Missing data is a ubiquitous problem that plagues many
hydrometeorological datasets. Objective and robust spatial and
temporal imputation methods are needed to estimate missing data and
create error-free, gap-free, and chronologically continuous data. This
book is a comprehensive guide and reference for basic and advanced
interpolation and data-driven methods for imputing missing
hydrometeorological data. The book provides detailed insights into
different imputation methods, such as spatial and temporal
interpolation, universal function approximation, and data
mining-assisted imputation methods. It also introduces innovative
spatial deterministic and stochastic methods focusing on the objective
selection of control points and optimal spatial interpolation. The
book also extensively covers emerging machine learning techniques that
can be used in spatial and temporal interpolation schemes and error
and performance measures for assessing interpolation methods and
validating imputed data. The book demonstrates practical applications
of these methods to real-world hydrometeorological data. It will cater
to the needs of a broad spectrum of audiences, from graduate students
and researchers in climatology and hydrological and earth sciences to
water engineering professionals from governmental agencies and private
entities involved in the processing and use of hydrometeorological and
climatological data.
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Produktdetaljer
ISBN
9783031609466
Publisert
2024
Utgiver
Springer Nature
Språk
Product language
Engelsk
Format
Product format
Digital bok
Forfatter