Screening of seismic records to perform time-history dynamic analyses of tailings dams: a power-spectral based approach
N.A. Labanda, M.G. Sottile, I.A. Cueto, A.O. Sfriso

TL;DR
This paper introduces a spectral-based screening method for selecting seismic records to efficiently perform time-history analyses of tailings dams, reducing computational effort while maintaining accuracy.
Contribution
A semi-analytical spectral property-based screening procedure is proposed to predict seismic demand, optimizing the selection of records for tailings dam stability analysis.
Findings
The method is validated with analytical and numerical models.
It is insensitive to the constitutive model used.
Applied successfully to a large tailings dam under strong earthquakes.
Abstract
Time-history deformation analyses of upstream-raised tailings dams use seismic records as input data. Such records must be representative of the in-situ seismicity in terms of a wide range of intensity measures (IMs) including peak ground acceleration (PGA), Arias intensity (AI), cumulative absolute velocity (CAV), source-to-site distance, duration, among others. No single IM is a sufficient descriptor of a given seismic demand (e.g. crest settlement) because different records, all of them compliant with any IM, can produce a very wide range of results from insignificant damage to global failure. The use of brute force, where hundreds of seismic records compliant with a set of IMs are employed, has proven to be a reasonable workaround of this limitation, at least able to produce a probabilistic density function of demand indicators. This procedure, however, requires a large number of…
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Taxonomy
TopicsTailings Management and Properties · Dam Engineering and Safety
