Enriching Earth observation datasets through semantics for climate change applications: The EIFFEL ontology

Benjamin Molina, Carlos E. Palau, J. Calvo-Gallego
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Abstract

Background Earth Observation (EO) datasets have become vital for decision support applications, particularly from open satellite portals that provide extensive historical datasets. These datasets can be integrated with in-situ data to power artificial intelligence mechanisms for accurate forecasting and trend analysis. However, researchers and data scientists face challenges in finding appropriate EO datasets due to inconsistent metadata structures and varied keyword descriptions. This misalignment hinders the discoverability and usability of EO data. Methods To address this challenge, the EIFFEL ontology (EIFF-O) is proposed. EIFF-O introduces taxonomies and ontologies to provide (i) global classification of EO data and (ii) linkage between different datasets through common concepts. The taxonomies specified by the European Association of Remote Sensing Companies (EARSC) have been formalized and implemented in EIFF-O. Additionally, EIFF-O incorporates: 1. An Essential Climate Variable (ECV) ontology, defined by the Global Climate Observing System (GCOS), is embedded and tailored for Climate Change (CC) applications. 2. The Sustainable Development Goals (SDG) ontology is included to facilitate linking datasets to specific targets. 3. The ontology extends schema.org vocabularies and promotes the use of JavaScript Object Notation for Linked Data (JSON-LD) formats for semantic web integration. Results EIFF-O provides a unified framework that enhances the discoverability, usability, and application of EO datasets. The implementation of EIFF-O allows data providers and users to bridge the gap between varied metadata descriptions and structured classification, thereby facilitating better linkage and integration of EO datasets. Conclusions The EIFFEL ontology represents a significant advancement in the organization and application of EO datasets. By embedding ECV and SDG ontologies and leveraging semantic web technologies, EIFF-O not only streamlines the data discovery process but also supports diverse applications, particularly in Climate Change monitoring and Sustainable Development Goals achievement. The open-source nature of the ontology and its associated tools promotes rapid adoption among developers
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通过语义丰富地球观测数据集,促进气候变化应用:EIFFEL 本体论
背景地球观测(EO)数据集已成为决策支持应用的关键,特别是来自开放卫星门户网站的数据集,这些数据集提供了大量的历史数据。这些数据集可与现场数据集成,为人工智能机制提供动力,从而进行准确的预测和趋势分析。然而,由于元数据结构不一致和关键词描述各异,研究人员和数据科学家在寻找合适的地球观测数据集时面临挑战。这种不一致阻碍了地球观测数据的可发现性和可用性。方法 为应对这一挑战,提出了 EIFFEL 本体(EIFF-O)。EIFF-O 引入了分类法和本体,以提供 (i) 地球观测数据的全球分类和 (ii) 不同数据集之间通过共同概念的链接。欧洲遥感公司协会(EARSC)指定的分类标准已在 EIFF-O 中正式确定和实施。此外,EIFF-O 还包括1.1. 嵌入了全球气候观测系统(GCOS)定义的基本气候变量(ECV)本体,并专为气候变化(CC)应用而定制。2.包含可持续发展目标(SDG)本体,以便于将数据集与特定目标联系起来。3.本体扩展了schema.org词汇表,并提倡使用JavaScript关联数据对象标记(JSON-LD)格式进行语义网络整合。结果 EIFF-O 提供了一个统一的框架,提高了地球观测数据集的可发现性、可用性和应用性。EIFF-O 的实施允许数据提供者和用户弥合各种元数据描述和结构化分类之间的差距,从而促进更好地链接和整合 EO 数据集。结论 EIFFEL 本体论代表了在组织和应用 EO 数据集方面的重大进步。通过嵌入 ECV 和 SDG 本体并利用语义网技术,EIFF-O 不仅简化了数据发现过程,还支持各种应用,特别是在气候变化监测和可持续发展目标实现方面。本体及其相关工具的开源性质促进了开发人员的快速采用
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