Scan Cell Segmentation Based on Reinforcement Learning for Power-Safe Testing of Monolithic 3D ICs.

2023 IEEE International Test Conference (ITC)(2023)

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摘要
As Moore's Law approaches its physical limits, monolithic 3D (M3D) integration offers continued power, performance, and density improvements. However, M3D integration can lead to large power supply noise (PSN) in the power distribution network due to high current demand and long conduction paths, leading to PSN-induced voltage droop problems. The PSN-induced voltage droop is more severe for at-speed delay testing than for the functional mode. Power-safe testing is therefore essential to prevent good chips from failing on the tester (i.e., yield loss). We propose a scan cell segmentation framework to reduce power consumption during scan capture. We use reinforcement learning to insert scan cell segments that can minimize switching activity without any adverse impact on test coverage. Simulation results for benchmark M3D designs highlight the effectiveness of the proposed framework.
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