支持向量机用于波哥大下水道系统管道结构状况的预测

Q4 Engineering Ingenieria y Universidad Pub Date : 2021-06-17 DOI:10.11144/javeriana.iued25.svmu
Nathalie Hernández, N. Caradot, H. Sonnenberg, P. Rouault, A. Torres
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引用次数: 0

摘要

目的:本文主要研究:(1)从支持向量机的回归方法出发,建立了一种基于支持向量机的劣化模型,将下水道管道结构状态预测与等级分类分离,并对CCTV检查中发现的故障进行评分预测;(ii)将所提模型的预测结果与基于SVM分类任务的劣化模型的预测结果进行对比,从不同角度探讨两者预测的优缺点。材料和方法:波哥大的下水道网络是本工作的案例研究,其中考虑了由CCTV检查的5031条管道的特征组成的数据集(由GIS获得),以及外部变量(例如,年龄,污水和道路类型)的信息。使用概率密度函数(PDF)将CCTV中发现的故障给出的分数转换为结构等级。此外,采用阳性似然率(positive likelihood rate, PLR)、性能曲线和偏差分析三种技术从不同角度对预测结果进行评价。结果发现:(1)基于支持向量机的劣化模型能较好地预测未经检验的污水管道的临界结构状态,该模型的PLR值在6.8左右(两种模型预测的所有结构状态中最高),对前100个管道处于临界状态的概率最高的预测成功率为74%;(ii)该分类方法所采用的基于svm的劣化模型也适用于其他结构工况的预测,因为该模型对所有结构工况的预测PLR值均为均匀的(PLR值在1.67 ~ 3.88之间),且所有结构工况的偏差分析结果均低于基于svm的回归方法模型的偏差分析结果。
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Support Vector Machines Used for the Prediction of the Structural Conditions of Pipes in Bogota’s Sewer System
Objective: this paper focused on: (i) developing a deterioration model based on support vector machines (SVM) from its regression approach to separate the prediction of the structural condition of sewer pipes from a classification by grades and predict the scores obtained by failures found in CCTV inspections; and (ii) comparing the prediction results of the proposed model with the ones obtained by a deterioration model based on SVM classification tasks to explore the advantages and disadvantages of their predictions from different perspectives. Materials and methods: The sewer network of Bogota was the case study for this work in which a dataset consisting of the characteristics of 5031 pipes inspected by CCTV (obtained by GIS) was considered, as well as information on external variables (e.g., age, sewerage, and road type). Probability density functions (PDF) were used to convert the scores given by failures found in CCTV into structural grades. In addition, three techniques were used to evaluate the predictions from different perspectives: positive likelihood rate (PLR), performance curve and deviation analysis. Results: it was found that: (i) SVM-based deterioration model used from its regression approach is suitable to predict critical structural conditions of uninspected sewer pipes because this model showed a PLR value around 6.8 (the highest value among the predictions of all structural conditions for both models) and 74 % of successful predictions for the first 100 pipes with the highest probability of being in critical conditions; and (ii) SVM-based deterioration model used from its classification approach is suitable to predict other structural conditions because this model showed homogeneous PLR values for the prediction of all structural conditions (PLR values between 1.67 and 3.88) and deviation analysis results for all structural conditions are lower than the ones for the SVM-based model from its regression approach.
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Ingenieria y Universidad
Ingenieria y Universidad Engineering-Engineering (all)
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期刊介绍: Our journal''s main objective is to serve as a medium for the diffusion and divulgation of the articles and investigations in the engineering scientific and investigative fields. All the documents presented as result of an investigation will be received, as well as any review about engineering, this includes essays that might contribute to the academic and scientific discussion of any of the branches of engineering. Any contribution to the subject related to engineering development, ethics, values, or its relations with policies, culture, society and environmental fields are welcome. The publication frequency is semestral.
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