Downsampled and Undersampled Datasets in Feature Selective Validation (FSV)

Feature selective validation (FSV) is a heuristic method for quantifying the (dis)similarity of two datasets. The computational burden of obtaining the FSV values might be unnecessarily high if datasets with large numbers of points are used. While this may not be an important issue per se it is an important issue for future developments in FSV such as real-time processing or where multidimensional FSV is needed. Coupled with the issue of dataset size, is the issue of datasets having “missing” values. This may come about because of a practical difficulty or because of noise or other confounding factors making some data points unreliable. These issues relate to the question “what is the effect on FSV quantification of reducing or removing data points from a comparison-i.e., down- or undersampling data?” This paper uses three strategies to achieve this from known datasets. This paper demonstrates, through a representative sample of 16 pairs of datasets, that FSV is robust to changes providing a minimum dataset size of approximately 200 points is maintained. It is robust also for up to approximately 10% “missing” data, providing this does not result in a continuous region of missed data.

[1]  Lixin Wang,et al.  Improvement in the Definition of ODM for FSV , 2013, IEEE Transactions on Electromagnetic Compatibility.

[2]  Antonio Orlandi,et al.  Impact of Shorting Vias Placement on Embedded Planar Electromagnetic BandGap Structures Within Multilayer Printed Circuit Boards , 2010, IEEE Transactions on Microwave Theory and Techniques.

[3]  A. Orlandi,et al.  Feature selective validation (FSV) for validation of computational electromagnetics (CEM). part II- assessment of FSV performance , 2006, IEEE Transactions on Electromagnetic Compatibility.

[4]  Antonio Orlandi,et al.  Challenges in developing a multidimensional Feature Selective Validation implementation , 2010, 2010 IEEE International Symposium on Electromagnetic Compatibility.

[5]  A. Orlandi,et al.  Feature selective validation (FSV) for validation of computational electromagnetics (CEM). part I-the FSV method , 2006, IEEE Transactions on Electromagnetic Compatibility.

[6]  Fernando Silva Martínez,et al.  Study of transient phenomena with feature selective validation method , 2011 .

[7]  L Raimondo,et al.  A Simple and Efficient Design Procedure for Planar Electromagnetic Bandgap Structures on Printed Circuit Boards , 2011, IEEE Transactions on Electromagnetic Compatibility.

[8]  F. Massey The Kolmogorov-Smirnov Test for Goodness of Fit , 1951 .

[9]  Jos Knockaert,et al.  Comparing EMC-signatures by FSV as a quality assessment tool , 2011 .

[10]  Jun Fan,et al.  Applying feature selective validation (FSV) as an objective function for data optimization , 2010, 2010 IEEE International Symposium on Electromagnetic Compatibility.

[11]  A. Orlandi,et al.  Progress in the development of a 2D Feature Selective Validation (FSV) method , 2008, 2008 IEEE International Symposium on Electromagnetic Compatibility.

[12]  Antonio Orlandi,et al.  Three dimensional full wave validation of the Maxwell Garnett to Debye model approach , 2011, 10th International Symposium on Electromagnetic Compatibility.

[13]  N. Smirnov Table for Estimating the Goodness of Fit of Empirical Distributions , 1948 .