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 * 40m: apply unsupervised learning "cocktail party algorithm" to diagonalize inputs / outputs ('''DEN''')

Ideas for Future Things to Implement

Near Term (0 - 2 years)

  • Frame work: State Space implementation of the servo
    • What is the motivation to use the SS model???
  • Frame work: Simulink modeling of modern control
  • Frame work: Simulated plant for rapid development of control system
  • Frame work: Unification of modern control theory and simulated plant => integrated control development environment

  • 40m: Modern control realization of local control (OSEM/OPLEV/QUAD) w/o or w estimators.
  • 40m: combination of local/global control (LSC/ASC/TCS?)
  • 40m: implement LMS based FF for seismic subtraction on multi DOF for LSC controls
  • 40m: adaptive subtraction of OL controls to reduce angle to length coupling noise
  • 40m: static + adaptive subtraction of aux. controls (PRC/SRC/MICH) from DARM
  • 40m: acoustic noise subtraction from MC_F / IFO common mode
  • 40m: optimal feedback design for simple loops based on cost function (RANA)

  • adaptive adjustment of input/output matrix
  • modern control version of ASS
  • LIGO: copy/paste of eLIGO FF to multi length DOFs
  • LIGO: adaptive subtraction of WFS controls to reduce angle to length coupling noise (ala Dooley)
  • LIGO: static + adaptive subtraction of aux. controls (PRC/SRC/MICH) from DARM
  • LIGO: optimal feedback design for simple loops based on cost function
    • Optimization of the hierarchical control
    • Optimal control of the ISI/SUS combined system
  • Nonlinear feedback control (e.g. lock acquisition)
  • Bilinear noise cancellation (static/adaptive)

Medium Term (2 - 5 years)

  • PEM channel based feedback states (train mode, EQ mode)
  • Training of LSC/ASC loop shapes to minimize glitch rate at low frequencies (I have no idea how this would be implemented)
  • Optimal length of time to "rest" between locking sequences
  • TCS heating - how much TCS for how much PSL power, and for how long
  • SUS input matrix - constant update??
  • Know when something (oplevs, bad servo, etc.) is kicking something up. Turn down gain / fix loop, or just turn off until it's fixed.
  • Build a simulated IFO plant, check against the real plant. Probably we'd give it the general shape, but it would tweak filter shapes to match real IFO.

Long Term (5 - 10 years)

  • Learning system uses free hanging IFO time series to design its own lock acquisition algorithms
  • Online simulation uses actual PEM inputs to predict glitch rates, does MCMC to find optimal feedback/feedforward solutions and then tries them out on the real system to learn more
  • Large array of seismic / acoustic sensors placed all over the vacuum system can be used to find sources of backscattered light / phase noise
  • Machine has list of people / skills. Can send SMS to ask for help
  • Pre-emptive prediction of failure of facility systems (e.g. power line fluctuations, weather related power failures, vibrations in HVAC indicating fan bearing failures,...)
  • monotonic increase in environmental coupling indicates optics getting dirty, photodiodes getting damaged, etc.
  • bad IFO alignment = operator getting sleepy
  • Initial alignment of IFO, even before there is any flashing in cavities

AdaptiveMachines/IdeasForFutureMachineLearning (last edited 2012-11-11 22:33:11 by DenismartynovATligoDOTorg)