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Data-driven fault diagnosis method for analog circuits based on robust competitive agglomeration 被引量:1
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作者 Rongling Lang Zheping Xu Fei Gao 《Journal of Systems Engineering and Electronics》 SCIE EI CSCD 2013年第4期706-712,共7页
The data-driven fault diagnosis methods can improve the reliability of analog circuits by using the data generated from it. The data have some characteristics, such as randomness and incompleteness, which lead to the ... The data-driven fault diagnosis methods can improve the reliability of analog circuits by using the data generated from it. The data have some characteristics, such as randomness and incompleteness, which lead to the diagnostic results being sensitive to the specific values and random noise. This paper presents a data-driven fault diagnosis method for analog circuits based on the robust competitive agglomeration (RCA), which can alleviate the incompleteness of the data by clustering with the competing process. And the robustness of the diagnostic results is enhanced by using the approach of robust statistics in RCA. A series of experiments are provided to demonstrate that RCA can classify the incomplete data with a high accuracy. The experimental results show that RCA is robust for the data needed to be classified as well as the parameters needed to be adjusted. The effectiveness of RCA in practical use is demonstrated by two analog circuits. 展开更多
关键词 DATA-DRIVEN fault diagnosis analog circuit robust competitive agglomeration (RCA).
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A robust clustering algorithm for underdetermined blind separation of sparse sources 被引量:3
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作者 方勇 张烨 《Journal of Shanghai University(English Edition)》 CAS 2008年第3期228-234,共7页
In underdetermined blind source separation, more sources are to be estimated from less observed mixtures without knowing source signals and the mixing matrix. This paper presents a robust clustering algorithm for unde... In underdetermined blind source separation, more sources are to be estimated from less observed mixtures without knowing source signals and the mixing matrix. This paper presents a robust clustering algorithm for underdetermined blind separation of sparse sources with unknown number of sources in the presence of noise. It uses the robust competitive agglomeration (RCA) algorithm to estimate the source number and the mixing matrix, and the source signals then are recovered by using the interior point linear programming. Simulation results show good performance of the proposed algorithm for underdetermined blind sources separation (UBSS). 展开更多
关键词 underdetermined blind sources separation (UBSS) robust competitive agglomeration (RCA) sparse signal
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