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A Bayesian machine learning approach for inverse prediction of high-performance concrete ingredients with targeted performance

机译:具有目标性能的高性能混凝土成分逆预测的贝叶斯机器学习方法

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摘要

High-performance concrete (HPC) plays an important role in improving the sustainability and reliability of buildings and infrastructures. Machine learning predictive models have been used for predicting concrete performance from ingredients, however it remains a challenge to achieve inverse prediction of ingredients from targeted performances. This study proposes an in-house coded informatics-based materials analysis framework to enable computational design of HPC with targeted strength performance. The Gaussian processes (GP) emulator is used to construct the surrogate predictive model based-on 453 experimental measurements. The validity of the GP emulator is assessed using the leave-one-out cross-validation (LOO-CV) and also a separate validation dataset. The variance-based global sensitivity analysis, Sobol indices, is applied to understand the impact of physical ingredients on the HPC performances. The results suggest that the trained GP emulator can provide sufficiently accurate and reliable predictions, as well as reflect the real-world physicochemical nature of HPC materials. The inverse material design is achieved by the Bayesian inference method with a Markov chain Monte Carlo stochastic sampling method, the Metropolis-Hastings (MH) algorithm. Combining with the Bayesian inference method, the proposed design framework can infer a list of potential HPC formulae of a targeted performance, each evaluated by the likelihood of resulting in the targeted strength. The data-driven material analysis and design framework proposed in this study provides a novel approach to achieve performance-based design of HPC, with the potential to maximise resource efficiency and reduce economical cost. The methodology presented in this study can also be extended to be applied to a wide range of construction materials, targeting difference service performances including durability. (C) 2020 Elsevier Ltd. All rights reserved.
机译:高性能混凝土(HPC)在提高建筑物和基础设施的可持续性和可靠性方面发挥着重要作用。机器学习预测模型已被用于预测来自成分的具体性能,但是实现来自有针对性的性能的成分的逆预测仍然是一个挑战。本研究提出了一个内部编码信息的基于信息学的材料分析框架,以实现HPC的计算设计,具有目标强度性能。高斯过程(GP)仿真器用于构建基于453实验测量的代理预测模型。使用休假交叉验证(LOO-CV)和单独的验证数据集进行评估GP仿真器的有效性。基于差异的全局敏感性分析,Sobol指数用于了解物理成分对HPC性能的影响。结果表明,训练有素的GP仿真器可以提供足够准确和可靠的预测,并反映了HPC材料的现实世界理化性质。逆材料设计是通过贝叶斯推理方法实现了Markov链蒙特卡罗随机取样方法,Metropolis-Hastings(MH)算法。结合贝叶斯推理方法,所提出的设计框架可以推断出目标性能的潜在HPC公式列表,每种潜在的HPC公式,每个潜在的性能的公式通过导致目标强度的可能性进行评估。本研究提出的数据驱动材料分析和设计框架提供了一种实现基于性能的HPC设计的新方法,具有最大限度地提高资源效率并降低经济成本。本研究中提供的方法也可以扩展到应用于各种建筑材料,瞄准包括耐用性的差异服务性能。 (c)2020 elestvier有限公司保留所有权利。

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