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Neural Networks and Statistical Analysis for Time and Cost Prediction Models of Urban Redevelopment Projects

机译:城市重建项目时间和成本预测模型的神经网络和统计分析

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Over the last few years, a plethora of public works have taken place, focusing towards urban renewal, in the greater Thessaloniki district. Municipality of Thessaloniki, provided data for twelve public projects of urban renewal. Mathematical models have been proposed for cost and time prediction based on regression analysis. Furthermore, the Fast Artificial Neural Network (FANN Tool) was applied, to predict the duration and the final cost of the project, using volume of earthwork, as input variable. Both approaches could facilitate project stakeholders, to forecast the projects' final delivery date and cost and provide early warnings for any deviation from the initial budget. The results indicate that neural networks perform better than regression analysis' models, in the case of urban renewal projects.
机译:在过去的几年中,在萨洛尼卡大区进行了大量的公共工程,着眼于城市更新。塞萨洛尼基市政府提供了12个城市更新公共项目的数据。已经提出了基于回归分析的用于成本和时间预测的数学模型。此外,应用了快速人工神经网络(FANN工具),以土方量作为输入变量来预测项目的持续时间和最终成本。两种方法都可以帮助项目涉众,预测项目的最终交付日期和成本,并对与初始预算的任何偏差提供预警。结果表明,在城市更新项目中,神经网络的性能优于回归分析的模型。

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