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1 e on land" (SDG 15) via clearance of natural vegetation.
2 gions mainly due to the distribution of land vegetation.
3 assess the coherence of regional changes in vegetation.
4 climate variation and controlled by semiarid vegetation.
5 imodal distribution of structural aspects of vegetation.
6 ased, reaching similar levels to undisturbed vegetation.
7 d at 0.1 to indicate the presence/absence of vegetation.
8 ay rate may be a useful index for monitoring vegetation.
9 ts slow and steepen in the presence of green vegetation.
10 rk, which combines a designed hillscape with vegetation.
11 poverty alleviation, and changes in natural vegetation.
12 g to consumption of C(3) and mixed C(3)-C(4) vegetation.
13 ong-term atmospheric carbon sequestration in vegetation.
14 stocks, and, carbon sequestration by in situ vegetation.
15 isk for herbicide spray drift to surrounding vegetation.
16 grazers could directly consume propagules on vegetation?
18 we found these fires burnt ~97,000 km(2) of vegetation across southern and eastern Australia, which
20 er soil water is needed to support increased vegetation activity, especially during the late growing
23 te change and human land use co-regulate the vegetation and carbon cycles of a tropical lagoon system
24 e temperatures were determined from terrain, vegetation and ground properties using energy balance eq
25 f modeling experiments, we show that reduced vegetation and increased dust loads during the Green Sah
28 ht sites, each having paired plots of native vegetation and rain-fed croplands, and half the sites ha
32 variability of T/ET was primarily driven by vegetation and soil characteristics (e.g., crop or grass
33 o track primary producer biomass (carbon) in vegetation and soil pools, and to track prevalence and t
35 equally explained by local factors (soil and vegetation) and geospatial distance (11.5% and 11.9% res
36 olicies on biodiversity (indicated by native vegetation) and two ecosystem services (carbon storage,
37 outline complex links between local climate, vegetation, and ecosystem-atmosphere interactions, with
39 ing DOC-contributing factors, e.g., emergent vegetation, and supporting pH-increase processes, e.g.,
40 apture the non-linear, long-term dynamics of vegetation, and thereby soil organic matter, that occur
41 in microclimate driven by terrain, wind and vegetation, and ultimately bear little resemblance to th
42 hazards like tsunamis, natural elements like vegetation are often combined with designed elements lik
43 er significant losses of life, property, and vegetation are sometimes conducted in the absence of nua
45 abitats are driven by monodominance of woody vegetation as well as soil acidification by EM fungi, wh
46 especially if their food source is close to vegetation, as is the case for gleaning bats and nectar-
48 did show a tendency to minimize use of open vegetation at specific times of the day, overall we high
49 ogical partitioning and the strength of land-vegetation-atmosphere interactions at the catchment scal
53 more pollen limited in natural than managed vegetation, but the reverse is true for plants pollinate
56 ood in marine systems, but cues from coastal vegetation can provide sensory information guiding aquat
58 idence suggests that, to realistically model vegetation carbon allocation under increased climatic st
59 hat numerous climate-driven abrupt shifts in vegetation carbon are projected in a high-resolution mod
60 fidence in the fire impact on tree cover and vegetation carbon compared to GPP, total carbon storage
61 ss the scenarios, 81% of abrupt increases in vegetation carbon have increasing autocorrelation and 74
63 In one scenario, 89% of abrupt increases in vegetation carbon show increasing autocorrelation and va
64 onal variation in plant species richness and vegetation carbon stock can be substantial, and may be r
66 rs controlling tropical forest diversity and vegetation carbon storage could be critical for predicti
67 n diameter) ranged from 69 to 127 ha(-1) and vegetation carbon storage ranged from 114 to 200 t ha(-1
69 lled by climate and soil water availability, vegetation carbon storage was strongly related to wood d
71 ariance beforehand, whereas for decreases in vegetation carbon these figures are 56% and 47% respecti
72 ed with increases (rather than decreases) in vegetation carbon, show the greatest potential for early
74 hese differences to different definitions of vegetation change and effects of anthropogenic land use,
80 on rates in relation to historical land use, vegetation characteristics, and geophysical attributes.
86 r adult cheetahs and cubs in areas with high vegetation complexity on both seasonal and lifetime scal
87 mated lion encounter risk, prey density, and vegetation complexity within their home range, on short-
90 plication we quantified long-term changes in vegetation composition and in soil and vegetation C and
91 nd growing season duration, microtopography, vegetation composition, and ultimately, carbon function
92 ly when combined with P, strongly influenced vegetation composition, favouring grasses over Calluna v
93 showed persistent effects of N and N + P on vegetation composition, whereas effects of P alone were
94 e was also characterized by major changes in vegetation composition, which altered the environment oc
96 (NDVI), enhanced vegetation index (EVI), and vegetation continuous fields (VCF) across buffers of 500
98 with Leucocytozoon increased with increasing vegetation cover (NDVI) and moisture levels (NDWI), wher
100 infection rates, landscape features, such as vegetation cover and water body availability, play a sig
101 y reported reduced soil erosion or increased vegetation cover but lower water availability, although
103 otope ratios as a proxy for changes in woody vegetation cover over time in response to fluctuations i
109 ationship between the thermal decay rate and vegetation depends on many factors including vegetation
110 was significantly higher for TEE than CT for vegetation detection, 94% (95% CI: 92%, 96%) (363 of 383
111 urysm whereas TEE gives superior results for vegetation detection, leaflet perforation, and paravalvu
114 orders of magnitude smaller than expected if vegetation distribution remained in equilibrium with cli
115 water usage, suggesting that irrigated urban vegetation drives the biospheric signal we observe.
117 ory experiments, and modelling of insect and vegetation dynamics, and focuses on how drought affects
121 ar responses commonly occur where removal of vegetation exceeds 80% (a level that occurs across nearl
122 ur analysis reveals a broad pattern of woody vegetation expansion into savannas and densification wit
125 ly occurring extreme events like droughts by vegetation feedbacks to create more extreme heatwaves in
128 n misunderstandings about Amazonian climate, vegetation, fires and the deforestation process to help
130 ental data from seven long-term bare-fallow (vegetation-free) plots at six sites: Denmark (two sites)
132 rage, respectively, compared to their native vegetation (grassland or woodland) pairs, and irrigated
133 ary guilds for phenological coupling between vegetation greenness and seasonal bird migration within
137 sociations with a remotely sensed measure of vegetation greenness for 230 North American migratory bi
140 Northwest, USA, as the percent reduction in vegetation greenness under droughts relative to baseline
141 ates (CONUS), we first detected the onset of vegetation greenup using the time series of the daily tw
142 of -4.75 ppm per decade (p < .05) during the vegetation growing season (May through October), suggest
143 bedrock geochemistry could exert effects on vegetation growth in karst regions and highlights that t
145 the metal sheeting was absent and where the vegetation had overgrown around the fence, hence allowin
146 tes dominated by arbuscular mycorrhizal (AM) vegetation harbor relatively more AM fungi, bacteria, fu
147 ibiting greater selection for areas near low-vegetation height seismic lines in areas with low densit
148 -monsoon moisture for growth of the dominant vegetation, Himalayan birch Betula utilis and Himalayan
149 iving mechanisms behind existing patterns of vegetation hydraulic traits and community trait diversit
151 We quantified the drought sensitivity of vegetation in the Pacific Northwest, USA, as the percent
153 degrees C in July), an increase in enhanced vegetation index (+0.10 in July), and 81% higher maize y
154 difference vegetation index (NDVI), enhanced vegetation index (EVI), and vegetation continuous fields
155 e time series of the daily two-band Enhanced Vegetation Index (EVI2) observed from the AVHRR Long-Ter
158 f greenspace including normalized difference vegetation index (NDVI), enhanced vegetation index (EVI)
159 ith satellite measured normalized difference vegetation index and gross primary production shows that
161 ce reflectance-derived Normalized Difference Vegetation Index product was thresholded at 0.1 to indic
162 flat sites, increasing normalized difference vegetation index, and solar radiation all significantly
164 than those achieved by standard SIs, and by vegetation indices commonly used to predict agronomic tr
165 The simulated trends based on climate and vegetation indices show consistent results with some dif
169 ions in hydrology, sediment composition, and vegetation influence hot spots of P retention throughout
171 burns that arise in the dormant season when vegetation is desiccated, and soil moisture is high.
172 e manifestation of climate warming on tundra vegetation is highly dependent on the evolution of snow
173 bird species, protecting remnants of native vegetation is still of paramount importance for biodiver
174 ns (classified as abscess or pseudoaneurysm, vegetation, leaflet perforation, and paravalvular leakag
175 d transesophageal echocardiography delineate vegetation location and size, assess for paravalvular ex
176 ons of decreased water availability, using a vegetation model (LPX) driven by Atmosphere-Ocean couple
177 resolution using an enhanced dynamic global vegetation model and comprehensive land cover change dat
180 NPP was simulated by MC2, a dynamic global vegetation model, driven by five climate projections for
181 physiology, disturbance ecology, mechanistic vegetation modeling, large-scale ecological observation
182 owever, most traits relevant for ecology and vegetation modelling are characterized by continuous int
185 ing-down, with an ensemble of dynamic global vegetation models (DGVMs) coupled with an atmospheric tr
187 ed to model photosynthesis in dynamic global vegetation models (E(aV) and E(aJ) ) show no response to
191 ra-annual wood formation processes in global vegetation models is vital for assessing climate change
194 study, we use simulations from seven global vegetation models to provide the first multi-model estim
196 and should be considered in next-generation vegetation models, particularly in the context of global
197 ng in current implementations of large-scale vegetation models, the under-representation of insect-in
206 reeminent role in regulating the feedback of vegetation on the soil water budget of salt-affected bas
207 pe data indicates that the expansion of C(4) vegetation opened up new niche opportunities, probably a
211 plication could mitigate the effects of N on vegetation or increase C sequestration in this system.
213 ort ~1% of the OC sequestered by terrestrial vegetation, our estimates suggest that 34 +/- 26% of the
215 uisition strategies drive soil processes and vegetation performance, but their effect on the soil mic
222 eatest at the warmest site due to persistent vegetation photosynthetic activity throughout the winter
225 increase in moisture and expansion of woody vegetation prior to modern deforestation, which could he
227 s relative to cows, whereas low SWE and poor vegetation productivity 1 year prior together increased
228 bon balance of ecosystems through changes in vegetation productivity and ecosystem carbon turnover ti
229 ng the importance of bedrock geochemistry on vegetation productivity based on a critical zone investi
230 rawn an increasingly clear picture of global vegetation productivity changes, global changes in tau(e
233 ter loss rate (RWLR), while RWLR can predict vegetation productivity more effectively than previous m
235 ng the temporal (interannual) sensitivity of vegetation productivity to annual rainfall at a given si
236 Russia based on remotely sensed measures of vegetation productivity using Dynamic Habitat Indices (D
238 tions of 1 year of carbon residence times in vegetation (r(veg) ) and of 9 years in soil (r(soil) ).
240 cosystem structure are expected at levels of vegetation removal akin to those in the most intensively
248 e up to diversity changes using data from 68 vegetation resurvey studies of seminatural forests in Eu
250 e applied to estimate salinization level and vegetation salt tolerance at the basin scale, which woul
251 it remains difficult to forecast large-scale vegetation shifts (i.e. biome shifts) in response to cli
255 ation to effects of observation height (e.g. vegetation, snow and soil characteristics) and in habita
256 eling was used to evaluate the importance of vegetation, soil physico-chemical properties and microbi
257 Simulations performed with a dynamic air-vegetation-soil model (SoilPlusVeg) confirmed that these
258 are to some extent distinct from the natural vegetation soils, it is surprising that so many of the k
260 Our findings highlight the capability of vegetation spectroscopy to rapidly and nondestructively
261 cted to help prevent catastrophic changes in vegetation states by identifying improved monitoring app
262 tem productivity changes to the intensity of vegetation stress and peak leaf area, whereas the impact
263 ative contribution of the peak leaf area and vegetation stress intensity was highly variable among mo
264 lts show that the decay rate summarizes both vegetation structure and function and exhibits a high co
265 ntains suitable soil conditions (via diverse vegetation structure and periodic saturation) to support
269 de that ecosystems self-organize towards the vegetation structure with the greatest outgoing entropy
270 ally burned 102 plots, for which we measured vegetation structure, fuels, microclimate, ignition succ
272 was closer to crop inputs than under native vegetation, suggesting that cultivation has led to faste
273 evidence across temporal and spatial scales (vegetation survey, stand structure analysis, dendrochron
274 -grazed creekheads, through their removal of vegetation that otherwise obstructs predator access, enh
275 tion for belowground allocation of carbon by vegetation that reconciles seemingly contradictory exper
278 he land available for compensation (existing vegetation to protect or cleared land to restore), and e
279 en and quantified the contribution of canopy vegetation to soil CO(2) fluxes and belowground producti
280 y in body size and regularly forage in dense vegetation, to investigate whether flying insects consid
282 n the Baltic region that broadly differed in vegetation type and nutritional traits, such as mycorrhi
283 ater level (GWL), as well as modification of vegetation type, both of which potentially influence CH(
284 vegetation depends on many factors including vegetation type, size, water content, location, and loca
285 ed to soils, topography, climate, land cover/vegetation type, successional dynamics, time since fire,
286 (mean 5 y, range 1 to 23 y after mortality) vegetation-type conversion in multiple biomes across the
287 nthesis, and its variation across and within vegetation types is poorly understood, which hinders our
288 vulnerability across the distributions of 96 vegetation types of the ecologically diverse western US,
289 the drought response behaviour of five broad vegetation types, based on a common garden dry-down expe
290 orage of SOC in estuarine wetlands with four vegetation types, including single Phragmites australis
291 e sensitivity exhibits clear patterns across vegetation types, multivariate climate change data revea
292 SOC decomposition or accumulation among four vegetation types, possibly due to differences in litter
293 ew 24 tree species occurring in five African vegetation types, varying from dry savanna to moist fore
295 s the ratio of carbon uptake to water use by vegetation, water-use efficiency (WUE) is a key ecosyste
296 wlands, where broadleaf species dominate the vegetation, we find consistent decreases in tree longevi
297 xpected climate change effects on Australian vegetation, we need to assess the vulnerability of Austr
298 of sediment released from behind incinerated vegetation, which can fuel catastrophic debris flows.
300 unity physiological functioning across three vegetation zones: grass, transitional, and shrub in a co