Abstract

Modern early warning system (EWS) requires sophisticated knowledge of the natural hazards, the urban context and underlying risk factors to enable dynamic and timely decision making (e.g., hazard detection, hazard preparedness). Landslides are a common form of natural hazard with a global impact and closely linked to a variety of other hazards. EWS for landslides prediction and detection relies on scientific methods and models which requires input from the time series data, such as the earth observation (EO) and urban environment data. Such data sets are produced by a variety of remote sensing satellites and Internet of things sensors which are deployed in the landslide prone areas. To this end, the automatic discovery of potential time series data sources has become a challenge due to the complexity and high variety of data sources. To solve this hard research problem, in this paper, we propose a novel ontology, namely Landslip Ontology, to provide the knowledge base that establishes relationship between landslide hazard and EO and urban data sources. The purpose of Landslip Ontology is to facilitate time series data source discovery for the verification and prediction of landslide hazards. The ontology is evaluated based on scenarios and competency questions to verify the coverage and consistency. Moreover, the ontology can also be used to realize the implementation of data sources discovery system which is an essential component in EWS that needs to manage (store, search, process) rich information from heterogeneous data sources.

Highlights

  • The analysis of big time series data has been a grand challenge in several domains including health healthcare [3, 4, 13, 28] and natural hazard management [30]

  • Those domain experts include two academic staffs who are specialist in natural hazard and geoscience, and a scientist from British Geological Survey (BGS)

  • Effective Early Warning System (EWS) for Landslide hazard relies on a comprehensive set of earth observation (EO) and urban data provided by geographically distributed data sources

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Summary

Introduction

The analysis of big time series data has been a grand challenge in several domains including health healthcare [3, 4, 13, 28] and natural hazard management [30]. Landslide early warning sign detected by processing Twitter streams (e.g., by monitoring tweets relevant to landslides) can be verified by analyzing IoT sensor data or other corroborating data (e.g., news feed, remotely sensed satellite data) obtained from the area of interest Discovering such cross co-relationship of events from heterogeneous time series data sources has many challenges including lack of common terminology and presence of implicit relationships that are difficult to manually identify and analyse. The main contribution of this paper is a formal knowledge base of landslide domain concepts to enable the integration of time series data from multiple heterogeneous sources for real-time analysis and early prediction of landslide events Underpinning this knowledge base is the Landslip Ontology that captures the relationships between landslides, multi-hazards, warning signs, sensor data and other time series data sources.

Data utilisation in multi-hazard early warning system
Semantic web technologies and high variety data management for multi-hazards
Landslip scenario
Scenario
Overall concepts
Landslip Ontology
Landslip Common Ontology
Landslip data sources ontology
System architecture
Evaluation
Conclusions and future work
Full Text
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