An artificial neural network (ANN) approach for early cost estimation of concrete bridge systems in developing countries: the case of Sri Lanka

N. Fernando, Kasun Dilshan T.A., Hexin Zhang
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Abstract

Purpose The Government’s investment in infrastructure projects is considerably high, especially in bridge construction projects. Government authorities must establish an initial forecasted budget to have transparency in transactions. Early cost estimating is challenging for Quantity Surveyors due to incomplete project details at the initial stage and the unavailability of standard cost estimating techniques for bridge projects. To mitigate the difficulties in the traditional preliminary cost estimating methods, there is a requirement to develop a new initial cost estimating model which is accurate, user friendly and straightforward. The research was carried out in Sri Lanka, and this paper aims to develop the artificial neural network (ANN) model for an early cost estimate of concrete bridge systems. Design/methodology/approach The construction cost data of 30 concrete bridge projects which are in Sri Lanka constructed within the past ten years were trained and tested to develop an ANN cost model. Backpropagation technique was used to identify the number of hidden layers, iteration and momentum for optimum neural network architectures. Findings An ANN cost model was developed, furnishing the best result since it succeeded with around 90% validation accuracy. It created a cost estimation model for the public sector as an accurate, heuristic, flexible and efficient technique. Originality/value The research contributes to the current body of knowledge by providing the most accurate early-stage cost estimate for the concrete bridge systems in Sri Lanka. In addition, the research findings would be helpful for stakeholders and policymakers to propose policy recommendations that positively influence the prediction of the most accurate cost estimate for concrete bridge construction projects in Sri Lanka and other developing countries.
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一种用于发展中国家混凝土桥梁系统早期成本估算的人工神经网络(ANN)方法:斯里兰卡案例
目的政府在基础设施项目上的投资相当高,特别是在桥梁建设项目上。政府当局必须建立一个初步的预测预算,以确保交易的透明度。早期的成本估算对于工料测量师来说是一个挑战,因为在初始阶段的项目细节不完整,而且没有标准的桥梁项目成本估算技术。为了减轻传统初步成本估算方法的困难,需要开发一种新的准确、易用、直观的初始成本估算模型。该研究是在斯里兰卡进行的,本文旨在开发用于混凝土桥梁系统早期成本估算的人工神经网络(ANN)模型。设计/方法/方法对过去十年在斯里兰卡建造的30个混凝土桥梁项目的建设成本数据进行了培训和测试,以开发人工神经网络成本模型。利用反向传播技术来确定隐层数、迭代和动量,以获得最优的神经网络结构。建立了san ANN成本模型,获得了自验证以来的最佳结果,验证准确率约为90%。它为公共部门创造了一个成本估算模型,作为一种准确、启发式、灵活和高效的技术。独创性/价值该研究通过为斯里兰卡混凝土桥梁系统提供最准确的早期成本估算,为当前的知识体系做出了贡献。此外,研究结果将有助于利益相关者和决策者提出政策建议,对斯里兰卡和其他发展中国家混凝土桥梁建设项目最准确的成本估算预测产生积极影响。
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来源期刊
CiteScore
3.70
自引率
0.00%
发文量
17
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