JOURNAL ARTICLE

Deep Reinforcement Learning for Analog Circuit Sizing with an Electrical Design Space and Sparse Rewards

Abstract

There is still a great reliance on human expert knowledge during the analog integrated circuit sizing design phase due to its complexity and scale, with the result that there is a very low level of automation associated with it. Current research shows that reinforcement learning is a promising approach for addressing this issue. Similarly, it has been shown that the convergence of conventional optimization approaches can be improved by transforming the design space from the geometrical domain into the electrical domain. Here, this design space transformation is employed as an alternative action space for deep reinforcement learning agents. The presented approach is based entirely on reinforcement learning, whereby agents are trained in the craft of analog circuit sizing without explicit expert guidance. After training and evaluating agents on circuits of varying complexity, their behavior when confronted with a different technology, is examined, showing the applicability, feasibility as well as transferability of this approach.

Keywords:
Sizing Reinforcement learning Computer science Reinforcement Space (punctuation) Electrical engineering Artificial intelligence Engineering

Metrics

5
Cited By
0.54
FWCI (Field Weighted Citation Impact)
19
Refs
0.61
Citation Normalized Percentile
Is in top 1%
Is in top 10%

Citation History

Topics

VLSI and FPGA Design Techniques
Physical Sciences →  Engineering →  Electrical and Electronic Engineering
VLSI and Analog Circuit Testing
Physical Sciences →  Computer Science →  Hardware and Architecture
Evolutionary Algorithms and Applications
Physical Sciences →  Computer Science →  Artificial Intelligence
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