Litcius/Paper detail

Analysis of complex multidimensional optical spectra by linear prediction

Ethan Swagel, Jagannath Paul, Alan D. Bristow, J. K. Wahlstrand

2021Optics Express22 citationsDOIOpen Access PDF

Abstract

We apply Linear Prediction from Singular Value Decomposition (LPSVD) to two-dimensional complex optical data in the time-domain to generate spectra with advantages over discrete Fourier transformation (DFT). LPSVD is a non-iterative procedure that fits time-domain complex data to the sum of damped sinusoids, or Lorentzian peaks in the spectral domain. Because the fitting is linear, it is not necessary to give initial guess parameters as in nonlinear fits. Although LPSVD is a one-dimensional algorithm, it can be performed column-wise on two-dimensional data. The method has been extensively used in 2D NMR spectroscopy, where spectral peaks are typically nearly ideal Lorentzians, but to our knowledge has not been applied in the analogous optical technique, where peaks can be far from Lorentzian. We apply LPSVD to the analysis of zero, one, and two quantum electronic two-dimensional spectra from a semiconductor microcavity. The spectra consist of non-ideal, often overlapping peaks. We find that LPSVD achieves a very good fit even on non-ideal data. It reduces noise and eliminates discrete distortions inherent in the DFT. We also use it to isolate and analyze weak features of interest.

Topics & Concepts

Ideal (ethics)Spectral lineFourier transformSingular value decompositionTime domainTransformation (genetics)OpticsNonlinear systemPhysicsNoise (video)Frequency domainDiscrete Fourier transform (general)AlgorithmStatistical physicsComputational physicsMathematical analysisMathematicsComputer scienceQuantum mechanicsFourier analysisFractional Fourier transformImage (mathematics)ChemistryComputer visionEpistemologyArtificial intelligenceGenePhilosophyBiochemistrySpectroscopy and Quantum Chemical StudiesMolecular spectroscopy and chiralityQuantum Information and Cryptography
Analysis of complex multidimensional optical spectra by linear prediction | Litcius