Development of a Total Environment Data Science Approach in a Big Data Scale

We use the Big Data paradigm, as a driving mechanism of an integrated research framework. As a case study, we consider analysing various ecological systems and their connectivity in the framework. An unknown coexistence among different species and lack of knowledge on their sustainability motivate u...

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Main Authors: Nimmagadda, Shastri, Reiners, Torsten, Rudra, Amit
Format: Conference Paper
Published: 2017
Online Access:http://hdl.handle.net/20.500.11937/57863
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author Nimmagadda, Shastri
Reiners, Torsten
Rudra, Amit
author_facet Nimmagadda, Shastri
Reiners, Torsten
Rudra, Amit
author_sort Nimmagadda, Shastri
building Curtin Institutional Repository
collection Online Access
description We use the Big Data paradigm, as a driving mechanism of an integrated research framework. As a case study, we consider analysing various ecological systems and their connectivity in the framework. An unknown coexistence among different species and lack of knowledge on their sustainability motivate us for undertaking the current research. For describing the recycling systems in nature, an articulated design science research (DSR) framework is necessary for which we have constructed data models for composite lithosphere-atmosphere-biosphere-hydrosphere ecosystem (LABHE). The unstructured big-size environmental data sources and their anomalies existing in nature are taken advantage of, to describe various constructs, compute models and validate them by DSR guidelines. For this purpose, the domain ontology artefacts are drawn and integrated into a warehouse approach to compute an environmental metadata and interpret it in different knowledge domains. The data models and the proposed integrated framework facilitate the environment explorers for planning and management of environmental resources worldwide. The Big Data associated LABHE bring out new knowledge and its interpretation in a variety of environmental data map and plot views. The constructs, models and methodologies used in the current domain application are research deliverables for the total environment researchers and explorers.
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spelling curtin-20.500.11937-578632018-01-10T08:10:41Z Development of a Total Environment Data Science Approach in a Big Data Scale Nimmagadda, Shastri Reiners, Torsten Rudra, Amit We use the Big Data paradigm, as a driving mechanism of an integrated research framework. As a case study, we consider analysing various ecological systems and their connectivity in the framework. An unknown coexistence among different species and lack of knowledge on their sustainability motivate us for undertaking the current research. For describing the recycling systems in nature, an articulated design science research (DSR) framework is necessary for which we have constructed data models for composite lithosphere-atmosphere-biosphere-hydrosphere ecosystem (LABHE). The unstructured big-size environmental data sources and their anomalies existing in nature are taken advantage of, to describe various constructs, compute models and validate them by DSR guidelines. For this purpose, the domain ontology artefacts are drawn and integrated into a warehouse approach to compute an environmental metadata and interpret it in different knowledge domains. The data models and the proposed integrated framework facilitate the environment explorers for planning and management of environmental resources worldwide. The Big Data associated LABHE bring out new knowledge and its interpretation in a variety of environmental data map and plot views. The constructs, models and methodologies used in the current domain application are research deliverables for the total environment researchers and explorers. 2017 Conference Paper http://hdl.handle.net/20.500.11937/57863 10.1016/j.procs.2017.08.237 http://creativecommons.org/licenses/by-nc-nd/4.0/ fulltext
spellingShingle Nimmagadda, Shastri
Reiners, Torsten
Rudra, Amit
Development of a Total Environment Data Science Approach in a Big Data Scale
title Development of a Total Environment Data Science Approach in a Big Data Scale
title_full Development of a Total Environment Data Science Approach in a Big Data Scale
title_fullStr Development of a Total Environment Data Science Approach in a Big Data Scale
title_full_unstemmed Development of a Total Environment Data Science Approach in a Big Data Scale
title_short Development of a Total Environment Data Science Approach in a Big Data Scale
title_sort development of a total environment data science approach in a big data scale
url http://hdl.handle.net/20.500.11937/57863