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Cost Index Predictions for Construction Engineering Based on LSTM Neural Networks

机译:基于LSTM神经网络的建筑工程成本指标预测

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摘要

In recent years, the cost index predictions of construction engineering projects are becoming important research topics in the field of construction management. Previous methods have limitations in reasonably reflecting the timeliness of engineering cost indexes. The recurrent neural network (RNN) belongs to a time series network, and the purpose of timeliness transfer calculation is achieved through the weight sharing of time steps. The long-term and short-term memory neural network (LSTM NN) solves the RNN limitations of the gradient vanishing and the inability to address long-term dependence under the premise of having the above advantages. The present study proposed a new framework based on LSTM, so as to explore the applicability and optimization mechanism of the algorithm in the field of cost indexes prediction. A survey was conducted in Shenzhen, China, where a total of 143 data samples were collected based on the index set for the corresponding time interval from May 2007 to March 2019. A prediction framework based on the LSTM model, which was trained by using these collected data, was established for the purpose of cost index predictions and test. The testing results showed that the proposed LSTM framework had obvious advantages in prediction because of the ability of processing high-dimensional feature vectors and the capability of selectively recording historical information. Compared with other advanced cost prediction methods, such as Support Vector Machine (SVM), this framework has advantages such as being able to capture long-distance dependent information and can provide short-term predictions of engineering cost indexes both effectively and accurately. This research extended current algorithm tools that can be used to forecast cost indexes and evaluated the optimization mechanism of the algorithm in order to improve the efficiency and accuracy of prediction, which have not been explored in current research knowledge.
机译:近年来,建筑工程项目的成本指数预测正在成为施工管理领域的重要研究主题。以前的方法在合理反映工程成本指标的及时性方面具有局限性。经常性神经网络(RNN)属于时间序列网络,并且通过重量共享来实现及时转移计算的目的。长期和短期内存神经网络(LSTM NN)解决了梯度消失的RNN限制,并且在具有上述优点的前提下解决了长期依赖性的基准。本研究提出了一种基于LSTM的新框架,从而探讨了成本指标预测领域算法的适用性和优化机制。在中国深圳进行了一项调查,基于从2007年5月至2019年3月的相应时间间隔的指数集中收集了143个数据样本。基于LSTM模型的预测框架,通过使用这些培训收集的数据是为成本指数预测和测试的目的而建立的。测试结果表明,由于加工高维特征向量的能力和选择性地记录历史信息的能力,所提出的LSTM框架在预测中具有明显的优点。与其他先进的成本预测方法相比,例如支持向量机(SVM),该框架具有诸如能够捕获长距离相关信息的优点,并且可以有效准确地提供工程成本指标的短期预测。这项研究扩展了电流算法工具,可用于预测成本指标并评估算法的优化机制,以提高预测的效率和准确性,这些预测尚未探讨当前的研究知识。

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