2020
DOI: 10.3390/atmos11020168
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Pollution Transport Patterns Obtained Through Generalized Lagrangian Coherent Structures

Abstract: Identifying atmospheric transport pathways is important to understand the effects of pollutants on weather, climate, and human health. The atmospheric wind field is variable in space and time and contains complex patterns due to turbulent mixing. In such a highly unsteady flow field, it can be challenging to predict material transport over a finite-time interval. Particle trajectories are often used to study how pollutants evolve in the atmosphere. Nevertheless, individual trajectories are sensitive to their i… Show more

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Cited by 10 publications
(6 citation statements)
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“…Future works include utilizing methods that efficiently transfer the uncertainty of the flow fields to the LCS and the rigid and coherent sets (Lermusiaux and Lekien (2005); Lermusiaux et al (2006); Lermusiaux (2006); Feppon and Lermusiaux (2018b)), leading to probabilistic rigid and coherent sets. Extracting the three-dimensional in space rigid and coherent sets (Kulkarni et al (2018)) would also be useful in realistic ocean and atmospheric applications (Bettencourt et al (2012); Schmale III and Ross (2015); Nolan et al (2020)). The use of tight control on the numerical diffusion using flow map composition (Kulkarni and Lermusiaux (2019)) should also be investigated.…”
Section: Numerical Resultsmentioning
confidence: 99%
See 1 more Smart Citation
“…Future works include utilizing methods that efficiently transfer the uncertainty of the flow fields to the LCS and the rigid and coherent sets (Lermusiaux and Lekien (2005); Lermusiaux et al (2006); Lermusiaux (2006); Feppon and Lermusiaux (2018b)), leading to probabilistic rigid and coherent sets. Extracting the three-dimensional in space rigid and coherent sets (Kulkarni et al (2018)) would also be useful in realistic ocean and atmospheric applications (Bettencourt et al (2012); Schmale III and Ross (2015); Nolan et al (2020)). The use of tight control on the numerical diffusion using flow map composition (Kulkarni and Lermusiaux (2019)) should also be investigated.…”
Section: Numerical Resultsmentioning
confidence: 99%
“…The terminology was born from direct observations of realistic flows and refers to the persistence of distinguished material sub-domains over time (Farazmand and Haller (2012); Haller and Beron-Vera (2012); Haller (2015); Balasuriya et al (2018); Andrade-Canto et al (2020)). Extracting LCS is expected to allow for improved Lagrangian hazard predictions; typical ocean applications include pollution tracking (Lekien et al (2005); Coulliette et al (2007); Lermusiaux et al (2019); Nolan et al (2020)), search and rescue (Serra et al (2020)), or ecosystem characterizations (Scales et al (2018); Doshi et al (2019); Paris et al (2020)). Various useful definitions of LCS have been proposed (Farazmand and Haller (2012); Froyland et al (2007); Haller (2015); Karrasch (2015); Onu et al (2014); Peacock and Haller (2013); Shadden et al (2005); Tang et al (2010); Allshouse and Thiffeault (2012)), and there are as many computational methodologies to extract them from time-dependent (non-autonomous) velocity fields v(t, x).…”
Section: Introductionmentioning
confidence: 99%
“…To estimate the locations of LCS in a spatiotemporally varying velocity field, v ( x ,t), we calculated the ridges of the Finite‐Time Lyapunov Exponent (FTLE) field (Nolan et al, 2020), σx,t,T=12TlognormalλmaxCbold-italicx where λ max is the maximum eigenvalue of the right Cauchy‐Green deformation tensor.…”
Section: Methodsmentioning
confidence: 99%
“…To estimate the locations of LCS in a spatiotemporally varying velocity field, v(x,t), we calculated the ridges of the Finite-Time Lyapunov Exponent (FTLE) field (Nolan et al, 2020),…”
Section: Lcs Modelingmentioning
confidence: 99%
“…Aerial vehicles are affected by coherent features during takeoff and landing [5]. Robots used for environmental monitoring may be interested in atmospheric and oceanic transport pathways that play a role in the movement of pollutants [6]. Marine vehicles can plan energy efficient trajectories in the ocean by leveraging coherent structures [7]- [9] and maintaining sensors in their desired monitoring regions [10], [11].…”
Section: Introductionmentioning
confidence: 99%