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Embodied carbon analysis and benchmarking emissions of high and ultra-high strength concrete using machine learning algorithms

机译:使用机器学习算法实现高和超高强度混凝土的碳分析和基准排放

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High strength concrete (HSC) (50-100 MPa) and ultra-high strength concrete (UHSC) (100 MPa) have been increasingly used in the construction industry due to its inherent performance characteristics. However, these concrete mixes have a higher carbon footprint and it is vital to consider the embodied carbon of the HSC and UHSC due to the massive consumption throughout the world. In this study, embodied carbon analysis, using machine learning algorithms has been carried out to minimize the carbon footprint of concrete without jeopardizing the mechanical properties of the concrete. Machine learning models are developed using experimental results in the literature and used to predict the compressive strength of concrete using the constituent materials. Using the experimental data and machine-learned models for mix designs, embodied carbon emissions were calculated. It is shown that there can be many mix compositions which have the same compressive strength while having significantly different embodied carbon values. Based on experimental and machine learned mix designs, an equation to predict the average embodied carbon value for concrete mixes is proposed. The study suggested proposed intervals for the benchmark function in order to propose a region where the embodied carbon value of a concrete mix should lie while achieving the desired compressive strength. Finally, it is shown that machine learning can be used successfully to identify the high strength concrete mixes while minimizing the embodied carbon value of that mix composition. Finally, guidelines are presented to produce a concrete mix within proposed benchmark limits while achieving the desirable strength grade. (C) 2020 Elsevier Ltd. All rights reserved.
机译:由于其固有的性能特征,高强度混凝土(HSC)(50-100MPa)和超高强度混凝土(UHSC)(> 100MPa)越来越多地用于建筑业。然而,这些混凝土混合物具有较高的碳足迹,因此由于全世界的巨大消耗,考虑HSC和UHSC的体现碳是至关重要的。在本研究中,已经进行了使用机器学习算法的实施例,已经进行了以最小化混凝土的碳足迹,而不会危及混凝土的机械性能。机器学习模型是使用文献中的实验结果开发的,并用来使用组成材料预测混凝土的抗压强度。使用实验数据和机器学习的混合设计模型,计算了所体现的碳排放。表明可以存在许多混合组合物具有相同的抗压强度,同时具有显着不同的体现碳值。基于实验和机器学习的混合设计,提出了一种预测混凝土混合物的平均体现碳值的等式。该研究提出了基准函数的提出的间隔,以提出混凝土混合物的实施碳值应该在达到所需的抗压强度的同时所在的区域。最后,表明可以成功地使用机器学习来识别高强度混凝土混合,同时最小化该混合组合物的具体碳值。最后,提出了指导方针以在所提出的基准限制内产生混凝土混合,同时实现所需的强度等级。 (c)2020 elestvier有限公司保留所有权利。

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