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Engineering with Computers (297)
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Prayogo, D., Cheng, M.-Y., Wu, Y.-W., & Tran, D.-H. (2019). Combining machine learning models via adaptive ensemble weighting for prediction of shear capacity of reinforced-concrete deep beams. Engineering with Computers.

Authors 4
  1. Doddy Prayogo (first)
  2. Min-Yuan Cheng (additional)
  3. Yu-Wei Wu (additional)
  4. Duc-Hoc Tran (additional)
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Dates
Type When
Created 6 years, 4 months ago (April 30, 2019, 9:40 a.m.)
Deposited 5 years, 3 months ago (May 19, 2020, 5:58 a.m.)
Indexed 1 day, 10 hours ago (Aug. 30, 2025, 12:34 p.m.)
Issued 6 years, 4 months ago (April 30, 2019)
Published 6 years, 4 months ago (April 30, 2019)
Published Online 6 years, 4 months ago (April 30, 2019)
Funders 1
  1. Kementerian Riset Teknologi Dan Pendidikan Tinggi Republik Indonesia 10.13039/501100009509

    Region: Asia

    gov (National government)

    Labels3
    1. Ministry of Research, Technology and Higher Education
    2. Kementerian Ristek Dikti
    3. Kementerian Riset dan Teknologi
    Awards1
    1. 123.58/D2.3/KP/2018

@article{Prayogo_2019, title={Combining machine learning models via adaptive ensemble weighting for prediction of shear capacity of reinforced-concrete deep beams}, ISSN={1435-5663}, url={http://dx.doi.org/10.1007/s00366-019-00753-w}, DOI={10.1007/s00366-019-00753-w}, journal={Engineering with Computers}, publisher={Springer Science and Business Media LLC}, author={Prayogo, Doddy and Cheng, Min-Yuan and Wu, Yu-Wei and Tran, Duc-Hoc}, year={2019}, month=apr }