Measurement of the Filling Level of Trailers Used in Local Transport

An overview of existing technologies and a practical test with ultrasonic sensors in automotive logistics

JournalIndustrie 4.0 Management
Issue Volume 34, 2018, Edition 5, Pages 29-32
Open Accesshttps://doi.org/10.30844/I40M18-5_29-32
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Abstract

In transport logistics the utilization of transports is often unknown. As a consequence it is not possible to use this information during the transport planning phase and it cannot be used for operational transport control. This report describes technologies which can measure the utilization of shipping spaces. Due to the lack of market-ready systems, a new system was developed that uses ultrasonic sensors to determine the transport utilization. The system was built on a trailer and was tested during live operation. It was shown that the system fulfills the given requirements and it is suggested to expand the tests.

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Bibliography

[1] KRONE: Krone Telematics. URL: https://www.krone-trailer.com/produkte/krone-telematics/, Abrufdatum 01.05.2018.
[2] Klug, F: Logistikmanagement in der Automobilindustrie – Grundlagen der Logistik im Automobilbau. Berlin Heidelberg 2010.
[3] Fraunhofer IFF: Laderaumüberwachung zur flexiblen Tourenplanung in der Transportlogistik. URL: https:// www.iff.fraunhofer.de/content/dam/iff/de/dokumente/publikationen/laderaumueberwachung-zur-flexiblen-tourenplanung-in-transportlogistik-fraunhofer-iff.pdf, Abrufdatum 01.05.2018.
[4] Cargometer GmbH: 3D-Vermssung von Ladegütern am fahrenden Gabelstapler. URL: http://www.cargometer.com, Abrufdatum 01.05.2018.
[5] Thingspeak: Plattform für IoT Anwendungen. URL: thingspeak.com, Abrufdatum 01.05.2018.

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