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Abstract:
With the rapid development of the Internet of Things (IoT) and big data technology, traditional logistics management has gradually exposed problems such as information silos, lagging response and inefficient resource allocation, and it is urgent to introduce intelligent and real-time monitoring and decision-making systems to improve the overall operation efficiency. In this paper, a logistics intelligent monitoring system based on big data of the Internet of Things is proposed, and the overall design of the system is based on the three-layer fusion architecture of "edge-cloud-intelligent decision-making": in the perception layer, high-frequency dynamic data collection of logistics nodes is realized through the deployment of heterogeneous IoT devices including RFID, GPS, and environmental sensors; At the edge layer, a lightweight deep learning model MobileNet is introduced for initial anomaly detection and event annotation to reduce cloud load and latency. In the cloud computing layer, a distributed storage and processing framework based on Apache Spark is used to construct a real-time event stream processing mechanism, and on this basis, a Time Series Convolutional Network (TCN) fusion model is superimposed to realize the deep feature modeling and multi-step trend prediction of node anomalies in the logistics chain. At the decision-making level, a reinforcement learning-driven dynamic resource scheduling mechanism was designed, which was based on Deep Deterministic Policy Gradient (DDPG) to intelligently optimize vehicle scheduling, path planning and warehouse management strategies according to environmental changes. The comprehensive experiments on the logistics dataset and the actual operation data show that the proposed system improves the accuracy of anomaly detection by 24.7% compared with the traditional method. © 2025 IEEE.
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Year: 2025
Page: 60-63
Language: English
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ESI Highly Cited Papers on the List: 0 Unfold All
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30 Days PV: 3
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