• 제목/요약/키워드: Super plasticizer

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Prediction of compressive strength of concrete using neural networks

  • Al-Salloum, Yousef A.;Shah, Abid A.;Abbas, H.;Alsayed, Saleh H.;Almusallam, Tarek H.;Al-Haddad, M.S.
    • Computers and Concrete
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    • 제10권2호
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    • pp.197-217
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    • 2012
  • This research deals with the prediction of compressive strength of normal and high strength concrete using neural networks. The compressive strength was modeled as a function of eight variables: quantities of cement, fine aggregate, coarse aggregate, micro-silica, water and super-plasticizer, maximum size of coarse aggregate, fineness modulus of fine aggregate. Two networks, one using raw variables and another using grouped dimensionless variables were constructed, trained and tested using available experimental data, covering a large range of concrete compressive strengths. The neural network models were compared with regression models. The neural networks based model gave high prediction accuracy and the results demonstrated that the use of neural networks in assessing compressive strength of concrete is both practical and beneficial. The performance of model using the grouped dimensionless variables is better than the prediction using raw variables.

초고강도 강섬유 보강 콘크리트의 성능에 미치는 믹서의 영향 (Effect of Mixer on the Performance of Ultra-High Strength Steel Reinforced Concrete)

  • 박정준;고경택;류금성;강수태;김성욱;한상묵
    • 한국콘크리트학회:학술대회논문집
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    • 한국콘크리트학회 2006년도 춘계 학술발표회 논문집(II)
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    • pp.549-552
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    • 2006
  • Generally the ultra-high strength steel reinforced concrete has rich mix composition composed of high-strength type mineral admixtures and as a result of very low water-binder ratio(about under w/b=25%), it reveals ultra-high compressive strength(about over 100Mpa). Also, in order to obtain sufficient toughness after construction, we usually mix a large quantity steel fiber with ultra-high strength steel reinforced concrete therefore we must use proper mixer for workability. When we make the ultra-high strength steel reinforced concrete we need more long mixing time or much super-plasticizer than when we manufacture normal concrete. These bring about economical problems and performance deterioration. Therefore, in this study, in order to manufacture easily ultra-high strength steel reinforced concrete we develope a dedicated mixer for ultra-high strength steel reinforced concrete with high speed type. It carried out the examination for comparison between the dedicated and general type mixer, the analysis and counterplan of the point at issue when we manufacture ultra-high strength steel reinforced concrete by the dedicated mixer.

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Mechanical and durability properties of marine concrete using fly ash and silpozz

  • Jena, T.;Panda, K.C.
    • Advances in concrete construction
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    • 제6권1호
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    • pp.47-68
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    • 2018
  • This article reports the utilization of fly ash (FA) waste product from industry and silpozz which is an agro-waste from agriculture as an environmental friendly material in construction industry. The evaluation of strength and durability study was observed using FA and silpozz as a partial replacement of Ordinary Portland Cement (OPC). The studied parameters are compressive strength, flexural strength, split tensile strength and bond strength as well as the durability study involves the acid soluble chloride (ASC), water soluble chloride (WSC), water absorption and sorptivity. Scanning electron microscopy (SEM) and XRD of selected samples are also done. It reveals from the test results that the deterioration factor (DF) in compressive strength is 4% at 365 days. The DF of split tensile strength and flexural strength is 0.96% and 0.6% at 90 days respectively. The minimum slip is 1mm and 1.1mm after 28 days of testing bond strength for NWC and SWC sample respectively. The percentage decrease in bond strength is 10.35% for 28 days SWC samples. The pre-cast blended concrete samples performed better to chloride diffusion. Modulus of elasticity of SWC samples are also studied.The water absorption and sorptivity tests are conducted after 28 days of curing.

Predicting strength of SCC using artificial neural network and multivariable regression analysis

  • Saha, Prasenjit;Prasad, M.L.V.;Kumar, P. Rathish
    • Computers and Concrete
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    • 제20권1호
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    • pp.31-38
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    • 2017
  • In the present study an Artificial Neural Network (ANN) was used to predict the compressive strength of self-compacting concrete. The data developed experimentally for self-compacting concrete and the data sets of a total of 99 concrete samples were used in this work. ANN's are considered as nonlinear statistical data modeling tools where complex relationships between inputs and outputs are modeled or patterns are found. In the present ANN model, eight input parameters are used to predict the compressive strength of self-compacting of concrete. These include varying amounts of cement, coarse aggregate, fine aggregate, fly ash, fiber, water, super plasticizer (SP), viscosity modifying admixture (VMA) while the single output parameter is the compressive strength of concrete. The importance of different input parameters for predicting the strengths at various ages using neural network was discussed in the study. There is a perfect correlation between the experimental and prediction of the compressive strength of SCC based on ANN with very low root mean square errors. Also, the efficiency of ANN model is better compared to the multivariable regression analysis (MRA). Hence it can be concluded that the ANN model has more potential compared to MRA model in developing an optimum mix proportion for predicting the compressive strength of concrete without much loss of material and time.

Experimental analysis and modeling of steel fiber reinforced SCC using central composite design

  • Kandasamy, S.;Akila, P.
    • Computers and Concrete
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    • 제15권2호
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    • pp.215-229
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    • 2015
  • The emerging technology of self compacting concrete, fiber reinforcement together reduces vibration and substitute conventional reinforcement which help in improving the economic efficiency of the construction. The objective of this work is to find the regression model to determine the response surface of mix proportioning Steel Fiber Reinforced Self Compacting Concrete (SFSCC) using statistical investigation. A total of 30 mixtures were designed and analyzed based on Design of Experiment (DOE). The fresh properties of SCC and mechanical properties of concrete were studied using Response Surface Methodology (RSM). The results were analyzed by limited proportion of fly ash, fiber, volume combination ratio of two steel fibers with aspect ratio of 50/35: 60/30 and super plasticizer (SP) dosage. The center composite designs (CCD) have selected to produce the response in quadratic equation. The model responses included in the primary stage were flowing ability, filling ability, passing ability and segregation index whereas in harden stage of concrete, compressive strength, split tensile strength and flexural strength at 28 days were tested. In this paper, the regression model and the response surface plots have been discussed, and optimal results were found for all the responses.

Fresh and hardened properties of rubberized concrete using fine rubber and silpozz

  • Padhi, S.;Panda, K.C.
    • Advances in concrete construction
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    • 제4권1호
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    • pp.49-69
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    • 2016
  • This work investigates the mechanical properties of conventional concrete (CC) and self compacting concrete (SCC) using fine rubber and silpozz were accompanied by a comparative study between conventional rubberized concrete (CRC) and self compacting rubberized concrete (SCRC). Fine rubber (FR) from scrap tires has replaced the fine aggregate (FA) and Silpozz has been used as a replacement of cement at the proportions of 5, 10 and 15%. Silpozz as a partial replacement of cement in addition of superplasticiser (SP) increases the strength of concrete. Fresh concrete properties such as slump test, compaction factor test for CRC, whereas for SCRC slump flow, $T_{500}$, V-funnel, L-box, U-box, J-ring tests were conducted along with the hardened properties tests like compressive, split tensile and flexural strength test at 7, 28 and 90 days of curing. The durability and microstructural behavior for both CRC and SCRC were investigated. FR used in the present study is 4.75 mm passing with fineness modulus 4.74.M30 grade concrete is used with a mix proportion of 1:1.44:2.91 and w/c ratio as 0.43. The results indicate that as FR quantity increases, workability of both CRC and SCRC decreases. The results also show that the replacement of natural fine aggregate (NFA) with FR particles decreases the compressive strength with the increase of flexural strength observed upto 5% replacement of FR. Also replacement of cement with silpozz resulted enhancement of strength in SCRC.

Prediction of the compressive strength of self-compacting concrete using surrogate models

  • Asteris, Panagiotis G.;Ashrafian, Ali;Rezaie-Balf, Mohammad
    • Computers and Concrete
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    • 제24권2호
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    • pp.137-150
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    • 2019
  • In this paper, surrogate models such as multivariate adaptive regression splines (MARS) and M5P model tree (M5P MT) methods have been investigated in order to propose a new formulation for the 28-days compressive strength of self-compacting concrete (SCC) incorporating metakaolin as a supplementary cementitious materials. A database comprising experimental data has been assembled from several published papers in the literature and the data have been used for training and testing. In particular, the data are arranged in a format of seven input parameters covering contents of cement, coarse aggregate to fine aggregate ratio, water, metakaolin, super plasticizer, largest maximum size and binder as well as one output parameter, which is the 28-days compressive strength. The efficiency of the proposed techniques has been demonstrated by means of certain statistical criteria. The findings have been compared to experimental results and their comparisons shows that the MARS and M5P MT approaches predict the compressive strength of SCC incorporating metakaolin with great precision. The performed sensitivity analysis to assign effective parameters on 28-days compressive strength indicates that cementitious binder content is the most effective variable in the mixture.

수축저감제와 팽창재를 혼입한 콘크리트의 물리적 특성 (Physical Properties of Concrete Using Shrinkage Reducing Admixture and Expansive Additive)

  • 정양희;송영찬;김용로;한형섭;김욱종;이도범
    • 한국콘크리트학회:학술대회논문집
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    • 한국콘크리트학회 2008년도 추계 학술발표회 제20권2호
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    • pp.919-922
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    • 2008
  • 본 연구는 최근 국내 공동주택 지하주차장 등에 설치하는 지연 조인트에 적용할 콘크리트의 수축저감을 위한 연구로서, 팽창재와 3가지의 수축저감제를 단독 또는 병용하여 혼입할 경우 콘크리트의 물리적 특성 및 수축 특성에 대해 검토하기 위해 수행되었다. 실험 결과, 팽창재는 굳지않은 콘크리트의 유동성에 큰 영향을 미치지 않으나, 수축저감제의 경우콘크리트의 유동성을 증진시켜 고성능 감수제의 혼입량을 0.05$\sim$0.1% 정도 감소시킬 수 있다. 또한 팽창재를 혼입할 경우 경화 콘크리트의 압축, 인장 및 휨강도는 다소 증가하는 경향을 보였지만, 수축저감제를 단독 또는 팽창재와 병용 혼입한 경우에는 압축, 인장 및 휨강도가 다소 감소하는 경향을 보였다. 건조수축에 의한 길이변화율 측정결과, 수축저감제 중 SRA3을 2.0% 혼입한 경우 길이변화율 감소 효과가 가장 우수하였으며, 팽창재를 단독으로 사용하거나 팽창재와 SRA1, 2, 3을 병용 혼입한 경우에는 비슷한 감소 효과를 보였다.

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TDFA를 혼입한 초기재령 콘크리트의 공학적 특성 평가 (Evaluation of Engineering Properties in Early-Age Concrete with TDFA)

  • 박재성;박상민;김혁중;권성준
    • 한국구조물진단유지관리공학회 논문집
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    • 제20권5호
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    • pp.1-8
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    • 2016
  • 본 연구에서는 산업부산물인 TDFA를 혼입한 콘크리트에 대하여 초기재령의 공학적 특성을 분석하였다. 물-결합재비 0.5, FA 치환율 20%인 콘크리트를 대상으로 TDFA를 3~12%치환하여 경화 전 및 경화 후의 특성을 분석하였다. TDFA 혼입율 6% 이후의 배합에서는 작업성이 현저하게 감소하였고 공기량 확보가 어려웠으며, 이로 인해 감수제 및 공기연행제를 추가하여 작업성을 개선시켰다. TDFA 혼입율 6~12%까지는 콘크리트의 강도에 큰 영향은 없었으며, 탄산화저항성 및 염해저항성에서는 FA 20% 치환 배합보다 우수한 성능을 나타내었다. 그러나 공기량이 부족한 TDFA 혼입율 6%배합에서는 동결융해 저항성이 크게 감소하였다. 공기량 및 작업성이 확보된다면 FA를 12%수준까지 TDFA로 치환해도 공학적인 성능을 확보할 수 있을 것으로 판단된다.

Evaluating flexural strength of concrete with steel fibre by using machine learning techniques

  • Sharma, Nitisha;Thakur, Mohindra S.;Upadhya, Ankita;Sihag, Parveen
    • Composite Materials and Engineering
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    • 제3권3호
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    • pp.201-220
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    • 2021
  • In this study, potential of three machine learning techniques i.e., M5P, Support vector machines and Gaussian processes were evaluated to find the best algorithm for the prediction of flexural strength of concrete mix with steel fibre. The study comprises the comparison of results obtained from above-said techniques for given dataset. The dataset consists of 124 observations from past research studies and this dataset is randomly divided into two subsets namely training and testing datasets with (70-30)% proportion by weight. Cement, fine aggregates, coarse aggregates, water, super plasticizer/ high-range water reducer, steel fibre, fibre length and curing days were taken as input parameters whereas flexural strength of the concrete mix was taken as the output parameter. Performance of the techniques was checked by statistic evaluation parameters. Results show that the Gaussian process technique works better than other techniques with its minimum error bandwidth. Statistical analysis shows that the Gaussian process predicts better results with higher coefficient of correlation value (0.9138) and minimum mean absolute error (1.2954) and Root mean square error value (1.9672). Sensitivity analysis proves that steel fibre is the significant parameter among other parameters to predict the flexural strength of concrete mix. According to the shape of the fibre, the mixed type performs better for this data than the hooked shape of the steel fibre, which has a higher CC of 0.9649, which shows that the shape of fibers do effect the flexural strength of the concrete. However, the intricacy of the mixed fibres needs further investigations. For future mixes, the most favorable range for the increase in flexural strength of concrete mix found to be (1-3)%.