Statistics
Given the initial measured values , final observed or measured values and final calculated values , there are several goodness-of-fit statistics which can be calculated. The definition for some of the more common ones are provided below.
Brier Skill Score
The Bier Skill Score (BSS) is given by
(1) |
where is the measured or observed values, is the calculated values, is the initial measured values and the angled brackets indicate averaging. The BSS ranges between negative infinity and one. A BSS value of 1 indicates a perfect agreement between measured and calculated values. Scores equal to or less than 0 indicates that the initial value is as or more accurate than the calculated values. Recommended qualifications for different BSS ranges are provided in Table 1.
Table 1. Brier Skill Score Qualifications
Range | Qualification |
0.8<BSS<1.0 | Excellent |
0.6<BSS<0.8 | Good |
0.3<BSS<0.6 | Reasonable |
0<BSS<0.3 | Poor |
BSS<0 | Bad |
Example Matlab Code:
BSS = 1 - mean((xc(:)-xm(:)).^2)/mean((xm(:)-x0(:)).^2);
Nash-Sutcliffe Coefficient
The Nash-Sutcliffe Coefficient (E) is commonly used to assess the predictive power of a model. It is defined as
(2) |
where is the measured or observed values, is the calculated values, and the angled brackets indicate averaging. The Nash-Sutcliffe efficiency coefficient ranges from negative infinity to one. An efficiency of 1 corresponds to a perfect match between measured and calculated values. An efficiencies equal 0 or less indicates that the mean observed value is as or more accurate than the calculated values. Recommended qualifications for difference E ranges are provided in Table 2.
Table 2. Nash-Sutcliffe Coefficient Qualifications
Range | Qualification |
0.8<E<1.0 | Excellent |
0.6<E<0.8 | Good |
0.3<E<0.6 | Reasonable |
0<E<0.3 | Poor |
E<0 | Bad |
Example Matlab Code:
E = 1 - mean((xc(:)-xm(:)).^2)/mean((xm(:)-mean(xm(:))).^2);
Root-Mean-Squared Error
The Root-Mean-Squared Error (RMSE) also referred to as Root-Mean-Squared Deviation (RMSD) is defined as
(3) |
where where is the measured or observed values, is the calculated values, and the angled brackets indicate averaging. The RMSE has the same units as the measured and calculated data. Smaller values indicate better agreement between measured and calculated values.
Example Matlab Code:
RMSE = sqrt(mean((xc(:)-xm(:)).^2));
Mean-Absolute Error
The mean absolute error is given by
(4) |
where where is the measured or observed values, is the calculated values, and the angled brackets indicate averaging.
Example Matlab code:
MAE = mean(abs(xc(:)-xm(:)));
Correlation coefficient is defined as
Correlation is a measure of the strength and direction of a linear relationship between two variables. The correlation coefficient is defined as
(5) |
where where is the measured or observed values, is the calculated values, and the angled brackets indicate averaging. A correlation of 1 indicates a perfect one-to-one linear relationship and -1 indicates a negative relationship. The square of the correlation coefficient describes how much of the variance between two variables is described by a linear fit.
Example Matlab code:
R = corrcoef(yc,ym);
Bias
The bias is a measure of the over or under estimation and is defined as
(6) |
where is the measured or observed values, is the calculated values, and the angled brackets indicate averaging. The bias is a measure of the over or under prediction of a variable. Positive values indicate overprediction and negative values indicate underprediction.
Example Matlab code:
B = mean(xc(:)-xm(:));
Normalization Value
The dimensional statistics above, namely RMSE, MAE, and B; can be normalized to produce a nondimensional statistic. When the variable is normalized the statistic is commonly prefixed by a letter N for normalized or R for relative (e.g. NRMSE, EMAE, and NB). This also has facilitates the comparison between different datasets or models which have different scales. For example, when comparing models to laboratory data the dimensional statistics will produce relatively smaller dimensional goodness-of-fit statistics compared to field data comparisons. One drawback of normalization is that there is no consistent means of normalization. Different types of data or normalized differently literature. For example, water levels are commonly normalized by the tidal range, while wave heights may be normalized by the offshore wave height. In some cases, the range of the measured data is a good choice. The range is defined as the maximum value minus the minimum value.
Failed to parse (SVG with PNG fallback (MathML can be enabled via browser plugin): Invalid response ("Math extension cannot connect to Restbase.") from server "https://en.wikipedia.org/api/rest_v1/":): {\displaystyle x_N = range(x_m) = \max{(x_m)}-\min{(x_m) } | (7) |
More important than the choice of normalization variable is to properly describe how the statistics have been normalized.
Table 3. Description of symbols{|border="1" |Symbol ||Description |- | || Measured values |- | || Calculated values |- | || Initial measured values |- | || Normalization value |- |\langle \rangle || Expectation (averaging) operator |}