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Sgarabotto, A.; Manzella, I.; Raby, A.

Smart sensor data from tracking the displacement of a physical analogue of a large wood dam in laboratory experiments

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This dataset is available under the terms of the Open Government Licence

https://doi.org/10.5285/94aa98b2-b7f7-42c8-81ad-3085d0151eff
This dataset contains measurements from smart sensors monitoring the motion state of a physical analogue of a Large Wood (LW) dam in laboratory experiments. The smart sensors were equipped with an accelerometer, gyroscope and magnetometer and they recorded angular velocity, total acceleration, and the magnetic field. These data were used to calculate the linear acceleration and gravity acceleration which are also provided in this dataset. Three factors were changed during the experiment: inclination, constraint configuration, and flow conditions. The experiments were repeated 10 times.
Publication date: 2023-11-15
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More information

View numbers valid from 15 November 2023 (information prior to this was not collected)

Format

Comma-separated values (CSV)

Provenance & quality

The physical analogue model of an LW dam was composed of a single hollow wooden dowel installed in a flume using a supporting frame. Two aluminium connections placed at the ends of the wooden dowel were used to mount the wooden dowel on the supporting frame and meant simple modes of movements could be singled out, namely rotation, vertical displacements, and horizontal displacements.

The motion of the LW dam under a range of different conditions was monitored using an accelerometer, gyroscope and magnetometer which were installed within the longitudinal borehole of the wooden dowel. The accelerometer and gyroscope had an acquisition frequency set at 59.5 Hz, whereas the magnetometer recorded at 5 Hz. The sensor was equipped with an additional accelerometer measuring continuously; when the acceleration exceeded the user-defined threshold set at 390 mg, the sensor activated and started recording. Each experiment was repeated 10 times and the raw data from each of these experiments were stored in the ‘df_UC.csv’ files.

The raw data were processed to produce the measurements in the ‘df_UC_cal.csv’ files. First, the magnetometer data were upsampled to keep the same number of entries for each sensor. Second, each sensor was calibrated. Third, the orientation angles were computed combining the readings of accelerometer, gyroscope, and magnetometer by a built-in function from the Python library AHRS (Attitude and Heading Reference System). Gravity compensation was applied to derive linear acceleration and gravity acceleration. The total, linear and gravity acceleration in the earth system along the x and y direction were also calculated using simple transformations. More details are available in the ReadMe.docx.

Licensing and constraints

This dataset is available under the terms of the Open Government Licence

Cite this dataset as:
Sgarabotto, A.; Manzella, I.; Raby, A. (2023). Smart sensor data from tracking the displacement of a physical analogue of a large wood dam in laboratory experiments. NERC EDS Environmental Information Data Centre. https://doi.org/10.5285/94aa98b2-b7f7-42c8-81ad-3085d0151eff

Correspondence/contact details

Sgarabotto, A.
University of Plymouth
Plymouth
Devon
PL4 8AA
UNITED KINGDOM
 alessandro.sgarabotto@plymouth.ac.uk

Authors

Sgarabotto, A.
University of Plymouth
Manzella, I.
University of Twente
Raby, A.
University of Plymouth

Other contacts

Rights holders
University of Plymouth, University of Exeter, University of East Anglia
Custodian
NERC EDS Environmental Information Data Centre
 info@eidc.ac.uk
Publisher
NERC EDS Environmental Information Data Centre
 info@eidc.ac.uk

Additional metadata

Topic categories
environment
Keywords
large wood , large woody debris dam , smart sensors
Funding
Natural Environment Research Council
Last updated
27 February 2024 16:19