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Oct 4, 2022
Most local agencies that use full-depth reclamation (FDR) choose the stabilizer to be used by selecting a vendor rather than performing test on the pavement materials. Most of the methods available for selecting the technique or additive to be used rely on a sieve test and the plastic index (PI). The PI is not sensitive at the low values found in m... |
Sep 16, 2022 - CAIT-UTC-REG54: Rotorcraft Landing Sites Identification – Scaling and Generalization of the AI Model
Rasool, Ghulam; Bouaynaya, Nidhal; Nasir, Abdullah; Koutsoubis, Nikolas, 2022, "Data for: "CAIT-UTC-REG54: Rotorcraft Landing Sites Identification – Scaling and Generalization of the AI Model"", https://doi.org/10.7910/DVN/ZCQNYS, Harvard Dataverse, V1
The updated information about the location and type of landing sites is essential for the Federal Aviation Administration (FAA) and the Department of Transportation (DOT). However, the acquisition, verification, and regular updating of information about landing sites are not straightforward. The lack of current and correct information on helicopter... |
Sep 16, 2022 -
Data for: "CAIT-UTC-REG54: Rotorcraft Landing Sites Identification – Scaling and Generalization of the AI Model"
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