Title of article :
Lake classification to enhance prediction of eutrophication endpoints in Finnish lakes
Author/Authors :
E. Conrad Lamon III، نويسنده , , *، نويسنده , , Olli Malve، نويسنده , , Olli-Pekka Pietila¨inen b، نويسنده ,
Issue Information :
ماهنامه با شماره پیاپی سال 2008
Pages :
10
From page :
938
To page :
947
Abstract :
We used the Bayesian TREED procedure to determine the efficacy of using an existing trophic status classification scheme for prediction of chlorophyll a in 150 Finnish lakes. Growing season data were log (base e) transformed and averaged by lake and year. We compared regressions of lnTP and lnTN on lnChla based on aggregations of the 9 levels of ‘‘Lake Type’’, the classification scheme of the Finnish Environment Institute (SYKE), to a new classification scheme identified by the Bayesian TREED regression algorithm that partitioned the data based on geographic, morphometric and chemical properties of the lakes. The classifier identified with the BTREED algorithm had the best resulting model fit as measured by several different metrics. The model identified by the BTREED procedure that was allowed to use the suite of geographic, morphometric and chemical classifiers selected only the morphometric variable mean lake depth as the basis of the classification scheme. This model resulted in separate classes for shallow (<2.6 m), medium (2.6 m < mean depth < 16.3 m) and deep (>16.3 m) lakes corresponding to cocontrol by N and P (shallow and medium depths) and N-control (deep lakes) of algal productivity as measured by chlorophyll a, as indicated by the regression coefficients for each partition on depth. However, TN:TP ratios indicate clear P limitation in each depth class.
Keywords :
Tree based models , eutrophication , Lake classification , Bayesian TREED model , Stressoreresponse relationships , nutrients
Journal title :
Environmental Modelling and Software
Serial Year :
2008
Journal title :
Environmental Modelling and Software
Record number :
958887
Link To Document :
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