PLoS ONEplosplosonePLoS ONE1932-6203Public Library of ScienceSan Francisco, USAPONE-D-13-2443610.1371/journal.pone.0094526Research ArticleBiology and life sciencesComputational biologyPopulation modelingMarine biologyMarine conservationPopulation biologyZoologyAvian biologyEarth sciencesAtmospheric scienceClimatologyClimate modelingEcology and environmental sciencesConservation scienceClimate Driven Life Histories: The Case of the Mediterranean Storm PetrelLocal and Global Climate Effects on Storm Petrel DemographySoldatiniCecilia1*Albores-BarajasYuri Vladimir1MassaBruno2GimenezOlivier3Grupo de Ecología y Conservación de Islas, A.C., Ensenada, Baja California, MéxicoDepartment of Agricultural and Forest Sciences, University of Palermo, Palermo, ItalyCEFE, UMR5175, Campus CNRS, Montpellier, FranceDescampsSébastienEditorNorwegian Polar Institute, Norway* E-mail: cecilsol@gmail.com
The authors have declared that no competing interests exist.
Conceived and designed the experiments: CS YVA OG. Performed the experiments: CS YVA BM. Analyzed the data: CS OG. Contributed reagents/materials/analysis tools: CS YVA BM OG. Wrote the paper: CS OG.
2014114201494e9452666201318320142014Soldatini et alThis is an open-access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
Seabirds are affected by changes in the marine ecosystem. The influence of climatic factors on marine food webs can be reflected in long-term seabird population changes. We modelled the survival and recruitment of the Mediterranean storm petrel (Hydrobates pelagicus melitensis) using a 21-year mark-recapture dataset involving almost 5000 birds. We demonstrated a strong influence of prebreeding climatic conditions on recruitment age and of rainfall and breeding period conditions on juvenile survival. The results suggest that the juvenile survival rate of the Mediterranean subspecies may not be negatively affected by the predicted features of climate change, i.e., warmer summers and lower rainfall. Based on considerations of winter conditions in different parts of the Mediterranean, we were able to draw inferences about the wintering areas of the species for the first time.
This project was funded by the Assessorato Regionale Agricoltura e Foreste to the Bird Ringing Unit of the University of Palermo. The funders had no role in study design, data collection and analysis, decision to publish, or preparation of the manuscript.Introduction
In the face of the overwhelming data on the effects of climate change, it is crucial to understand how wildlife will react to such changes. Seabirds are considered sentinels of environmental change [1], as they range over large areas of the ocean and are therefore directly affected by any changes that may occur [1], [2], [3], [4]. Climate change affects oceanographic conditions and the availability of seabirds' prey, ultimately influencing population dynamics [5], [6], [7], [8]. Changes in fluid circulation may also induce positive consequences as it has been evidenced in the foraging efficiency and breeding success of albatrosses due to changes in wind regimes [9].
In view of the effects of environmental variability on the prey of seabirds, the climate-induced warming of oceanic surface waters to levels that exceed the boundaries of a fish species' thermal niche can have a direct effect on the distribution of the species. Even within this thermal niche, subtle (<0.5°C) temperature changes can have profound effects on growth, survival and reproduction [1], [10]. As a consequence, climate change can have an indirect impact on seabirds [11] influencing prey quality in marine food webs [12], [13] and complex bottom-up and top-down processes in ecosystems [14]. Climate factors may affect breeders directly through changing the distribution of important prey species or indirectly through affecting spawning and recruitment of important fish prey species giving lagged effects on seabird's demographic traits. Changes in prey abundance and quality during pre-breeding and chick rearing period may result in variation in adult body condition affecting their quality as breeders and or their survival. In that case changes that result in reduced caloric value of prey, compared to those occurring under “normal” conditions, may affect reproduction and chick survival [15], [16]. Chick survival may be indirectly affected by the same factors, influencing growth rate and body condition at fledging, but also by colony conditions in terms of humidity influencing thermo-regulation.
Long chick-rearing periods involving both parents are a characteristic of seabirds [17]. Reproductive output may therefore be strongly impacted by adverse conditions that force the birds to fast for longer periods or to make excessive metabolic effort [18], as a consequence juvenile survival and the overall population trend are at risk.
Cyclic and extreme climatic events are inherent to oceanic systems and have occurred long before human-induced global warming. Seabirds have evolved in this fluctuating environment and are negatively affected by the rapid increase of environmental stochasticity as a consequence of global warming [19].
In the Mediterranean, models have predicted an increase in temperature and a decrease in rainfall [20], which could produce the effects mentioned above, affecting the whole food web. In this context, we aimed at linking the effect of climatic conditions to the demography of seabirds with particular reference to the Mediterranean storm petrel (Hydrobates pelagicus melitensis). Our aims were: 1. to determine age of recruitment in Mediterranean storm petrel, 2. to investigate effects of environmental conditions in different time of the year on important demographic traits and 3. to reveal important wintering-area for this population. The last point is particularly challenging in species whose distribution is unknown and where technology is not yet available to track small animals at sea beyond the breeding period.
The Mediterranean storm petrel is a taxon distinguished both morphologically and genetically from the Atlantic populations [21], [22]. On the IUCN Red List the storm petrel is not considered to be under any threat and is thus categorized as Least Concern [23], but if we focus only on the Mediterranean subspecies, it may be endangered mainly due to habitat degradation and introduction of predators, such as rats and cats, requiring conservation awareness [24]. Breeding distribution and abundance is probably under estimated, due to the highly pelagic attitude and nocturnal behaviour [25]. The known Mediterranean population is estimated at between 11 000–16 000 breeding pairs, with three main population cores identified in Malta, Sicily and the Balearic Islands [26]. The current trend of the Mediterranean storm petrel populations is stable [26], although there is a lack of basin wide studies. In the few sites where mid-long term monitoring has taken place (Marettimo, Filfla and Benidorm), it has been observed that the colonies remain stable.
Dietary needs have evolved according to Mediterranean basin food-web and are mainly supplied by small pelagic fish [27]. Considering fluctuations of small pelagic fish whose biomass estimates resulted to be negatively correlated with the mean sea surface temperature [28], [29], [30], [31] we predict that climatic variation both in sea surface temperature and in environmental temperature and rainfall may affect storm petrel survival at different stages of their life cycle. Our hypothesis is that conditions experienced at fledging can influence first year survival and breeders may be affected by environmental conditions during the pre-breeding and breeding period with effects on age of recruitment and/or adult survival. We used temperature and rainfall in the pre-breeding and breeding period and sea surface temperature during winter in testing whether and in what measure birds are affected directly, chlorophyll concentration was used as indirect covariate.
We investigated the effects of climatic conditions on the demography of this taxon by analysing the life histories of almost 5000 individuals monitored since 1991 in the Egadi Archipelago, Italy. We then inferred that local conditions from the different areas during the winter can affect vital rates and analysed correlations between trends in different Mediterranean upwelling zones and storm petrel demography in order to predict the wintering areas.
Materials and MethodsStudy area and species
The storm petrel (Hydrobates pelagicus) is the smallest procellariiform present in the Mediterranean Sea, where the subspecies melitensis lives. This species lays one egg in May-June and chicks fledge in late August-September. Mark-recapture data were obtained from Marettimo Is. (37°58′N, 12°03′E, Figure S1), Italy, between 1991 and 2012. The main colony, placed in a large cave accessible only from the sea, is the only accessible colony consisting of approximately 2500 pairs [25]. Recruitment in Marettimo is observed earlier than in other colonies [32], [33]. Each year, the colony was visited at least once between June and August, and adults and chicks were captured at nest and banded with metallic inox rings for a total of 4926 marked individuals. Sexing of the birds began in 2007 on chicks and adults following the methods already described in Albores et al. 2010 [34]. Adults caught at the colony are all breeders, as pre-breeders and skippers are not present.
Climatic covariates
We used two types of covariates: time-dependent individual covariates and environmental covariates (Table 1). Individually based covariates follow individuals life history with no relation with other individuals while values of environmental covariates are shared by all individuals with no reference to their life history. In the case of time-dependent individual covariates, we had one value per individual, referring to the environmental conditions experienced at birth and the subsequent covariate values will characterize individual life history: the sequence of covariate values for each individual starts in the year of birth, hence birds born in different years have different sequences for the same covariate (e.g.: WNAO for the first 5 years of life of a bird born in 1995 will be: 1,363; −0,620; −0,067; −0,227; 0,643; while for a bird born in 1998 WNAO values will be: −0,227; 0,643; 1,303; 0,040; 0,237). We assumed these covariates to characterize individuals' life history (as for example in the case of individuals' weight), although they are not dependent on an individual's life history. In the case of environmental covariates, we had a single value per year that was shared by all individuals. Integrative indexes used as individual and external covariates were obtained performing Principal Components Analysis, PCA, see below for details on variables used [35].
10.1371/journal.pone.0094526.t001
All covariates used in the analyses, and their main characteristics.
Kind of covariate
Name
Characteristics
label
Reference period
Available years
demographic parameters that could be influenced
Individual
Winter North Atlantic oscillation
global-scale covariates
WNAO
December-February
1991–2012
Survival
Individual
Temperature anomaly. Pre-Breeding period
local scale breeding ground covariate
PBT
March-April
1991–2012
Survival and breeding
Individual
Rainfall anomaly. Pre-Breeding period
local scale breeding ground covariate
PBR
March-April
1991–2012
Survival and breeding
Individual
North Atlantic oscillation. Pre-Breeding period
global-scale covariates
PBNAO
March-April
1991–2012
Survival and breeding
Individual
Integrative climatic index 1 Pre-Breeding period
PCA derived integrative covariates
PC1PB
March-April
1991–2012
Survival and breeding
Individual
Integrative climatic index 2 Pre-Breeding period
PCA derived integrative covariates
PC2PB
March-April
1991–2012
Survival and breeding
Individual
Temperature anomaly. Breeding period
local scale breeding ground covariate
BT
May-August
1991–2012
Survival and breeding
Individual
Rainfall anomaly. Breeding period
local scale breeding ground covariate
BR
May-August
1991–2012
Survival and breeding
Individual
North Atlantic oscillation. Breeding period
global-scale covariates
BNAO
May-August
1991–2012
Survival and breeding
Individual
Integrative climatic index 1 Breeding region
PCA derived integrative covariates
PC1B
May-August
1991–2012
Survival and breeding
Individual
Integrative climatic index 2 Breeding region
PCA derived integrative covariates
PC2B
May-August
1991–2012
Survival and breeding
Individual
West Sicily Rainfall index
PCA derived integrative covariates
WSR
May-April
1991–2012
Survival and breeding
External
Sea surface temperature
PCA derived integrative covariates
SST
December - February
2001–2010
Survival
External
Chlorophille concentration
PCA derived integrative covariates
CHL
December - February
2001–2010
Survival
In the table we reported time-dependent individual covariates as “individual” and environmental covariates as “external”.
We defined four time-dependent individual covariates (WSR, western Sicily rainfall, WNAO, winter NAO, PB, pre-breeding period integrative covariate, and B, breeding period integrative covariate) to test climate effects on the recruitment probability and survival of chicks and adults.
WNAO: we selected the December through February winter North Atlantic Oscillation [36] due to its broad geographic coverage and used the average value of the selected period.
WSR: to define the integrative covariate a PCA was performed on rainfall data from the four meteorological stations closest to the island of Marettimo: Erice, Trapani, Marsala, and Mazara del Vallo (Figure S1) [37], [38]. The analysis considered the total rainfall recorded in 12 months relative to the life cycle year (May to April, considering the year starting with egg laying).
PB and B: to incorporate the uncertainty with which climatic variables affect the pre-breeding (March-April) and breeding (May-August) periods, we included temperature, rainfall, and NAO anomalies in the PCAs to calculate the integrative covariates as Pre-Breeding, PB, and Breeding, B, indexes.
To test winter period climate effects on adult survival and identify potential wintering sites for the species, we considered two external covariates defined as environmental covariates: SST, sea surface temperature, and CHL, chlorophyll concentration. We considered time series from 2001 to 2010 of SST and CHL as proxies of environmental conditions [39] from five areas with upwelling conditions in different regions of the Mediterranean Sea (Alboran Sea, Balearic Sea, Sicilian Channel, Adriatic Sea and Aegean Sea) [40]. To test the effect of winter conditions, we analysed data from December to February, performing 2 PCAs for each sea area (1 PCA for sea surface temperature, SST, and 1 PCA for chlorophyll concentration, CHL, each one based on 5 points). We then used the PC factors as external covariates in the model for a total of 11 covariates tested.
Survival and recruitment estimate from encounter history
We applied a multistate mark-recapture analysis to estimate chick and adult survival, to assess recruitment and to evaluate the potential effects of time and sex on these variables [41], [42]. Recruitment probability is given by the probability of transition from the non-breeder to the breeder state and can vary according to age and to time. We constrained variation with age by considering that recruitment probability stabilizes to a constant value from a given age onward. We defined first year survival after fledging as chicks survival and adults survival that of adults of subsequent age classes. The assumptions underlying our model are: a. detection probability of non-breeders and skippers is zero; b. once in the breeder state, individuals cannot go back to the non breeder state; c. there is an age from which the probability of becoming a breeder (probability of transition from non breeder to breeder) levels off at a constant value. As a consequence, at a given sampling occasion, an animal may be a pre-breeder (a juvenile of one year or more, not yet recruiting, state PB), breeder (adults after first breeding are generally considered breeders, state B), or dead (state dead, unobservable). The following observations may be made: ‘1’ (if detected as chick), ‘2’ (if detected as adult) and ‘0’ (if not detected). We tested the full recruitment age (the age at which any bird has become a breeder) and the age of full breeding (considering the probability of becoming a breeder as a function of age). To address age variation in the probability of becoming a breeder, we used only individuals of known age, i.e., only those ringed as chicks (3135), considering ringing as chicks as first capture event. We define the initial state vector Π, the transition matrix ΦΨ (survival multiplied by transition between states conditional on survival) and the event matrix B.
Columns of the matrix Π and correspond respectively to state PB, B and dead, columns of the matrix B correspond to the observations ‘non detected’ and ‘detected’ while rows of the matrices and B correspond respectively to state PB, B, and dead. denotes the pre-breeder survival, the adult survival, is the probability of becoming a breeder and p is the detection probability.
Individuals are first captured as PB and then become B; π denotes the proportion of newly marked in state PB. Φ1×Ψ1 represents the probability that a pre-breeder survives and attempts breeding. For an individual in state B, Φ2 represents the probability that a breeder survives. After the first capture, pre-breeders are not observed as they do not attend the colony; skippers are not present at the colony; we then estimated breeders detection as the detection parameter in the “breeder” state is the product of the probability of not skipping breeding and of the probability of detection given breeding.
Goodness-of-fit tests [43] were performed using U-CARE [44]. The results of the GOF test are summarised in Table 2.
10.1371/journal.pone.0094526.t002
Results of goodness of fit test for the multistate model.
Test component
X2
d.f.
P
Global test
48.568
52
0.610
Test 3G (test for transience)
22.264
23
0.504
Test M (test for trap-dependence)
26.304
29
0.609
We analysed 25 model combinations in which Ψ was modeled as a constant or functions of age and time, either singly, additively, or with interactions. The model assumes that there are two age classes (juvenile and adult) and there is an age from which the probability to breed ai does not change. Full recruitment age is the age at which any individual has become a breeder, it is equivalent to age “m” as defined by Gauthier and colleagues [45], which considers age “m” as the age at which recruitment probability can be considered constant for all subsequent ages. Juvenile survival and breeder recapture probabilities were allowed to be constant or to vary with time.
We distinguished the first from the following encounter occasions, as the encounter history is conditional on being caught in the first period and the following detection probabilities depend on the state and the time occasions. We started running a model assuming that there is no change after 10 years. As we obtained that after age 7 there is no improvement in model fitting we reduced the full breeding age to 7 (namely the 6th year of age) (Table 3). For a full breeding probability we fixed Ψ relative to this hypothetical age 1. Thus we tested which is the full recruitment age (probability of becoming a breeder) by fixing to 1 the potential age of full recruitment, specifying initial parameter values we constrained beta values before running the model.
10.1371/journal.pone.0094526.t003
Selection of the full breeding age (f.b.), only best models are presented.
Model
Deviance
NP
AIC
ΔAIC
AIC weight
f. b. year 7 (age 6)
3127.74
29
3185.74
0.00
1.000
f. b. year 5 (age 4)
3224.01
27
3278.01
92.27
0.000
f. b. year 6 (age 5)
3224.01
28
3280.01
94.27
0.000
f. b. year 8 (age 7)
3224.01
30
3284.01
98.27
0.000
f. b. year 9 (age 8)
3224.01
31
3286.01
100.27
0.000
Deviance (Deviance), number of parameters (NP) and AIC [47] are reported. Preferred model is in bold.
We tested the time effect on survival and the effect of time and sex (the last as group effect) on recruitment only. We limited the tests in this way because we primarily sexed adults and we have information on chicks sex only after 2007.
Bearing in mind previous results, to assess climatic effects on survival and recruitment, model selection began with the model with age and time effects on survival and sex effect on recruitment age. More in details, after testing the single effect of the individual covariates on survival (Φ) and recruitment (Ψ) we tested the additive effects of different individual covariates and time on survival (Φ) and the additive effects of different individual covariates, time and sex on recruitment (Ψ).
Models were fitted with the E-SURGE program [46] (for model implementation in E-Surge see Material S1). Model selection was based on the Akaike Information Criterion (AIC) [47], [48].
Effects of winter climate on survival over time
Because data on environmental conditions are available only from 2001 to 2010, we used a subset of birds ringed as chicks and adults in the same period (2918), modelling potential effect of covariates only on adults survival. We carried out goodness-of-fit for the single state model using U-CARE [6]. Results of the GOF test are summarized in Table 4. Due to the presence of transient individuals, we used 2-age-class models and a variance inflation factor (c-hat = 1.4). Following the single state, as simplification of the scheme reported above, we implemented the model in program E-SURGE [44] (for model implementation in E-Surge see Material S1).
10.1371/journal.pone.0094526.t004
Results of the GOF test for the single-state model.
Test component
X2
d.f.
P
Global test
233.82
61
0
Test 3.SR (test for transience)
162.40
10
0
Test 2.CT (test for trap-dependence)
9.23
9
0.42
Global test (corrected for transience)
71.42
51
0.03
We analysed 24 model combinations in which Φ was modeled as a constant or function of time, we then explored singly and additively interaction with environmental (external) covariates dependent models. The model assumes that there are two age classes (young, first year of age, and adult, older than 1 year), survival and breeder recapture probabilities were allowed to be constant or to vary with time.
Model selection procedure: model selection was based on the Akaike's information criterion (AIC) [47], adjusted for overdispersion (Q). After identifying time-dependent parameters, we investigated the effects of SST and CHL in describing the time variation with an analysis of deviance (ANODEV) and calculated the proportion of variance explained by the environmental (external) covariates using the R2 statistic [35].
Ethics Statement
Field work was carried out under permission from the Marine Protected Area. Permits included obtaining DNA samples for sexing. There were no ethics committee approval requirements to carry out this project due to the minimum handling of the individuals that was carried out according to Italian and Sicilian region legislation (LN 157/92, LR 105/99 and LR 74/2012) by certified ringers authorized by the Institute for Research and Environmental Protection (ISPRA) to handle adults and chicks.
Results
Individual covariates were defined and we made sure that the covariates used as integrative climatic indexes were not inter-correlated (Table 5). WSR is represented by the first principal component explaining 86,49% of the total variance (figure S2a). PB is represented by principal components 1 and 2 (PC1PB and PC2PB hereafter). The first factor, explaining 42.57% of the total variance, is correlated positively with temperature and negatively with rainfall, whereas factor 2, explaining 32.19% of the total variance, is positively correlated with the NAO (figure S2b). During the pre-breeding period, warm and dry conditions are associated with a high NAO, whereas cold and wet conditions are associated with a low NAO. B is represented by the first principal component (PC1B hereafter, explaining 45.97% of the total variance), which is positively correlated with rainfall and the NAO. B is also represented by the second principal component (PC2B hereafter, explaining 33.42% of the total variance; figure S2c), which is positively correlated with temperature. These results indicate that during the breeding period (i.e., the chick-rearing period), warm and dry conditions are associated with a low NAO, and cold and wet conditions are associated with a high NAO. Trends of individual and environmental covariates are summarised in figures S3a and S4a.
10.1371/journal.pone.0094526.t005
Correlations between climatic covariates.
Pearson Correlation
Correlation pattern (Pearson's r below the diagonal; P value of a t-test for H0: r = 0 above the diagonal)
Climatic covariate
Label
WNAO
PBTan
PBRainan
PBNAO
PC1PB
PC2PB
BTan
Brainan
BNAO
PC1B
PC2B
WSR
Winter North Atlantic oscillation (December-February)
WNAO
0.919
0.214
0.409
0.293
0.585
0.295
0.560
0.663
0.855
0.496
0.026
Temperature anomaly. Pre-Breeding period (March-April)
PBT
0.023
0.282
0.814
0.000
0.146
0.610
0.793
0.328
0.844
0.351
0.138
Rainfall anomaly. Pre-Breeding period (March-April)
PBR
−0.276
−0.240
0.691
0.000
0.483
0.482
0.968
0.889
0.760
0.590
0.000
North Atlantic oscillation. Pre-Breeding period (March-April)
PBNAO
0.185
0.053
−0.090
0.073
0.000
0.819
0.817
0.529
0.689
0.611
0.097
Integrative climatic index 1 Pre-Breeding period (March-April)
PC1PB
0.235
0.736
−0.764
0.389
1.000
0.956
0.955
0.401
0.676
0.715
0.000
Integrative climatic index 2 Pre-Breeding period (March-April)
PC2PB
0.123
−0.320
0.158
0.916
0.000
0.871
0.765
0.803
0.792
0.792
0.599
Temperature anomaly. Breeding period (May-August)
BT
−0.234
0.115
0.158
0.052
−0.013
0.037
0.400
0.989
0.059
0.000
0.535
Rainfall anomaly. Breeding period (May-August)
BR
−0.131
−0.059
−0.009
0.052
−0.013
0.068
−0.189
0.133
0.000
0.986
0.426
North Atlantic oscillation. Breeding period (May-August)
BNAO
0.098
0.219
−0.032
0.142
0.188
0.057
0.003
0.330
0.000
0.019
0.491
Integrative climatic index 1 Breeding region (May-August)
PC1B
0.041
0.045
−0.069
0.090
0.094
0.060
−0.409
0.832
0.721
1.000
0.948
Integrative climatic index 2 Breeding region (May-August)
PC2B
−0.153
0.209
0.122
0.115
0.083
0.060
0.869
−0.004
0.497
0.000
0.847
West Sicily Rainfall index
WSR
−0.473
−0.327
0.719
−0.363
−0.729
−0.119
0.140
0.179
−0.155
−0.015
0.044
The values of sets of covariates describing climatic conditions in the breeding area during the pre-breeding period and the breeding period, respectively, are in italic. Bold type highlights the covariates retained for the analysis of climatic effects on survival and recruitment.
By fixing to 1 the potential age of becoming a breeder (full recruitment) or the age at which all the birds of the colony may be considered breeders, we found that the 2nd year is the age at which most birds start to recruit with a small difference with the 3rd year of age (AIC = 3176.14 and AIC weight = 0.342; ΔAIC = 1.60 and AIC weight = 0.154 for 3rd year of age, but see Table 6 for more details) suggesting that at the 2nd and, in smaller proportion, at the 3rd year of age are Marettimo's storm petrels are becoming breeders. In table 6 both the results of full recruitment age identification and of sex effect on recruitment age are reported. The best model considered constant annual survival trends, whereas recruitment was affected by sex, with males recruiting earlier than females (see also figure S5). Recruitment probability in males is slightly higher than in females during the first 3 years of age (in average 4.8%), this difference is no more perceivable from the 4th year. Full breeding age in the Marettimo colony is at the 6th year of age (Table 3).
10.1371/journal.pone.0094526.t006
Selection of the full recruitment (f.r.) age and test of time effect on survival and sex effect on recruitment age, only best models are presented.
Model
Deviance
NP
AIC
ΔAIC
AIC weight
Φt Ψsex
3002.59
52
3106.59
0.00
0.827
Φt Ψ
3011.83
49
3109.83
3.24
0.164
Φt Ψ f.r. year fixed to 3
3019.74
48
3115.74
9.15
0.008
f.r. year 3 (age 2)
3128.14
24
3176.14
0.00
0.342
f.r. year 4 (age 3)
3127.74
25
3177.74
1.60
0.154
f.r. year 5 (age 4)
3127.74
26
3179.74
3.60
0.165
f.r. year 2 (age 1)
3134.77
23
3180.77
4.63
0.034
Deviance (Deviance), number of parameters (NP) and AIC [47] are reported. Preferred models are in bold.
We found high mortality in juveniles. The average first year survival after fledging was 0.222 (±0.093) and adults survival was 0.923 (±0.060). Survival was highly variable (figure S3b), especially for juveniles.
Considering single and additive effects of group (sex) and individual covariates (local climatic descriptive indexes) we found that recruitment differed between sexes with males recruiting earlier. Pre-breeding season conditions with colder springs was negatively affecting recruitment (Table 7), whereas survival in first year after fledging and adults was affected positively by warm breeding-period conditions and negatively by abundant rainfall explaining the correspondence of the drops in figure S3b with higher B and WSR and lower PB values in figure S3a.
10.1371/journal.pone.0094526.t007
Model selection results, only best models are presented.
Model
Deviance
NP
AIC
ΔAIC
AIC weight
ΦB1+B2+t+WSR ΨPB1+PB2+sex
2984.08
55
3094.08
0.00
0.842
ΦB1+B2+tΨPB1+PB1+sex
2989.76
54
3097.76
3.68
0.134
ΦB1+B2+tΨPB1+PB2
2999.35
51
3101.35
7.27
0.022
ΦtΨsex
3002.59
52
3106.59
12.51
0.001
ΦtΨi
3011.83
49
3109.83
15.75
0.000
ΦB1+B2Ψi
3104.72
29
3162.72
68.64
0.000
ΦiΨPB1+PB2
3112.46
30
3172.46
78.38
0.000
ΦiΨsex
3112.68
32
3176.68
82.60
0.000
ΦPB1+PB2Ψi
3121.82
28
3177.82
83.74
0.000
ΦWSRΨi
3124.11
27
3178.11
84.03
0.000
ΦWNAOΨi
3126.47
27
3180.47
86.39
0.000
ΦiΨi
3127.74
29
3185.74
91.66
0.000
Climatic (PB: Pre-Breeding, B: Breeding, WSR: rainfall, WNAO: winter NAO), “time”, and constant effects “i” were considered on survival, Φ, Ψskipping the transition probability from state pre-breeder to breeder, Ψ (“+” denotes additivity). Deviance (Deviance), number of parameters (NP), ΔAIC and AIC weight are reported.
After defining environmental covariates as SST and CHL PCA factors (Table 8) we obtained cues on their effects on adults survival and encounter probability. We obtained that SST and CHL, are not correlated (Spearman R = −0.336, p = 0.321, figure S4a) giving strength to the models involving them both. We can confirm that SST and CHL may influence storm petrels ecology during winter time [39]. A higher sea surface temperature and lower chlorophyll concentration were associated with lower encounter rates during the subsequent breeding period (figure S4b) and a higher encounter rate after favourable years. Winter sea conditions in different areas of the Mediterranean affected the survival of the Marettimo birds. In particular, we found that periods of low productivity (high SST and low CHL) in the Alboran Sea negatively influenced adult survival (Table 9). In fact we found a significant effect of Alboran Sea conditions (AIC = 4175.04 and compared to time effect: ΔAIC = 1.37, AIC weight 0.335, F2,15 = 14.385, p = 0.004), with 62% of the temporal variance in adult survival explained by the Alboran sea-surface temperature and chlorophyll variation. When considering neighbouring models (SST and CHL covariates considered separately) we obtained that SST has a stronger effect (AIC = 4175.04 and compared to time effect: ΔAIC = 1.37, AIC weight 0.335, F2,15 = 14.385, p = 0.004, R2 = 62%) than CHL (AIC = 4183.76 and compared to time effect: ΔAIC = 10.09, AIC weight 0.001, F2,15 = 5.560, p = 0.040, R2 = 38%). Thus SST alone explains a large percentage of the total variation on adult survival. This finding suggested that the Alboran Sea was the most probable wintering site, and that environmental conditions there affect overwintering conditions in the Mediterranean storm petrel population of Marettimo.
10.1371/journal.pone.0094526.t008
Percentage of variance expressed by each principal component factor of the PCAs performed (Alboran Sea, Balearic Sea, Sicilian Channel, Adriatic Sea, and Aegean Sea: Al, L, S, Ad, Ae, respectively; sea surface temperature: SST and chlorophyll: CHL).
ext cov
% cov
LsstPC1
70.069
LchlPC1
44.937
LchlPC2
29.623
AlsstPC1
82.34
AlchlPC1
86.231
AdsstPC1
87.756
AdchlPC1
51.557
AdchlPC2
29.163
SsstPC1
88.377
SchlPC1
78.176
AesstPC1
88.872
AechlPC1
92.015
10.1371/journal.pone.0094526.t009
Model selection results.
Model
Deviance
NP
AIC
ΔAIC
AIC weight
time eff
4125.67
24
4173.67
0.00
0.664
Al sst chl
4145.01
15
4175.04
1.37
0.335
Al sst
4145.01
15
4175.04
1.37
0.335
Al chl
4156.74
15
4183.76
10.09
0.001
L sst chl
4155.86
15
4185.86
12.19
0.001
Ad sst chl
4161.70
15
4191.70
18.03
0.000
Ae sst chl
4167.40
15
4197.40
23.73
0.000
S sst chl
4170.41
15
4200.41
26.74
0.000
Constant
4175.93
14
4203.93
30.26
0.000
Environmental, “time”, and constant effects “i” were considered on survival, Φ, with climatic covariates in 5 areas of the Mediterranean (Al: Alboran, L: Balearic, Ad: Adriatic, Ae: Aegean, S: Sicilian Sea). Deviance (Deviance), number of parameters (NP), ΔAIC and AIC weight are reported.
DiscussionRecruitment age determination
Petrels are long-lived organisms with delayed sexual maturity. A prolonged pre-recruitment period and extended lifespan provide seabirds with sufficient time to explore marine habitats and to gather crucial information about prey patches and the spatio-temporal variability in their availability [5]. Although we found survival values similar to those reported by a previous study [32], the recruitment age for the Marettimo colony was lower, perhaps due to the greater number of individuals located in this colony and the much greater intra-individual variation that resulted. Marettimo colony study conditions and structure are different from most of known colonies, being the colony placed in a big and completely dark cave accessible only from the sea (thus predator-free), and with a large number of accessible nests. The colony characteristics make it very different from other monitored Mediterranean colonies such as Filfla, Malta, where nests are scattered in single inaccessible burrows in the rocks [24], and Benidorm, Spain, where the colony is small (ca 300 nests) and in two caves easily accessible for predators [49]. The database we used in this study is based on a more complete and longer time series (21 years with one missing year vs 15 years with two missing years) than that used previously for the same colony in a comparative study [32]. This allowed us to investigate and describe cues of the subspecies life history, thanks to predators absence, making it possible to infer about chicks natural mortality, and the long time series allowing correlational analyses with climatic conditions trends. The population studied showed that the pre-recruitment period may be shortened by unfavourable environmental and climatic conditions that may have lead to earlier maturation as a consequence of lower adult survival (figure S3b). Long-lived birds invest more in survival than fertility [50]. However, this study found that storm petrel tend to recruit earlier in this colony compared to other monitored colonies throughout the Mediterranean [32]. It is possible that this result is due to the effects of environmental conditions on survival.
Effects of environmental conditions on demographic traits
Survival exhibited two troughs (figure S3b), which might be due to factors related to colony dynamics (internal) and to environmental factors (external). The influence of climate on demography is represented by the finding that the colony region's climatic conditions affect the recruitment age and survival of chicks and adults. In particular, chick survival was affected by breeding-period conditions and rainfall. Abundant rainfall before and cold weather during the chick-rearing period resulted in higher chick mortality, as observed in 2010. These conditions may have produced wet conditions in the colony caves and reduced thermoregulation capabilities, inducing higher metabolic costs for chicks and parents [18]. In fact, in 2010, a year with higher rainfall and lower temperature, we observed exceptionally high chick mortality in the field (only 20 fledged in the surveyed area of the colony), while we usually don't find dead chicks when visiting the colony. In the view of our results warmer summers and lower rainfall predicted as a consequence of the changing climate [51] will not have a negative effect on juvenile survival rate of the Mediterranean subspecies.
Adult survival was directly affected by the climatic conditions at the time of breeding due to the adult's needs to meet its own energetic requirements as well as those of the chick. Males tend to recruit earlier than females and recruitment was reduced in years with adverse prebreeding conditions, suggesting that younger birds decided to delay recruitment to wait for better condition or more productive years. Carryover effects for the winter might occur as a consequence [52]. It is noteworthy the fact that males of Mediterranean storm petrels are smaller than females [53] and consequently adults may rear the chicks with fewer energy expenditure.
Identification of wintering-area
The original aspect of our study is the use of statistical models to identify seabird wintering areas, as illustrated for the storm petrel, a species difficult to follow at sea due to lack of technology, as geolocators or satellite tracking devices are not small enough to be used on this species. The trends of sea surface temperature and chlorophyll [39] (figure S4a) may influence storm petrel survival. In particular, the conditions in the Alboran Sea zone resulted to be influencing adult survival. Considering sea surface temperature and chlorophyll concentration effects separately, we observed that SST has a stronger direct effect while the CHL direct effect is weaker (Table 9). It is still unknown what the Mediterranean storm petrel feeds on during winter. Our results suggest that they probably feed mainly on small fishes, not directly affected by CHL, as during the breeding period [27], and not on zooplankton that would be directly affected by CHL concentration. Sea conditions may induce birds to skip reproduction in years with high surface temperatures and low chlorophyll levels at wintering sites, resulting in lower encounter rates during the subsequent breeding season. This would explain the drops in encounter rate observed in breeding seasons after high sea surface temperature and low chlorophyll concentration in winter conditions (figure S4a and b). Our results highlighted the relationship between environmental covariates and encounter rates, as also found in the Pacific and other studies on impacts of climate change on avian populations [11], [54].
Finally with respect to predicted features of climate change [51], as we observed that colony region conditions affect chick and adult survival, whereas conditions in the wintering areas affected adult survival, we can conclude that the stability of the Alboran sea surface temperature due to anticyclonic systems [55] may result in continuous upwelling in the area thus resulting in stability of survival of adult storm petrels during winter while the anticipated decrease in precipitation and warmer summers [20] will positively affect chick survival. Although we did not consider climatic effects on the food chain our result suggest future demographic stability and an improvement of the species status. Further research on climate change effects on the food chain and consequent effects on the Mediterranean storm petrel are currently missing and would help to forecast the species future conditions.
Supporting Information
Colony and meteorological stations location.
(TIF)
Correlation graphs for principal component analysis (PCA) for building integrative climatic indices. a) PCA of West Sicily rainfall data; b) PCA of the pre-breeding climatic variables (temperature, rainfall, and NAO); c) PCA of the breeding season climatic variables (temperature, rainfall, and NAO). Abbreviations are as in Table 6.
(TIF)
Trends of individually based covariates and demographic traits. a) Time series of climatic indices considered as candidate covariates in the analysis of survival and recruitment (PB: Pre-Breeding, B: Breeding, WSR: rainfall, WNAO: winter NAO). b). Estimated survival at Marettimo, confidence intervals in dotted lines.
(TIF)
Trends of environmental covariates and demographic traits. a) Time series of sea surface temperature, SST, and chlorophyll concentration, CHL, in the Alboran Sea. b) Estimated survival and encounter rate at Marettimo's colony using Alboran Sea climatic conditions (CI values are nil thus not visible in the graph).
(TIF)
Recruitment probability of males and females storm petrels.
(TIF)
Detailed descriptions of model implementation in E-Surge.
(DOCX)
We are grateful to Emanuela Canale, Fabio Lo Valvo, Luigi Pasotti, Marcello Tagliavia and Tomas Lovato. Our thank goes to Ana Sanz Aguilar whose comments improved a first draft of the manuscript. The comments of three anonymous referees greatly improved earlier drafts of the manuscript. This study was conducted using MyOcean Products.
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