2023
DOI: 10.3389/fenrg.2023.1265111
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Deep learning and IoT enabled digital twin framework for monitoring open-pit coal mines

Rui Yu,
Xiuyu Yang,
Kai Cheng

Abstract: Early detection of cracks enables timely mitigation and maintenance actions, ensuring the safety of personnel and equipment within the open-pit coal mine. Monitoring open-pit coal mines and cracks is essential for the safety of workers and for saving national assets. Digital twins (DTs) can be crucial in open-pit coal mine crack detection. DTs enable continuous real-time monitoring of the open-pit mine, including its structures and surrounding environment. Various sensors and internet-of-things devices can be … Show more

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