2020
DOI: 10.1002/esp.4988
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Novel mass‐aggregation‐based calibration of an acoustic method of monitoring bedload flux by infrequent desert flash floods

Abstract: The monitoring of bedload flux under flash flood conditions has been successfully achieved since 1992 using slot samplers in the semiarid Nahal Eshtemoa. In the present study, a surrogate bedload monitoring techniquethe Japanese plate microphonehas been deployed and calibrated against data from the slot samplers. Since a slot sampler has a sensitivity threshold that becomes especially important when transport rates are low, different averaging periods should be considered for high and low fluxes. In order to o… Show more

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Cited by 9 publications
(22 citation statements)
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References 54 publications
(92 reference statements)
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“…Finally, in the third phase (Phase 3 in Figure 2a), all of the samplers were full, and q bd was determined using the calibrated plate microphone located immediately upstream of the left sampler (R 2 = 0.76). The calibration was done using a mass aggregation method (Halfi et al, 2020), with the constant mass interval of 4 kg. This mass corresponds to the sensitivity of the sensor and allows to discriminate noise from the real bedload flux measurement.…”
Section: Directly Measured Parametersmentioning
confidence: 99%
“…Finally, in the third phase (Phase 3 in Figure 2a), all of the samplers were full, and q bd was determined using the calibrated plate microphone located immediately upstream of the left sampler (R 2 = 0.76). The calibration was done using a mass aggregation method (Halfi et al, 2020), with the constant mass interval of 4 kg. This mass corresponds to the sensitivity of the sensor and allows to discriminate noise from the real bedload flux measurement.…”
Section: Directly Measured Parametersmentioning
confidence: 99%
“…The drawback of these monitoring technologies is that in order to provide quantitative measurements, they require intensive calibration through direct bedload sampling with retention basins (Rickenmann and McArdell, 2008), slot samplers (e.g. Habersack et al, 2017;Halfi et al, 2020) or mobile bag samplers (e.g. Bunte et al, 2004;Dell'Agnese et al, 2014;Hilldale et al, 2015;Mao et al, 2016;Kreisler et al, 2017;Nicollier et al, 2021a).…”
Section: Introductionmentioning
confidence: 99%
“…For a given discharge, measured bedload transport rates in both Turkey Brook and Arroyo de los Pinos vary over two orders of magnitude. This variability has been termed 'noise', which mass aggregation is designed to eliminate (Halfi et al, 2020). However, as Figure 2 shows, the novel estimates obtained through mass aggregation provide a radically different perspective on the transport rate-flow relation to those obtained by other methods that seek to correlate the magnitude of bedload transport with an independent attribute.…”
Section: Dealing With Noisy Datamentioning
confidence: 99%