Mutation Characteristics of Precipitation Concentration Spatiotemporal Variation and Its Potential Correlation with Low-Frequency Climate Factors in the LRB Area from 1960 to 2020
Abstract
:1. Introduction
2. Research Area, Data and Methods
2.1. Research Area
2.2. Data
2.3. Methodology
2.3.1. The PCD and PCP
- where, n is the total number of days in year i;
- j is the daily ordinal number in year i;
- rij is the precipitation of a station in year i on day j;
- Ri is the total precipitation of the station in year i, Divide equally according to the number of days in year i, and θj is the azimuth of the jth day.
2.3.2. Sliding t-Test
2.3.3. Student t-Test
2.3.4. Cross Wavelet Transform (CWT) Analysis
3. Results and Discussions
3.1. Mutation Points Identification of the PCD and PCP
3.2. Spatial Pattern of PCD and PCP
3.3. Relationship between Precipitation Indexes and Low-Frequency Climate Factors
3.3.1. PCD
3.3.2. PCP
4. Conclusions
- (1)
- Mutations occurred in the PCD sequence in 1980 and the PCP sequence in 2005 in the LRB area from 1960 to 2020.
- (2)
- Over the past 60 years, the annual PCD variation range was between 0.53 and 0.80 and it tended to decrease. The decrease in PCD was −0.03/10 a before the mutation (1960–1979), and −0.01/10 a after the mutation (1980–2020). The PCP decreased by −0.09/a before the mutation (1960–2004) and increased by 1.01/a after the mutation (2005–2020). The daily sequence of PCP in this basin was quite concentrated and ranged from 184th to 218th d, that is, from early July to early August.
- (3)
- In the LRB, PCD increased from southeast to northwest. Two high PCD (>0.72) areas were concentrated separately in the northwest of the upstream and downstream in Changchun. The spatial distribution of the PCD generally tended to flatten over the entire study period.
- (4)
- PDO, SS, and AO were the important climate factors driving the abrupt change of PCD, and the resonance between climate factors and the PCD was characterized by complexity and diversity. Before the mutation year 2005, the PCP was mainly affected by AO and SS, both of them showed anti-phase resonance with the PCP, and evolution lagged. ENSO had an important effect on both PCD and PCP but had no significant correlation with the occurrence of the mutations.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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PCD | XWT | WTC | |||
Period | Years | Period | Years | ||
PDO | 1–4 a 1–4 a 8–11 a | 1981–2001 2003–2007 1988–2004 | 3.5–5 a 1–3 a 8–10 a | 1968–1974 1988–2001 1980–2019 | |
AO | / | / | 3.5–5.5 a 8–10 a | 1968–1971 1980–1994 | |
ENSO | 0–5 a | 1964–2013 | 1–6 a | 2006–2014 | |
SS | 8–12 a | 1973–2003 | 2–3.5 a 0–3.5 a 1–3 a 8–15 a | 1974–1981 1988–1992 2010–2012 1975–2005 | |
PCP | XWT | WTC | |||
Period | Years | Period | Years | ||
PDO | 2–6 a 5–7 a 8–9 a | 1986–2009 2008–2011 1986–2008 | 0–1.5 a 7 a 2 a 5.5 a | 1964–1968 1981–1988 2008–2009 2009–2011 | |
AO | / | / | 3.5–5.5 a 3–10 a | 1968–1974 1971–1999 | |
ENSO | 0–4.5 a 1–6 a | 1964–1972 1980–2013 | 0.5–4 a 11–14 a 2–6 a | 1964–1973 1978–1984 2009–2013 | |
SS | 7.5–14 a | 1974–2001 | 1.5 a | 2009 |
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Zhang, L.; Cao, Q.; Liu, K. Mutation Characteristics of Precipitation Concentration Spatiotemporal Variation and Its Potential Correlation with Low-Frequency Climate Factors in the LRB Area from 1960 to 2020. Water 2023, 15, 955. https://doi.org/10.3390/w15050955
Zhang L, Cao Q, Liu K. Mutation Characteristics of Precipitation Concentration Spatiotemporal Variation and Its Potential Correlation with Low-Frequency Climate Factors in the LRB Area from 1960 to 2020. Water. 2023; 15(5):955. https://doi.org/10.3390/w15050955
Chicago/Turabian StyleZhang, Lu, Qing Cao, and Kanglong Liu. 2023. "Mutation Characteristics of Precipitation Concentration Spatiotemporal Variation and Its Potential Correlation with Low-Frequency Climate Factors in the LRB Area from 1960 to 2020" Water 15, no. 5: 955. https://doi.org/10.3390/w15050955
APA StyleZhang, L., Cao, Q., & Liu, K. (2023). Mutation Characteristics of Precipitation Concentration Spatiotemporal Variation and Its Potential Correlation with Low-Frequency Climate Factors in the LRB Area from 1960 to 2020. Water, 15(5), 955. https://doi.org/10.3390/w15050955