CYLGApr 17, 2024

Designing an Intelligent Parcel Management System using IoT & Machine Learning

arXiv:2404.11661v14 citationsh-index: 52022 IEEE IAS Global Conference on Emerging Technologies (GlobConET)
Originality Synthesis-oriented
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This addresses parcel delivery efficiency and safety for railway operations, but appears incremental as it combines existing technologies like IoT and QR codes.

The paper tackles parcel management in railways by designing an IoT and machine learning system for automated scanning and sorting, claiming significant improvements in accuracy and efficiency.

Parcels delivery is a critical activity in railways. More importantly, each parcel must be thoroughly checked and sorted according to its destination address. We require an efficient and robust IoT system capable of doing all of these tasks with great precision and minimal human interaction. This paper discusses, We created a fully-fledged solution using IoT and machine learning to assist trains in performing this operation efficiently. In this study, we covered the product, which consists mostly of two phases. Scanning is the first step, followed by sorting. During the scanning process, the parcel will be passed through three scanners that will look for explosives, drugs, and any dangerous materials in the parcel and will trash it if any of the tests fail. When the scanning step is over, the parcel moves on to the sorting phase, where we use QR codes to retrieve the details of the parcels and sort them properly. The simulation of the system is done using the blender software. Our research shows that our procedure significantly improves accuracy as well as the assessment of cutting-edge technology and existing techniques.

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