Abstract

Increasing numbers of people are living in and using coastal areas. Combined with the presence of pervasive coastal threats, such as flooding and erosion, this is having widespread impacts on coastal populations, infrastructure and ecosystems. For the right adaptive strategies to be adopted, and planning decisions to be made, rigorous evaluation of the available options is required. This evaluation hinges on the availability and use of suitable datasets. For knowledge to be derived from coastal datasets, such data needs to be combined and analysed in an effective manner. This paper reviews a wide range of literature relating to data-driven approaches to coastal risk evaluation, revealing how limitations have been imposed on many of these methods, due to restrictions in computing power and access to data. The rapidly emerging field of ‘Big Data’ can help overcome many of these hurdles. ‘Big Data’ involves powerful computer infrastructures, enabling storage, processing and real-time analysis of large volumes and varieties of data, in a fast and reliable manner. Through consideration of examples of how ‘Big Data’ technologies are being applied to fields related to coastal risk, it becomes apparent that geospatial Big Data solutions hold clear potential to improve the process of risk based decision making on the coast. ‘Big Data’ does not provide a stand-alone solution to the issues and gaps outlined in this paper, yet these technological methods hold the potential to optimise data-driven approaches, enabling robust risk profiles to be generated for coastal regions.

Highlights

  • Decision-making in coastal regions needs to be based on sound science and accurate information

  • This paper focuses on coastal risk adaptation, the role of information, and potential application of Big Data solutions within this domain

  • The Directive allows a ‘multi-view’ across layers of interactions between the Spatial Data Infrastructure (SDI) and their users. In relation to this current research this is especially pertinent given the wide ranging themes needing to be considered within coastal risk assessments, and the many stakeholders involved in the coastal management process [62]

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Summary

Introduction

Decision-making in coastal regions needs to be based on sound science and accurate information. This paper focuses on coastal risk adaptation, the role of information, and potential application of Big Data solutions within this domain. This is addressed through assessment of literature dated from 20001 to 2017, focussing especially upon the application of data-driven approaches to coastal zone management. This has permitted emergent themes to be highlighted and investigated, providing a new understanding as to the efficacy of these methods. The publications addressed are categorised within three themes, namely: coastal risk adaptation, datadriven approaches, and the application of Big Data to coastal management. It is considered that these themes provide a useful foundation for addressing the developments in this new area, with each selected publication exemplifying pertinent issues from the current debate

Coastal risk and adaptation
Impacts
Adaptive measures
Coastal risk assessment – the role of information
Big Data
Coastal management
Spatial data and land planning
From data to knowledge
Collaborative coastal projects within Europe
Studies focusing on coastal risk
Coastal decision support systems and vulnerability assessments
The role of GIS within coastal risk studies
The application of Big Data to coastal management
Gaps identified in existing solutions
Conclusion
Need to increase stakeholder confidence in policy based on analytical outputs
Details of coastal risk provided in planning guidance
Better understand relationships between the diverse range of data variables
Allow comprehensive analysis at wider scales
Findings
Requirement for robust risk profiles derived from reliable data
Full Text
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