Early Abnormal Detection of Sewage Pipe Network: Bagging of Various
Abnormal Detection Algorithms
- URL: http://arxiv.org/abs/2206.03321v1
- Date: Mon, 6 Jun 2022 03:46:47 GMT
- Title: Early Abnormal Detection of Sewage Pipe Network: Bagging of Various
Abnormal Detection Algorithms
- Authors: Zhen-Yu Zhang, Guo-Xiang Shao, Chun-Ming Qiu, Yue-Jie Hou, En-Ming
Zhao, and Chi-Chun Zhou
- Abstract summary: Abnormalities of the sewage pipe network will affect the normal operation of the whole city.
This paper propose an early abnormal-detection method.
- Score: 3.1720050808705804
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Abnormalities of the sewage pipe network will affect the normal operation of
the whole city. Therefore, it is important to detect the abnormalities early.
This paper propose an early abnormal-detection method. The abnormalities are
detected by using the conventional algorithms, such as isolation forest
algorithm, two innovations are given: (1) The current and historical data
measured by the sensors placed in the sewage pipe network (such as ultrasonic
Doppler flowmeter) are taken as the overall dataset, and then the general
dataset is detected by using the conventional anomaly detection method to
diagnose the anomaly of the data. The anomaly refers to the sample different
from the others samples in the whole dataset. Because the definition of anomaly
is not through the algorithm, but the whole dataset, the construction of the
whole dataset is the key to propose the early abnormal-detection algorithms.
(2) A bagging strategy for a variety of conventional anomaly detection
algorithms is proposed to achieve the early detection of anomalies with the
high precision and recall. The results show that this method can achieve the
early anomaly detection with the highest precision of 98.21%, the recall rate
63.58% and F1-score of 0.774.
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