Abstract
This paper introduces an open-source platform called ISOBlue HD for acquisition of context-rich data from agricultural machinery. We call these datasets context-rich, because they enable the identification of machine status and farming logistics by properly labeling, fusing, and processing the data. The system includes a single board computer, a cellular modem, local storage, and power-over-ethernet switch to sensors. The system allows remote diagnostics and access, automatic startup/shut down with vehicle operations, and uses Apache Kafka to enable robust data exchange. ISOBlue HD was deployed in a combine harvester during a 2019 wheat harvest for simultaneously capturing 69 million CAN frames, 230,000 GPS points, and 437 GB of video data, focusing on header status and operator actions over 84 h of harvest time. Analyses of the collected data demonstrate that contextual knowledge can be inferred on harvest logistics (paths, speeds, header status, material transfer) and sensor data semantics.
Author supplied keywords
Cite
CITATION STYLE
Wang, Y., Liu, H., Krogmeier, J., Reibman, A., & Buckmaster, D. (2020). Isoblue hd: An open-source platform for collecting context-rich agricultural machinery datasets. Sensors (Switzerland), 20(20), 1–22. https://doi.org/10.3390/s20205768
Register to see more suggestions
Mendeley helps you to discover research relevant for your work.