smart systems? · learning rule-based automation optimisation algorithms decision support tools...
TRANSCRIPT
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Dr Nabil Abou-RahmeGlobal Practice Leader, Data Science
23 November 2017
Harnessing the power of big data to findcreative solutions
Smart Systems?
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22/11/2017 Mott MacDonald | Presentation 2
Harnessing the power of big data
1FutureIntelligence
.
2DigitalTransformation
.
3LearningFramework
.
4ValuingData
.
5ConvergingStreams
.
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22/11/2017 Mott MacDonald | Presentation 3
Harnessing the power of big data
1FutureIntelligence
.
2DigitalTransformation
.
3LearningFramework
.
4ValuingData
.
5ConvergingStreams
.
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Data as fuel for a circular economy
• Big data• Internet of things• Artificial intelligence• Blockchain• Quantum
22/11/2017 Mott MacDonald | Presentation 7
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22/11/2017 Mott MacDonald | Presentation 9
Harnessing the power of big data
1FutureIntelligence
.
2DigitalTransformation
.
3LearningFramework
.
4ValuingData
.
5ConvergingStreams
.
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Mott MacDonald’s Transformation
Be digital by default
GoDigital is aboutchanging mindsets andbehaviours – it’s aboutthe way we do things.
GoDigital is an integral partof our businesstransformation and enablesdelivery.
22/11/2017 Mott MacDonald | Presentation 10
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Infrastructure Sector TransformationA call to action…
Leadership
Investment
Standards
Dialogue
Data
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Infrastructure Sector Transformation
NIC IPA
ICG
P13 i3P
Treasury BEIS
DBBCLC
CD
CSIC UK BIMAllianceBSI
22/11/2017 Mott MacDonald | Presentation 12
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ICG ‘Project 13’ – from Transaction to Enterprise
Simple collaboration Integratedfunctions andrelationships
High performingenterprise
22/11/2017 Mott MacDonald | Presentation 13
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GovernanceOrganisationIntegration
Capable ownerDigital transformation
ICG ‘Project 13’ – Strategic Themes
22/11/2017 Mott MacDonald | Presentation 14
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Technology
ICG ‘Project 13’ – Sector Wide Approach
Infrastructure
1 2 3 4 5 6 7 8 9 1 2 3 4
22/11/2017 Mott MacDonald | Presentation 15
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22/11/2017 Mott MacDonald | Presentation 16
Harnessing the power of big data
1FutureIntelligence
.
2DigitalTransformation
.
3LearningFramework
.
4ValuingData
.
5ConvergingStreams
.
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SCADA Customerbilling
GPS Ticketing/Counting survers
GIS CCTV
DataGenerated by assets,networks and people
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Assets Customers Costs Datastorage
SCADA Customerbilling
GPS Ticketing/Counting survers
GIS CCTV
Data managementData is harvested,cleansed andstructured.
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ImprovedintelligenceModelling Middleware Analytics
Assets Customers Costs Datastorage
SCADA Customerbilling
GPS Ticketing/Counting survers
GIS CCTV
Sense makingValue is added bymaking sense of thedata. Intelligencegained can be used tosee and understandwhat’s going on.
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HUMAN
Rule-basedautomation
DecisionSupport tools
Improved decisions
ImprovedintelligenceModelling Middleware Analytics
SCADA Customerbilling
GPS Ticketing/Counting survers
GIS CCTV
Assets Customers Costs Datastorage
Decision makingBetter decisions, fasterand cheaper enableasset performance tobe optimised andefficiency maximised.
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HUMAN
Rule-basedautomation
DecisionSupport tools
Improved decisions
ImprovedintelligenceModelling Middleware Analytics
SCADA Customerbilling
GPS Ticketing/Counting survers
GIS CCTV
Assets Customers Costs Datastorage
Communicationconnects the layers andprovides an interfacewith the outside world.
This includes machine-to-machine andmachine-to-humancommunications.
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Small isolated data sets
Bespoke applications
Simple decision trees
HUMAN
Rule-basedautomation
DecisionSupport tools
Improved decisions
ImprovedintelligenceModelling Middleware Analytics
SCADA Customerbilling
GPS Ticketing/Counting survers
GIS CCTV
Assets Customers Costs Datastorage
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Now:Responsive
HUMAN
Rule-basedautomation
DecisionSupport tools
Improved decisions
ImprovedintelligenceModelling Middleware Analytics
SCADA Customerbilling
GPS Ticketing/Counting survers
GIS CCTV
Assets Customers Costs Datastorage
Lear
ning
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Assets Customers Costs Datastorage
Datacleansing
Datastructure
Activities
SCADA Satelliteimagery
Customerbilling
BIM GPS Manufacturers’data
Ticketing/Counting survers
GIS Controlsystems
CCTV
Improved decisions
Improvedintelligence
Lear
ning
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Better quality,open structure
Data analytics platform
Enhanced decision support
HUMANMachinelearning
Rule-basedautomation
Optimisationalgorithms
DecisionSupport tools
Modelling Middleware Analytics
Assets Customers Costs Datastorage
Datacleansing
Datastructure
Activities
SCADA Satelliteimagery
Customerbilling
BIM GPS Manufacturers’data
Ticketing/Counting survers
GIS Controlsystems
CCTV
An abundance of data sources at low marginal cost
Improved decisions
Improvedintelligence
Lear
ning
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Next:Predictive
HUMANMachinelearning
Rule-basedautomation
Optimisationalgorithms
DecisionSupport tools
Modelling Middleware Analytics
Assets Customers Costs Datastorage
Datacleansing
Datastructure
Activities
SCADA Satelliteimagery
Customerbilling
BIM GPS Manufacturers’data
Ticketing/Counting survers
GIS Controlsystems
CCTV
An abundance of data sources at low marginal cost
Improved decisions
Improvedintelligence
Lear
ning
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Assets Customers Costs Datastorage
Datacleansing
Datastructure
Activities
SCADA Satelliteimagery
Customerbilling
BIM GPS Manufacturers’data
Ticketing/Counting survers
GIS Controlsystems
CCTV
Improved decisions
Improvedintelligence
Lear
ning
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Big data streams
Federated analyticsplatforms
System intelligent decisions
HUMANMachinelearning
Rule-basedautomation
Optimisationalgorithms
DecisionSupport tools
Modelling Middleware Analytics
Assets Customers Costs Datastorage
Datacleansing
Datastructure
Activities
SCADA Satelliteimagery
Customerbilling
BIM GPS Manufacturers’data
Ticketing/Counting survers
GIS Controlsystems
CCTV
Plus data we haven’t dreamed of yet
Improved decisions
Improvedintelligence
Lear
ning
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Ideal:Adaptive
HUMANMachinelearning
Rule-basedautomation
Optimisationalgorithms
DecisionSupport tools
Modelling Middleware Analytics
Assets Customers Costs Datastorage
Datacleansing
Datastructure
Activities
SCADA Satelliteimagery
Customerbilling
BIM GPS Manufacturers’data
Ticketing/Counting survers
GIS Controlsystems
CCTV
Plus data we haven’t dreamed of yet
Improved decisions
Improvedintelligence
Lear
ning
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Assets Customers Costs Datastorage
Datacleansing
Datastructure Activities
SCADA Satelliteimagery
Customerbilling
BIM GPS Manufacturers’data
Ticketing/Counting survers GIS Control
systemsCCTV
Improved decisions
Improvedintelligence
Lear
ning
Customer
AssetGenerated
NetworkGenerated
PersonGenerated
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22/11/2017 Mott MacDonald | Presentation 31
Harnessing the power of big data
1FutureIntelligence
.
2DigitalTransformation
.
3LearningFramework
.
4ValuingData
.
5ConvergingStreams
.
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Data science is the extraction ofactionable knowledge directly fromdata through a process ofdiscovery, hypothesis andanalytical testing – akin to thescientific method.
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A convergence of expertiseData science is where our full range of skills and experience meet
Research
Datascience
Analyticsystems Algorithms
Programming skills
Domainexpertise
Statisticsdata mining
(Source: US National Institute forStandards and Technology (NIST))
22/11/2017 Mott MacDonald | Presentation 33
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22 November 2017 Mott MacDonald | Presentation 34
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Disciplines that underpin data science
StrategicConsulting
MathematicalModelling
DomainIntelligence
Data Engineering Data Analytics Data Visualisation
DigitalInfrastructure
CyberSecurity
SoftwareEngineering
22/11/2017 Mott MacDonald | Presentation 35
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22/11/2017 Mott MacDonald | Presentation 36
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Hackathons
Open data is part of the answer
ODS Platform and API
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22 November 2017 Mott MacDonald | Presentation 38
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22/11/2017 Mott MacDonald | Presentation 39
Harnessing the power of big data
1FutureIntelligence
.
2DigitalTransformation
.
3LearningFramework
.
4ValuingData
.
5ConvergingStreams
.
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Smarter Cities
Buildings Water
EnergyTransport
Smart
HealthyFulfilled
Maximisingpotential
Citizen
Smart data: data put into service forbetter outcomes; connecting diversedata sources, two-way interactionswith citizens
Smart infrastructure: integratedsystem of systems, for more efficient,resilient and sustainable outcomes,responsive to changing citizen needs
Smart organisation: structureddecision making and supply chain toorganise information, improveresponsiveness and achievecontinuous optimisation
22/11/2017 Mott MacDonald | Presentation 40
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Strategic Asset Management
Capableorganisation
Adaptiveresilience
Smartinfrastructure
Coherentstrategy
Integratedplanning
Targeteddelivery
Aligned objectives
Timely, effective and efficient interventions
Resilient and sustainable business that delivers its promises to its stakeholders
Continuousimprovement
1 2 3 4 5 6 7
Enablers
Decisions
Outcomes
Outputs
22/11/2017 Mott MacDonald | Presentation 41
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43
Mott MacDonald’s Digital Toolset
Data
Client services
Inception Design Construction
4Site (3D multi-sector above &below ground mapping)
H2kn0w-how (real time waternetwork monitoring)
Apollo (land referencing)
Operation
STEPS (pedestrian movement) Fieldbook (GIS energy tool for utilities/pipelines)
Optimum (3D scenario & visualisation tool for space/time conflict planning)
Carbon Portal (capital & operational carbon calculating)
Design Portal (multi-sectordesign platform)
Digital Master planning (rapid collation & visualisation of available site data facts)
Strat-e-gis (congestion monitoring)
Strat-e-gis (congestion monitoring)ReVERB (noise & vibration modelling)
(real time road network monitoring)
(multiple agency coordination)
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44
Mott MacDonald’s Integrated Platform
Data
Client services
Inception Design Construction Operation
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Thank you
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To continue this conversation…
Dr Nabil Abou-RahmeGlobal Practice Leader, Data ScienceETW
[email protected]+44 121 234 1590mottmac.com
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ProjectLondon 2012 OlympicGames: TransportCoordination Centre (TCC)
ClientTransport for London
LocationLondon, UK
ExpertiseSystems delivery
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Opportunity:
20M spectator journeys were made during the London2012 Olympic Games. This needed to be managed toensure maximum capacity and minimal disruption.
Solution:
Merlin, our crisis and incident management system,provided stakeholders with fast access to real timeinformation, streamlining decision making.
Outcome:
This intuitive platform enhanced collaboration and helpedoperators keep the transport network moving throughoutthe Games.
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ProjectWater and wastewatermanagement projects
ClientVarious local authorities
LocationVarious locations, NewZealand and Australia
ExpertiseSmart infrastructuresolutions
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Opportunity:
Using the power of real-time data management can bringhuge efficiencies to the way we manage our water andwastewater assets.
Solution:
We developed H2knOw-how – an innovative sensor-based water visualisation tool – to bring real-timeunderstanding and better management to water andwastewater networks.
Outcome:
H2knOw-how is being used by 12 local authorities tostreamline asset management, improving service,releasing capacity, and cutting costs.
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ProjectFlood visualisation studies
ClientVarious local authorities
LocationVarious coastal towns, UK
ExpertiseVisualisation, datamanagement
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Opportunity:
Climate change is causing increasing incidents of coastalflooding, where tidal surges overtop flood defences.Visualising the impact will help mitigate the effects.
Solution:
Our Water and Wave Overtopping Tool (WWOT) bringstogether a GIS model with LiDAR data, aerialphotography and Ordnance Survey information to modelthe impact of coastal flooding.
Outcome:
Understanding the impact of coastal flooding enables usto improve flood defences, adapt relief strategies andbetter plan infrastructure investment for at risk areas.
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ProjectOsprey trafficmanagement system
ClientVarious UK local authorities
LocationVarious locations, UK
ExpertiseTraffic management, smartinfrastructure
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Opportunity:
UK motorists spend over 100 hours stuck in trafficjams each year. With limited scope to expand theroad network, smart solutions are needed to increaseefficiency of the road network.
Solution:
Osprey uses multiple data sources to give trafficmanagers a real-time view of how the road networkis being used, enabling congestion to monitored andmitigated through human or automated responses.
Outcome:
Osprey is now being used by 14 local authoritiesin the UK, improving traffic management andcutting congestion.
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ProjectRemote sensing-basedInformation and Insurancefor Crops in EmergingEconomies (RIICE)
ClientInternational RiceResearch Institute (IRRI)
LocationEast and South East Asia
ExpertiseCost benefit analysis
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Opportunity:
Rice accounts for one fifth of all calories consumedworldwide. Damage to production can have acatastrophic impact on health and the economy,especially in the rice-producing countries of Asia.
Solution:
Radar-based imaging by satellite enables the regionalgrowth of rice crop to be monitored, allowing shortfalls inyield to be predicted and relief strategies to be put inplace. A regional insurance scheme helped mitigateeconomic losses.
Outcome:
RIICE has improved food security and economicresilience in six Asian countries, while enabling scientiststo monitor the long-term effects of climate change on riceproduction.
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ProjectJaipur Smart City
ClientJaipur Nagar Nigam
LocationRajasthan, India
ExpertiseStakeholder engagementand urban masterplanning
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Opportunity:
The Indian government has set the goal of developing100 smart cities which are socially inclusive, sustainableand prosperous.
Solution:
We worked with stakeholders and local citizens todevelop a masterplan for Jaipur, leading to it comingahead of 97 rival cities.
Outcome:
Jaipur is now lined up for transformation into a smart city,allowing its residents and businesses to tap into thedigital economy.
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ProjectCarbon Portal
ClientVarious
LocationWorldwide
ExpertiseData handlingand modelling
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Opportunity:
Cutting carbon cuts costs, but until now there were notools to quantify the emissions footprint of individualBIM objects to help drive down carbon during thedesign process.
Solution:
We developed the first ever BIM-enabled carboncalculator which accurately quantifies capital andoperational carbon emissions for entire assets basedon each single BIM object.
Outcome:
We have used the Carbon Portal to optimise designand cut carbon for several clients, leading to cheaper,more sustainable assets.
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ProjectHeathrow Terminal 2
ClientBAA
LocationLondon, UK
ExpertiseDesign, manage andintegrate (DMI) role
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Opportunity:
Our team was chosen to design the complex ICT systemfor the £2.5bn Terminal 2 project and then to overseeprogramme delivery.
Solution:
We designed and coordinated the entire ICT systemincluding data networks, wireless and cellularcommunications, radio, security and search, CCTV,access control, building management, lighting controland displays.
Outcome:
We achieved successful implementation of the entire ICTsystem with the airport-wide ICT system, on time and onbudget, meeting Heathrow’s commercial, technical,reliability and security objectives.
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ProjectHALOGEN
ClientHighways England
LocationEngland, UK
ExpertiseSystems integration
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Opportunity:
Data management can help traffic managers improve theperformance of the road network, but the challenge is tohandle, store, analyse and use all this data effectively.
Solution:
We developed a range of reporting tools, website andsystem interfaces to provide the client with access toreal-time and historic data from the road network.
Outcome:
HALOGEN allows Highways England to analyseperformance of its road network, assess effectiveness ofroadside technology that supports the network andprovides a real-time feed of fault data, enabling betterroad management.
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ProjectAsset records and mapviewing for field personnel
ClientPublic Service Electricand Gas (PSEG)
LocationNew Jersey, US
ExpertiseGIS, IT, documentmanagement
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Opportunity:
PSEG – one of the largest combined gas and electricityutilities in the US – needed a way to bring crucialunderground infrastructure documents to their fieldcrews in a secure and reliable way.
Solution:
We uploaded the scanned images and indexes for morethan 1M service records onto Fieldbook and relayed thisto PSEG staff via secure wide area wirelessconnections.
Outcome:
Fieldbook’s data handling capability, ease of use andstrong helpdesk support system means more than 600PSEG fieldworkers can intuitively access the informationthey need, when they need it.
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ProjectUnderstanding New andImproving Existing TrafficData (UNIETD)
ClientVarious nationalroads authorities
LocationEurope
ExpertiseITS research
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Opportunity:
Using improved traffic data from mobile devices canprovide benefits to all road users.
Solution:
We researched new capabilities for traffic data qualityevaluation and social media harvesting to create bettersystems for short-term traffic prediction.
Outcome:
Our software toolkit enabled road authorities to providebetter and more cost-effective traffic managementservices.