arXiv Open Access 2025

Inverse Design in Distributed Circuits Using Single-Step Reinforcement Learning

Jiayu Li Masood Mortazavi Ning Yan Yihong Ma Reza Zafarani
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Abstrak

The goal of inverse design in distributed circuits is to generate near-optimal designs that meet a desirable transfer function specification. Existing design exploration methods use some combination of strategies involving artificial grids, differentiable evaluation procedures, and specific template topologies. However, real-world design practices often require non-differentiable evaluation procedures, varying topologies, and near-continuous placement spaces. In this paper, we propose DCIDA, a design exploration framework that learns a near-optimal design sampling policy for a target transfer function. DCIDA decides all design factors in a compound single-step action by sampling from a set of jointly-trained conditional distributions generated by the policy. Utilizing an injective interdependent ``map", DCIDA transforms raw sampled design ``actions" into uniquely equivalent physical representations, enabling the framework to learn the conditional dependencies among joint ``raw'' design decisions. Our experiments demonstrate DCIDA's Transformer-based policy network achieves significant reductions in design error compared to state-of-the-art approaches, with significantly better fit in cases involving more complex transfer functions.

Topik & Kata Kunci

Penulis (5)

J

Jiayu Li

M

Masood Mortazavi

N

Ning Yan

Y

Yihong Ma

R

Reza Zafarani

Format Sitasi

Li, J., Mortazavi, M., Yan, N., Ma, Y., Zafarani, R. (2025). Inverse Design in Distributed Circuits Using Single-Step Reinforcement Learning. https://arxiv.org/abs/2506.08029

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2025
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arXiv
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