Multiple attenuation through independent component analysis: a case study

2013 ◽  
Author(s):  
Carlos A. da Costa Filho ◽  
Leonardo T. Duarte ◽  
Martin Tygel
Author(s):  
K Ramakrishna Kini ◽  
Muddu Madakyaru

AbstractThe task of fault detection is crucial in modern chemical industries for improved product quality and process safety. In this regard, data-driven fault detection (FD) strategy based on independent component analysis (ICA) has gained attention since it improves monitoring by capturing non-gaussian features in the process data. However, presence of measurement noise in the process data degrades performance of the FD strategy since the noise masks important information. To enhance the monitoring under noisy environment, wavelet-based multi-scale filtering is integrated with the ICA model to yield a novel multi-scale Independent component analysis (MSICA) FD strategy. One of the challenges in multi-scale ICA modeling is to choose the optimum decomposition depth. A novel scheme based on ICA model parameter estimation at each depth is proposed in this paper to achieve this. The effectiveness of the proposed MSICA-based FD strategy is illustrated through three case studies, namely: dynamic multi-variate process, quadruple tank process and distillation column process. In each case study, the performance of the MSICA FD strategy is assessed for different noise levels by comparing it with the conventional FD strategies. The results indicate that the proposed MSICA FD strategy can enhance performance for higher levels of noise in the data since multi-scale wavelet-based filtering is able to de-noise and capture efficient information from noisy process data.


2001 ◽  
Vol 10 (3) ◽  
pp. 349-353 ◽  
Author(s):  
Daniel E. Callan ◽  
Akiko M. Callan ◽  
Christian Kroos ◽  
Eric Vatikiotis-Bateson

2016 ◽  
Vol 86 (S2) ◽  
pp. 417-429 ◽  
Author(s):  
P. Capuano ◽  
E. De Lauro ◽  
S. De Martino ◽  
M. Falanga ◽  
S. Petrosino

Geophysics ◽  
2006 ◽  
Vol 71 (5) ◽  
pp. S179-S184 ◽  
Author(s):  
Wenkai Lu

Adaptive multiple subtraction is a critical and challenging procedure for the widely used surface-related multiple attenuation (SRMA) techniques. In this paper, I present an adaptive multiple subtraction algorithm based on independent component analysis (ICA). The method expresses the problem of adaptive multiple subtraction as a blind source separation (BSS) problem with two mixtures (the seismic data and the predicted multiple) of two or more sources (primaries and multiples). By taking advantage of the sparse property of the seismic data, the method adopts a geometric ICA method to recover the mixing matrix and a linear programming technique to recover the sources when more than two sources are included. The major advantage of the proposed method is that it does not require that the multiples and primaries in the data be orthogonal to each other; that is, the method can perform adaptive multiple subtraction when multiples and primaries have overlap. Furthermore, by expressing the problem of adaptive multiple subtraction as an underdetermined BSS model (more sources with less mixtures), the method can separate the primaries and the multiples when there is time delay and amplitude inconsistency between the true and the predicted multiples. The proposed method is demonstrated on several synthetic datasets generated by simple convolution and finite-difference modeling.


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