1 / 21

Quantum transport theory - analyzing higher order correlation effects by symbolic computation

Quantum transport theory - analyzing higher order correlation effects by symbolic computation. - the development of SymGF PhD Thesis Defense Feng, Zimin Feburary 27th, 2012. Acknowledgements. Guo, Hong – McGill, Physics Zhang, Xiangwen – McGill, Mathematics Lei, Tao – McGill, Mathematics.

jeanne
Download Presentation

Quantum transport theory - analyzing higher order correlation effects by symbolic computation

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Quantum transport theory - analyzing higher order correlation effects by symbolic computation - the development of SymGF PhD Thesis Defense Feng, Zimin Feburary 27th, 2012

  2. Acknowledgements Guo, Hong – McGill, Physics Zhang, Xiangwen – McGill, Mathematics Lei, Tao – McGill, Mathematics • Sun, Qing-Feng – Institute of Physics, Beijing Symbolic Computational Physics - Feng 2

  3. How Physics is Done? Symbolic Computational Physics - Feng 3

  4. We wish to understand the microscopic physical process Fit experimental data with theoretical model and curves If no theory properly describes data, come up with a new model. Ex:Kondo effect in quantum dot transport Symbolic Computational Physics - Feng 4

  5. Experimental systems can be complicated, hard to do theory S. Amaha et al. nanoPHYS'07, Tokyo, Japan ( 2007). M.C.Rogge and R.J.Haug Cond-mat. 0707.2058 D.Schröer, L.Gaudreau,S.Ludwig et al. PRB 76 (2007)075306 T.Ihn et al.New Journ. Phys.9(2007)111 Symbolic Computational Physics - Feng 5

  6. Double quantum dots: D.Sprinzak et al. PRL 88, 176805 (2002) M. Ciorga et al, PRB 61, R16 315, (2000) J.Elzermann et al. PRB67,161308(2003) Symbolic Computational Physics - Feng 6

  7. How quantum transport theory is done? The model: Lead-Device-Lead Non-interacting leads Current proportional to the rate of change of electrons in a lead If there are strong interactions and strong correlation physics in Hdev, analytic theory can become extremely complicated. For this reason, quantum transport theory for multiple QD has not been done to satisfactory level. Symbolic Computational Physics - Feng 7

  8. How to derive formulas in quantum transport theory? (by Green’s function approach) Equation of motion Feynmann Diagrams Symbolic Computational Physics - Feng 8

  9. When quantum-dots contain strong interactions ... Suppose a Hamiltonian has on-site interaction U and we need to calculate its Green's function: 2-particle GF → 3-particle GF → 4-particle GF → ... Extremely complicated Symbolic Computational Physics - Feng 9

  10. New idea – SymGF: symbolic tool for deriving high-order formulas H→SymGF→G Automaticallyand symbolically derives the Green's function of a given Hamiltonianby a computer: complicated problems can now be solved. Results are given analytically. Order of expansion is controllable. Developed with Mathematica Widely tested for its reliability Using SymGF, investigating higher-order processes and complicated device configurations become possible ! Symbolic Computational Physics - Feng 10

  11. Why not done earlier ? Computer Algebra System (CAS) started in 1960's Widely used in scientific research Has established packages in high-energy physics Condensed matter physics is quite versatile; Each problem has its own Hamiltonian and its own methodology: developing a symbolic tool for each problem is not viable. Exception: quantum transport theory Symbolic Computational Physics - Feng 11

  12. Main features of SymGF: 3 sets of inputs to SymGF: Hamiltonian in second quantized form; anti-commutation relations of the operators that appeared in the Hamiltonian; Truncation rules. - this determines the order of expansion Output of SymGF: The desired Green's function of the given Hamiltonian at given order of expansion. Symbolic Computational Physics - Feng 12

  13. Methods implemented in SymGF of solving the equations of motion: Gaussian Elimination Preconditioned Iteration Graph-Aided Solution Direct Iteration Self-energies are automatically defined during the solution Automatic derivation of all required equations of motion Automatic recognition of applicability of truncation rules Keeping specific equal-time correlators at user's mandate What is in SymGF? Symbolic Computational Physics - Feng 13

  14. Demonstration An example run of SymGF to reproduce the analytical derivation of PRL 66, 3048 (1991). Single quantum dot transport problem with on-site interaction. Symbolic Computational Physics - Feng 14

  15. Verification of SymGF: Sergueev N et al, Phys.Rev.B 65 165303 (2002). Meir Y et al, Phys. Rev. Lett.66 3048 (1991). Trocha P et al, Phys. Rev. B 76 165432 (2007). Brown K et al, J. Phys.: Condens.Matter 21 215604 (2009). Trocha P et al,Phys. Rev. B 78 075424 (2008). It took SymGF less than two minutes to derive the analytical formula for these different problems, and the results are exactly the same as derived by hand. Symbolic Computational Physics - Feng 15

  16. Application - side-coupled double QD: extremely difficult if not impossible to derive higher order formulas by hand Symbolic Computational Physics - Feng 16

  17. The model for the side-coupled double quantum dot system

  18. SymGF reveals interesting correlation physics S. Sasaki et al PRL 103, 266806 (2009) Symbolic Computational Physics - Feng 18

  19. SymGF: higher order virtual processes coherently sum up to Kondo resonance Symbolic Computational Physics - Feng 19

  20. Outlook for SymGF: going beyond existing theory! Long range potential: going beyong random phase approximation? Long range potential: include more than just the most diverging terms? Include dynamic dipole-dipole interaction? Perhaps quadripole interaction as well? (computing van der Waals interaction from 1st principles) The idea of SymGF opened new doors for theoretical condensed matter physics. Symbolic Computational Physics - Feng 20

  21. Perhaps: a branch of Condensed Matter Physics THANK YOU ! Symbolic Computational Physics Symbolic Computational Physics - Feng 21

More Related