Litcius/Paper detail

Use of Evolutionary Optimization Algorithms for the Design and Analysis of Low Bias, Low Phase Noise Photodetectors

Ishraq Md Anjum, Ergün Şimşek, Seyed Ehsan Jamali Mahabadi, Thomas F. Carruthers, Curtis R. Menyuk, Joe C. Campbell, D.A. Tulchinsky, Keith J. Williams

2023Journal of Lightwave Technology16 citationsDOIOpen Access PDF

Abstract

With the rapid advance of machine learning techniques and the increased availability of high-speed computing resources, it has become possible to exploit machine-learning technologies to aid in the design of photonic devices. In this work we use evolutionary optimization algorithms, machine learning techniques, and the drift-diffusion equations to optimize a modified uni-traveling-carrier (MUTC) photodetector for low phase noise at a relatively low bias of 5 V. We compare the particle swarm optimization (PSO), genetic, and surrogate optimization algorithms. We find that PSO yields the solution with the lowest phase noise, with an improvement over a current design of 4.4 dBc/Hz. We then analyze the machine-optimized design to understand the physics behind the phase noise reduction and show that the optimized design removes electrical bottlenecks in the current design.

Topics & Concepts

Particle swarm optimizationComputer sciencePhase noiseNoise (video)PhotonicsEvolutionary algorithmPhotodetectorEvolutionary computationAlgorithmElectronic engineeringGenetic algorithmArtificial intelligenceMachine learningEngineeringPhysicsOpticsImage (mathematics)Photonic and Optical DevicesSemiconductor Lasers and Optical DevicesAdvanced Fiber Optic Sensors