Diameter-free Growth Modelling and other Heresies Oscar Garcia University of Northern British Columbia.

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Presentation transcript:

Diameter-free Growth Modelling and other Heresies Oscar Garcia University of Northern British Columbia

Themes Resolution, science vs. technology Stem dbh as growth driver Stochastics

Model Uses Decision-making (prediction) Research (understanding)

Prediction Precision Controllable variables Match: Available input info Required output info Management Decision-making

“Process models” Mechanistic, realistic Detailed Qualitative behavior Generate questions Scientific Research

Science vs. Technology N, S, W, E Journal of Applied Forestry

Science vs. Technology N, S, W, E Journal of Applied Forestry

Prediction Tree-level model tree list

Prediction Inventory Tree-level model (B,N,H) tree list

Prediction Inventory Application Tree-level model (B,N,H) tree list (B,N,H)

Prediction Inventory Application Tree-level model (B,N,H) tree list (B,N,H) Stand-level model

Complexity, Resolution Level

“Model at one level of detail below the level desired for prediction” Complexity, Resolution Level

“Model at one level of detail below the level desired for prediction” Understanding: Two levels higher? Prediction: Same level Complexity, Resolution Level

“Model at one level of detail below the level desired for prediction” Understanding: Two levels higher? Prediction: Same level Links Complexity, Resolution Level

Growth Drivers  v = f(age, dbh, site) ?

Growth Drivers  v = f( age, dbh, {site}) ? height

Growth Drivers  v = f(height, dbh) Growth driven by stem thickness?

Growth Drivers  v = f(height, dbh) Growth driven by stem thickness??  v = f(height, resources captured)

TASS Mitchell 1975

Stand-level  V /  H = f(H, N, C)(Eichhorn 1904)  N /  H = g(H, N, C)  C /  H = h(H, N, C)

C vs. H

Stochastic Models Convenient for the modeller Variability info? In practice, single realization

Gross Increment

Stochastic Models Convenient for the modeller Variability info? In practice, single realization Worse of both worlds?

Mind the Users! web.unbc.ca/~garcia