Prediction of Pipe Failure Rate in Heating Networks Using Machine Learning Methods

被引:0
作者
Beloev, Hristo Ivanov [1 ]
Saitov, Stanislav Radikovich [2 ]
Filimonova, Antonina Andreevna [2 ]
Chichirova, Natalia Dmitrievna [2 ]
Babikov, Oleg Evgenievich [2 ]
Iliev, Iliya Krastev [3 ]
机构
[1] Angel Kanchev Univ Ruse, Dept Agr Machinery, Ruse 7017, Bulgaria
[2] Kazan State Power Engn Univ, Dept Nucl & Thermal Power Plants, Kazan 420066, Russia
[3] Angel Kanchev Univ Ruse, Dept Heat Hydraul & Environm Engn, Ruse 7017, Bulgaria
关键词
machine learning; heating network; evaluation of the value feature; evaluation of heat supply reliability; intelligent model; BURST PRESSURE; PIPELINES; STRENGTH;
D O I
10.3390/en17143511
中图分类号
TE [石油、天然气工业]; TK [能源与动力工程];
学科分类号
0807 ; 0820 ;
摘要
The correct prediction of heating network pipeline failure rates can increase the reliability of the heat supply to consumers in the cold season. However, due to the large number of factors affecting the corrosion of underground steel pipelines, it is difficult to achieve high prediction accuracy. The purpose of this study is to identify connections between the failure rate of heating network pipelines and factors not taken into account in traditional methods, such as residual pipeline wall thickness, soil corrosion activity, previous incidents on the pipeline section, flooding (traces of flooding) of the channel, and intersections with communications. To achieve this goal, the following machine learning algorithms were used: random forest, gradient boosting, support vector machines, and artificial neural networks (multilayer perceptron). The data were collected on incidents related to the breakdown of heating network pipelines in the cities of Kazan and Ulyanovsk. Based on these data, four intelligent models have been developed. The accuracy of the models was compared. The best result was obtained for the gradient boosting regression tree, as follows: MSE = 0.00719, MAE = 0.0682, and MAPE = 0.06069. The feature << Previous incidents on the pipeline section >> was excluded from the training set as the least significant.
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页数:16
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