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Application of Unsupervised Anomaly Detection Techniques to Moisture Content Data from Wood Constructions
2021
Forests
Wood is considered one of the most important construction materials, as well as a natural material prone to degradation, with fungi being the main reason for wood failure in a temperate climate. Visual inspection of wood or other approaches for monitoring are time-consuming, and the incipient stages of decay are not always visible. Thus, visual decay detection and such manual monitoring could be replaced by automated real-time monitoring systems. The capabilities of such systems can range from
doi:10.3390/f12020194
fatcat:nke6v6mvinfefom4smybzceu2a