Fluctuations of water quality time series in rivers follow superstatistics

06/15/2021
by   Benjamin Schäfer, et al.
0

Superstatistics is a general method from nonequilibrium statistical physics which has been applied to a variety of complex systems, ranging from hydrodynamic turbulence to traffic delays and air pollution dynamics. Here, we investigate water quality time series (such as dissolved oxygen concentrations and electrical conductivity) as measured in rivers, and provide evidence that they exhibit superstatistical behaviour. Our main example are time series as recorded in the river Chess in South East England. Specifically, we use seasonal detrending and empirical mode decomposition (EMD) to separate trends from fluctuations for the measured data. With either detrending method, we observe heavy-tailed fluctuation distributions, which are well described by a log-normal superstatistics for dissolved oxygen. Contrarily, we find a double peaked non-standard superstatistics for the electrical conductivity data, which we model using two combined χ^2-distributions.

READ FULL TEXT
research
09/13/2018

Superstatistics with cut-off tails for financial time series

Financial time series have been investigated to follow fat-tailed distri...
research
09/30/2022

A Multi-label Time Series Classification Approach for Non-intrusive Water End-Use Monitoring

Numerous real-world problems from a diverse set of application areas exi...
research
02/14/2018

Peaks Over Threshold for Bursty Time Series

In many complex systems studied in statistical physics, inter-arrival ti...
research
04/29/2018

Statistical inference for heavy tailed series with extremal independence

We consider stationary time series {X_j, j ∈ Z} whose finite dimensional...
research
09/14/2022

Vector Time Series Modelling of Turbidity in Dublin Bay

Turbidity is commonly monitored as an important water quality index. Hum...

Please sign up or login with your details

Forgot password? Click here to reset