Study of the Dynamical Relationships between PM2.5 and PM10 in the Caribbean Area Using a Multiscale Framework
Abstract
:1. Introduction
2. Experimental Data
3. Theoretical Framework
3.1. ICEEMDAN
- Compute by EMD the local means of I realizations to obtain the first residue:
- For , compute the first mode:
- Estimate the second residue as the average of local means of the realizations ; the second mode is defined as:
- For , compute the kth residue:
- Calculate the kth mode:
- Repeat step 4 for the next k.
3.2. Hilbert Transform (HT)
3.3. TDIC
- Decompose the two associated time series using ICEEMDAN;
- Determine the HT of each ;
- Find the minimum sliding window size () as the maximum instantaneous period (IP) (reciprocal of IF) between the two IMFs at the current position , i.e.,, where and are IPs;
- Fix the size of the sliding window (SSW) as where n is a multiplication factor usually fixed as unity;
- Find the TDIC of the pair of IMFs as at any , where is the correlation coefficient of two time series;
- Examine the statistical significance of correlation by t-test;
- Repeat steps 4 to 7 in an iterative manner until the boundary of the sliding window exceeds the endpoints of the time series.
3.4. TDICC
- Decompose the two associated time series using ICEEMDAN;
- Apply HT on the IMFs to calculate the IF, then compute the instantaneous periods);
- Fix the minimum sliding window size for the local correlation computation, which is , where and are instantaneous periods of the two IMFs;
- Find the size of the sliding window (SSW) as for a specific IMF of the first signal (say ) and for the corresponding IMF of the second signal, (say ), where n is any positive number, and is usually selected as 1 [62];
- Determine the running correlation between the two modes along with their statistical significance using the TDICC t-test. This can be repeated until the boundary of the sliding window exceeds the endpoints of the time series.
4. Results and Discussion
4.1. Multiscale Decomposition
4.2. Hilbert Spectral Analysis
4.3. TDIC Analysis
4.4. TDICC Analysis
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Modes | Mean Period (Days) | Variability (%) | Mean Period (Days) | Variability (%) |
IMF1 | 3.102 | 22.698 | 2.866 | 17.265 |
IMF2 | 6.403 | 18.962 | 6.844 | 14.432 |
IMF3 | 12.303 | 14.040 | 13.353 | 15.795 |
IMF4 | 23.297 | 7.331 | 24.333 | 6.477 |
IMF5 | 40.555 | 6.553 | 47.608 | 11.200 |
IMF6 | 73.000 | 3.486 | 91.250 | 10.264 |
IMF | 182.500 | 7.914 | 219.000 | 15.535 |
IMF8 | 365.000 | 13.676 | 365.000 | 5.451 |
Residue | 1095.000 | 5.337 | 1095.000 | 3.577 |
Parameter | IMF1 | IMF2 | IMF3 | IMF4 | IMF5 | IMF6 | IMF | IMF8 | |
---|---|---|---|---|---|---|---|---|---|
MA | 8.690 | 7.164 | 6.049 | 4.587 | 4.828 | 3.994 | 5.320 | 8.667 | |
Z value of IA | −2.59 | −8.06 | −4.82 | −1.75 | −10.78 | −15.50 | 15.61 | 28.61 | |
MF | 0.305 | 0.155 | 0.077 | 0.043 | 0.024 | 0.013 | 0.005 | 0.003 | |
MA | 1.609 | 1.459 | 1.511 | 0.999 | 1.302 | 1.372 | 1.645 | 0.983 | |
Z value of IA | −12.43 | −4.99 | −4.76 | 4.36 | −3.13 | −23.03 | 0.38 | 49.05 | |
MF | 0.324 | 0.145 | 0.072 | 0.041 | 0.021 | 0.011 | 0.005 | 0.002 |
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Plocoste, T.; Sankaran, A.; Euphrasie-Clotilde, L. Study of the Dynamical Relationships between PM2.5 and PM10 in the Caribbean Area Using a Multiscale Framework. Atmosphere 2023, 14, 468. https://doi.org/10.3390/atmos14030468
Plocoste T, Sankaran A, Euphrasie-Clotilde L. Study of the Dynamical Relationships between PM2.5 and PM10 in the Caribbean Area Using a Multiscale Framework. Atmosphere. 2023; 14(3):468. https://doi.org/10.3390/atmos14030468
Chicago/Turabian StylePlocoste, Thomas, Adarsh Sankaran, and Lovely Euphrasie-Clotilde. 2023. "Study of the Dynamical Relationships between PM2.5 and PM10 in the Caribbean Area Using a Multiscale Framework" Atmosphere 14, no. 3: 468. https://doi.org/10.3390/atmos14030468
APA StylePlocoste, T., Sankaran, A., & Euphrasie-Clotilde, L. (2023). Study of the Dynamical Relationships between PM2.5 and PM10 in the Caribbean Area Using a Multiscale Framework. Atmosphere, 14(3), 468. https://doi.org/10.3390/atmos14030468