Saved in:
Bibliographic Details
Main Authors: Bernard, Jürgen, Wilhelm, Nils, Scherer, Maximilian, May, Thorsten, Schreck, Tobias
Format: Dataset Open Access
Language:en
Published: PANGAEA 2012
Subjects:
Online Access:https://doi.org/10.1594/PANGAEA.783598
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1867168108961071104
author Bernard, Jürgen
Wilhelm, Nils
Scherer, Maximilian
May, Thorsten
Schreck, Tobias
author_facet Bernard, Jürgen
Wilhelm, Nils
Scherer, Maximilian
May, Thorsten
Schreck, Tobias
collection Datos científicos de ciencias marinas y ambientales
contents The analysis of time-dependent data is an important problem in many application domains, and interactive visualization of time-series data can help in understanding patterns in large time series data. Many effective approaches already exist for visual analysis of univariate time series supporting tasks such as assessment of data quality, detection of outliers, or identification of periodically or frequently occurring patterns. However, much fewer approaches exist which support multivariate time series. The existence of multiple values per time stamp makes the analysis task per se harder, and existing visualization techniques often do not scale well. We introduce an approach for visual analysis of large multivariate time-dependent data, based on the idea of projecting multivariate measurements to a 2D display, visualizing the time dimension by trajectories. We use visual data aggregation metaphors based on grouping of similar data elements to scale with multivariate time series. Aggregation procedures can either be based on statistical properties of the data or on data clustering routines. Appropriately defined user controls allow to navigate and explore the data and interactively steer the parameters of the data aggregation to enhance data analysis. We present an implementation of our approach and apply it on a comprehensive data set from the field of earth bservation, demonstrating the applicability and usefulness of our approach.
format Dataset Open Access
id pangaea_https___doi_org_10_1594_PANGAEA_783598
institution PANGAEA
language en
publishDate 2012
publisher PANGAEA
record_format pangaea
spellingShingle Reference list of 120 datasets from time series station Payerne used for exploratory search
Bernard, Jürgen
Wilhelm, Nils
Scherer, Maximilian
May, Thorsten
Schreck, Tobias
Monitoring station; MONS; PAY; Payerne; Switzerland
The analysis of time-dependent data is an important problem in many application domains, and interactive visualization of time-series data can help in understanding patterns in large time series data. Many effective approaches already exist for visual analysis of univariate time series supporting tasks such as assessment of data quality, detection of outliers, or identification of periodically or frequently occurring patterns. However, much fewer approaches exist which support multivariate time series. The existence of multiple values per time stamp makes the analysis task per se harder, and existing visualization techniques often do not scale well. We introduce an approach for visual analysis of large multivariate time-dependent data, based on the idea of projecting multivariate measurements to a 2D display, visualizing the time dimension by trajectories. We use visual data aggregation metaphors based on grouping of similar data elements to scale with multivariate time series. Aggregation procedures can either be based on statistical properties of the data or on data clustering routines. Appropriately defined user controls allow to navigate and explore the data and interactively steer the parameters of the data aggregation to enhance data analysis. We present an implementation of our approach and apply it on a comprehensive data set from the field of earth bservation, demonstrating the applicability and usefulness of our approach.
title Reference list of 120 datasets from time series station Payerne used for exploratory search
topic Monitoring station; MONS; PAY; Payerne; Switzerland
url https://doi.org/10.1594/PANGAEA.783598