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Discovering Extrasolar Planets via
       Gravitational Microlensing
        Michael Miller   Denis Sullivan
Overview
   Introduction to Gravitational Microlensing
   Multiple lens systems
       Complex representation
   Analysing data
   Concluding remarks
What is Gravitational Microlensing?
   Bending of light in a weak gravitational field
       Gravitational field from a star or planet
   The path of the light bends by a small angle as it
    passes the star or planet
   Observer “sees” image of star slightly shifted from
    source
          Image




          Source
                                b
                                    M                Observer
                                Lens
Gravitational Microlensing
– Single Lens

     Two approximations:
         Thin lens approximation
         Small angle approximation
           φ ≈ sin(φ) ≈ tan(φ)




                               θE

                                              Observer
                                    DS

Source plane
                DSL     Lens plane       DL
Gravitational Microlensing
– Single Lens




    Lens Equation



                                       θ+
                  β          θE
                                       θ-    Observer
                                  DS

Source plane
                DSL   Lens plane        DL
Gravitational Microlensing
– Single Lens




   Lens Equation
Gravitational Microlensing
– Single Lens




   Lens Equation


                    θ+
                    z+

                         β
                         w
                   θ
                   z--
                             θE
                             1
Gravitational Microlensing
– Single Lens

                            Intrinsic brightness of
                             the source, does not
                             change
                            Intensity per unit area
                             in each image is the
                             same as the source
                            Magnification, M, is
                             the ratio of observed
                             light, to amount of light
                             if there was no lensing
Multiple Lenses
– Two Lenses

   Star + planet (or binary stars)



      Lens Equation
                                                                  y


                                                              z
                                                                      r2
                                                          w                z
                                                          r1           z       x
                                      Observer



    Source plane    Lens plane
                                         Positions represented by vectors
Multiple Lenses
– Two Lenses
   Star + planet (or binary stars)



        Lens Equation
                                                                  y
   Cannot be solved analytically
   Solved numerically
                                                              z
       Inverse-Ray Tracing                                           r2
                                                          w                z
           “Brute force approach”
                                                          r1           z       x
       Semi-Analytical Method



                                         Positions represented by vectors
Multiple Lenses
– Two Lenses
   Star + planet (or binary stars)




        Lens Equation
   Five roots  Five images?                                   iy
   3 or 5 images
   Numerically solve polynomial                            z
                                                                     r2
    using Jenkins-Traub algorithm                                         z
                                                        w
   Substitute z back into Lens                          r1           z       x
    Equation
       recalculated w = source position w
           z is physical image
       recalculated w ≠ source position w
                                        Positions represented by complex numbe
           z is not physical image
Multiple Lenses
   Star + planets




        Lens Equation
   For N lenses                                                     y
   No. of roots = N2 + 1                                       z
   Numerically solve polynomial                       z        r4       r2
    using Jenkins-Traub algorithm                          w
                                                                              z
   Substitute z back into Lens                             r1                    x
    Equation                                               r3
       recalculated w = source position w            z                  z
           z is physical image
       recalculated w ≠ source position w
                                        Positions represented by complex numbe
           z is not physical image
Multiple Lenses
- Three Lenses

                    3 lens
                  animation
Analysing Data

   Separation between images is ~milliarcseconds
       Cannot be resolved!
   Magnification can be measured!
   Microlensing events recorded by measuring apparent
    brightness over time (light curve)
   Fit together data from different collaborations
        MOA                    OGLE
                                         Fit theoretical light curve to data




                                                      microFUN
Analysing Data

   Light curve parameters
       Mass ratio(s)
       Einstein crossing time
       Source radius                                              Depend on Mass
       Impact parameter                                                  OGLE
                                            In units of θE   MOA
       Lens position(s)
           Lens separation(s) + angle(s)
       Lens Motion
       Parallax                                                   χ2: minimised!
                                                                             microFUN


   Least squares fit
       Vary parameters to minimise χ2
       When χ2 is minimised, values for parameters are parameter values for event
Concluding remarks

   Exact values for θE and total mass cannot be determined
    directly from microlensing light curve
   Advantages:
       Not dependent on light from host star
           Free-floating planets
       Not limited by distance from Earth
       Gives snap-shot of planetary system in short observing time
   Disadvantage:
       Alignments of two stars are rare
       Follow-up (repeated) measurements difficult
Acknowledgements
   VUW Optical Astrophysics Research Group
   Marsden Fund
   MOA Collaboration
       (Microlensing Observations in Astrophysics)

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14.20 o1 m miller

  • 1. Discovering Extrasolar Planets via Gravitational Microlensing Michael Miller Denis Sullivan
  • 2. Overview  Introduction to Gravitational Microlensing  Multiple lens systems  Complex representation  Analysing data  Concluding remarks
  • 3. What is Gravitational Microlensing?  Bending of light in a weak gravitational field  Gravitational field from a star or planet  The path of the light bends by a small angle as it passes the star or planet  Observer “sees” image of star slightly shifted from source Image Source b M Observer Lens
  • 4. Gravitational Microlensing – Single Lens  Two approximations:  Thin lens approximation  Small angle approximation  φ ≈ sin(φ) ≈ tan(φ) θE Observer DS Source plane DSL Lens plane DL
  • 5. Gravitational Microlensing – Single Lens Lens Equation θ+ β θE θ- Observer DS Source plane DSL Lens plane DL
  • 7. Gravitational Microlensing – Single Lens Lens Equation θ+ z+ β w θ z-- θE 1
  • 8. Gravitational Microlensing – Single Lens  Intrinsic brightness of the source, does not change  Intensity per unit area in each image is the same as the source  Magnification, M, is the ratio of observed light, to amount of light if there was no lensing
  • 9. Multiple Lenses – Two Lenses  Star + planet (or binary stars) Lens Equation y z r2 w z r1 z x Observer Source plane Lens plane  Positions represented by vectors
  • 10. Multiple Lenses – Two Lenses  Star + planet (or binary stars) Lens Equation y  Cannot be solved analytically  Solved numerically z  Inverse-Ray Tracing r2 w z  “Brute force approach” r1 z x  Semi-Analytical Method  Positions represented by vectors
  • 11. Multiple Lenses – Two Lenses  Star + planet (or binary stars) Lens Equation  Five roots  Five images? iy  3 or 5 images  Numerically solve polynomial z r2 using Jenkins-Traub algorithm z w  Substitute z back into Lens r1 z x Equation  recalculated w = source position w  z is physical image  recalculated w ≠ source position w  Positions represented by complex numbe  z is not physical image
  • 12. Multiple Lenses  Star + planets Lens Equation  For N lenses y  No. of roots = N2 + 1 z  Numerically solve polynomial z r4 r2 using Jenkins-Traub algorithm w z  Substitute z back into Lens r1 x Equation r3  recalculated w = source position w z z  z is physical image  recalculated w ≠ source position w  Positions represented by complex numbe  z is not physical image
  • 13. Multiple Lenses - Three Lenses 3 lens animation
  • 14. Analysing Data  Separation between images is ~milliarcseconds  Cannot be resolved!  Magnification can be measured!  Microlensing events recorded by measuring apparent brightness over time (light curve)  Fit together data from different collaborations MOA OGLE  Fit theoretical light curve to data microFUN
  • 15. Analysing Data  Light curve parameters  Mass ratio(s)  Einstein crossing time  Source radius Depend on Mass  Impact parameter OGLE In units of θE MOA  Lens position(s)  Lens separation(s) + angle(s)  Lens Motion  Parallax χ2: minimised! microFUN  Least squares fit  Vary parameters to minimise χ2  When χ2 is minimised, values for parameters are parameter values for event
  • 16. Concluding remarks  Exact values for θE and total mass cannot be determined directly from microlensing light curve  Advantages:  Not dependent on light from host star  Free-floating planets  Not limited by distance from Earth  Gives snap-shot of planetary system in short observing time  Disadvantage:  Alignments of two stars are rare  Follow-up (repeated) measurements difficult
  • 17. Acknowledgements  VUW Optical Astrophysics Research Group  Marsden Fund  MOA Collaboration  (Microlensing Observations in Astrophysics)