Experimental research of pipeline leak detection method based on support
vector machine
Abstract
The difficulty in establishing a reliable model for detecting and
identifying boiler pipeline leakage with limited samples is addressed in
this research. A support vector machine-based acoustic emission
detection technology is proposed, which combines nonlinear and linear
methods to classify signal parameters as feature vectors. This approach
overcomes the limitations of traditional methods that require a large
amount of training data for classification. It demonstrates outstanding
advantages in small sample scenarios and binary classification. Firstly,
the feature parameters of pipeline leak acoustic emission signals are
extracted, and then put the extracted feature parameters into support
vector machine classification and training as the input feature vector.
Realizing the effective recognition of acoustic emission signals such as
knocking, sandpaper friction and broken lead, the SVM can use the
measured acoustic emission signals to judge the type of leakage signals,
and the accuracy reaches 100% after training. The test results show
that the method is effective and feasible in the pipeline leakage
diagnosis ,verifying the acoustic emission technique is applied to the
feasibility of pipeline leak detection.