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      KCI등재 SCIE SCOPUS

      A neural-based predictive model of the compressive strength of waste LCD glass concrete

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      https://www.riss.kr/link?id=A103596851

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      다국어 초록 (Multilingual Abstract)

      The Taiwanese liquid crystal display (LCD) industry has traditionally produced a huge amount of waste glass that is placed in landfills. Waste glass recycling can reduce the material costs of concrete and promote sustainable environmental protection a...

      The Taiwanese liquid crystal display (LCD) industry has traditionally produced a huge amount of waste glass that is placed in landfills. Waste glass recycling can reduce the material costs of concrete and promote sustainable environmental protection activities. Concrete is always utilized as structural material; thus, the concrete compressive strength with a variety of mixtures must be studied using predictive models to achieve more precise results. To create an efficient waste LCD glass concrete (WLGC) design proportion, the related studies utilized a multivariable regression analysis to develop a compressive strength waste LCD glass concrete equation. The mix design proportion for waste LCD glass and the compressive strength relationship is complex and nonlinear. This results in a prediction weakness for the multivariable regression model during the initial growing phase of the compressive strength of waste LCD glass concrete. Thus, the R ratio for the predictive multivariable regression model is 0.96. Neural networks (NN) have a superior ability to handle nonlinear relationships between multiple variables by incorporating supervised learning. This study developed a multivariable prediction model for the determination of waste LCD glass concrete compressive strength by analyzing a series of laboratory test results and utilizing a neural network algorithm that was obtained in a related prior study. The current study also trained the prediction model for the compressive strength of waste LCD glass by calculating the effects of several types of factor combinations, such as the different number of input variables and the relevant filter for input variables. These types of factor combinations have been adjusted to enhance the predictive ability based on the training mechanism of the NN and the characteristics of waste LCD glass concrete. The selection priority of the input variable strategy is that evaluating relevance is better than adding dimensions for the NN prediction of the compressive strength of WLGC. The prediction ability of the model is examined using test results from the same data pool. The R ratio was determined to be approximately 0.996. Using the appropriate input variables from neural networks, the model validation results indicated that the model prediction attains greater accuracy than the multivariable regression model during the initial growing phase of compressive strength. Therefore, the neural-based predictive model for compressive strength promotes the application of waste LCD glass concrete.

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      참고문헌 (Reference)

      1 Lin, K. L., "The utilization of thin film transistor liquid crystal display waste glass as a pozzolanic material" 163 (163): 916-921, 2009

      2 Kumar, S. C., "Sustainable development using supplementary cementitious materials and recycled aggregate" 2 (2): 165-171, 2012

      3 Chun, Y. M., "Sustainable construction materials and technologies" 2007

      4 Wang, H. Y., "Study of thin film transition liquid crystal display(TFT-LCD)optical waste glass applied in early-high-strength controlled low strength materials" 5 (5): 491-501, 2008

      5 Park, S. B., "Studies on mechanical properties of concrete containing waste glass aggregate" 34 (34): 2181-2189, 2004

      6 Hussain, M. V., "Strength properties of concrete containing waste glass powder" 5 (5): 1-4, 2015

      7 May, R., "Review of input variable selection methods for artificial neural networks" 2011

      8 Sajedi, F., "Relationships between compressive strength cement-slag concrete under air and water curing regimes" 1 (1): 202-225, 2012

      9 Adaway, M., "Recycled glass as a partial replacement for fine aggregate in structural concrete-effects on compressive strength" 14 (14): 116-122, 2015

      10 Kou, S. C., "Properties of self-compacting concrete prepared with coarse and fine aggregates" 31 (31): 622-627, 2009

      1 Lin, K. L., "The utilization of thin film transistor liquid crystal display waste glass as a pozzolanic material" 163 (163): 916-921, 2009

      2 Kumar, S. C., "Sustainable development using supplementary cementitious materials and recycled aggregate" 2 (2): 165-171, 2012

      3 Chun, Y. M., "Sustainable construction materials and technologies" 2007

      4 Wang, H. Y., "Study of thin film transition liquid crystal display(TFT-LCD)optical waste glass applied in early-high-strength controlled low strength materials" 5 (5): 491-501, 2008

      5 Park, S. B., "Studies on mechanical properties of concrete containing waste glass aggregate" 34 (34): 2181-2189, 2004

      6 Hussain, M. V., "Strength properties of concrete containing waste glass powder" 5 (5): 1-4, 2015

      7 May, R., "Review of input variable selection methods for artificial neural networks" 2011

      8 Sajedi, F., "Relationships between compressive strength cement-slag concrete under air and water curing regimes" 1 (1): 202-225, 2012

      9 Adaway, M., "Recycled glass as a partial replacement for fine aggregate in structural concrete-effects on compressive strength" 14 (14): 116-122, 2015

      10 Kou, S. C., "Properties of self-compacting concrete prepared with coarse and fine aggregates" 31 (31): 622-627, 2009

      11 Topçu, İ. B., "Properties of concrete containing waste glass" 34 (34): 267-274, 2004

      12 Glantz, S. A., "Primer of Applied Regression and Analysis of Variance" McGraw-Hill 1990

      13 Hwang, K., "Numerical prediction model for compressive strength development of concrete containing fly ash" 519 : 1-6, 1999

      14 Scott, D. W., "Multivariate Density Estimation: Theory, Practice and Visualization" John Wiley and Sons 1992

      15 Sarath, P., "Mobile phone waste management and recycling : views and trends" 46 : 536-545, 2015

      16 Liang, J. F., "Mechanical properties of recycled fine glass aggregate concrete under uniaxial loading" 16 (16): 275-285, 2015

      17 Zain, M. F. M., "Mathematical regression model for the prediction of concrete strength, mathematical methods" 396-402, 2008

      18 Utans, J., "Input variable selection for neural networks: Application to predicting the U.S. business cycle" 9-11, 1995

      19 Scrivener, K. L., "Innovation in use and research on cementitious material" 38 (38): 128-136, 2008

      20 Liu, M. J., "Flat Panel Display Industry Yearbook" Industrial Technology Research Institute 2015

      21 Hanehara, S., "Effect of water/powder ratio, mixing ratio of fly ash and curing temperature on pozzolanic reaction of fly ash in cement pastes" 31 (31): 31-39, 2001

      22 Shanker, R., "Concrete mix design using neural network" 8 (8): 910-913, 2014

      23 Peng, C. H., "Building strength models for high-performance concrete at different ages using genetic operation trees, nonlinear regression, and neural networks" 26 (26): 61-73, 2010

      24 Chopra, P., "Artificial neural networks for the prediction of compressive strength of concrete" 13 (13): 187-204, 2015

      25 Wang, H. Y., "A study on the properties of flesh self-consolidating glass concrete (SCGC)" 24 (24): 619-624, 2010

      26 Wang, H. Y., "A study of the engineering properties of waste LCD glass applied to controlled low strength materials concrete" 23 (23): 2127-2131, 2009

      27 Wang, C. C., "A predictive model for compressive strength of waste LCD glass concrete by nonlinear-multivariate regression" 13 (13): 531-545, 2014

      28 Ji, T., "A concrete mix proportion design algorithm based on artificial neural networks" 36 (36): 1399-1408, 2006

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      학술지 이력

      학술지 이력
      연월일 이력구분 이력상세 등재구분
      2021 평가예정 해외DB학술지평가 신청대상 (해외등재 학술지 평가)
      2020-12-01 평가 등재 탈락 (해외등재 학술지 평가)
      2016-12-26 학회명변경 한글명 : 한국국제계산역학회 -> 사단법인 한국계산역학회 KCI등재
      2013-10-01 평가 SCOPUS 등재 (등재유지) KCI등재
      2011-11-01 학술지명변경 한글명 : 컴퓨터와 콘크리트 국제학술지 -> Computers and Concrete, An International Journal KCI등재후보
      2011-01-01 평가 등재후보학술지 유지 (기타) KCI등재후보
      2005-01-01 평가 SCIE 등재 (신규평가) KCI등재후보
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      학술지 인용정보

      학술지 인용정보
      기준연도 WOS-KCI 통합IF(2년) KCIF(2년) KCIF(3년)
      2016 0.72 0.07 0.53
      KCIF(4년) KCIF(5년) 중심성지수(3년) 즉시성지수
      0.44 0.4 0.173 0.02
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