会议专题

Validity Identification and Classification Technique of Tank Acoustic Emission Testing Signals Based on Clustering Analysis

As a modern no-monitoring identification technique, clustering can be used to classify data and reveal its internal structure under the no-experience knowledge condition. Applying floating threshold to re-calculate common feature parameters based on the acoustic emission (AE) waveforms data, the input vectors of clustering algorithm are obtained. With optimized K means clustering algorithm and obtained vectors, clustering effect is significantly improved. Through applying this method on tank AE inspection data, the result shows that different type acoustic sources and different propagation route sources can be distinguished with the achieved method. Also, good denoising effect is obtained. With these, tank floor AE testing and evaluation accuracy is improved.

K-means clustering tank floor acoustic emission testing pattern recognition

Feifei Long Haifeng Xu

Mechanical Science and Engineering College Northeast Petroleum University Daqing City, Heilongjiang Province, China

国际会议

2011 Eighth International Conference on Fuzzy System and Knowledge Discovery(第八届模糊系统与知识发现国际会议 FSKD 2011)

上海

英文

2055-2058

2011-07-26(万方平台首次上网日期,不代表论文的发表时间)