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Conceptual cost estimates using evolutionary fuzzy hybrid neural network for projects in construction industry

机译:基于进化模糊混合神经网络的建筑工程项目概念成本估算

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摘要

Conceptual cost estimates are important to project feasibility studies and impact upon final project success. Such estimates provide significant information that can be used in project evaluations, engineering designs, cost budgeting and cost management. This study proposes an artificial intelligence approach, the evolutionary fuzzy hybrid neural network (EFHNN), to improve conceptual cost estimate precision. This approach first integrates neural networks (NN) and high order neural networks (HONN) into a hybrid neural network (HNN), which operates with alternating linear and non-linear neuron layer connectors. Fuzzy logic (FL) is then used in the HNN to handle uncertainties, an approach that evolves the HNN into a fuzzy hybrid neural network (FHNN). As a genetic algorithm is employed on the FL and HNN to optimize the FHNN, the final version used for this study may be most aptly termed an 'EFHNN'. For this study, estimates of overall and category costs for actual projects were calculated and compared. Results showed that the proposed EFHNN may be deployed effectively as an accurate cost estimator during the early stages of construction projects. Moreover, the performance of linear and non-linear neuron layer connectors in EFHNN surpasses models that deploy a singular linear NN.
机译:概念性成本估算对于项目可行性研究及其对最终项目成功的影响至关重要。这样的估计提供了可用于项目评估,工程设计,成本预算和成本管理的重要信息。这项研究提出了一种人工智能方法,即进化模糊混合神经网络(EFHNN),以提高概念成本估算的准确性。该方法首先将神经网络(NN)和高阶神经网络(HONN)集成到混合神经网络(HNN)中,该混合神经网络与线性和非线性神经元层连接器交替运行。然后,在HNN中使用模糊逻辑(FL)处理不确定性,该方法将HNN演化为模糊混合神经网络(FHNN)。由于在FL和HNN上采用了遗传算法来优化FHNN,因此用于本研究的最终版本可能最恰当地称为“ EFHNN”。对于本研究,计算并比较了实际项目的总成本和类别成本的估计值。结果表明,在建设项目的早期阶段,拟议的EFHNN可以有效地用作准确的成本估算器。此外,EFHNN中线性和非线性神经元层连接器的性能优于部署奇异线性NN的模型。

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