NEURAL NETWORK-BASED DEFECT DETECTION IN ANALOG AND MIXED IC USING DIGITAL SIGNAL PREPROCESSING
Viera Stopjaková - Pavol Maloek - Vladislav Nagy
The major goal of our work was to develop an efficient defect-oriented
parametric test method for analog & mixed-signal integrated circuits based on
Artificial Neural Network (ANN) classification of a selected circuit's parameter
using different methods of signal preprocessing. Thus, ANN has been used for
detecting catastrophic defects in an experimental mixed-signal CMOS circuits by
sensing the abnormalities in the analyzed circuit's response and by their
consequent classification into a proper category, representing either good or
defective circuit. To reduce the complexity of neural network, Wavelet
Decomposition (WD) is used to perform preprocessing of the analyzed parameter.
This brings significant enhancement in the correct classification, and makes the
neural network-based test method very efficient and versatile for detecting
hard-detectable catastrophic defects. Moreover, investigation of the possibility
to utilize this approach also in detection of parametric faults in analog
circuits was the subject of our research as well. Therefore, a new methodology
for neural network based detection of parametric defects using Principal
Component Analysis (PCA) of the analyzed circuit's response has been proposed.
Since the training set selection plays a crucial role in achieving desirable
classification results, we also propose a new approach to this selection
employing Convex hull (qhull) graphics algorithm. As it is shown in the
experiments performed, well trained neural network is not only able to detect
the faulty devices but also identify the particular parameter deviation in the
respective circuit element.
Keywords: testing analog IC, defect detection, artificial neural networks, wavelet decomposition, principal component analysis, convex hull algorithm
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