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CONCEPTUAL COST ESTIMATIONS USING NEURO-FUZZY AND MULTI-FACTOR EVALUATION METHODS FOR BUILDING PROJECTS

机译:基于神经模糊和多因素评估的建筑工程概念成本估算

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摘要

During the conceptual phase of a construction project, numerous uncertainties make accurate cost estimation challenging. This work develops a new model to calculate conceptual costs of building projects for effective cost control. The proposed model integrates four mathematical techniques (sub-models), namely, (1) the component ratios sub-model, fuzzy adaptive learning control network (FALCON) and fast messy genetic algorithm (fmGA) based sub-model, (2) regression sub-model, and (4) multi-factor evaluation sub-model. While the FALCON- and fmGA-based sub-model trains the historical cost data, three other sub-models assess the inputs systematically to estimate the cost of a new project. This study also closely examines the behavior of the proposed model by evaluating two modified models without considering fmGA and undertaking sensitivity analysis. Evaluation results indicate that, with the ability to more thoroughly respond to the project characteristics, the proposed model has a high probability of increasing estimation accuracies more than the three conventional methods, i.e., average unit cost, component ratios, and linear regression methods.
机译:在建设项目的概念阶段,许多不确定因素使准确的成本估算具有挑战性。这项工作开发了一个新模型来计算建筑项目的概念成本,以进行有效的成本控制。所提出的模型集成了四种数学技术(子模型),即(1)组分比子模型,基于模糊自适应学习控制网络(FALCON)和基于快速混乱遗传算法(fmGA)的子模型,(2)回归子模型,以及(4)多因素评估子模型。当基于FALCON和fmGA的子模型训练历史成本数据时,其他三个子模型则系统地评估输入以估计新项目的成本。这项研究还通过评估两个修改后的模型而不考虑fmGA并进行敏感性分析,仔细检查了所提出模型的行为。评估结果表明,与平均特征,平均零件成本和线性回归方法这三种传统方法相比,所提出的模型具有更全面地响应项目特征的能力,具有更高的概率提高估计精度。

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