2021
DOI: 10.3390/app11188666
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Application of Integrated Geophysical Methods for Site Suitability of Research Infrastructures (RIs) in China

Abstract: Research Infrastructures (RIs) are essential to achieve excellence in innovative scientific research. However, because of limited land availability and specific geological requirements, evaluating the viability of a site for a new RI can be a challenging task. Stringent safety construction requirements include developing site-specific architectural and geoengineering solutions, minimizing construction disturbances, and reinforcing rock and soil in a timely fashion. For successful development of the RIs in Chin… Show more

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Cited by 8 publications
(17 citation statements)
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“…Chang et al [11] combined multi-domain energy distribution with radial neural network to achieve feature extraction and classification and identification of seismic signals, while ensuring strong robustness, the classification accuracy is improved. However, the above research only considers two-dimensional data information, and is only based on the vector level, ignoring the important correlation in the spatial domain, and cannot meet the high-resolution and high-accuracy requirements of the complex guided wave signal [12]. Koushkaki et al [13] analysed many databases with various qualities, utilised tensor analysis to extract colour information and minimise the dimensionality of the data, and incorporated tensor analysis into machine learning and pattern recognition.…”
Section: Introductionmentioning
confidence: 99%
“…Chang et al [11] combined multi-domain energy distribution with radial neural network to achieve feature extraction and classification and identification of seismic signals, while ensuring strong robustness, the classification accuracy is improved. However, the above research only considers two-dimensional data information, and is only based on the vector level, ignoring the important correlation in the spatial domain, and cannot meet the high-resolution and high-accuracy requirements of the complex guided wave signal [12]. Koushkaki et al [13] analysed many databases with various qualities, utilised tensor analysis to extract colour information and minimise the dimensionality of the data, and incorporated tensor analysis into machine learning and pattern recognition.…”
Section: Introductionmentioning
confidence: 99%
“…It should be noted that this is a problem for most geophysical methods. One way to overcome this problem, or at least to reduce uncertainty about the results, is to apply different filters and integrate methods [47,48]. However, this is not always successful either.…”
Section: Introductionmentioning
confidence: 99%
“…However, it is always a difficult task to obtain RQD and RCI from the numerous drilling tests, since it is never easy to accurately locate place of collection samples (even up to 200 m) which in addition are so diverse in terms of the degree of fracture. Such techniques offer only point-scale vertical measurements, are difficult to carry out in steep topographic terrains and need more equipment 3 , 10 , 17 . Moreover, geotechnical tests are high-priced and time-consuming 16 , 21 .…”
Section: Introductionmentioning
confidence: 99%