Intelligent Load Carrier Management

AI-supported monitoring and reduction of losses in logistics

JournalIndustry 4.0 Science
Issue Volume 41, 2025, Edition 2, Pages 78-84
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Abstract

Load carriers are essential for transporting manufactured parts in manufacturing companies. Despite their ‘simplicity’, they are usually expensive to purchase as they are manufactured expressly to fit purpose. While tracking methods such as GPS tracking can be used to prevent the loss of load carriers, this is associated with monitoring costs and presents challenges with regard to data protection as soon as the work performance of intralogistics employees is monitored. Assigning load carriers to designated clusters and monitoring these clusters provides an effective solution—without drawing conclusions about employee performance. Furthermore, artificial intelligence can optimize this approach whilst also deterring the theft of load carriers.

Keywords

Article

In the face of global competition and a rapidly changing market environment, manufacturing companies must carrier their goods along the supply chain in ever shorter periods of time [1]. Digital transformation has long been at work here, networking components such as load carriers, for example, to enable an intelligent supply chain. Using GPS or, more recently, Bluetooth connections to satellites [2], it is now easy to track the positions of objects and the routes that they are taking. However, what may be desirable with regard to objects poses a …

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Potentials: Innovation Resource Efficiency
Solutions: Logistics Logistics Technology Process Management

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