Matches in SemOpenAlex for { <https://semopenalex.org/work/W4384342951> ?p ?o ?g. }
- W4384342951 endingPage "26404" @default.
- W4384342951 startingPage "26391" @default.
- W4384342951 abstract "Laser-induced breakdown spectroscopy (LIBS) is a remarkable elemental identification and quantification technique used in multiple sectors, including science, engineering, and medicine. Machine learning techniques have recently sparked widespread interest in the development of calibration-free LIBS due to their ability to generate a defined pattern for complex systems. In geotechnical engineering, understanding soil mechanics in relation to the applications is of paramount importance. The knowledge of soil unconfined compressive strength (UCS) enables engineers to identify the behaviors of a particular soil and propose effective solutions to given geotechnical problems. However, the experimental techniques involved in the measurements of soil UCS are incredibly expensive and time-consuming. In this work, we develop a pioneering technique to estimate the soil unconfined compressive strength using artificial intelligent methods based on the spectra obtained from the LIBS system. Decision tree regression (DTR) and support vector regression learners were initially employed, and consequently, the adaptive boosting method was applied to improve the performance of the two single learners. The prediction power of the established models was determined using the standard performance evaluation metrics such as the root-mean-square error, CC between the predicted and actual soil UCS values, mean absolute error, and R2 score. Our results revealed that the boosted DTR exhibited the highest coefficient of correlation of 99.52% and an R2 value of 99.03% during the testing phase. To validate the models, the UCS values of soils stabilized with lime and cement were predicted with an optimum degree of accuracy, confirming the models' suitability and generalization strength for soil UCS investigations." @default.
- W4384342951 created "2023-07-15" @default.
- W4384342951 creator A5031285973 @default.
- W4384342951 creator A5073721902 @default.
- W4384342951 creator A5076760432 @default.
- W4384342951 creator A5086244765 @default.
- W4384342951 creator A5088640101 @default.
- W4384342951 date "2023-07-14" @default.
- W4384342951 modified "2023-09-26" @default.
- W4384342951 title "Investigating the Soil Unconfined Compressive Strength Based on Laser-Induced Breakdown Spectroscopy Emission Intensities and Machine Learning Techniques" @default.
- W4384342951 cites W2000127653 @default.
- W4384342951 cites W2000164913 @default.
- W4384342951 cites W2019673695 @default.
- W4384342951 cites W2021765748 @default.
- W4384342951 cites W2035338661 @default.
- W4384342951 cites W2059468946 @default.
- W4384342951 cites W2060258651 @default.
- W4384342951 cites W2066106152 @default.
- W4384342951 cites W2067815213 @default.
- W4384342951 cites W2070172154 @default.
- W4384342951 cites W2170248211 @default.
- W4384342951 cites W2259799082 @default.
- W4384342951 cites W2754433569 @default.
- W4384342951 cites W2775533623 @default.
- W4384342951 cites W2909793142 @default.
- W4384342951 cites W2911780540 @default.
- W4384342951 cites W2940596626 @default.
- W4384342951 cites W2945449881 @default.
- W4384342951 cites W2990531785 @default.
- W4384342951 cites W2991616208 @default.
- W4384342951 cites W3005507516 @default.
- W4384342951 cites W3010018763 @default.
- W4384342951 cites W3013738735 @default.
- W4384342951 cites W3035628523 @default.
- W4384342951 cites W3036025972 @default.
- W4384342951 cites W3087008348 @default.
- W4384342951 cites W3115642906 @default.
- W4384342951 cites W3115867105 @default.
- W4384342951 cites W3135433555 @default.
- W4384342951 cites W3135719804 @default.
- W4384342951 cites W3194691195 @default.
- W4384342951 cites W3202348163 @default.
- W4384342951 cites W3204631755 @default.
- W4384342951 cites W3211332754 @default.
- W4384342951 cites W3213173881 @default.
- W4384342951 cites W4212976523 @default.
- W4384342951 cites W4221129463 @default.
- W4384342951 cites W4284959514 @default.
- W4384342951 cites W4285040354 @default.
- W4384342951 cites W4285992116 @default.
- W4384342951 cites W4289550729 @default.
- W4384342951 cites W4293002986 @default.
- W4384342951 cites W4303614048 @default.
- W4384342951 cites W4307050651 @default.
- W4384342951 cites W4313556486 @default.
- W4384342951 cites W4318017281 @default.
- W4384342951 doi "https://doi.org/10.1021/acsomega.3c02514" @default.
- W4384342951 hasPubMedId "https://pubmed.ncbi.nlm.nih.gov/37521636" @default.
- W4384342951 hasPublicationYear "2023" @default.
- W4384342951 type Work @default.
- W4384342951 citedByCount "0" @default.
- W4384342951 crossrefType "journal-article" @default.
- W4384342951 hasAuthorship W4384342951A5031285973 @default.
- W4384342951 hasAuthorship W4384342951A5073721902 @default.
- W4384342951 hasAuthorship W4384342951A5076760432 @default.
- W4384342951 hasAuthorship W4384342951A5086244765 @default.
- W4384342951 hasAuthorship W4384342951A5088640101 @default.
- W4384342951 hasBestOaLocation W43843429511 @default.
- W4384342951 hasConcept C105795698 @default.
- W4384342951 hasConcept C119857082 @default.
- W4384342951 hasConcept C121332964 @default.
- W4384342951 hasConcept C12267149 @default.
- W4384342951 hasConcept C127413603 @default.
- W4384342951 hasConcept C128990827 @default.
- W4384342951 hasConcept C139945424 @default.
- W4384342951 hasConcept C154945302 @default.
- W4384342951 hasConcept C159390177 @default.
- W4384342951 hasConcept C159750122 @default.
- W4384342951 hasConcept C159985019 @default.
- W4384342951 hasConcept C187320778 @default.
- W4384342951 hasConcept C192562407 @default.
- W4384342951 hasConcept C30407753 @default.
- W4384342951 hasConcept C32891209 @default.
- W4384342951 hasConcept C33923547 @default.
- W4384342951 hasConcept C39432304 @default.
- W4384342951 hasConcept C41008148 @default.
- W4384342951 hasConcept C46686674 @default.
- W4384342951 hasConcept C50497907 @default.
- W4384342951 hasConcept C62520636 @default.
- W4384342951 hasConceptScore W4384342951C105795698 @default.
- W4384342951 hasConceptScore W4384342951C119857082 @default.
- W4384342951 hasConceptScore W4384342951C121332964 @default.
- W4384342951 hasConceptScore W4384342951C12267149 @default.
- W4384342951 hasConceptScore W4384342951C127413603 @default.
- W4384342951 hasConceptScore W4384342951C128990827 @default.
- W4384342951 hasConceptScore W4384342951C139945424 @default.
- W4384342951 hasConceptScore W4384342951C154945302 @default.
- W4384342951 hasConceptScore W4384342951C159390177 @default.