AI Mix Design of Fly Ash Admixed Concrete Based on Mechanical and Environmental Impact Considerations

Q3 Engineering Open Civil Engineering Journal Pub Date : 2023-03-04 DOI:10.28991/cej-sp2023-09-03
K. Onyelowe, A. Ebid, H. A. Mahdi, Fortune K. C. Onyelowe, Yazdan Shafieyoon, M. Onyia, H. N. Onah
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Abstract

It has become very important in the field of concrete technology to develop intelligent models to reduce overdependence on laboratory studies prior to concrete infrastructure designs. In order to achieve this, a database representing the global behavior and performance of concrete mixes is collected and prepared for use. In this research work, an extensive literature search was used to collect 112 concrete mixes corresponding to fly ash and binder ratios (FA/B), coarse aggregate and binder ratios (CAg/B), fine aggregate and binder ratios (FAg/B), 28-day concrete compressive strength (Fc28), and the environmental impact point (P) estimated as a life cycle assessment of greenhouse gas emissions from fly ash- and cement-based concrete. Statistical analysis, linear regression (LNR), and artificial intelligence (AI) studies were conducted on the collected database. The material binder ratios were deployed as input variables to predict Fc28 and P as the response variables. From the collected concrete mix data, it was observed that mixes with a higher cement content produce higher compressive strengths and a higher carbon footprint impact compared to mixes with a lower amount of FA. The results of the LNR and AI modeling showed that LNR performed lower than the AI techniques, with an R2(SSE) of 48.1% (26.5) for Fc and 91.2% (7.9) for P. But ANN, with performance indices of 95.5% (9.4) and 99.1% (2.6) for Fc and P, respectively, outclassed EPR with 90.3% (13.9) and 97.7% (4.2) performance indices for Fc and P, respectively. Taylor’s and variance diagrams were also used to study the behavior of the models for Fc28 and P compared to the measured values. The results show that the ANN and EPR models for Fc28 lie within the RMSE envelop of less than 0.5% and a standard deviation of between 15 MPa and 20 MPa, while the coefficient of determination sector lies between 95% and 99% except for LNR, which lies in the region of less than 80%. In the case of the P models, all the predicted models lie within the RMSE envelop of between 0.5% and 1.0%, a coefficient of determination sector of 95% and above, and a standard deviation between 2.0 and 3.0 points of impact. The variance between measured and modeled values shows that ANN has the best distribution, which agrees with the performance accuracy and fits. Lastly, the ANN learning ability was used to develop a mix design tool used to design sustainable concrete Fc28 based on environmental impact considerations. Doi: 10.28991/CEJ-SP2023-09-03 Full Text: PDF
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基于力学和环境影响的粉煤灰掺合混凝土AI配合比设计
在混凝土技术领域,开发智能模型以减少在混凝土基础设施设计之前对实验室研究的过度依赖已经变得非常重要。为了实现这一目标,收集和准备了一个代表混凝土混合料的整体行为和性能的数据库。在这项研究工作中,通过广泛的文献检索,收集了112种混凝土混合物,分别对应于粉煤灰和粘合剂比(FA/B)、粗骨料和粘合剂比(CAg/B)、细骨料和粘合剂比(FAg/B)、28天混凝土抗压强度(Fc28)和环境影响点(P),这是对粉煤灰和水泥基混凝土温室气体排放的生命周期评估。对收集到的数据库进行统计分析、线性回归(LNR)和人工智能(AI)研究。以材料粘结比作为输入变量,预测Fc28和P作为响应变量。从收集到的混凝土配合比数据中可以看出,与FA含量较低的配合比,水泥含量较高的配合比产生更高的抗压强度和更高的碳足迹影响。LNR和AI建模的结果表明,LNR的表现低于AI技术,Fc和P的R2(SSE)分别为48.1%(26.5)和91.2%(7.9),而ANN对Fc和P的性能指标分别为95.5%(9.4)和99.1%(2.6),优于EPR, Fc和P的性能指标分别为90.3%(13.9)和97.7%(4.2)。还使用泰勒图和方差图来研究Fc28和P与实测值相比的模型行为。结果表明,Fc28的ANN和EPR模型均在RMSE < 0.5%的包络范围内,标准差在15 ~ 20 MPa之间,除LNR在80%以内外,其余部分的决定系数均在95% ~ 99%之间。在P模型的情况下,所有预测模型的RMSE范围在0.5%到1.0%之间,决定系数在95%以上,标准差在2.0到3.0点之间。实测值与模型值之间的方差表明,人工神经网络具有最佳的分布,符合性能精度和拟合。最后,利用人工神经网络的学习能力开发了一个配合比设计工具,用于设计基于环境影响考虑的可持续混凝土Fc28。Doi: 10.28991/CEJ-SP2023-09-03全文:PDF
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来源期刊
Open Civil Engineering Journal
Open Civil Engineering Journal Engineering-Civil and Structural Engineering
CiteScore
1.90
自引率
0.00%
发文量
17
期刊介绍: The Open Civil Engineering Journal is an Open Access online journal which publishes research, reviews/mini-reviews, letter articles and guest edited single topic issues in all areas of civil engineering. The Open Civil Engineering Journal, a peer-reviewed journal, is an important and reliable source of current information on developments in civil engineering. The topics covered in the journal include (but not limited to) concrete structures, construction materials, structural mechanics, soil mechanics, foundation engineering, offshore geotechnics, water resources, hydraulics, horology, coastal engineering, river engineering, ocean modeling, fluid-solid-structure interactions, offshore engineering, marine structures, constructional management and other civil engineering relevant areas.
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