STS Decisions in 2011
     
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    Table of PPA characteristics in 2011

State  Area Distance   N     Max   Max   Backgr. Priority Delimit   Action    Action Comment
PPA ID sqkm    km    traps  catch before  moths    index   index  recommended taken
NC-  2    1   24.0      2      0    17   0.142      0.00    1.26   delimit   delimit    
NC-  5    1   24.2      0     -1    13   0.114      0.00    0.13   delimit   delimit    
NC-  6    1   17.9      0     -1     4   0.104      0.00    0.13   delimit   delimit    
NC-  9    1   25.5      1      6     0   0.021      2.34    0.39   delimit   delimit    
NC- 10    1  108.4      2      5     0   0.006      2.35    1.08   delimit   delimit    
NC- 15    1   63.5      1      7     0   0.004      2.57    0.42   delimit   delimit    
NC- 16    1   19.7      2     12     2   0.049      3.46    1.18   delimit   delimit    
NC-507    1   33.7      1      3     0   0.026      1.66    0.39      -      delimit    
VA- 39    1    8.1      1     15     1   0.100      1.87    0.45      -      delimit    
VA- 78    1    9.6      3     13     6   0.104      2.89    1.34    treat     treat     

ID = Identification number of the potential problem area (see the map).
Distance =
 
Distance from the beginning of the STS action zone, km. Negative distance means that the PPA is in the monitoring zone.
N traps = Number of traps in the problem area.
Max catch = Maximum number of moths captured within the problem area.
Max before = Maximum number of moths captured in a 3-km neighborhood in the previous year.
Priority index = Shows the priority for STS action (either treatment or delimiting).
Delimit index = Shows how well the area was delimited in the previous year.
Backgr. moths = Mean log moth counts in a 25-km neighborhood.

See details in: Decision algorithm explained.

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    Maintained By Jiang Wu