Abstract
The analog layout design for the RF front-end circuits has remained a
critical and time-intensive stage within the integrated circuit
development cycle. Conventional manual methodologies have relied
heavily on expert knowledge, iterative tuning, and heuristic rules,
which has limited scalability under advanced technology nodes. The
increasing complexity of multi-band and high-frequency RF front-
ends has demanded automated strategies that have preserved
performance while reducing design effort. Traditional electronic
design automation tools have struggled to generalize across diverse RF
blocks, which has resulted in suboptimal trade-offs between gain,
noise, linearity, and area. Layout-dependent effects such as parasitic
coupling and mismatch have further complicated early-stage
optimization. These challenges have motivated the need for a data-
driven synthesis framework that has adapted to process variability and
design constraints. This work has presented a machine-learning-
assisted analog layout synthesis framework for RF front-end circuits.
A supervised learning model has learned geometric and topological
layout patterns from annotated analog layouts that have captured
performance-sensitive features. A reinforcement learning agent has
refined placement and routing decisions that which has considered
electromagnetic constraints, symmetry, and matching rules. The
proposed pipeline has integrated circuit simulation feedback that has
guided iterative layout refinement under process corners. Experimental
evaluation on low-noise amplifiers and mixers demonstrates that the
synthesized layouts achieve gain up to 13.4 dB, noise figure as low as
1.4 dB, linearity of -17.0 dBm, layout area of 1165 µm², and parasitic
capacitance of 20 fF, outperforming existing template-based,
optimization-driven, and reinforcement learning placement methods.
The proposed method reduces layout generation time by over 60%
while maintaining consistent performance across transistor widths
(0.16–0.24 µm) and lengths (0.32–0.36 µm), indicating strong
generalization and suitability for next-generation RF front-end
designs.
Authors
A. Muthumari, P. Uma Maheswari
Anna University Regional Campus Madurai, India
Keywords
Analog Layout Synthesis, RF Front-End Design, Machine Learning, Electronic Design Automation, Parasitic Optimization