The yield of the deep sub-micron semiconductor is secured by the process capability as well as the yield-friendly design capability. Yield-friendly design capabilities can be equipped with conventional Design for Manufacturability (DFM) that avoids already known defective layouts in design. Previously known defects can be defined as various rules and avoided in design, but defects that may occur at new technology nodes are difficult to avoid in advance. Indiscreetly defect-avoidance designs cause turn TAT increases and Power/Performance/Area (PPA) overheads in the design, which can ultimately lead to increased design costs and poor design competitiveness. The first step of this study is to predict potential risks and to specify major factor of risks that may occur at new process nodes with new DFM solutions developed using Machine Learning (ML) techniques. The second step is to secure early yield through avoidance design to prevent predicted defects and direct mask modification to improve defects. In this study, we present not only the introduction of new ML-based DFM solutions, but also the effect of predicting and improving defects through the application cases of real products.
As the typical litho hotspot detection runtime continue to increase with sub-10nm technology node due to increasing design and process complexity, many DFM techniques are exploring new methods that can expedite some of their advanced verification processes. The benefit of improved runtimes through simulation can be obtained by reducing the amount of data being sent to simulation. By inserting a pattern matching operation, a system can be designed such that it only simulates in the vicinity of topologies that somewhat resemble hotspots while ignoring all other data. Pattern Matching improved overall runtime significantly. However, pattern matching techniques require a library of accumulated known litho hotspots in allowed accuracy rate. In this paper, we present a fast and accurate litho hotspot detection methodology using specialized machine learning. We built a deep neural network with training from real hotspot candidates. Experimental results demonstrate Machine Learning’s ability to predict hotspots and achieve greater than 90% detection accuracy and coverage, with best achieved accuracy 99.9% while reducing overall runtime compared to full litho simulation.
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