首页> 外文会议>2017 International Conference on Control, Artificial Intelligence, Robotics amp; Optimization >Deep Leaning Neural Networks for Determining Replacement Timing of Steel Water Transmission Pipes
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Deep Leaning Neural Networks for Determining Replacement Timing of Steel Water Transmission Pipes

机译:深度学习神经网络确定输水管道的更换时间

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Water main pipe breaks are an ongoing concern worldwide. Large-diameter steel water transmission mains (WTMs) transport a much larger volume of water and their failure leads to even greater damages than those seen in water networks with small diameter iron or PVC pipe lines. However, there is no predictive model for large-diameter steel WTMs, leaving retroactive maintenance as the sole means of prevention. The objective of this study was to predict the optimal replacement timing for large-diameter steel WTMs based on physical and environmental factors, using Deep Learning algorithms. The model was developed in four steps: (1) determine major factors, (2) determine the best model by comparing performances of three neural networks (NNs) (a shallow artificial NN, multiple hidden layered NN, Stacked autoencoder NN), (3) classify the data into homogeneous groups by an ANN-based clustering technique, and (4) perform the developed model for each group. The multiple hidden layered NN was found to be the best deep neural NN in forecasting a replacement timing of aging WTMs. Additionally, it is recommended that such ANN-based clustering methods be used in predicting a more accurate replacement timing of water networks and making a quantitative decision on replacement.
机译:供水管道的破裂是全球范围内持续关注的问题。大直径的钢制输水总管(WTM)输送的水量要大得多,与使用小直径铁管或PVC管道的供水网络相比,其故障导致的损害甚至更大。但是,没有针对大直径钢WTM的预测模型,而将追溯维护作为唯一的预防手段。这项研究的目的是使用深度学习算法,根据物理和环境因素,预测大直径钢WTM的最佳更换时间。该模型分四个步骤开发:(1)确定主要因素,(2)通过比较三个神经网络(NN)(浅层人工NN,多层隐藏层NN,堆叠式自动编码器NN)的性能来确定最佳模型,(3 )通过基于ANN的聚类技术将数据分为同类组,然后(4)为每个组执行开发的模型。在预测老化WTM的更换时间时,发现了多个隐藏的分层NN是最好的深度神经NN。另外,建议将这种基于ANN的聚类方法用于预测更准确的供水网络更换时机,并对更换做出定量决策。

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