ISBN-13: 9783639155570 / Angielski / Miękka / 2009 / 120 str.
Exploring large data sets with the aim of extracting useful information for decision making can be challenging. If the data were collected at different locations and times, one important question is how to obtain reliable estimates for missing data in space or time. For example, measurements such as ozone concentrations are usually collected only by a limited number of monitoring stations and at different time instances. In order to estimate the values at unmeasured locations or time instances, interpolation in continuous space and time is needed. New and old interpolation methods for exploring spatiotemporal data are discussed in this book. The selected methods are useful for Geographic Information Systems (GIS). This book also includes comparisons of selected methods for several GIS case studies, as well as some visualization and query examples.
Exploring large data sets with the aim of extractinguseful information for decision making can be challenging. If the datawere collected at different locations and times, one important questionis how to obtain reliable estimates for missing data in space or time.For example, measurements such as ozone concentrations are usuallycollected only by a limited number of monitoring stations and atdifferent time instances. In order to estimate the values atunmeasured locations or time instances, interpolation in continuous space andtime is needed. New and old interpolation methods for exploringspatiotemporal data are discussed in this book. The selected methods areuseful for Geographic Information Systems (GIS). This book alsoincludes comparisons of selected methods for several GIS casestudies, as well as some visualization and query examples.