200 a2 b2c2d2e2 Up Down Kp [0,1]Kp [1,2]Kp [2,3]Kp [3,9]Kp All Net Show Down 10 Net Show Up Number Samples 40 Samples a1 b1c1d1e1 a3 b3c3d3e3 a4 b4c4d4e4.

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Presentation transcript:

200 a2 b2c2d2e2 Up Down Kp [0,1]Kp [1,2]Kp [2,3]Kp [3,9]Kp All Net Show Down 10 Net Show Up Number Samples 40 Samples a1 b1c1d1e1 a3 b3c3d3e3 a4 b4c4d4e4 a5 b5c5d5e5 Log(N flux) 13 Good: By < 0

a2 b2c2d2e2 Up Down Kp [0,1]Kp [1,2]Kp [2,3]Kp [3,9]Kp All Net Show Down 10 Net Show Up Number Samples 40 Samples a1 b1c1d1e1 a3 b3c3d3e3 a4 b4c4d4e4 a5 b5c5d5e5 Log(N flux) 13 Good: By > 0

a2 b2c2d2e2 Up Down Kp [0,1]Kp [1,2]Kp [2,3]Kp [3,9]Kp All Net Show Down 10 Net Show Up Number Samples 40 Samples a1 b1c1d1e1 a3 b3c3d3e3 a4 b4c4d4e4 a5 b5c5d5e5 Log(N flux) 13 Good, Caution: By < 0

a2 b2c2d2e2 Up Down Kp [0,1]Kp [1,2]Kp [2,3]Kp [3,9]Kp All Net Show Down 10 Net Show Up Number Samples 40 Samples a1 b1c1d1e1 a3 b3c3d3e3 a4 b4c4d4e4 a5 b5c5d5e5 Log(N flux) 13 Good, Caution: By > 0

a2 b2c2d2e2 Up Down Kp [0,1]Kp [1,2]Kp [2,3]Kp [3,9]Kp All Net Show Down 10 Net Show Up Number Samples 40 Samples a1 b1c1d1e1 a3 b3c3d3e3 a4 b4c4d4e4 a5 b5c5d5e5 Log(N flux) 13 Good, Caution, Poor: By < 0

a2 b2c2d2e2 Up Down Kp [0,1]Kp [1,2]Kp [2,3]Kp [3,9]Kp All Net Show Down 10 Net Show Up Number Samples 40 Samples a1 b1c1d1e1 a3 b3c3d3e3 a4 b4c4d4e4 a5 b5c5d5e5 Log(N flux) 13 Good, Caution, Poor: By > 0

a2 b2c2d2e2 Up Down Kp [0,1]Kp [1,2]Kp [2,3]Kp [3,9]Kp All Net Show Down 10 Net Show Up Number Samples 40 Samples a1 b1c1d1e1 a3 b3c3d3e3 a4 b4c4d4e4 a5 b5c5d5e5 Log(N flux) 13 Good, Caution, Poor, Unknown: By < 0

a2 b2c2d2e2 Up Down Kp [0,1]Kp [1,2]Kp [2,3]Kp [3,9]Kp All Net Show Down 10 Net Show Up Number Samples 40 Samples a1 b1c1d1e1 a3 b3c3d3e3 a4 b4c4d4e4 a5 b5c5d5e5 Log(N flux) 13 Good, Caution, Poor, Unknown: By > 0

a2 b2c2d2e2 Up Down Kp [0,1]Kp [1,2]Kp [2,3]Kp [3,9]Kp All Net Show Down 10 Net Show Up Number Samples 40 Samples a1 b1c1d1e1 a3 b3c3d3e3 a4 b4c4d4e4 a5 b5c5d5e5 Log(N flux) 13 Good, Unknown: By < 0

a2 b2c2d2e2 Up Down Kp [0,1]Kp [1,2]Kp [2,3]Kp [3,9]Kp All Net Show Down 10 Net Show Up Number Samples 40 Samples a1 b1c1d1e1 a3 b3c3d3e3 a4 b4c4d4e4 a5 b5c5d5e5 Log(N flux) 13 Good, Unknown: By > 0