标题: 应用人工智慧技术辅助设计混凝土配比
Application of Applied AI models in concrete mixture proportion
作者: 吕夙修
Lu, Su-Hsiu
洪士林
Hung, Shih-Lin
土木工程学系
关键字: 混凝土配比设计;K-Means演算法;类神经网路;Concrete proportioning;K-Means;artificial neural network
公开日期: 2010
摘要: 混凝土在土木建筑结构工程中是最为广泛运用的营建材料。混凝土是敏感性很强的材料,在每一个制作过程,如配比、拌合、浇置及养护等等,皆对混凝土有重要的影响,尤其是配比部份。但是依照传统的配比设计方法,并不一定能保证得到需求目标。整个过程不仅费时也浪费资源,若混凝土试体试验失败,不仅是资源成本的浪费,在时间成本的损失更是难以计价。如能藉由电脑辅助设计混凝土配比,不仅能降低资源成本,更能提升工程效率。
至今已有电脑辅助设计混凝土配比的方法,常以成本最佳化为设计目的。然而在不同的环境下,使用者会有不同的需求。本论文应用K-Means演算法分析资料库,并建立混凝土配比设计系统;依使用者所需的目标设计混凝土配比,并提供多样性的配比设计,让不同环境下的使用者,依自身需求使用不同的混凝土配比;并利用类神经网路建立资料库中缺乏的混凝土配比资料。模拟验证结过显示本系统可藉由K-Means演算法快速找寻可能解,若资料库无近似解存在,则可由ANN提供答案。
Concrete is one of most utilized construction materials in civil and infrastructural engineering. Concrete is a highly sensitive material to the issues in production process, such as proportioning, mixing, pouring, curing, etc. Among those factors, propositioning is the most important aspect. However, concrete mix, designed based on conventional methods, are not guaranteed to satisfy the required aim. Meanwhile, if the concrete specimen test does not pass, it results in not only wasting cost, but also loss of time. Recently, computer-aided design of concrete mix proportioning is a feasible approach with the aspect of reducing the resource costs and increasing construction efficiency.
Based on cost optimization approach, there are, currently, many schemes of computer-aided concrete mix proportioning design. However, cost is not the only aim for concrete mix design. This work attempts to employ K-Means algorithm to analyze the pre-collected database to design concrete mix proposition based on the predefined requirements and provide a diversity of design to satisfy requirements of engineering. In addition, ANN model can generate solutions, if K-Means algorithm cannot find solutions in database. Simulation results reveal that the system is feasible and practicable in concrete mix design.
URI: http://140.113.39.130/cdrfb3/record/nctu/#GT079716526
http://hdl.handle.net/11536/44841
显示于类别:Thesis


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