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  • 1
    Monograph available for loan
    Monograph available for loan
    Berkeley, Calif. [u.a.] : Univ. of California Press
    Call number: IASS 16.90621
    Type of Medium: Monograph available for loan
    Pages: XIII, 466 S.
    Edition: [Reprint]
    ISBN: 9780520214453 (pbk) , 0520214455
    Series Statement: Medicine and society 7
    Language: English
    Note: Zugl.: Berkeley, Calif., Univ., Diss.
    Branch Library: RIFS Library
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  • 2
    Monograph available for loan
    Monograph available for loan
    Princeton [u.a.] : Princeton Univ. Press
    Call number: PIK E 703-12-0263
    Description / Table of Contents: Contents: Prelude to Chapter 1: The Generativist Manifesto ; Chapter 1: Agent-Based Computational Models and Generative Social Science ; Prelude to Chapter 2: Confession of a Wandering Bark ; Chapter 2: Remarks on the Foundations of Agent-Based Generative Social Science ; Prelude to Chapter 3: Equilibrium, Explanation, and Gauss's Tombstone ; Chapter 3: Non-Explanatory Equilibria: An Extremely Simple Game with (Mostly) Unattainable Fixed Points ; Prelude to Chapters 4-6: Generating Civilizations: The 1050 Project and the Artificial Anasazi Model ; Chapter 4: Understanding Anasazi Culture Change through Agent-Based Modeling ; Chapter 5: Population Growth and Collapse in a Multiagent Model of the Kayenta Anasazi in Long House Valley ; Chapter 6: The Evolution of Social Behavior in the Prehistoric American Southwest ; Prelude to Chapter 7: Generating Patterns in the Timing of Retirement ; Chapter 7: Coordination in Transient Social Networks: An Agent-Based Computational Model of the Timing of Retirement ; Prelude to Chapter 8: Generating Classes without Conquest ; Chapter 8: The Emergence of Classes in a Multi-Agent Bargaining Model ; Prelude to Chapter 9: Generating Zones of Cooperation in the Prisoner's Dilemma Game ; Chapter 9: Zones of Cooperation in Demographic Prisoner's Dilemma ; Prelude to Chapter 10: Generating Thoughtless Conformity to Norms ; Chapter 10: Learning to be Thoughtless: Social Norms and Individual Computation ; Prelude to Chapter 11: Generating Patterns of Spontaneous Civil Violence ; Chapter 11: Modeling Civil Violence: An Agent-Based Computational Approach ; Prelude to Chapter 12: Generating Epidemic Dynamics ; Chapter 12: Toward a Containment Strategy for Smallpox Bioterror: An Individual-Based Computational Approach ; Prelude to Chapter 13: Generating Optimal Organizations ; Chapter 13: Growing Adaptive Organizations: An Agent-Based Computational Approach
    Type of Medium: Monograph available for loan
    Pages: XX, 356 S. : Ill., graph. Darst. + 1 CD-ROM
    ISBN: 0691125473 , 978-0-691-12547-3
    Series Statement: Princeton studies in complexity
    Location: A 18 - must be ordered
    Branch Library: PIK Library
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  • 3
    Call number: AWI Bio-22-94840
    Description / Table of Contents: Vegetation change at high latitudes is one of the central issues nowadays with respect to ongoing climate changes and triggered potential feedback. At high latitude ecosystems, the expected changes include boreal treeline advance, compositional, phenological, physiological (plants), biomass (phytomass) and productivity changes. However, the rate and the extent of the changes under climate change are yet poorly understood and projections are necessary for effective adaptive strategies and forehanded minimisation of the possible negative feedbacks. The vegetation itself and environmental conditions, which are playing a great role in its development and distribution are diverse throughout the Subarctic to the Arctic. Among the least investigated areas is central Chukotka in North-Eastern Siberia, Russia. Chukotka has mountainous terrain and a wide variety of vegetation types on the gradient from treeless tundra to northern taiga forests. The treeline there in contrast to subarctic North America and north-western and central Siberia is represented by a deciduous conifer, Larix cajanderi Mayr. The vegetation varies from prostrate lichen Dryas octopetala L. tundra to open graminoid (hummock and non-hummock) tundra to tall Pinus pumila (Pall.) Regel shrublands to sparse and dense larch forests. Hence, this thesis presents investigations on recent compositional and above-ground biomass (AGB) changes, as well as potential future changes in AGB in central Chukotka. The aim is to assess how tundra-taiga vegetation develops under changing climate conditions particularly in Fareast Russia, central Chukotka. Therefore, three main research questions were considered: 1) What changes in vegetation composition have recently occurred in central Chukotka? 2) How have the above-ground biomass AGB rates and distribution changed in central Chukotka? 3) What are the spatial dynamics and rates of tree AGB change in the upcoming millennia in the northern tundra-taiga of central Chukotka? Remote sensing provides information on the spatial and temporal variability of vegetation. I used Landsat satellite data together with field data (foliage projective cover and AGB) from two expeditions in 2016 and 2018 to Chukotka to upscale vegetation types and AGB for the study area. More specifically, I used Landsat spectral indices (Normalised Difference Vegetation Index (NDVI), Normalised Difference Water Index (NDWI) and Normalised Difference Snow Index (NDSI)) and constrained ordination (Redundancy analysis, RDA) for further k-means-based land-cover classification and general additive model (GAM)-based AGB maps for 2000/2001/2002 and 2016/2017. I also used Tandem-X DEM data for a topographical correction of the Landsat satellite data and to derive slope, aspect, and Topographical Wetness Index (TWI) data for forecasting AGB. Firstly, in 2016, taxa-specific projective cover data were collected during a Russian-German expedition. I processed the field data and coupled them with Landsat spectral Indices in the RDA model that was used for k-means classification. I could establish four meaningful land-cover classes: (1) larch closed-canopy forest, (2) forest tundra and shrub tundra, (3) graminoid tundra and (4) prostrate herb tundra and barren areas, and accordingly, I produced the land cover maps for 2000/2001/2002 and 2016/20017. Changes in land-cover classes between the beginning of the century (2000/2001/2002) and the present time (2016/2017) were estimated and interpreted as recent compositional changes in central Chukotka. The transition from graminoid tundra to forest tundra and shrub tundra was interpreted as shrubification and amounts to a 20% area increase in the tundra-taiga zone and 40% area increase in the northern taiga. Major contributors of shrubification are alder, dwarf birch and some species of the heather family. Land-cover change from the forest tundra and shrub tundra class to the larch closed-canopy forest class is interpreted as tree infilling and is notable in the northern taiga. We find almost no land-cover changes in the present treeless tundra. Secondly, total AGB state and change were investigated for the same areas. In addition to the total vegetation AGB, I provided estimations for the different taxa present at the field sites. As an outcome, AGB in the study region of central Chukotka ranged from 0 kg m-2 at barren areas to 16 kg m-2 in closed-canopy forests with the larch trees contributing the highest. A comparison of changes in AGB within the investigated period from 2000 to 2016 shows that the greatest changes (up to 1.25 kg m 2 yr 1) occurred in the northern taiga and in areas where land cover changed to larch closed-canopy forest. Our estimations indicate a general increase in total AGB throughout the investigated tundra-taiga and northern taiga, whereas the tundra showed no evidence of change in AGB within the 15 years from 2002 to 2017. In the third manuscript, potential future AGB changes were estimated based on the results of simulations of the individual-based spatially explicit vegetation model LAVESI using different climate scenarios, depending on Representative Concentration Pathways (RCPs) RCP 2.6, RCP 4.5 and RCP 8.5 with or without cooling after 2300 CE. LAVESI-based AGB was simulated for the current state until 3000 CE for the northern tundra-taiga study area for larch species because we expect the most notable changes to occur will be associated with forest expansion in the treeline ecotone. The spatial distribution and current state of tree AGB was validated against AGB field data, AGB extracted from Landsat satellite data and a high spatial resolution image with distinctive trees visible. The simulation results are indicating differences in tree AGB dynamics plot wise, depending on the distance to the current treeline. The simulated tree AGB dynamics are in concordance with fundamental ecological (emigrational and successional) processes: tree stand formation in simulated results starts with seed dispersion, tree stand establishment, tree stand densification and episodic thinning. Our results suggest mostly densification of existing tree stands in the study region within the current century in the study region and a lagged forest expansion (up to 39% of total area in the RCP 8.5) under all considered climate scenarios without cooling in different local areas depending on the closeness to the current treeline. In scenarios with cooling air temperature after 2300 CE, forests stopped expanding at 2300 CE (up to 10%, RCP 8.5) and then gradually retreated to their pre-21st century position. The average tree AGB rates of increase are the strongest in the first 300 years of the 21st century. The rates depend on the RCP scenario, where the highest are as expected under RCP 8.5. Overall, this interdisciplinary thesis shows a successful integration of field data, satellite data and modelling for tracking recent and predicting future vegetation changes in mountainous subarctic regions. The obtained results are unique for the focus area in central Chukotka and overall, for mountainous high latitude ecosystems.
    Type of Medium: Dissertations
    Pages: 149 Seiten , Illustrationen, Diagramme
    Language: English
    Note: Dissertation, Potsdam, Universität Potsdam, 2022 , Contents Abstract Zusammenfassung Contents Abbreviations Motivation 1 Introduction 1.1 Scientific background 1.2 Study region 1.3 Aims and objectives 2 Materials and methods 3.1 Section 4 - Strong shrub expansion in tundra-taiga, tree infilling in taiga and stable tundra in central Chukotka (north-eastern Siberia) between 2000 and 2017 3.2 Section 5 - Recent above-ground biomass changes in central Chukotka (NE Siberia) combining field-sampling and remote sensing 3.3 Section 6 - Future spatially explicit tree above-ground biomass trajectories revealed for a mountainous treeline ecotone using the individual-based model LAVESI 4 Strong shrub expansion in tundra-taiga, tree infilling in taiga and stable tundra in central Chukotka (north-eastern Siberia) between 2000 and 2017 Abstract 1 Introduction 2 Materials and methods 2.1 Field data collection and processing 2.2 Landsat data, pre-processing and spectral indices processing 2.3 Redundancy analysis (RDA) and classification approaches 3 Results 3.1 General characteristics of the vegetation field data 3.2 Relating field data to Landsat spectral indices in the RDA model 3.3 Land-cover classification 3.4 Land-cover change between 2000 and 2017 4 Discussion 4.1 Dataset limitations and optimisation 4.2 Vegetation changes from 2000/2001/2002 to 2016/2017 Conclusions Acknowledgements Data availability statement References Appendix A. Detailed description of Landsat acquisitions Appendix B. MODIS NDVI time series from 2000 to 2018 Appendix C. Landsat Indices values for each analysed vegetation site Appendix D. Fuzzy c-means classification for interpretation of uncertainties for land-cover mapping Appendix E. Validation of land-cover maps Appendix F. K-means classification results Appendix G. Heterogeneity of natural landscapes and mixed pixels of satellite data Appendix H. Distribution of land-cover classes and their changes by study area 5 Recent above-ground biomass changes in central Chukotka (NE Siberia) combining field-sampling and remote sensing Abstract 1 Introduction 2 Materials and methods 2.1 Study region and field surveys 2.2 Above-ground biomass upscaling and change derivation 3 Results 3.1 Vegetation composition and above-ground biomass 3.2 Upscaling above-ground biomass using GAM 3.3 Change of above-ground biomass between 2000 and 2017 in the four focus areas 4 Discussion 4.1 Recent state of above-ground biomass at the field sites 4.2 Recent state of above-ground biomass upscaled for central Chukotka 4.3 Change in above-ground biomass within the investigated 15–16 years in central Chukotka 5 Conclusions Data availability statement Author contributions Competing interests Acknowledgements References Appendix A. Sampling and above-ground biomass (AGB) calculation protocol for field data 6 Future spatially explicit tree above-ground biomass trajectories revealed for a mountainous treeline ecotone using the individual-based model LAVESI Abstract 1 Introduction 2 Materials and methods 2.1 Study region 2.2 LAVESI model setup, parameterisation, and validation 2.2.4 LAVESI simulation setup for this study 2.2.5 Validation of the model’s performance 3 Results 3.1 Dynamics and spatial distribution changes of tree above-ground-biomass 3.2 Spatial and temporal validation of the contemporary larch AGB 4 Discussion 4.1 Future dynamics of tree AGB at a plot level 4.2 What are the future dynamics of tree AGB at the landscape level? 5 Conclusions Data availability Acknowledgements References Appendix B. Permutation tests for tree presence versus topographical parameters Appendix C. Landsat-based, field, and simulated estimations of larch above-ground biomass (AGB). 7 Synthesis 7.1 What changes in vegetation composition have happened from 2000 to 2017 in central Chukotka? 7.2 How have the above-ground biomass (AGB) distribution and rates changed from 2000 to 2017 in central Chukotka? 7.3 What are the spatial dynamics and rates of tree AGB change in the upcoming centuries in the northern tundra-taiga from 2020 to 3000 CE on the plot level and landscape level? References Acknowledgements
    Location: AWI Reading room
    Branch Library: AWI Library
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  • 4
    Publication Date: 2024-04-22
    Description: Significant progress in permafrost carbon science made over the past decades include the identification of vast permafrost carbon stocks, the development of new pan-Arctic permafrost maps, an increase in terrestrial measurement sites for CO2 and methane fluxes, and important factors affecting carbon cycling, including vegetation changes, periods of soil freezing and thawing, wildfire, and other disturbance events. Process-based modeling studies now include key elements of permafrost carbon cycling and advances in statistical modeling and inverse modeling enhance understanding of permafrost region C budgets. By combining existing data syntheses and model outputs, the permafrost region is likely a wetland methane source and small terrestrial ecosystem CO2 sink with lower net CO2 uptake toward higher latitudes, excluding wildfire emissions. For 2002–2014, the strongest CO2 sink was located in western Canada (median: −52 g C m−2 y−1) and smallest sinks in Alaska, Canadian tundra, and Siberian tundra (medians: −5 to −9 g C m−2 y−1). Eurasian regions had the largest median wetland methane fluxes (16–18 g CH4 m−2 y−1). Quantifying the regional scale carbon balance remains challenging because of high spatial and temporal variability and relatively low density of observations. More accurate permafrost region carbon fluxes require: (a) the development of better maps characterizing wetlands and dynamics of vegetation and disturbances, including abrupt permafrost thaw; (b) the establishment of new year-round CO2 and methane flux sites in underrepresented areas; and (c) improved models that better represent important permafrost carbon cycle dynamics, including non-growing season emissions and disturbance effects.
    Language: English
    Type: info:eu-repo/semantics/article
    Format: application/pdf
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  • 5
    Publication Date: 2024-01-24
    Keywords: Abbreviation; Comment; Counts; Coverage; International Polar Year 2007-2008; IPY-4; KH; Kharasavey2a; Method comment; MULT; Multiple investigations; Sample type; Species; Yamal Peninsula, northwestern Siberia
    Type: Dataset
    Format: text/tab-separated-values, 221 data points
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  • 6
    Publication Date: 2024-01-24
    Keywords: Abbreviation; Comment; Counts; Coverage; International Polar Year 2007-2008; IPY-4; KH; Kharasavey2b; Method comment; MULT; Multiple investigations; Sample type; Species; Yamal Peninsula, northwestern Siberia
    Type: Dataset
    Format: text/tab-separated-values, 212 data points
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  • 7
    Publication Date: 2024-01-24
    Keywords: DATE/TIME; International Polar Year 2007-2008; IPY-4; MULT; Multiple investigations; Nadym1; ND; Species; Tree, basal area; Tree/shrub biomass, aboveground; Tree height; Trees, diameter at breast height; Yamal Peninsula, northwestern Siberia
    Type: Dataset
    Format: text/tab-separated-values, 1000 data points
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  • 8
    Publication Date: 2024-01-24
    Keywords: Characteristic; DATE/TIME; Event label; Geology, comment; Herbs height; International Polar Year 2007-2008; IPY-4; KH; Kharasavey1; Kharasavey2a; Kharasavey2b; LA; Laborovaya1; Laborovaya2; Landform; LATITUDE; Layer thickness; Location; LONGITUDE; Moss height; MULT; Multiple investigations; Nadym1; Nadym2; ND; Plant community; Sample ID; Shrub height; Site; Thaw depth of active layer; Topography; Tree height; VaskinyDachi1; VaskinyDachi2; VaskinyDachi3; VD; Yamal Peninsula, northwestern Siberia
    Type: Dataset
    Format: text/tab-separated-values, 1200 data points
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  • 9
    Publication Date: 2024-01-24
    Keywords: -; Carbon, total; Cation exchange capacity; DATE/TIME; Density, dry bulk; Event label; International Polar Year 2007-2008; IPY-4; KH; Kharasavey1; Kharasavey2a; Kharasavey2b; LA; Laborovaya1; Laborovaya2; LATITUDE; LONGITUDE; MULT; Multiple investigations; Nadym1; Nadym2; ND; Nitrogen, total; pH, soil; Sample ID; Sand; Silt; Size fraction 〈 0.002 mm, clay; Size fraction 〉 2 mm, gravel; Soil moisture; Soil properties; VaskinyDachi1; VaskinyDachi2; VaskinyDachi3; VD; Yamal Peninsula, northwestern Siberia
    Type: Dataset
    Format: text/tab-separated-values, 798 data points
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  • 10
    Publication Date: 2024-01-24
    Keywords: Alectoria nigricans; Alectoria ochroleuca; Alopecurus alpinus; Anastrophyllum minutum; Andromeda polifolia; Aplodon wormskioldii; Arctagrostis latifolia; Arctocetraria andrejevii; Arctous alpina; Asahinea chrysantha; Aulacomnium palustre; Aulacomnium turgidum; Baeomyces rufus; Barbilophozia binsteadii; Barbilophozia kunzeana; Betula nana; Betula pubescens; Bistorta vivipara; Blepharostoma trichophyllum; Bryocaulon divergens; Bryoria nitidula; Buckner point-intercept sampling device; Calamagrostis holmii; Calliergon stramineum; Calypogeia sphagnicola; Cardamine bellidifolia; Carex aquatilis; Carex bigelowii; Carex chordorrhiza; Carex globularis; Carex limosa; Carex rotundata; Cephaloziella sp.; Ceratodon purpureus; Cetraria delisei; Cetraria islandica; Cetraria laevigata; Cetraria nigricans; Cetrariella fastigiata; Chamaedaphne calyculata; Cladonia amaurocraea; Cladonia arbuscula; Cladonia bellidiflora; Cladonia cenotea; Cladonia cf. decortiata; Cladonia cf. grayi; Cladonia cf. scabriuscula; Cladonia chlorophaea; Cladonia coccifera; Cladonia cornuta ssp. cornuta; Cladonia crispata; Cladonia cyanipes; Cladonia deformis; Cladonia furcata; Cladonia gracilis; Cladonia macrophylla; Cladonia pleurota; Cladonia pyxidata; Cladonia rangiferina; Cladonia squamosa; Cladonia stellaris; Cladonia stricta; Cladonia stygia; Cladonia subfurcata; Cladonia sulphurina; Cladonia uncialis; Conostomum tetragonum; Cynodontium strumiferum; Dactylina arctica; DATE/TIME; Deschampsia sukatschewii; Diapensia lapponica; Dicranella subulata; Dicranum acutifolium; Dicranum elongatum; Dicranum flexicaule; Dicranum fuscescens; Dicranum groenlandicum; Dicranum laevidens; Dicranum majus; Dicranum spadiceum; Diphasiastrum alpinum; Ditrichum flexicaule; Draba sp.; Drosera rotundlfolia; Dryas octopetala; Empetrum nigrum; Eriophorum angustifolium; Eriophorum russeolum; Eriophorum scheuchzeri; Eriophorum vaginatum; Event label; Festuca cf. ovina; Flavocetraria cucullata; Flavocetraria nivalis; Gymnocolea inflata; Gymnomitrion corallioides; Hierochloe alpina; Huperzia selago; Hylocomium splendens; Hypnum holmenii; Hypnum subimponens; Hypogymnia physodes; Icmadophila ericetorum; Indeterminata; International Polar Year 2007-2008; IPY-4; Japewia tornoensis; Juniperus communis; KH; Kharasavey1; Kharasavey2a; Kharasavey2b; Kiaeria cf. blyttii; LA; Laborovaya1; Laborovaya2; Larix sibirica; LATITUDE; Lecidea limosa; Ledum palustre; Lichenomphalia hudsoniana; Lobaria linita; LONGITUDE; Lophozia ventricosa; Luzula cf. wahlenbergii; Luzula confusa; Luzula nivalis; Minuartia cf. arctica; MULT; Multiple investigations; Mycoblastus sp.; Mylia anomala; Nadym1; Nadym2; ND; Nephroma expallidum; Ochrolechia androgyna; Ochrolechia frigida; Ochrolechia inaequatula; Oncophorus wahlenbergii; Oxycoccus microcarpus; Pachypleurum alpinum; Parmelia omphalodes ssp. glacialis; Parrya nudicaulis; Pedicularis cf. lapponica; Pedicularis hirsuta; Pedicularis labradorica; Peltigera aphthosa; Peltigera canina; Peltigera cf. frippii; Peltigera cf. neckeri; Peltigera kristinssonii; Peltigera leucophlebia; Peltigera malacea; Peltigera polydactylon group; Peltigera scabrosa; Peltigera sp.; Pertusaria dactylina; Pertusaria geminipara; Pertusaria panyrga; Petasites frigidus; Pinus sibirica; Pinus sylvestris; Plagiomnium ellipticum; Plagiothecium berggrenianum; Pleurozium schreberi; Poa arctica; Pogonatum dentatum; Pogonatum urnigerum; Pohlia crudoides; Pohlia nutans; Polemonium acutiflorum; Polytrichastrum alpinum; Polytrichastrum longisetum; Polytrichum commune; Polytrichum hyperboreum; Polytrichum jensenii; Polytrichum piliferum; Polytrichum strictum; Protopannaria pezizoides; Protothelenella leucothelia; Psoroma hypnorum; Ptilidium ciliare; Ptilidium crista-cristensis; Racomitrium lanuginosum; Rhexophiale rhexoblephara; Rinodina turfacea; Rubus chamaemorus; Rumex arcticus; Salix cf. hastata; Salix cf. myrtilloides; Salix lanata; Salix nummularia; Salix phylicifolia; Salix polaris; Salix reptans; Sample ID; Sanionia uncinata; Saxifraga cernua; Saxifraga foliolosa; Sphaerophorus globosus; Sphagnum balticum; Sphagnum fuscum; Sphagnum girgensohnii; Sphagnum lenense; Sphagnum majus; Sphagnum rubellum; Sphagnum squarrosum; Sphagnum teres; Sphagnum warnstorfii; Sphenolobus minutus; Splachnum sphaericum; Stellaria longipes; Stereocaulon alpinum; Stereocaulon paschale; Stereodon holmenii; Straminergon stramineum; Tephroseris atropurpurea; Tetralophozia setiformis; Tetraplodon mnioides; Thamnolia vermicularis; Tomentypnum nitens; Trisetum spicatum; Tritomaria quinquedentata; Vaccinium myrtillus; Vaccinium uliginosum; Vaccinium vitis-idaea; Valeriana capitata; Varicellaria rhodocarpa; VaskinyDachi1; VaskinyDachi2; VaskinyDachi3; VD; Warnstorfia pseudostraminea; Yamal Peninsula, northwestern Siberia
    Type: Dataset
    Format: text/tab-separated-values, 8397 data points
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