当前位置:在线查询网 > 图书大全 > Working with Dynamic Crop Models

Working with Dynamic Crop Models_图书大全


请输入要查询的图书:

可以输入图书全称,关键词或ISBN号

Working with Dynamic Crop Models

副标题: Evaluation, Analysis, Parameterization, and Applications

ISBN: 9780444521354

出版社: Elsevier Science

出版年: 2006-08-24

页数: 462

定价: USD 83.95

装帧: Hardcover

内容简介


Many different mathematical and statistical methods are essential in crop modeling. They are necessary in the development, analysis and application of crop models. Up to now, however, there has been no single source where crop modelers could learn about these methods. Furthermore, these methods are often described in other contexts and their application to crop modeling is not always straightforward.

This book aims at making a large range of relevant mathematical and statistical methods accessible to crop modelers. Each methodology chapter starts from basic principles and simple applications and builds gradually to state-of-the-art methods. Crop models are used as examples, and practical advice on applying the methods to crop models is given.

Working with Dynamic Crop Models is an essential learning and reference resource for students and researchers who want to understand and apply rigorous methods to crop models. This book will also be of value for other fields which use dynamic models of complex systems.

Topics covered include:

* Parameter estimation- including Bayesian methods

* Model evaluation- including prediction quality and decision quality

* Sensitivity analysis- including global analysis and interactions

* Data assimilation- the Kalman filter and extensions

* Management optimization- including stochastic optimization

* Models for multiple fields- emphasizing how to obtain input values

* Crop models and crop breeding - recent advances in using crop

models

Topics covered include:

* Parameter estimation- including Bayesian methods

* Model evaluation- including prediction quality and decision quality

* Sensitivity analysis- including global analysis and interactions

* Data assimilation- the Kalman filter and extensions

* Management optimization- including stochastic optimization

* Models for multiple fields- emphasizing how to obtain input values

* Crop models and crop breeding - recent advances in using crop models