Landscape pattern analysis for assessing ecosystem condition by Glen D. Johnson and Ganapati P. Patil.
Seri kaydı: Environmental and ecological statistics ; v. 1.Yayıncı: New York : Springer, c2006Tanım: xvi, 130 pages : illustrations (some color), maps ; 24 cmİçerik türü:- text
- unmediated
- volume
- 0387376844
- 9780387376844
- Landscape ecology -- Remote sensing
- Ecological assessment (Biology)
- Landscape assessment
- Landscape ecology -- Pennsylvania
- Ecological assessment (Biology) -- Pennsylvania
- Landscape assessment -- Pennsylvania
- Ecological integrity -- Pennsylvania
- Landscape protection
- Nature conservation
- Ecosystem management
- QH541.15.L35 J64 2006
İçindekiler:
-- Introduction -- Methods for quantitative characterization of landscape pattern -- Illustrations -- Classifying Pennsylvania watersheds on the basis of landscape characteristics -- Predictability of surface water pollution in Pennsylvania using watershed-based landscape measurements -- Predictability of bird communication-based ecological integrity using landscape variables -- Summary and future directions.
| Materyal türü | Ana kütüphane | Koleksiyon | Yer numarası | Durum | İade tarihi | Barkod | Materyal Ayırtmaları | |
|---|---|---|---|---|---|---|---|---|
Kitap
|
Mehmet Akif Ersoy Merkez Kütüphanesi Genel Koleksiyon | Non-fiction | QH541.15.L35 J64 2006 (Rafa gözat(Aşağıda açılır)) | Kullanılabilir | 036493 |
Toplam ayırtılanlar: 0
Includes bibliographical references (pages [115]-127) and index.
-- Introduction -- Methods for quantitative characterization of landscape pattern -- Illustrations -- Classifying Pennsylvania watersheds on the basis of landscape characteristics -- Predictability of surface water pollution in Pennsylvania using watershed-based landscape measurements -- Predictability of bird communication-based ecological integrity using landscape variables -- Summary and future directions.
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