SlideShare una empresa de Scribd logo
1 de 16
Role of Ontologies in Beach Safety
Management Analytics Systems
(Paper order: 1783)
1
• Outline
• Research context
• Research problem and objective
• Research methodology
• Lessons learned (key takeaways)
• F&Q
2
• Public beaches are one of the most popular recreational activities of
local communities
• a vibrant public space for locals and international
• Life-threatening injuries
• International Life Saving Federation (ILSF) reports that 1.2 million
people around the world annually lose their lives due to drowning in
open water such as beaches, sea, lakes, and rivers.
• unfamiliarity with surfing conditions
• poor swimming skills
• weather condition
• disorientation in coastal areas
3
Research context
• Smart Beaches (IoT & Analytics
enabled)
• Beach safety management agencies leverage a
wide range of information technologies such as IoT
(Internet of Things) devices, drones, wearable
sensors, outdoor cameras, and mobile applications
• Continuous monitoring of beach space to
detect hazards and alarm risks in a real-time
fashion
• Massive data (aka. Big Data) collected from these
technologies
4
Research context
Analytics models(Watson 2014)
• Descriptive analytics models
• Sum of drowning
• Average of shark attacks per month
• Average of beachgoers
• Example: bar charts, pies
• Predictive analytics
• Project future possibilities to answer questions
• what type of incidence is likely to happen at the beach in a
public holiday?
• Example: regression and machine learning
• Prescriptive analytics
• Decision making
• What actions should be taken to avoid drowning incidence
during summer break?
• Example: simulation and decision models
5
Analytics models, i.e., descriptive, predictive, prescriptive
Beach safety management domain
Research context
• Knowledge gaps in developing Analytics Information Systems (in smart beach domain)
•Communicative and knowledge intensive exercise
•What are incorporating variables informing analytics models, especially beach safety management domain?
•Efficient and consistent knowledge flow about analytics models among data scientists
•An overarching view that can pull together the various domain variables describing analytics models
•Also called “Data and model disparity problem” in analytics
Analytics models
(descriptive, predictive, prescriptive)
Analytics systems
Beach safety management domain
Data science team
Research problem and objective
• A potential solution: Ontologies (e.g., domain conceptualisation)
• A systematic explanation of being (Kishore 2004)
• Interoperability, and bridging knowledge among stakeholders
• Structure and codify knowledge about concepts, relationships, and axioms/constraints in a specific context
• Computational format, competency questions (CQ)
• CQ, what risk factors occur at beach?
• is represented by: What [V1] [OPE] [V2]?
• V1, i.e., risk factors and V2, i.e., beach, are variable expressions
• OPE, i.e., occur, is an object property expression
• Research objective
• To develop an ontology for beach safety management domain to inform data scientists of operational variables and
data to incorporate into analytics models.
7
Analytics models
(descriptive, predictive, prescriptive)
Analytics systems
Beach safety management domain
Data science team
Research problem and objective
• Research methodology
• Design science research methodology-DRSM (Gregor and Hevner 2013)
• Smart beach ontology artifact
• Design cycles and iterative artefact refinements
8
Research methodology
• Sample Smart Beach Ontology (SBO) artifacts
• Ontologies that capture knowledge about analytics models for the beach safety management
domain
• Domain variables and relationships
9
Research methodology – design cycles
10
Instead of struggling to understand analytics mode in ad-hoc way,
Smart Beach Ontology (SBO) artifacts act as a guidance or
conceptual model to inform data science team about what variables
are and how they might be related..
Research methodology – design cycles
Data science team
11
Smart Beach Ontology (SBO) sample artifacts
Research methodology – design cycles
12
Competency Question 2 (CQ2). What incidents happened at Bondi beach?
Domain variables – captured in ontology – are incident, beach (Bondi)
Research methodology – design cycles
13
Research methodology – design cycles
14
Smart Beach Ontology as a point of reference for transforming, either manual or automatic, analytics
queries/requirements to analytics information systems
Research methodology – design cycles
• Key takeaways in designing ontologies
for analytics systems
• Trade-off among ontology design principle
• Design principles: completeness, correctness, expandability,
conciseness, consistency, clarity
• For example: generic and less-detailed ontology vs. a comprehensive
one versatile
• Reciprocal benefit
• Whilst SBO narrows its focus on the standardization and integration of
analytics models at beach safety agencies, analytics models can help to
verify knowledge captured by the ontology
• Noisy variables might be removed from the ontology after some
analytics model development
• Variable drift
• Rapidly changing environments of new type of incidents, new rescues
actions, and new visitor hazardous behaviors at beach space inevitably
results in a change of meaning for variables
• The notion of Rescue can be completely changed from human lifesaver
to fully automatic drone lifesaver
15
Lessons learned (key takeaways)
16
Mahdi Fahmideh, PhD in Information Systems
University of Southern Queensland, Australia,
E: Mahdi.Fahmideh@usq.edu.au , M: +61406052400

Más contenido relacionado

Similar a Role of ontologies in beach safety management analytics systems

Integrating Heterogeneous and Distributed Information about Marine Species th...
Integrating Heterogeneous and Distributed Information about Marine Species th...Integrating Heterogeneous and Distributed Information about Marine Species th...
Integrating Heterogeneous and Distributed Information about Marine Species th...iMarine283644
 
Relationship-based Knowledge Mobilization: Systems-based KMb and considerati...
Relationship-based Knowledge Mobilization: Systems-based KMb and considerati...Relationship-based Knowledge Mobilization: Systems-based KMb and considerati...
Relationship-based Knowledge Mobilization: Systems-based KMb and considerati...Institute for Knowledge Mobilization
 
Relationship-based knowledge mobilization: systems-based KMb and consideratio...
Relationship-based knowledge mobilization: systems-based KMb and consideratio...Relationship-based knowledge mobilization: systems-based KMb and consideratio...
Relationship-based knowledge mobilization: systems-based KMb and consideratio...KBHN KT
 
From Access to Use: the quality of human-archives interactions as a research ...
From Access to Use: the quality of human-archives interactions as a research ...From Access to Use: the quality of human-archives interactions as a research ...
From Access to Use: the quality of human-archives interactions as a research ...Pierluigi Feliciati
 
1.m. clark environmental obligations
1.m. clark environmental obligations1.m. clark environmental obligations
1.m. clark environmental obligationsBill Bly
 
EarthCube Stakeholder Alignment Survey - End-Users & Professional Societies W...
EarthCube Stakeholder Alignment Survey - End-Users & Professional Societies W...EarthCube Stakeholder Alignment Survey - End-Users & Professional Societies W...
EarthCube Stakeholder Alignment Survey - End-Users & Professional Societies W...EarthCube
 
PERICLES workshop (IDCC 2016) - Introduction to the PERICLES project
PERICLES workshop (IDCC 2016) - Introduction to the PERICLES projectPERICLES workshop (IDCC 2016) - Introduction to the PERICLES project
PERICLES workshop (IDCC 2016) - Introduction to the PERICLES projectPERICLES_FP7
 
Hans Hofman - European Perspectives on Digital Preservation
Hans Hofman - European Perspectives on Digital PreservationHans Hofman - European Perspectives on Digital Preservation
Hans Hofman - European Perspectives on Digital PreservationNational Digital Forum
 
ICM and MSP: facilitating tools for solving conflicts and overcoming the scie...
ICM and MSP: facilitating tools for solving conflicts and overcoming the scie...ICM and MSP: facilitating tools for solving conflicts and overcoming the scie...
ICM and MSP: facilitating tools for solving conflicts and overcoming the scie...David March
 
iSamples Research Coordination Network (C4P Webinar)
iSamples Research Coordination Network (C4P Webinar)iSamples Research Coordination Network (C4P Webinar)
iSamples Research Coordination Network (C4P Webinar)Kerstin Lehnert
 
Research in Intelligent Systems and Data Science at the Knowledge Media Insti...
Research in Intelligent Systems and Data Science at the Knowledge Media Insti...Research in Intelligent Systems and Data Science at the Knowledge Media Insti...
Research in Intelligent Systems and Data Science at the Knowledge Media Insti...Enrico Motta
 
Digital Preservation Process: Preparation and Requirements
Digital Preservation Process: Preparation and RequirementsDigital Preservation Process: Preparation and Requirements
Digital Preservation Process: Preparation and RequirementsDigitalPreservationEurope
 
Understanding film scholars' annotation behavior
Understanding film scholars' annotation behaviorUnderstanding film scholars' annotation behavior
Understanding film scholars' annotation behaviorDH Benelux
 
AH-XLDBEurope-position-09 jun2011
AH-XLDBEurope-position-09 jun2011AH-XLDBEurope-position-09 jun2011
AH-XLDBEurope-position-09 jun2011Alex Hardisty
 
Data Analytics and Industry-Academic Partnerships: An Irish Perspective
Data Analytics and Industry-Academic Partnerships: An Irish PerspectiveData Analytics and Industry-Academic Partnerships: An Irish Perspective
Data Analytics and Industry-Academic Partnerships: An Irish PerspectiveJohn Breslin
 
ICDMWorkshopProposal.doc
ICDMWorkshopProposal.docICDMWorkshopProposal.doc
ICDMWorkshopProposal.docbutest
 
Xenia I. Loizidou. ICZM, from theory to practice.
Xenia I. Loizidou. ICZM, from theory to practice.Xenia I. Loizidou. ICZM, from theory to practice.
Xenia I. Loizidou. ICZM, from theory to practice.SUSCOD
 

Similar a Role of ontologies in beach safety management analytics systems (20)

Integrating Heterogeneous and Distributed Information about Marine Species th...
Integrating Heterogeneous and Distributed Information about Marine Species th...Integrating Heterogeneous and Distributed Information about Marine Species th...
Integrating Heterogeneous and Distributed Information about Marine Species th...
 
Relationship-based Knowledge Mobilization: Systems-based KMb and considerati...
Relationship-based Knowledge Mobilization: Systems-based KMb and considerati...Relationship-based Knowledge Mobilization: Systems-based KMb and considerati...
Relationship-based Knowledge Mobilization: Systems-based KMb and considerati...
 
Relationship-based knowledge mobilization: systems-based KMb and consideratio...
Relationship-based knowledge mobilization: systems-based KMb and consideratio...Relationship-based knowledge mobilization: systems-based KMb and consideratio...
Relationship-based knowledge mobilization: systems-based KMb and consideratio...
 
From Access to Use: the quality of human-archives interactions as a research ...
From Access to Use: the quality of human-archives interactions as a research ...From Access to Use: the quality of human-archives interactions as a research ...
From Access to Use: the quality of human-archives interactions as a research ...
 
1.m. clark environmental obligations
1.m. clark environmental obligations1.m. clark environmental obligations
1.m. clark environmental obligations
 
EarthCube Stakeholder Alignment Survey - End-Users & Professional Societies W...
EarthCube Stakeholder Alignment Survey - End-Users & Professional Societies W...EarthCube Stakeholder Alignment Survey - End-Users & Professional Societies W...
EarthCube Stakeholder Alignment Survey - End-Users & Professional Societies W...
 
PERICLES workshop (IDCC 2016) - Introduction to the PERICLES project
PERICLES workshop (IDCC 2016) - Introduction to the PERICLES projectPERICLES workshop (IDCC 2016) - Introduction to the PERICLES project
PERICLES workshop (IDCC 2016) - Introduction to the PERICLES project
 
Hans Hofman - European Perspectives on Digital Preservation
Hans Hofman - European Perspectives on Digital PreservationHans Hofman - European Perspectives on Digital Preservation
Hans Hofman - European Perspectives on Digital Preservation
 
Trm Trusted Repositories
Trm Trusted RepositoriesTrm Trusted Repositories
Trm Trusted Repositories
 
ICM and MSP: facilitating tools for solving conflicts and overcoming the scie...
ICM and MSP: facilitating tools for solving conflicts and overcoming the scie...ICM and MSP: facilitating tools for solving conflicts and overcoming the scie...
ICM and MSP: facilitating tools for solving conflicts and overcoming the scie...
 
iSamples Research Coordination Network (C4P Webinar)
iSamples Research Coordination Network (C4P Webinar)iSamples Research Coordination Network (C4P Webinar)
iSamples Research Coordination Network (C4P Webinar)
 
Sgci iwsg-a-10-10-16
Sgci iwsg-a-10-10-16Sgci iwsg-a-10-10-16
Sgci iwsg-a-10-10-16
 
Research in Intelligent Systems and Data Science at the Knowledge Media Insti...
Research in Intelligent Systems and Data Science at the Knowledge Media Insti...Research in Intelligent Systems and Data Science at the Knowledge Media Insti...
Research in Intelligent Systems and Data Science at the Knowledge Media Insti...
 
Digital Preservation Process: Preparation and Requirements
Digital Preservation Process: Preparation and RequirementsDigital Preservation Process: Preparation and Requirements
Digital Preservation Process: Preparation and Requirements
 
Understanding film scholars' annotation behavior
Understanding film scholars' annotation behaviorUnderstanding film scholars' annotation behavior
Understanding film scholars' annotation behavior
 
AH-XLDBEurope-position-09 jun2011
AH-XLDBEurope-position-09 jun2011AH-XLDBEurope-position-09 jun2011
AH-XLDBEurope-position-09 jun2011
 
JCDL 2013 DOCTORAL CONSORTIUM
JCDL 2013 DOCTORAL CONSORTIUMJCDL 2013 DOCTORAL CONSORTIUM
JCDL 2013 DOCTORAL CONSORTIUM
 
Data Analytics and Industry-Academic Partnerships: An Irish Perspective
Data Analytics and Industry-Academic Partnerships: An Irish PerspectiveData Analytics and Industry-Academic Partnerships: An Irish Perspective
Data Analytics and Industry-Academic Partnerships: An Irish Perspective
 
ICDMWorkshopProposal.doc
ICDMWorkshopProposal.docICDMWorkshopProposal.doc
ICDMWorkshopProposal.doc
 
Xenia I. Loizidou. ICZM, from theory to practice.
Xenia I. Loizidou. ICZM, from theory to practice.Xenia I. Loizidou. ICZM, from theory to practice.
Xenia I. Loizidou. ICZM, from theory to practice.
 

Más de Mahdi_Fahmideh

Adoption Blockchain Smart Contracts in Developing Information Systems.pdf
Adoption Blockchain Smart Contracts in Developing Information Systems.pdfAdoption Blockchain Smart Contracts in Developing Information Systems.pdf
Adoption Blockchain Smart Contracts in Developing Information Systems.pdfMahdi_Fahmideh
 
University of Borås-full talk-2023-12-09.pptx
University of Borås-full talk-2023-12-09.pptxUniversity of Borås-full talk-2023-12-09.pptx
University of Borås-full talk-2023-12-09.pptxMahdi_Fahmideh
 
IoT system development.pdf
IoT system development.pdfIoT system development.pdf
IoT system development.pdfMahdi_Fahmideh
 
Digital Forensics for Artificial Intelligence (AI ) Systems.pdf
Digital Forensics for Artificial Intelligence (AI ) Systems.pdfDigital Forensics for Artificial Intelligence (AI ) Systems.pdf
Digital Forensics for Artificial Intelligence (AI ) Systems.pdfMahdi_Fahmideh
 
Application of Blockchain Technologies in Digital Forensics
Application of Blockchain Technologies in Digital ForensicsApplication of Blockchain Technologies in Digital Forensics
Application of Blockchain Technologies in Digital ForensicsMahdi_Fahmideh
 
Mahdi octal nomination.pdf
Mahdi octal nomination.pdfMahdi octal nomination.pdf
Mahdi octal nomination.pdfMahdi_Fahmideh
 
Certificate for Contributions as a Reviewer for the Journal of Software and S...
Certificate for Contributions as a Reviewer for the Journal of Software and S...Certificate for Contributions as a Reviewer for the Journal of Software and S...
Certificate for Contributions as a Reviewer for the Journal of Software and S...Mahdi_Fahmideh
 
The 1st workshop on engineering processes and practices for quantum software ...
The 1st workshop on engineering processes and practices for quantum software ...The 1st workshop on engineering processes and practices for quantum software ...
The 1st workshop on engineering processes and practices for quantum software ...Mahdi_Fahmideh
 
ACIS2022 Reviewer Certification.pdf
ACIS2022 Reviewer Certification.pdfACIS2022 Reviewer Certification.pdf
ACIS2022 Reviewer Certification.pdfMahdi_Fahmideh
 
Presentation 2019 08-30
Presentation 2019 08-30Presentation 2019 08-30
Presentation 2019 08-30Mahdi_Fahmideh
 
The 27th Australasian Conference on Information Systems
The 27th Australasian Conference  on Information SystemsThe 27th Australasian Conference  on Information Systems
The 27th Australasian Conference on Information SystemsMahdi_Fahmideh
 
A Model-Driven Approach to Support Cloud Migration Process- A Language Infras...
A Model-Driven Approach to Support Cloud Migration Process- A Language Infras...A Model-Driven Approach to Support Cloud Migration Process- A Language Infras...
A Model-Driven Approach to Support Cloud Migration Process- A Language Infras...Mahdi_Fahmideh
 

Más de Mahdi_Fahmideh (13)

Adoption Blockchain Smart Contracts in Developing Information Systems.pdf
Adoption Blockchain Smart Contracts in Developing Information Systems.pdfAdoption Blockchain Smart Contracts in Developing Information Systems.pdf
Adoption Blockchain Smart Contracts in Developing Information Systems.pdf
 
University of Borås-full talk-2023-12-09.pptx
University of Borås-full talk-2023-12-09.pptxUniversity of Borås-full talk-2023-12-09.pptx
University of Borås-full talk-2023-12-09.pptx
 
IoT system development.pdf
IoT system development.pdfIoT system development.pdf
IoT system development.pdf
 
Digital Forensics for Artificial Intelligence (AI ) Systems.pdf
Digital Forensics for Artificial Intelligence (AI ) Systems.pdfDigital Forensics for Artificial Intelligence (AI ) Systems.pdf
Digital Forensics for Artificial Intelligence (AI ) Systems.pdf
 
Application of Blockchain Technologies in Digital Forensics
Application of Blockchain Technologies in Digital ForensicsApplication of Blockchain Technologies in Digital Forensics
Application of Blockchain Technologies in Digital Forensics
 
Mahdi octal nomination.pdf
Mahdi octal nomination.pdfMahdi octal nomination.pdf
Mahdi octal nomination.pdf
 
Certificate for Contributions as a Reviewer for the Journal of Software and S...
Certificate for Contributions as a Reviewer for the Journal of Software and S...Certificate for Contributions as a Reviewer for the Journal of Software and S...
Certificate for Contributions as a Reviewer for the Journal of Software and S...
 
best paper award.pdf
best paper award.pdfbest paper award.pdf
best paper award.pdf
 
The 1st workshop on engineering processes and practices for quantum software ...
The 1st workshop on engineering processes and practices for quantum software ...The 1st workshop on engineering processes and practices for quantum software ...
The 1st workshop on engineering processes and practices for quantum software ...
 
ACIS2022 Reviewer Certification.pdf
ACIS2022 Reviewer Certification.pdfACIS2022 Reviewer Certification.pdf
ACIS2022 Reviewer Certification.pdf
 
Presentation 2019 08-30
Presentation 2019 08-30Presentation 2019 08-30
Presentation 2019 08-30
 
The 27th Australasian Conference on Information Systems
The 27th Australasian Conference  on Information SystemsThe 27th Australasian Conference  on Information Systems
The 27th Australasian Conference on Information Systems
 
A Model-Driven Approach to Support Cloud Migration Process- A Language Infras...
A Model-Driven Approach to Support Cloud Migration Process- A Language Infras...A Model-Driven Approach to Support Cloud Migration Process- A Language Infras...
A Model-Driven Approach to Support Cloud Migration Process- A Language Infras...
 

Último

Minimum and Maximum Modes of microprocessor 8086
Minimum and Maximum Modes of microprocessor 8086Minimum and Maximum Modes of microprocessor 8086
Minimum and Maximum Modes of microprocessor 8086anil_gaur
 
FULL ENJOY Call Girls In Mahipalpur Delhi Contact Us 8377877756
FULL ENJOY Call Girls In Mahipalpur Delhi Contact Us 8377877756FULL ENJOY Call Girls In Mahipalpur Delhi Contact Us 8377877756
FULL ENJOY Call Girls In Mahipalpur Delhi Contact Us 8377877756dollysharma2066
 
2016EF22_0 solar project report rooftop projects
2016EF22_0 solar project report rooftop projects2016EF22_0 solar project report rooftop projects
2016EF22_0 solar project report rooftop projectssmsksolar
 
XXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXX
XXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXX
XXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXssuser89054b
 
DC MACHINE-Motoring and generation, Armature circuit equation
DC MACHINE-Motoring and generation, Armature circuit equationDC MACHINE-Motoring and generation, Armature circuit equation
DC MACHINE-Motoring and generation, Armature circuit equationBhangaleSonal
 
Employee leave management system project.
Employee leave management system project.Employee leave management system project.
Employee leave management system project.Kamal Acharya
 
UNIT - IV - Air Compressors and its Performance
UNIT - IV - Air Compressors and its PerformanceUNIT - IV - Air Compressors and its Performance
UNIT - IV - Air Compressors and its Performancesivaprakash250
 
Hazard Identification (HAZID) vs. Hazard and Operability (HAZOP): A Comparati...
Hazard Identification (HAZID) vs. Hazard and Operability (HAZOP): A Comparati...Hazard Identification (HAZID) vs. Hazard and Operability (HAZOP): A Comparati...
Hazard Identification (HAZID) vs. Hazard and Operability (HAZOP): A Comparati...soginsider
 
22-prompt engineering noted slide shown.pdf
22-prompt engineering noted slide shown.pdf22-prompt engineering noted slide shown.pdf
22-prompt engineering noted slide shown.pdf203318pmpc
 
Hostel management system project report..pdf
Hostel management system project report..pdfHostel management system project report..pdf
Hostel management system project report..pdfKamal Acharya
 
Work-Permit-Receiver-in-Saudi-Aramco.pptx
Work-Permit-Receiver-in-Saudi-Aramco.pptxWork-Permit-Receiver-in-Saudi-Aramco.pptx
Work-Permit-Receiver-in-Saudi-Aramco.pptxJuliansyahHarahap1
 
COST-EFFETIVE and Energy Efficient BUILDINGS ptx
COST-EFFETIVE  and Energy Efficient BUILDINGS ptxCOST-EFFETIVE  and Energy Efficient BUILDINGS ptx
COST-EFFETIVE and Energy Efficient BUILDINGS ptxJIT KUMAR GUPTA
 
data_management_and _data_science_cheat_sheet.pdf
data_management_and _data_science_cheat_sheet.pdfdata_management_and _data_science_cheat_sheet.pdf
data_management_and _data_science_cheat_sheet.pdfJiananWang21
 
University management System project report..pdf
University management System project report..pdfUniversity management System project report..pdf
University management System project report..pdfKamal Acharya
 
Introduction to Serverless with AWS Lambda
Introduction to Serverless with AWS LambdaIntroduction to Serverless with AWS Lambda
Introduction to Serverless with AWS LambdaOmar Fathy
 
chapter 5.pptx: drainage and irrigation engineering
chapter 5.pptx: drainage and irrigation engineeringchapter 5.pptx: drainage and irrigation engineering
chapter 5.pptx: drainage and irrigation engineeringmulugeta48
 

Último (20)

Minimum and Maximum Modes of microprocessor 8086
Minimum and Maximum Modes of microprocessor 8086Minimum and Maximum Modes of microprocessor 8086
Minimum and Maximum Modes of microprocessor 8086
 
Water Industry Process Automation & Control Monthly - April 2024
Water Industry Process Automation & Control Monthly - April 2024Water Industry Process Automation & Control Monthly - April 2024
Water Industry Process Automation & Control Monthly - April 2024
 
FULL ENJOY Call Girls In Mahipalpur Delhi Contact Us 8377877756
FULL ENJOY Call Girls In Mahipalpur Delhi Contact Us 8377877756FULL ENJOY Call Girls In Mahipalpur Delhi Contact Us 8377877756
FULL ENJOY Call Girls In Mahipalpur Delhi Contact Us 8377877756
 
2016EF22_0 solar project report rooftop projects
2016EF22_0 solar project report rooftop projects2016EF22_0 solar project report rooftop projects
2016EF22_0 solar project report rooftop projects
 
FEA Based Level 3 Assessment of Deformed Tanks with Fluid Induced Loads
FEA Based Level 3 Assessment of Deformed Tanks with Fluid Induced LoadsFEA Based Level 3 Assessment of Deformed Tanks with Fluid Induced Loads
FEA Based Level 3 Assessment of Deformed Tanks with Fluid Induced Loads
 
XXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXX
XXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXX
XXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXX
 
DC MACHINE-Motoring and generation, Armature circuit equation
DC MACHINE-Motoring and generation, Armature circuit equationDC MACHINE-Motoring and generation, Armature circuit equation
DC MACHINE-Motoring and generation, Armature circuit equation
 
Employee leave management system project.
Employee leave management system project.Employee leave management system project.
Employee leave management system project.
 
(INDIRA) Call Girl Aurangabad Call Now 8617697112 Aurangabad Escorts 24x7
(INDIRA) Call Girl Aurangabad Call Now 8617697112 Aurangabad Escorts 24x7(INDIRA) Call Girl Aurangabad Call Now 8617697112 Aurangabad Escorts 24x7
(INDIRA) Call Girl Aurangabad Call Now 8617697112 Aurangabad Escorts 24x7
 
UNIT - IV - Air Compressors and its Performance
UNIT - IV - Air Compressors and its PerformanceUNIT - IV - Air Compressors and its Performance
UNIT - IV - Air Compressors and its Performance
 
Hazard Identification (HAZID) vs. Hazard and Operability (HAZOP): A Comparati...
Hazard Identification (HAZID) vs. Hazard and Operability (HAZOP): A Comparati...Hazard Identification (HAZID) vs. Hazard and Operability (HAZOP): A Comparati...
Hazard Identification (HAZID) vs. Hazard and Operability (HAZOP): A Comparati...
 
22-prompt engineering noted slide shown.pdf
22-prompt engineering noted slide shown.pdf22-prompt engineering noted slide shown.pdf
22-prompt engineering noted slide shown.pdf
 
Hostel management system project report..pdf
Hostel management system project report..pdfHostel management system project report..pdf
Hostel management system project report..pdf
 
Work-Permit-Receiver-in-Saudi-Aramco.pptx
Work-Permit-Receiver-in-Saudi-Aramco.pptxWork-Permit-Receiver-in-Saudi-Aramco.pptx
Work-Permit-Receiver-in-Saudi-Aramco.pptx
 
COST-EFFETIVE and Energy Efficient BUILDINGS ptx
COST-EFFETIVE  and Energy Efficient BUILDINGS ptxCOST-EFFETIVE  and Energy Efficient BUILDINGS ptx
COST-EFFETIVE and Energy Efficient BUILDINGS ptx
 
data_management_and _data_science_cheat_sheet.pdf
data_management_and _data_science_cheat_sheet.pdfdata_management_and _data_science_cheat_sheet.pdf
data_management_and _data_science_cheat_sheet.pdf
 
University management System project report..pdf
University management System project report..pdfUniversity management System project report..pdf
University management System project report..pdf
 
Introduction to Serverless with AWS Lambda
Introduction to Serverless with AWS LambdaIntroduction to Serverless with AWS Lambda
Introduction to Serverless with AWS Lambda
 
chapter 5.pptx: drainage and irrigation engineering
chapter 5.pptx: drainage and irrigation engineeringchapter 5.pptx: drainage and irrigation engineering
chapter 5.pptx: drainage and irrigation engineering
 
Call Girls in Ramesh Nagar Delhi 💯 Call Us 🔝9953056974 🔝 Escort Service
Call Girls in Ramesh Nagar Delhi 💯 Call Us 🔝9953056974 🔝 Escort ServiceCall Girls in Ramesh Nagar Delhi 💯 Call Us 🔝9953056974 🔝 Escort Service
Call Girls in Ramesh Nagar Delhi 💯 Call Us 🔝9953056974 🔝 Escort Service
 

Role of ontologies in beach safety management analytics systems

  • 1. Role of Ontologies in Beach Safety Management Analytics Systems (Paper order: 1783) 1
  • 2. • Outline • Research context • Research problem and objective • Research methodology • Lessons learned (key takeaways) • F&Q 2
  • 3. • Public beaches are one of the most popular recreational activities of local communities • a vibrant public space for locals and international • Life-threatening injuries • International Life Saving Federation (ILSF) reports that 1.2 million people around the world annually lose their lives due to drowning in open water such as beaches, sea, lakes, and rivers. • unfamiliarity with surfing conditions • poor swimming skills • weather condition • disorientation in coastal areas 3 Research context
  • 4. • Smart Beaches (IoT & Analytics enabled) • Beach safety management agencies leverage a wide range of information technologies such as IoT (Internet of Things) devices, drones, wearable sensors, outdoor cameras, and mobile applications • Continuous monitoring of beach space to detect hazards and alarm risks in a real-time fashion • Massive data (aka. Big Data) collected from these technologies 4 Research context
  • 5. Analytics models(Watson 2014) • Descriptive analytics models • Sum of drowning • Average of shark attacks per month • Average of beachgoers • Example: bar charts, pies • Predictive analytics • Project future possibilities to answer questions • what type of incidence is likely to happen at the beach in a public holiday? • Example: regression and machine learning • Prescriptive analytics • Decision making • What actions should be taken to avoid drowning incidence during summer break? • Example: simulation and decision models 5 Analytics models, i.e., descriptive, predictive, prescriptive Beach safety management domain Research context
  • 6. • Knowledge gaps in developing Analytics Information Systems (in smart beach domain) •Communicative and knowledge intensive exercise •What are incorporating variables informing analytics models, especially beach safety management domain? •Efficient and consistent knowledge flow about analytics models among data scientists •An overarching view that can pull together the various domain variables describing analytics models •Also called “Data and model disparity problem” in analytics Analytics models (descriptive, predictive, prescriptive) Analytics systems Beach safety management domain Data science team Research problem and objective
  • 7. • A potential solution: Ontologies (e.g., domain conceptualisation) • A systematic explanation of being (Kishore 2004) • Interoperability, and bridging knowledge among stakeholders • Structure and codify knowledge about concepts, relationships, and axioms/constraints in a specific context • Computational format, competency questions (CQ) • CQ, what risk factors occur at beach? • is represented by: What [V1] [OPE] [V2]? • V1, i.e., risk factors and V2, i.e., beach, are variable expressions • OPE, i.e., occur, is an object property expression • Research objective • To develop an ontology for beach safety management domain to inform data scientists of operational variables and data to incorporate into analytics models. 7 Analytics models (descriptive, predictive, prescriptive) Analytics systems Beach safety management domain Data science team Research problem and objective
  • 8. • Research methodology • Design science research methodology-DRSM (Gregor and Hevner 2013) • Smart beach ontology artifact • Design cycles and iterative artefact refinements 8 Research methodology
  • 9. • Sample Smart Beach Ontology (SBO) artifacts • Ontologies that capture knowledge about analytics models for the beach safety management domain • Domain variables and relationships 9 Research methodology – design cycles
  • 10. 10 Instead of struggling to understand analytics mode in ad-hoc way, Smart Beach Ontology (SBO) artifacts act as a guidance or conceptual model to inform data science team about what variables are and how they might be related.. Research methodology – design cycles Data science team
  • 11. 11 Smart Beach Ontology (SBO) sample artifacts Research methodology – design cycles
  • 12. 12 Competency Question 2 (CQ2). What incidents happened at Bondi beach? Domain variables – captured in ontology – are incident, beach (Bondi) Research methodology – design cycles
  • 14. 14 Smart Beach Ontology as a point of reference for transforming, either manual or automatic, analytics queries/requirements to analytics information systems Research methodology – design cycles
  • 15. • Key takeaways in designing ontologies for analytics systems • Trade-off among ontology design principle • Design principles: completeness, correctness, expandability, conciseness, consistency, clarity • For example: generic and less-detailed ontology vs. a comprehensive one versatile • Reciprocal benefit • Whilst SBO narrows its focus on the standardization and integration of analytics models at beach safety agencies, analytics models can help to verify knowledge captured by the ontology • Noisy variables might be removed from the ontology after some analytics model development • Variable drift • Rapidly changing environments of new type of incidents, new rescues actions, and new visitor hazardous behaviors at beach space inevitably results in a change of meaning for variables • The notion of Rescue can be completely changed from human lifesaver to fully automatic drone lifesaver 15 Lessons learned (key takeaways)
  • 16. 16 Mahdi Fahmideh, PhD in Information Systems University of Southern Queensland, Australia, E: Mahdi.Fahmideh@usq.edu.au , M: +61406052400

Notas del editor

  1. Photo source: smartbeaches.com.au, with kind permission
  2. Photo sources: (with kind permission): https://www.uts.edu.au/about/faculty-engineering-and-information-technology/news/smart-beaches-are-safe-beaches https://ubidots.com/blog/australia-smart-city/
  3. Photo sources: (with kind permission): https://ubidots.com/blog/australia-smart-city/
  4. Photo source: istockphoto, with kind permission