Available student project - Machining learning for coupled interferometer alignment and control

Research fields

Algorithm concept ref [Qin et al. CQG 2025]

Project details

Optical alignment of the large long baseline suspended mass interferometers is a time consuming task. In the last observation run, 3% time was used in the initial alignment. Fully automated and reliable initial beam steering and optical cavity alignment would be a major stepping stone towards increased duty cycles. This project will develop advanced controls and machine learning (ML) techniques to align complex optical systems like gravitational wave detectors. The project will extend the techniques demonstrated in [Qin et al. CQG 2025] to the complexity of coupled cavities and suspended long baseline cavities.

At ANU, we will build a suspended three-mirror coupled cavity resembling a power-recycled interferometer, using Tip-Tilt suspensions, voice-coil steering mirrors for input beam alignment, and CMOS cameras for beam monitoring. ML algorithms will identify optical modes, automate alignment, and engage length sensing and control to lock the cavity at its operating point. If successful, the ML alignment approach will contribute to enhancing GW detectors’ performance.

Key Learning Outcomes include:

Further information

Required background

Some knowledge of python or another imperative programming language, image processing experience would be useful. It suits well for Honors and full-time Master project (one semester or two) in 2026.

Project suitability

This research project can be tailored to suit students of the following type(s)

Contact supervisor

Qin, Jiayi profile

Other supervisor(s)

Slagmolen, Bram profile
Ward, Robert profile