17 March 2016 Prediction of biases for optical proximity correction through partial coherent identification
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Abstract
Most approaches to model-based optical proximity correction (OPC) use an iterative algorithm to determine the optimum mask. Each iteration requires at least one simulation, which is the most time-consuming part of model-based OPC. As the layout becomes more complicated and the process conditions are driven to the physical limit, the required number of iterations increases dramatically. To overcome this problem, we propose a method to predict the OPC bias of layout segments with a single-hidden-layer neural network. The segments are characterized by length and based on intensities at the corresponding control points, and these features are used as input to the network, which is trained with an extreme learning machine. We obtain a best-error root mean square of 1.29 nm from training and test experiments for layout clips sampled from a random contact layer of a logic device. In addition, we reduced the iterations by 27.0% by initializing the biases in the trained network before performing the main iterations of the OPC algorithm.
© 2016 Society of Photo-Optical Instrumentation Engineers (SPIE) 1932-5150/2016/$25.00 © 2016 SPIE
Moongyu Jeong and Jae W. Hahn "Prediction of biases for optical proximity correction through partial coherent identification," Journal of Micro/Nanolithography, MEMS, and MOEMS 15(1), 013509 (17 March 2016). https://doi.org/10.1117/1.JMM.15.1.013509
Published: 17 March 2016
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Cited by 5 scholarly publications.
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KEYWORDS
Optical proximity correction

Bismuth

Lawrencium

Image segmentation

Model-based design

Detection and tracking algorithms

Neural networks

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