2016
DOI: 10.1021/acs.jpca.6b02293
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Small Molecules—Big Data

Abstract: Quantum mechanics builds large-scale graphs (networks): the vertices are the discrete energy levels the quantum system possesses, and the edges are the (quantum-mechanically allowed) transitions. Parts of the complete quantum mechanical networks can be probed experimentally via high-resolution, energy-resolved spectroscopic techniques. The complete rovibronic line list information for a given molecule can only be obtained through sophisticated quantum-chemical computations. Experiments as well as computations … Show more

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Cited by 44 publications
(65 citation statements)
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“…Sets of rovibrational transitions, whether they are measured or computed, can be treated as building blocks of spectroscopic networks (SN, see Refs. [8][9][10][11][12][13], whereby (a) the vertices are the energy levels, (b) the edges correspond to the transitions, oriented from the lower energy level to the upper one (independently whether the transition was recorded in absorption, emission, or by means of an action spectroscopy), and (c) the (positive) edge weights are the wavenumbers of the transitions. Note that many other weighting schemes (e.g., weighting by line intensities) can be utilized in practical applications of SNs.…”
Section: Spectroscopic Networkmentioning
confidence: 99%
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“…Sets of rovibrational transitions, whether they are measured or computed, can be treated as building blocks of spectroscopic networks (SN, see Refs. [8][9][10][11][12][13], whereby (a) the vertices are the energy levels, (b) the edges correspond to the transitions, oriented from the lower energy level to the upper one (independently whether the transition was recorded in absorption, emission, or by means of an action spectroscopy), and (c) the (positive) edge weights are the wavenumbers of the transitions. Note that many other weighting schemes (e.g., weighting by line intensities) can be utilized in practical applications of SNs.…”
Section: Spectroscopic Networkmentioning
confidence: 99%
“…Previously, such experimental accuracy was reserved to pure rotational transitions measured in the microwave (MW) region of the electromagnetic spectrum but nowadays there is growing evidence that this accuracy can be extended all the way from the MW to the near infrared (NIR) region [3][4][5] and beyond. 6,7 A related relevant development in theoretical high-resolution molecular spectroscopy has been the introduction of spectroscopic networks, [8][9][10] and the Measured Active Rotational- 16,17,18). 33,34 Similarly, the most recent edition of the HITRAN database, HITRAN2016, 30 makes use of MARVEL energy levels for H 2 n O (n = 16, 17, 18), 35,36 as well as for the deuterated isotopologues.…”
Section: Introductionmentioning
confidence: 99%
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“…V ZPVE (θ, α) represents the zero point vibrational energy correction, which was determined at the MP2 level of theory within the harmonic approximation. Previous works show the relevance of this correction for obtaining reliable results [48]. The kinetic parameters, the pseudopotential and the vibrational correction of the potential energy surface are supplied as supplementary material (see Supplementary Material Document No.…”
Section: Torsion-wagging 2d-modelmentioning
confidence: 99%
“…Building the list of target lines, forming accurate paths and cycles after the measurements, necessitates the use of elements of network theory 15 and the concept of spectroscopic networks 16,17 , the most general extension of the Ritz principle. In spectroscopic networks, energy levels are the vertices (nodes) and transitions are the edges (links).…”
mentioning
confidence: 99%