trend is
down
over time
The average crown dieback of trees in Vermont's forest provides us information on overall forest health.
trend is
flat
over time
Damages to forests occur from insects, diseases, weather events, animals, and human impacts.
trend is
flat
over time
Forest growth provides information on how much biomass Vermont's trees add annually.
trend is
flat
over time
Higher values of canopy density indicate a more lush, green, and productive forest.
trend is
flat
over time
Mapped forest mortality is an assessment of the total area of current-year tree mortality across the landscape.
trend is
flat
over time
The proportion of trees with damage and decay provides information on the condition and the potential timber quality of Vermont's trees.
trend is
flat
over time
Individual tree mortality is a natural and common event, but changes to the baseline rate can signify worsening environmental conditions for trees.
Latest Score:
1.7/5
in 2021
Trees can become damaged for a variety of reasons such as lightning strikes, neighboring treefall, logging damage, poor growing conditions, insects, or genetics. Physical damage to trees can reduce their life span by allowing diseases and fungi to infiltrate the wood, leading to rot and decay. While damaged and decaying trees have a vital role in the forest ecosystem through providing habitat and food for a variety of organisms from fungi to insects, an increase in the proportion of our trees that are classified as damaged or decaying can impact the value of our forests and suggest that trees are being negatively impacted by stressors. Here, damage and decay is a measure of the proportion of Vermont’s trees that are considered “non-growing stock". Non-growing stock trees are classified from a timber perspective as trees with deformities, damage, or rot. We computed the ratio of these non-growing stock trees to all live trees on Forest Inventory and Analysis plots1. A higher score results from stable amounts of damage and decay over time.
The score is calculated using a target value and the historical range of the the entire long-term dataset. The higher the score, the closer this year's value is to the target.
Once the score is computed for each year, the trend in scores over time is calculated. If the trend is significantly positive or negative, the long-term trend is marked as increasing or decreasing respectively.
Component | Description |
---|---|
Scored as | Distance between the minimum and maximum (scaled 1-5) |
Target value | Long-term mean |
Directionality of scores | No change from the long-term mean is better |
Minimum value used in scoring | Data minimum - 10% of the range |
Maximum value used in scoring | Data maximum + 10% of the range |
Data on tree damage and decay were extracted from the USFS Forest Inventory and Analysis (FIA) Program EVALIDator1. We used an FIA-established query to retrieve the number of live trees (“0004 Number of live trees (at least 1 inch d.b.h./d.r.c.), in trees, on forest land”) filtered by trees ≥5 inch DBH (“and DIA>=5”). We computed tree damage and decay as any living tree ≥5 inch DBH with a recorded damage agent (“and DAMAGE_AGENT_CD1>0)2. We set the target for this dataset as the long-term mean. The current year is scored for where it falls between the target and the upper scoring bounds (maximum value in the dataset plus 10% of the range) or the lower scoring bounds (minimum value in the dataset minus 10% of the range), scaled to be between 1 and 5.
Dataset: Damage and Decay