.Also In
References
- P. Subke , M. Moshref , A. Vach e M. Steffelbauer Measures to Prevent Unauthorized Access to the In-Vehicle E/E System em SAE International 2017
- M. H. Eizae Q. Ni Driving with sharks IEEE vehicular technology magazine , 45 51 2017
- A. -. E. M. Association CAN Bus conection , Bruxelas 2004
- A. -. E. M. Association rFMS AUTHORIZATION SPECIFICATION 1.0.0 , Bruxelas 2019
- A. -. E. M. Association rFMS version 2.1.1 - API Documentation , Bruxelas 2019
- O. Nykänen , J. Backman , J. Väre , K. Framling e M. Madhikermi IOT-Based Interoperability Framework for Asset and Fleet Management 2016 IEEE 21st International Conference on Emerging Technologies and Factory Automation (ETFA) , 1 4 2016
- J. M. Anastacio A Novel Framework to Promete Eco-Driving through Smartphone-Vehicle Integration UNIVERSITAT POLITECNICA DE VALENCIA , 2017
- B. S. Paterlini , M. B. Perotoni , R. M. Vaz , K. N. Hodele P. F. Neto Estudo dos sistemas de comunicação V2X e os projetos de pesquisa 2014 SAE International , 2014
- A. Neilson , Indratmo , B. Dani ele S. Tjandra Systematic Review of the Literature on Big Data in the Transportation Big Data Research 17 , 33 44 2017
- L. Zhu , F. R. Yu , Y. Wang , B. Ning e T. Tang Big Data Analytics in Intelligent Transportation Systems: A Survey IEEE TRANSACTIONS ON INTELLIGENT TRANSPORTATION SYSTEMS , 383 398 2019
- A. A. Adebisi , O. E. Olusayo e O. S. Olatunde An Exploratory Study of K-Means and Expectation British Journal of Mathematics & Computer Science , 2012
- U. Winkelhake The Digital Transformation of the Automotive Industry Catalysts Springer 2018