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首页> 外文期刊>Canadian Journal of Civil Engineering >Defect based deterioration model for sewer pipelines using Bayesian belief networks
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Defect based deterioration model for sewer pipelines using Bayesian belief networks

机译:贝叶斯信仰网络基于缺陷的下水道管道劣化模型

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摘要

A defect based deterioration model to determine the condition ratings in a probabilistic manner for sewer pipelines is presented in this paper. Bayesian belief network (BBN) is used to develop a static model using probabilities of occurrences, and conditional probabilities from observations of existing sewage network. Time dimension is introduced to the developed BBN model by using logistic regression as temporal links required to construct a dynamic Bayesian belief network (DBN). The accuracy of the model's prediction is examined using actual data where the mean absolute error and root mean square error for the BBN model resulted in values of 0.67, 1.06, 0.56 and 1.05, 1.60, 0.95 for structural, operational, and overall conditions, respectively. As for the DBN model, values achieved for the year at which a pipeline would reach a certain condition state were close to the actual values from the validation dataset.
机译:本文介绍了基于缺陷的劣化模型,以确定以概率管道的概率额定值。 贝叶斯信仰网络(BBN)用于使用现有污水网络观察的概率和条件概率来开发静态模型。 通过使用Logistic回归作为构建动态贝叶斯信仰网络(DBN)所需的时间链路来引入开发的BBN模型的时间维度。 使用实际数据检查模型预测的准确性,其中BBN模型的平均绝对误差和均方根误差分别为结构,操作和整体条件的值为0.67,1.06,0.56和1.05,1.60,0.95 。 至于DBN模型,在流水线达到某个条件状态的年份所实现的值接近验证数据集的实际值。

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