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The Effect of Solar Wind on Pulsar Observations

The Effect of Solar Wind on Pulsar Observations. Xiaopeng YOU Southwest University, Chongqing, China. Outline. Introduction Our solar wind model Solar wind effect 1: DM variations Solar wind effect 2: RM variations Conclusion. Introduction ---motivation. Main goal of PPTA project

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The Effect of Solar Wind on Pulsar Observations

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  1. The Effect of Solar Wind on Pulsar Observations Xiaopeng YOU Southwest University, Chongqing, China

  2. Outline • Introduction • Our solar wind model • Solar wind effect 1: DM variations • Solar wind effect 2: RM variations • Conclusion

  3. Introduction---motivation • Main goal of PPTA project • Detecting gravity wave • Timing precision requirement • 20 MSPs, 100 ns • Removing annoying “noise” • ISM • Solar wind

  4. Introduction --The solar wind Solar wind --- plasma with speed ~ 400 km/s, complex structure Quasi-static and transient component • quasi-static :co-rotating with the Sun; • Transient component:changes very quickly,coronal mass ejections • Our model, concentrate on quasi-static component

  5. The effect of ISM and solar wind:1 • Dispersion Measure (DM)

  6. DM variations from ISM 20 millisecond pulsars (You et al., 2007)

  7. Why need more accurate model • Previous model of electron density of solar wind, spherically symmetric, quadratic decrease • Previous model not accurate (you et al, 2007) • Need new model TEMPO: n0=10 cm-3 TEMPO2: n0= 4 cm-3

  8. Two-state model:fast and slow wind • Fast wind:lower density, originate in active regions at high latitude • Slow wind:relatively high density, originate in active regions at low or middle latitude • Assume slow wind occupies the zone within 20o of the magneticneutral line and outside this is dominated by the fast windand that both winds flow radially.

  9. Method and Data Analysis Pulsar C The Sun B The Earth A • Position of pulsars relatively positions of the pulsar, the Sun and the Earth • Observing time make sure the Carrington rotation (starting 1976, May) • Data from Wilcox Solar Observatory • According the data, determine the structure of slow and fast wind Pulsar C Pulsar C Pulsar C Pulsar C The Sun B The Sun B The Sun B The Sun B The Sun B The Earth A The Earth A The Earth A The Earth A

  10. Synoptic chart PSR J1022+100, Aug 25th, 2006

  11. The result of new model : DM PSR J1744-1134,from 2004 to 2006

  12. Compare with Observed Data Left :Our data(You et al. 2007);Right:Nancay data(Cognard et al. 1996)

  13. The effect on pulsar timing Simulating three years observing data of PSR J1744-1134

  14. Summary of DM variation of solar wind • Developed a new solar wind electron density model • Our model is more accurate than previous one • Use of the older solar wind models (or no correction) leads to systematic errors in measured pulsar parameters • Our new model is important for high precession pulsar timing

  15. The effect of ISM and solar wind:2 Rotation Measure(RM) 63+223+477 RMs by Parkes +GBT(Han et al. 1999, 2006, 2009) |b| < 8 degree

  16. RM from observation 2. Observing data □:2005 ☆:2006 △:2007 ⊕:2008 RM of PSR J1022+1001 from 2005 to 2008 by Parkes telescope

  17. Synoptic chart PSR J1022+100, Aug 25th, 2006

  18. The result of new model 2: RM RM of our model for PSR J1022+1001 in 2006

  19. RM_sun from our model

  20. Comparing with observed data

  21. Summary of RM variations by solar wind We developed a model to predict the RM induced by solar wind PSR J1022+1001 shows significant RM variation by solar wind Comparing with observing data, it shows that observed RM variations can be predicted by our model

  22. Conclusions Two-state solar wind model。 predicting DM and RM variations by solar wind from our model。 Comparing with observing data, it shows that our model is better than previous model

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