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Covadonga Palencia

Researcher at University of León

Publications -  27
Citations -  535

Covadonga Palencia is an academic researcher from University of León. The author has contributed to research in topics: Disdrometer & Ultimate tensile strength. The author has an hindex of 9, co-authored 20 publications receiving 359 citations.

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Splash erosion : A review with unanswered questions

TL;DR: A review of the scientific literature published in peer-reviewed international journals (ISI) over the last decades on splash erosion research sheds light on the current scientific knowledge on this topic and highlights the research gaps and unanswered questions in our understanding of soil erosion processes due to splash as mentioned in this paper.
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The kinetic energy of rain measured with an optical disdrometer: An application to splash erosion

TL;DR: In this article, the procedures used to measure and compute the kinetic energy and various other rainfall characteristics as well as the concurrent splash erosion rates in a recently terraced forest plantation in Soutelo, north-central Portugal, from May to September 2007 were described.
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Impact of sulfate activation of rice husk ash on the performance of high strength steel fiber reinforced recycled aggregate concrete

TL;DR: In this paper , chemical activators (sodium sulfate) have been used to enhance the early-age strength of RHA concrete, particularly in early-stage strength, and the positive impact of the activator was observed in the durability characteristics of samples with recycled aggregates.
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Radiative forcing of haze during a forest fire in Spain

TL;DR: In this article, the aging process of smoke aerosol was monitored, showing that in 3.5 h, fine aerosol increased up to 0.06 μm in the geometric median diameter of the fine mode.
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To predict the compressive strength of self compacting concrete with recycled aggregates utilizing ensemble machine learning models

TL;DR: In this article , the authors applied machine learning methods to predict the compression strength of self-compacting recycled aggregate concrete (SCC) components: cement, water, mineral admixture, coarse aggregates, and superplasticizers were taken as input variables and compression strength as output variables.