TJ-II:Turbulence

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Transport in fusion-grade plasmas is often dominated by turbulent transport. In contrast with Neoclassical transport, turbulent transport (assumed to be the cause of the experimental so-called "anomalous" component of transport) is not well understood. As a consequence, predictions of machine performance generally rely on rather crude scaling law techniques, rather than first-principles calculations. Improving our understanding of turbulence is hard, due to (1) the complexity of fusion-grade plasmas (the presence of charged particles and magnetic fields make this into a much harder topic than fluid turbulence), (2) the enormous variety of plasma instabilities, and (3) the difficulty of diagnosing the plasma due to the hostile conditions inside the plasma.

Our work on turbulence has focussed mainly on the analysis of edge Langmuir probe data, although some analysis was done on other types of data (e.g., reflectometry signals). Much effort was devoted to the development of new data analysis techniques.

Bicoherence and wavelets

Auto-bicoherence graph (Eθ) during a spontaneous confinement transition at TJ-II, showing the coupling of high to low frequencies (horizontal and diagonal lines), i.e., a possible inverse spectral cascade. (from B.Ph. van Milligen et al, Nucl. Fusion 48 (2008) 115003)

Turbulence is essentially non-linear. Non-linear interactions can be detected by means of higher-order spectra (e.g. quadratic interactions can be detected through the bi-spectrum). With Fourier analysis, however, in order to achieve statistically significant values for the bi-spectrum, very long time series are necessary. This fact has mostly precluded its use in fields like plasma turbulence, since long steady-state data series are not generally available. In our work, for the first time, the bicoherence was calculated using wavelet transforms, thus making the detection of non-linear interactions with time resolution possible. [1] [2] [3] [4] A relation was found between confinement transitions and an increase of the bicoherence, as expected in the framework of shear/zonal flow models for turbulence stabilisation. [5]

Self-similarity

Important transport phenomena such as profile stiffness (consistency), [6] power degradation, the rapid propagation of perturbations, [7] and the Bohm scaling of plasma confinement might be explained on the basis of profile self-regulation in the framework of the Self-Organised Criticality paradigm. This paradigm predicts that transport is regulated by avalanches, which would generate self-similar behaviour in space and time of the turbulent data.

In order to test this hypothesis, one can determine the shape of the autocorrelation function (ACF) of turbulent signals. [8] [9] [10] [11] [12] [13]

Unfortunately, the most revealing information is present in the tail of the distribution (i.e., well beyond the correlation time), where statistics are generally poor. Therefore, it is convenient to resort to the Rescaled-Range analysis technique and the determination of the Hurst exponent. We have shown that this type of analysis is far more robust with respect to random noise perturbations than the direct determination of the ACF or the Probability of Return.

The analysis of data from Langmuir probes taken at the plasma edge in a wide variety of fusion devices reveals the existence of self-similar behaviour or long-range correlations in all devices studied. The observed variation of the Hurst exponent in the plasma edge, 0.62 < H < 0.75, is small in spite of the variety of devices. [14] On the other hand, the variation of H in the Scrape-Off Layer (SOL) is much larger. In Wendelstein VII-AS, a slight decrease in H at the sheared flow layer was observed, possibly corresponding to a local decorrelation effect.

The repeated occurrence of values of H differing significantly from the value corresponding to random noise (H = 0.5) in all machines points to a universal aspect of the underlying turbulence. Further, the degree of self-similarity detected implies the existence of long-range correlations (with respect to the correlation time). [15] [16]

In this framework, an important technique is the quiet-time analysis. [17] [18] [19]

Turbulence classification

An important effort has also been made to identify and classify turbulence, [20] [21] [22] to analyse its spectra, [23] [24] [25] and to determine its relation with local plasma parameters (rational surfaces, gradients, electric fields). [26] [27] [28]

Turbulence visualisation

Recently, much effort is being dedicated to the visualization of turbulent structures, and to the corresponding analysis techniques for extracting quantitative information from the images. [29] [30] [31] See also: TJ-II:Fast camera.

Causality detection

To disentangle the complex relation between fluctuating variables, a technique for Causality detection has been used. [32] It has revealed that magnetic fluctuations may play an important role in the L-H transition. [33]

References

  1. B.Ph. van Milligen et al, Nonlinear phenomena and intermittency in plasma turbulence, Phys. Rev. Lett. 74, 3 (1995) 395
  2. B.Ph. van Milligen et al, Wavelet bicoherence: a new turbulence analysis tool, Phys. Plasmas 2, 8 (1995) 3017
  3. B.Ph. van Milligen et al, Statistically robust linear and non-linear wavelet analysis applied to plasma edge turbulence, Rev. Sci. Instrum. 68 (1997) 967
  4. P.H. Diamond et al, In search of the elusive zonal flow using cross-bicoherence analysis, Phys. Rev. Lett. 84, 12 (2000) 4842
  5. B.Ph. van Milligen et al, Bicoherence during confinement transitions in the TJ-II stellarator, Nucl. Fusion 48 (2008) 115003
  6. B.Ph. van Milligen et al, Quantifying profile stiffness, Plasma and Fusion Research, 3 (2008) S1070
  7. B.Ph. van Milligen et al, Pulse propagation in a simple probabilistic transport model, Nucl. Fusion 47 (2007) 189
  8. B.A. Carreras et al, Fluctuation-induced flux at the plasma edge in toroidal devices, Phys. Plasmas 3 (7) (1996) 2664
  9. B.A. Carreras et al, Long-range time correlations in plasma edge turbulence, Phys. Rev. Lett. 80, (1998) 4438
  10. B.A. Carreras et al, Self-similarity properties of the probability distribution function of turbulence-induced particle fluxes at the plasma edge, Phys. Rev. Lett. 83 (1999) 3653
  11. B.A. Carreras, Intermittency of plasma edge fluctuation data: Multifractal analysis, Phys. Plasmas, 7, 8 (2000) 3278
  12. C. Hidalgo et al, Empirical similarity in the probability density function of turbulent transport in the edge plasma region in fusion plasmas, Plasma Phys. Control. Fusion 44 (2002) 1557
  13. B.Ph. Van Milligen et al, Additional evidence for the universality of turbulent fluctuations and fluxes in the scrape-off layer region of fusion plasmas, Phys. Plasmas 12 (2005) 052507
  14. B.A. Carreras et al, Self-similarity of the plasma edge fluctuations, Phys. Plasmas 5, 10 (1998) 3632
  15. B.A. Carreras et al, Long-range time dependence in the cross-correlation function, Phys. Plasmas 6, 2 (1999) 485
  16. B.A. Carreras et al, Experimental evidence of long-range correlation and self-similarity in plasma fluctuations, Phys. Plasmas 6, 5 (1999) 1885
  17. R. Sánchez et al, Quiet-time statistics: A tool to probe the dynamics of self-organized-criticality systems from within the strong overlapping regime, Phys. Rev. E, 66 (2002) 036124
  18. R. Sánchez et al, Quiet-time statistics of electrostatic turbulent fluxes from the JET tokamak and the W7-AS and TJ-II stellarators, Phys. Rev. Lett. 90, 185005 (2003)
  19. V.E. Lynch et al, Determination of long-range correlation by quiet-time statistics, Phys. Plasmas 12 (2005) 052304
  20. E. Sánchez et al, Statistical characterization of fluctuation waveforms in the boundary region of fusion and non-fusion plasmas, Phys. Plasmas 7, 5 (2000) 1408
  21. I. García-Cortés et al, Turbulent transport studies in the JET edge plasmas in limiter configuration, Plasma Phys. Control. Fusion 42 (2000) 389
  22. C. Hidalgo et al, Intermittency and structures in edge plasma turbulence, Comptes Rendus Physique 7, 6 (2006) 679
  23. M. A. Pedrosa et al, Empirical similarity of frequency spectra of the edge plasma fluctuations in toroidal magnetic confinement systems, Phys. Rev. Lett. 82 (1999) 3621
  24. B.A. Carreras et al, Characterization of the frequency ranges of the plasma edge fluctuation spectra, Phys. Plasmas 6, 12 (1999) 4615
  25. M. A. Pedrosa et al, Studies of spectra of the edge plasma fluctuations in toroidal magnetic confinement systems, J. Plasma Fusion. Res. SERIES, 2 (1999) 77
  26. M.A. Pedrosa et al, Role of rational surfaces on fluctuations and transport in the plasma edge of the TJ-II stellarator, Czechoslovak Journal of Physics, 50, 12 (2000) 1463
  27. B. Gonçalves et al, Experimental investigation of dynamical coupling between density gradients, radial electric fields and turbulent transport in the JET plasma boundary region, Nucl. Fusion 42 (2002) 1205
  28. M.A. Pedrosa et al, Edge turbulence during limiter biasing experiments in the TJ-II stellarator, Czechoslovak Journal of Physics, 53 (2003) 877
  29. J. A. Alonso et al, Two-Dimensional Turbulence Analysis Using High-Speed Visible Imaging in TJ-II Edge Plasmas, Fusion Science and Technology 50, 2 (2006) 301
  30. J.A. Alonso et al, Impact of different confinement regimes on the two-dimensional structure of edge turbulence, Plasma Phys. Control. Fusion 48 (2006) B465
  31. D. Carralero et al, Turbulence studies by fast camera imaging experiments in the TJII stellarator, J. Nucl. Mat. 390-391 (2009) 457
  32. B.Ph. van Milligen, G. Birkenmeier, M. Ramisch, T. Estrada, C. Hidalgo, and A. Alonso, Causality detection and turbulence in fusion plasmas, Nucl. Fusion 54 (2014), 023011
  33. B.Ph. van Milligen, T. Estrada, B.A. Carreras, E. Ascasíbar, C. Hidalgo, I. Pastor, J.M. Fontdecaba, R. Balbín, and the TJ-II Team, The causal impact of magnetic fluctuations in slow and fast L–H transitions at TJ-II, Phys. Plasmas 23 (2016) 072305