2019
DOI: 10.3390/rs11182092
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Coupled Biospheric Synchrony of the Coastal Temperate Ecosystem in Northern Patagonia: A Remote Sensing Analysis

Abstract: Over the last century, climate change has impacted the physiology, distribution, and phenology of marine and terrestrial primary producers worldwide. The study of these fluctuations has been hindered due to the complex response of plants to environmental forcing over large spatial and temporal scales. To bridge this gap, we investigated the synchrony in seasonal phenological activity between marine and terrestrial primary producers to environmental and climatic variability across northern Patagonia. We disenta… Show more

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Cited by 7 publications
(12 citation statements)
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“…When coupled with climate effects (e.g., warming), these intense drought periods could promote fire activity (frequency and severity), mainly in areas with extensive plantations of non-native forests, native sclerophyll forests, and scrublands, vegetation types that largely determine the primary productivity patterns in central Chile [37,65]. While in northern Patagonia, both coastal ocean and land biological processes are forced by climatic variability over multiple temporal scales [66].…”
Section: Discussionmentioning
confidence: 99%
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“…When coupled with climate effects (e.g., warming), these intense drought periods could promote fire activity (frequency and severity), mainly in areas with extensive plantations of non-native forests, native sclerophyll forests, and scrublands, vegetation types that largely determine the primary productivity patterns in central Chile [37,65]. While in northern Patagonia, both coastal ocean and land biological processes are forced by climatic variability over multiple temporal scales [66].…”
Section: Discussionmentioning
confidence: 99%
“…According to Marshall [68], the SAM oscillation is defined by the gradient between the high-pressure belt at medium latitudes and the lower pressures around coastal Antarctica. As such, it is calculated as the zonally averaged pressure difference between 40 • S and 65 • S. SAM oscillations are phase-dependent with ENSO, e.g., when a positive phase of ENSO (El Niño) coincide with a negative phase of SAM (Figure A2), climate anomalies dominate south of 40 • S [69], generating extreme conditions due to high solar irradiation and reduced precipitation [66,70]. Such phaselocking could drive part of the observed changes in phenological activity, e.g., weak amplitude (see Figure 7).…”
Section: Discussionmentioning
confidence: 99%
“…This iterative method is not appropriate, however, to analyze series more than three times and gives results that need to be smoothed before interpretation. Thus, in the study of Lara et al (43), we adapted the inverse PWC method from Fourier analysis (64) to wavelet analysis. This method is based on the inversion of the spectral matrix Σ(f,t) whose elements are the cross-wavelet spectrum for the i and j time series from the n time series analyzed where S jk ( f, t) is the ( j,k) element of the inverse spectral matrix Σ −1 ( f, t) and (\jk) means all elements except the jth and the kth.…”
Section: Methodsmentioning
confidence: 99%
“…Partial correlation and partial rank correlation are commonly used in Biology in other settings (40), and partial correlation has been extended to partial autocorrelation function for the analysis of time series (41). With the notion of partial correlation recently extended to wavelet coherence (WC) (42,43), we reanalyze a large number of time series for malaria and dengue, two dominant mosquito-borne disease threats around the globe (17). We specifically consider 197 published time series of incidence (or cases) together with the corresponding local and global climate variables (table S1) for different countries of South Asia, Central and South America, and sub-Saharan Africa.…”
Section: Introductionmentioning
confidence: 99%
“…However, in the Littoral zone, OM dominates, followed by DU and SU. example, to calculate the PWC of X1 on Y by controlling the effects of X2, X3, X4, X5 as in our case study) PWC is expressed as follows [28]:…”
Section: Partial Wavelet Coherence (Pwc)mentioning
confidence: 99%