Analog Circuit Yield Optimization via Freeze–Thaw Bayesian Optimization Technique

2022 
While the VLSI community cares about designs with high yields under process variations, expensive computational costs make conventional yield optimization methods for analog circuits inefficient for industrial applications. In this article, an efficient yield optimization method via the freeze–thaw Bayesian optimization technique is proposed for analog circuits. The yield analysis is integrated into the exploration process of the Bayesian optimization. With a specified Gaussian process regression method, the flexible freeze–thaw Bayesian optimization technique is utilized to automatically guide the search in the design space and control the accuracy of yield analysis in the process space. A performance optimization problem is formulated and solved to mine prior knowledge, and a further speed up is achieved. Experimental results show that the proposed method can gain a $2.47\times $ $5.73\times $ speedup compared with the state-of-the-art methods, without loss of accuracy.
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