Versions Compared

Key

  • This line was added.
  • This line was removed.
  • Formatting was changed.

Statistics are generated and may be analysed in many parts of Source. This page provides information on the statistical functions available in Source including what they measure and how they're interpreted. For information on how to use statistics in Source, see the relevant section of the user guide.

Types in general, how they're used, 

link to optimisation

In Results Manager, statistics are User generated and auto generated

Locations

Where statistics are put in, created, may be analysed 

In Results Manager, statistics are categorised as either user or auto generated. 

Univariate and Bivariate Statistics

Univariate statistics provide information on single ......

Bivariate statistics .....

  • It is common for hydrological time series to contain missing values and to have differing start and end dates. Generally, calculates bivariate statistics using only data from those time steps for which there are complete data pairs. *TODO: where is this not true? Bivariate statis in charting??

See Calibration analysis - SRG/wiki/spaces/TIME/pages/56721988

Nash-Sutcliffe Efficiency (NSE) 

Definition

The NSE is a normalised statistic that measures the relative magnitude of the model error variance compared to the measured data variance (Nash and Sutcliffe, 1970). It is commonly used to evaluate the fit of modelled to observed streamflow data, and the definition and discussion below assume that it is being applied in this context. However, the NSE can be used to evaluate the fit between time series of any type.

The NSE defined as:

...

Image Removed

where 

Qobs,i    is the observed flow for time step i

Qsim,i    is the modelled flow for time step i

N           is the number of time steps

The time step size is arbitrary.

Interpretation

The NSE can range between -∞ and 1. 

  • NSE = 1 corresponds to a perfect match between modelled and observed data
  • NSE = 0 indicates that the model predictions are as accurate as the mean of the observed data
  • NSE < 0 indicates that the mean of the observed data is a better predictor than the model

The NSE is sensitive to the timing of flow events. It is often applied on a daily time step. Applying it on a longer time step, such as monthly, can be used to evaluate the fit to the monthly pattern of flows without being influenced by the timing of individual runoff events.

Sensitive to extreme values and insensitive to small values. For example, the NSE is generally not suitable for evaluating the fit to low flows as the value will be dominated by the fit to high flows

NSE of Log Data

NSE Log

sNSE-Bias penalty (Nash-Sutcliffe coefficient of efficiency with penalised bias solutions), daily and monthly variants 

What it measures

How it's interpreted

Relevant equations

Links to selected locations

Absolute bias

General

Pearson's Correlation

General

Flow duration and log flow duration

Square-root Daily, Exceedance and Bias

References

Nash, J.E. and J.V. Sutcliffe (1970), River flow forecasting through conceptual models part I — A discussion of principles, Journal of Hydrology, 10 (3), 282–290.There are two main categories of statistics in Source:

  • Univariate statistics provide information on a single variable and are intended to summarise and reveal patterns in that variable, see Univariate Statistics SRG.
  • Bivariate statistics compare two variables for the purpose of determining empirical relationships between them, see Bivariate Statistics SRG.

Locations

Statistics are generated and may be analysed in many parts of Source: