基于目标强度法的土工聚合物混凝土混合设计确定程序

IF 4.4 3区 工程技术 Q1 ENGINEERING, CIVIL Archives of Civil and Mechanical Engineering Pub Date : 2024-07-03 DOI:10.1007/s43452-024-01002-8
Madushan Rathnayaka, Dulakshi Karunasingha, Chamila Gunasekara, David W. Law, Kushan Wijesundara, Weena Lokuge
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引用次数: 0

摘要

本研究介绍了土工聚合物混凝土混合设计确定程序的开发和验证,以达到所需的抗压强度。该程序整合了基于文献综合数据库开发的人工神经网络(ANN)模型、数据聚类和参数优化技术,以提高准确性和可靠性。实验验证表明,该混合设计确定程序能够根据目标抗压强度准确预测土工聚合物混凝土的混合设计,验证了其在确定混合比例方面的功效。与仅包含粉煤灰重量和活化剂特性的基础 ANN 模型相比,整合粉煤灰中的化学氧化物含量、养护时间、养护温度和活化剂特性可使训练数据集的预测准确率提高 15.9%,测试数据集的预测准确率提高 68.3%。采用数据聚类技术可以确定与特定粉煤灰类型和目标抗压强度相关的混合设计参数的先验估计值,通过分析相关数据子集简化混合设计过程。参数优化可确保精细的混合比例,经济地达到预期的目标强度,同时最大限度地减少材料浪费和成本。用户界面的开发方便了对混合设计的操作,满足了不同专业水平用户的需求。此外,还可在混合设计确定程序中添加其他选项,以便更深入地了解土工聚合物混凝土的特性。为了评估混合设计确定程序的有效概括能力,我们使用了各种不同化学成分的粉煤灰样本,与数据库中已有的样本有所不同。通过这种方法,可以全面评估混合设计确定程序在遇到未曾遇到过的粉煤灰成分时的性能。通过这种方法,可以深入了解混合设计确定程序的适应性,从而超越训练和测试数据集的限制。
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Mix design determination procedure for geopolymer concrete based on target strength method

This study presents the development and validation of a mix design determination procedure for geopolymer concrete to achieve the desired compressive strength. The procedure integrates artificial neural network (ANN) model developed based on a comprehensive data base from literature, data clustering, and parameter optimization techniques to enhance accuracy and reliability. Experimental validation is undertaken to demonstrate the mix design determination procedure’s capability to accurately predict mix designs for geopolymer concrete based on the target compressive strength, validating its efficacy for mix proportion determination. The integration of chemical oxide content in fly ash, curing time, curing temperature, and activator properties results in a 15.9% improvement in prediction accuracy for the training dataset and a 68.3% enhancement for the testing dataset, compared to the base ANN model that includes only the weight of fly ash and activator properties. Employing data clustering techniques enables the identification of prior estimates for the mix design parameters related to specific fly ash types and target compressive strength, streamlining the mix design process by analyzing pertinent data subsets. Parameter optimization ensures refined mix proportions, achieving the desired target strength economically while minimizing material waste and cost. The development of a user interface facilitates easy manipulation of mix designs, catering to users of varying expertise levels. Additional options for deeper insights into geopolymer concrete characteristics can be integrated into the mix design determination procedure. To assess the mix design determination procedure's ability to generalize effectively, a variety of fly ash samples with distinct chemical compositions were utilized, differing from those already present in the database. This approach allows for a thorough evaluation of the mix design determination procedure's performance when presented with fly ash compositions it has not encountered before. By doing so, this provides insights into the adaptability of the mix design determination procedure beyond the limitations of the training and testing datasets.

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来源期刊
Archives of Civil and Mechanical Engineering
Archives of Civil and Mechanical Engineering 工程技术-材料科学:综合
CiteScore
6.80
自引率
9.10%
发文量
201
审稿时长
4 months
期刊介绍: Archives of Civil and Mechanical Engineering (ACME) publishes both theoretical and experimental original research articles which explore or exploit new ideas and techniques in three main areas: structural engineering, mechanics of materials and materials science. The aim of the journal is to advance science related to structural engineering focusing on structures, machines and mechanical systems. The journal also promotes advancement in the area of mechanics of materials, by publishing most recent findings in elasticity, plasticity, rheology, fatigue and fracture mechanics. The third area the journal is concentrating on is materials science, with emphasis on metals, composites, etc., their structures and properties as well as methods of evaluation. In addition to research papers, the Editorial Board welcomes state-of-the-art reviews on specialized topics. All such articles have to be sent to the Editor-in-Chief before submission for pre-submission review process. Only articles approved by the Editor-in-Chief in pre-submission process can be submitted to the journal for further processing. Approval in pre-submission stage doesn''t guarantee acceptance for publication as all papers are subject to a regular referee procedure.
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