Publication | Closed Access
A Circuit Attention Network-Based Actor-Critic Learning Approach to Robust Analog Transistor Sizing
20
Citations
20
References
2021
Year
Unknown Venue
Artificial IntelligenceModel OptimizationEngineeringMachine LearningCircuit DesignAutomatic Transistor SizingComputer EngineeringAnalog Circuit PerformanceSystems EngineeringComputer ScienceRobust Analog TransistorRobot LearningBrain-like ComputingDeep LearningNeural Architecture SearchLearning Control
Analog integrated circuit design is highly complex and its automation is a long-standing challenge. We present a reinforcement learning approach to automatic transistor sizing, a key step in determining analog circuit performance. A circuit attention network technique is developed to capture the impact of transistor sizing on circuit performance in an actor-critic learning framework. Our approach also includes a stochastic technique for addressing layout effect, another important factor affecting performance. Compared to Bayesian optimization (BO) and Graph Convolutional Network-based reinforcement learning (GCN-RL), two state-of-the-art methods, the proposed approach significantly improves robustness against layout uncertainty while achieving better post-layout performance. BO and GCN-RL can be enhanced with our stochastic technique to reach solution quality similar to ours, but still suffer from a much slower convergence rate. Moreover, the knowledge transfer in our approach is more effective than that in GCN-RL.
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