User Guide 026
15 Appendix E: Goodness of Fit Statistics
Brier Skill Score
The Brier Skill Score (BSS) is defined as
(A1) |
where the angled brackets indicate averaging, subscripts m, c, and 0 indi-cate measured, calculated, and initial values, respectively. 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 mean observed value is as or more accurate than the calculated values. The following quantifications are used for de-scribing the BSS values: 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.
Room Mean Squared Error
The Root Mean Squared Error (RMSE) is defined as
(A2) |
The RMSE has the same units as the measured data. Lower values of RMSE indicate a better match between measured and computed values.
Normalized Root Mean Squared Error
The Normalized Root Mean Squared Error (NRMSE) is
(A3) |
The NRMSE is often expressed in units of percent. The measured data range range(xm) can be estimated as max(xm) - min(xm) . Lower values of NRMSE indicate a better agreement between measured and computed values.
Mean Absolute Error
The Mean Absolute Error (MAE) is defined as
(A4) |
Normalized Mean Absolute Error
Similarly, the Normalized Mean Absolute Error (NMAE) is given by
(A5) |
The NMAE is often expressed in units of percent. Smaller values of NMAE indicate a better agreement between measured and calculated values.
Correlation Coefficient
Correlation is a measure of the strength and direction of a linear relation-ship between two variables. The correlation coefficient R is defined as
(A5) |
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. The interpretation of the correlation coefficient depends on the context and purposes. For the present work, the following qualifications are used: 0.7<R2<1 = strong, 0.4<R2<0.7 = medium, 0.2<R2<0.4 = small, and R2<0.2 = none.
Bias
The Bias is defined as
(A6) |
Positive values indicate over-prediction and negative values indicate under-prediction.