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PC estimation via FFT and VBA for 4-days length signals, Activity DD, during126 6.10 PC Stability: Proposed Method (a) vs. FFT (b) 126 6.11 PC Stability: Proposed Method (a) vs. FFT (b), a) and the corresponding PC via VBA (b) and FFT (c) . . . 127 ,
Proposed Method (a) vs. FFT (b) 129 6.17 PC Stability: Proposed Method (a) vs. FFT (b), normalized results . . . . . . 129 6.18 DD before signal (a) and the corresponding PC via VBA (b) and FFT (c), p.129 ,
PC estimation via FFT and VBA for 4-days length signals, Photon DD, during130 6.21 PC Stability: Proposed Method (a) vs. FFT (b) 130 6.22 PC Stability: Proposed Method (a) vs. FFT (b)a) and the corresponding PC via VBA (b) and FFT (c), p.130 ,
Activity (a) and Photon Absorption (b) raw data, p.132 ,
Proposed Method (a) vs. FFT (b) 134 6.29 PC Stability: Proposed Method (a) vs. FFT (b), normalized results . . . . . . 134 6.30 DD before signal (a) and the corresponding PC via VBA (b) and FFT (c), p.134 ,
PC estimation via FFT and VBA for 4-days length signals, Activity DD, during135 6.33 PC Stability: Proposed Method (a) vs. FFT (b) 135 6.34 PC Stability: Proposed Method (a) vs. FFT (b), DD after signal (a) and the corresponding PC via VBA (b) and FFT (c) . . . 136 ,
Proposed Method (a) vs. FFT (b) 138 6.40 PC Stability: Proposed Method (a) vs. FFT (b), normalized results . . . . . . 138 6.41 DD before signal (a) and the corresponding PC via VBA (b) and FFT (c), p.139 ,
PC estimation via FFT and VBA for 4-days length signals, Photon DD, during139 6.44 PC Stability: Proposed Method (a) vs. FFT (b) 140 6.45 PC Stability: Proposed Method (a) vs. FFT (b)a) and the corresponding PC via VBA (b) and FFT (c), p.140 ,
Proposed Method (a) vs. FFT (b), p.144 ,
Proposed Method (a) vs. FFT (b), normalized results, p.144 ,
PC estimation via FFT and VBA for 4-days length signals, Activity DD, during145 6.56 PC Stability: Proposed Method (a) vs. FFT (b), p.145 ,
Proposed Method (a) vs. FFT (b), normalized results, p.146 ,
PC estimation via FFT and VBA for 4-days length signals, p.148 ,
Proposed Method (a) vs. FFT (b), p.148 ,
Proposed Method (a) vs. FFT (b), normalized results, p.148 ,
PC estimation via FFT and VBA for 4-days length signals, Photon DD, during149 6.67 PC Stability: Proposed Method (a) vs. FFT (b), p.149 ,
Proposed Method (a) vs. FFT (b), normalized results, p.150 ,
PC estimation via FFT and VBA for 4-days length signals, p.153 ,
Proposed Method (a) vs. FFT (b), p.153 ,
Proposed Method (a) vs. FFT (b), normalized results, p.154 ,
PC estimation via FFT and VBA for 4-days length signals, Activity DD, during155 6.79 PC Stability: Proposed Method (a) vs. FFT (b), p.155 ,
Proposed Method (a) vs. FFT (b), normalized results, p.155 ,
Proposed Method (a) vs. FFT (b) 158 6.86 PC Stability: Proposed Method (a) vs. FFT (b), normalized results . . . . . . 158 6.87 DD before signal (a) and the corresponding PC via VBA (b) and FFT (c), p.158 ,
PC estimation via FFT and VBA for 4-days length signals, Photon DD, during159 6.90 PC Stability: Proposed Method (a) vs. FFT (b) 159 6.91 PC Stability: Proposed Method (a) vs. FFT (b)a) and the corresponding PC via VBA (b) and FFT (c), p.160 ,
Activity (a) and Photon Absorption (b) raw data, p.162 ,
Proposed Method (a) vs. FFT (b) 164 6.98 PC Stability: Proposed Method (a) vs. FFT (b), normalized results, 164 6.99 DD before signal (a) and the corresponding PC via VBA (b) and FFT (c), p.164 ,
Proposed Method (a) vs. FFT (b), p.167 ,
Proposed Method (a) vs. FFT (b)105DD before signal (a) and the corresponding PC via VBA (b) and FFT (c), p.167 ,
Proposed Method (a) vs. FFT (b), p.170 ,
Proposed Method (a) vs. FFT (b)112DD before signal (a) and the corresponding PC via VBA (b) and FFT (c), p.171 ,
Proposed Method (a) vs. FFT (b), p.172 ,
Proposed Method (a) vs. FFT (b), normalized results, p.172 ,
Proposed Method (a) vs. FFT (b), p.175 ,
Proposed Method (a) vs. FFT (b), normalized results, p.175 ,
Proposed Method (a) vs. FFT (b), p.176 ,
Proposed Method (a) vs. FFT (b), normalized results, p.177 ,