0.077276945114141197880PNWPNWPublished to Web1Publication1Formally Refereed1Scientific Journal (JRNL)<![CDATA[Tree height increment models for national forest inventory data in the Pacific Northwest, USA]]> 20192020The United States national inventory program measures a subset of tree heights in each plot in the Pacific Northwest. Unmeasured tree heights are predicted by adding the difference between modeled tree heights at two measurements to the height observed at the first measurement. This study compared different approaches for directly modeling 10-year height increment of red alder (RA) and ponderosa pine (PP) in Washington and Oregon using national inventory data from 2001–2015. In addition to the current approach, five models were implemented: nonlinear exponential, log-transformed linear, gamma, quasi-Poisson, and zero-inflated Poisson models using both tree-level (e.g., height, diameter at breast height, and compacted crown ratio) and plot-level (e.g., basal area, elevation, and slope) measurements as predictor variables. To account for negative height increment observations in the modeling process, a constant was added to shift all response values to greater than zero (log-transformed linear and gamma models), the negative increment was set to zero (quasi-Poisson and zero-inflated Poisson models), or a nonlinear model, which allows negative observations, was used. Random plot effects were included to account for the hierarchical data structure of the inventory data. Predictive model performance was examined through cross-validation. Among the implemented models, the gamma model performed best for both species, showing the smallest root mean square error (RSME) of 2.61 and 1.33 m for RA and PP, respectively (current method: RA—3.33 m, PP—1.40 m). Among the models that did not add the constant to the response, the quasi-Poisson model exhibited the smallest RMSE of 2.74 and 1.38 m for RA and PP, respectively. Our study showed that the prediction of tree height increment in Oregon and Washington can be improved by accounting for the negative and zero height increment values that are present in inventory data, and by including random plot effects in the models.10.3390/f11010002https://www.fs.fed.us/pnw/pubs/journals/pnw_2019_woo001.pdf1.0 MBhttps://www.fs.usda.gov/treesearch/pubs/60569605690Forests. 11(1): 2-.0111162T0Woo, Hyeyoung ; Eskelson, Bianca N. I; Monleon, Vicente J.; 26-MAY-2020 09:38:2122-JUL-2020 00:29:18AY22-JUL-2020 00:29:1846BiometricsWoo, Hyeyoung 001Eskelson, Bianca N. I002Monleon, Vicente J.PNW266952vjmonleon903113Woo, Hyeyoung 001Eskelson, Bianca N. I002Monleon, Vicente J.PNW266952vjmonleon9031137IAInventory and Monitoringhttp://www.fs.fed.us/research/inventory-monitoring-analysis/PNW-2669-2Increase the efficiency and add value to inventory and monitoring efforts through the development of new tools, techniques, and methodology.This article was written and prepared by U.S. Government employees on official time, and is therefore in the public domain.

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