| |
|
Models to predict lake annual mean total
phosphorus
Lars Håkanson
Inst. of Earth Sciences, Uppsala Univ., Norbyv. 18B, 752
36 Uppsala, Sweden
|
Abstract
A lake is a product of processes in its watershed,
and these relationships should be empirically quantifiable. Yet
few studies have made that attempt. This study quantifies and ranks
variables of significance to predict annual mean values of total
phosphorus (TP) in small glacial lakes. Several new empirical models
based on water chemistry variables, on 'map parameters' of the lake
and its catchment, and combinations of such variables are presented.
Each variable provides only a limited (statistical) explanation
of the variation in annual mean values of TP among lakes. The models
are markedly improved by accounting for the distribution of the
characteristics (e.g., the mires) in the watershed. The most important
map parameters were the proportion of the watershed lying close
to the lake covered by rocks and open land (as determined with the
drainage area zonation method), relief of the drainage area, lake
area and mean depth. These empirical models can be used to predict
annual mean TP but only for lakes of the same type. The model based
on 'map parameters' (r2
= 0.56) appears stable. The effects of other factors/variables not
accounted for in the model (like redox-induced internal loading
and anthropogenic sources) on the variation in annual mean TI' may
then be estimated quantitatively by residual analysis. A new mixed
model (which combines a dynamic mass-balance approach with empirical
knowledge) was also developed. The basic objective was to put the
empirical results into a dynamic framework, thereby increasing predictive
accuracy. Sensitivity tests of the mixed model indicate that it
works as intended. However, comparisons against independent data
for annual mean TP show that the predictive power of the mixed model
is low, likely because crucial model variables, like sedimentation
rate, runoff rate, diffusion rate and precipitation factor, cannot
be accurately predicted. These model variables vary among lakes,
but this mixed model, like most dynamic models, assumed that they
are constants.
Keywords: lakes, phosphorus, eutrophication, models, management,
predictive accuracy
|