Soil carbon storage : modulators, mechanisms and modeling
Language: English Publication details: Oxford Academic Press 2018Description: xviii, 321pISBN:- 9780128127667
- 631.41 So34
Item type | Current library | Collection | Call number | Status | Date due | Barcode | Item holds | |
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PK Kelkar Library, IIT Kanpur | General Stacks | 631.41 So34 (Browse shelf(Opens below)) | Available | A184276 |
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631.41 B562m METHODS OF SOIL ANALYSIS | 631.41 B562m METHODS OF SOIL ANALYSIS | 631.41 F989 The future of soil carbon | 631.41 So34 Soil carbon storage | 631.41 So34c2 Soil sampling and methods of analysis | 631.41 Sp67c2 The chemistry of soils | 631.41 Sp67s SURFACE CHEMISTRY OF SOILS |
Soil Carbon Storage: Modulators, Mechanisms and Modeling takes a novel approach to the issue of soil carbon storage by considering soil C sequestration as a function of the interaction between biotic (e.g. microbes and plants) and abiotic (climate, soil types, management practices) modulators as a key driver of soil C. These modulators are central to C balance through their processing of C from both plant inputs and native soil organic matter. This book considers this concept in the light of state-of-the-art methodologies that elucidate these interactions and increase our understanding of a vitally important, but poorly characterized component of the global C cycle.
The book provides soil scientists with a comprehensive, mechanistic, quantitative and predictive understanding of soil carbon storage. It presents a new framework that can be included in predictive models and management practices for better prediction and enhanced C storage in soils.
Identifies management practices to enhance storage of soil C under different agro-ecosystems, soil types and climatic conditions
Provides novel conceptual frameworks of biotic (especially microbial) and abiotic data to improve prediction of simulation model at plot to global scale
Advances the conceptual framework needed to support robust predictive models and sustainable land management practices
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