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ET-DRL+AF-PID: Co-Suppression of Multi-Physics Disturbances for Sub-Nanometer Motion Control at 3 nm Node

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Figshare2025-12-20 更新2026-04-28 收录
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https://figshare.com/articles/dataset/_b_ET-DRL_AF-PID_Co-Suppression_of_Multi-Physics_Disturbances_for_Sub-Nanometer_Motion_Control_at_3_nm_Node_b_/30926054
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Ultra-precision motion control in the field of semiconductor lithography and optical manufacturing faces the core challenge of coordinated suppression of multiple physical disturbances: thermal gradients lead to 12-nanometer positioning drift, mechanical resonance causes 20-nanometer vibration amplitude, and electromagnetic interference causes ±5% thrust fluctuation. Traditional proportional-integral-differential control is difficult to meet the 5-nanometer trajectory tracking accuracy requirement due to bandwidth limitations, and model predictive control is limited by more than 500 microseconds of computing delay and cannot adapt to high-speed scanning scenarios. Pure deep reinforcement learning lacks engineering feasibility due to the demand for millions of training samples. This study proposed a fusion architecture of event-triggered deep reinforcement learning and adaptive fuzzy proportional integral differential, breaking through technical bottlenecks through three innovations.
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2025-12-20
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