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The Study of the Usage of Cost-Significant Theory and Neural Network in Project Cost Estimation

机译:成本重要理论和神经网络在工程造价估算中的应用研究

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Based on the reference to domestic and foreign correlative theories and methods, this paper uses the model of cost estimation based on cost-significant theory and neural network theory to estimate project cost. Firstly, the cost-significant theory is put forward to solve the tedious operation issues by finding out significant items to simplify the operational difficulty of engineering cost estimation. Then the back-propagation neural network model is made up according to the BP neural network to "distill" CSIs and csf (cost- significant factor)from the data and information of the completed projects, which provides a practical solution for those problems according to the nonlinear theory. The basic theories of BP neural network and CS are introduced and their applications are illustrated with an example . From the example, we can find that the relative errors are so small that they can meet the accurate demand of cost estimation after simulation. And the test result shows that the model based on cost-significant theory and neural network theory is accurate and successful.
机译:本文在借鉴国内外相关理论和方法的基础上,采用基于成本重要理论和神经网络理论的成本估算模型对项目成本进行估算。首先,提出了成本重要理论,通过找出重要项目来简化工程造价估算的操作难度,从而解决了繁琐的运营问题。然后根据BP神经网络建立反向传播神经网络模型,从已完成项目的数据和信息中“提取” CSI和csf(成本重要因素),从而根据这些问题提供了实用的解决方案。非线性理论。介绍了BP神经网络和CS的基本理论,并举例说明了它们的应用。从示例中可以发现,相对误差很小,可以满足仿真后成本估算的准确需求。测试结果表明,基于成本重要理论和神经网络理论的模型是正确,成功的。

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