2023
DOI: 10.3390/su15108269
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A Machine Learning-Based Decision Support System for Predicting and Repairing Cracks in Undisturbed Loess Using Microbial Mineralization and the Internet of Things

Abstract: Recent years have seen a significant increase in interest across several sectors in the application of learning techniques to extract ground object information, such as soil cracks, from remote sensing high-resolution images. Out of the many technologies, the microbial-induced carbonate deposition (MICP) technology is used to inject bacteria and cementation liquid containing specific bacteria into the cracks of soil to be repaired. Calcium carbonate types of cement are produced by bacterial metabolism so that … Show more

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Cited by 2 publications
(1 citation statement)
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“…They also typically only provide data after an earthquake has already occurred. In contrast, IoT sensors can provide continuous data in real-time, allowing for EWS to be put in place [162][163][164]. This can be particularly useful in areas prone to earthquakes, where early warning can save lives and reduce damage.…”
Section: Iot-cloud-based Eewsmentioning
confidence: 99%
“…They also typically only provide data after an earthquake has already occurred. In contrast, IoT sensors can provide continuous data in real-time, allowing for EWS to be put in place [162][163][164]. This can be particularly useful in areas prone to earthquakes, where early warning can save lives and reduce damage.…”
Section: Iot-cloud-based Eewsmentioning
confidence: 99%