SlideShare a Scribd company logo
1
©Fluturasolutions2015
5 levels of IOT intelligence
There is a seismic shift under way in the engineering industries. The decreased
cost of sensors, the increased amount of instrumentation on assets and need
for new revenue streams are forcing engineering firms to re-imagine business
models. The fusion of “atoms with bytes” promises to unlock new value
previously unrecognised which generate additional revenue streams predicated
on intelligence generated from the data. As machines increasingly become
nodes in a vast array of industrial network, value is shifting towards the
intelligence which controls machines. Intelligent Platformization of machines
has begun
Keeping in mind this fundamental shift in value from atoms to intelligence,
Flutura has defined 5 levels of maturity to assess the machine intelligence
quotient of an engineering organisation. The highest level of maturity is
"Facebook of machines" with ubiquitous sensor connectivity and the lowest is
an asset which is "unplugged" where the device is offline. As organisations
embark on a journey to intensify the intelligence layer in their IOT offering it
makes sense to map where they are in their current state of maturity.
The 5 levels of machine intelligence with specific illustrative examples are
outlined below
2
©Fluturasolutions2015
organisation. A vast
majority of engineering
firms manufacture
assets which fall into
this category. For
example a vast variety
of industrial pumps
still are completely
mechanical devices
with no sensors to
instrument them.
This is the lowest level in
the maturity in the
maturity map. At this
level of maturity, the
device or sensor is
'unplugged' from the
network. There are no
“eyes” to see the state of
the machines at any point
in time.The machine is
offline to engineering 3
©Fluturasolutions2015
This is the next level of
machine intelligence
which exists in the
maturity curve. At this
level of intelligence the
device is connected to
the network. There is
also rudimentary
intelligence exists on the
device to take corrective
healing action. Examples
of assets having edge
intelligence include cars
which can alert the
drivers to basic
conditions which need
intervention. Other
examples include a boiler
which has edge
intelligence to switch
on/switch off valves
based on steam pressure
4
©Fluturasolutions2015
At this stage the device can be remotely
monitored and monitored from a central
command centre network. For example Flutura
was working with an asset service provider who
was monitoring the health of connected
buildings geographically dispersed and
monitored in real time. This requires the ability
of the platform to ingest billions of events from
boilers, chillers, alarms etc. in real time and
make sense of which assets need intervention
from the command centre and which assets are
healthy.
5
©Fluturasolutions2015
This is taking the intimate understanding of
assets to the next level. This involves triangulating
patterns from historical asset data, its ambient
conditions etc. to predict failures, defects etc. At
this stage, there is enough causal knowledge
available to model when the device would break
down and proactively trigger an intervention be it a
field visit or a part replacement.
6
©Fluturasolutions2015
This is the most evolved state of
engineering intelligence where all
assets the organisation has
deployed is connected in real
time seamlessly to field force,
head office engineers and
command centre
observers in real time. Very few
of global engineering firms are at
this level of maturity.
7
©Fluturasolutions2015
As business models evolve driven by
pervasive hyper connectivity of
devices across industries like
Utility, energy, Oil n Gas, Intelligent
building management systems etc,
competitive advantage will shift
towards differentiated value adding
intelligence platforms. Flutura
intends to leverage its Cerebra
Signal Studio Platform
to accelerate signal detection and
deliver value added business
outcomes.
8
©Fluturasolutions2015
www.flutura.com linkedin.com/company/flutura
Blog.fluturasolutions.com @fluturads 9
©Fluturasolutions2015

More Related Content

PPTX
Iot through hardware
PPTX
Open Standards for IoT- GSC Workshop on IoT Atlanta 2013
PDF
Analysys_Mason_M2M_IoT_operator_opportunities_Apr2016
PPTX
SWurban Tehran استارتاپ ویکند شهر هوشمند مهرماه 94
PPTX
Towards Tehran Smart City - Challenges and Limitations - final version
PPTX
Roadmap slides
PDF
Low Power Wide Area Networks (LPWANs), The required wireless infrastructure f...
Iot through hardware
Open Standards for IoT- GSC Workshop on IoT Atlanta 2013
Analysys_Mason_M2M_IoT_operator_opportunities_Apr2016
SWurban Tehran استارتاپ ویکند شهر هوشمند مهرماه 94
Towards Tehran Smart City - Challenges and Limitations - final version
Roadmap slides
Low Power Wide Area Networks (LPWANs), The required wireless infrastructure f...

Viewers also liked (19)

PDF
The expanding role of lte advanced
PDF
IoT Seminar (Jan. 2016) - (9) kenneth lowe - fast track your lwm2m developmen...
PDF
IoT soup!
PPTX
شهر هوشمند ناب
PDF
راهنمای ایجاد شهر هوشمند در ایران
 
PPTX
اینترنت اشیا یا به اختصارIotبه
PPTX
The Sensors in Internet of Things
PPT
AMR & EMS- Automated Meter Reading and Energy Management System
PPTX
Markerting - Michle Porter Book - First and Second Chapters
PDF
Qualcomm: Bringing cognitive technologies to life
PDF
IoT Seminar (Jan. 2016) - (1) dr omar elloumi - onem2m interworking and seman...
PDF
Internet of Things - Future & Opportunities * اینترنت اشیاء - فرصتهای پیش رو
PDF
Lpwa 2016 amsterdam endetec keynote 20160607_e03
PDF
Internet of Things Security Challlenges
PDF
Innovation Summit 2015 - 08 - gsma
PPTX
An Overview of LoRA, Sigfox, and IEEE 802.11ah
PDF
Marketing plan template - Dr Yahya Alavi برنامه بازاریابی دکتر یحیی علوی
PDF
Emerging vision technologies
PDF
تدوین طرح کسب و کار بر اساس مدل تسهیلات وزارت ارتباطات
The expanding role of lte advanced
IoT Seminar (Jan. 2016) - (9) kenneth lowe - fast track your lwm2m developmen...
IoT soup!
شهر هوشمند ناب
راهنمای ایجاد شهر هوشمند در ایران
 
اینترنت اشیا یا به اختصارIotبه
The Sensors in Internet of Things
AMR & EMS- Automated Meter Reading and Energy Management System
Markerting - Michle Porter Book - First and Second Chapters
Qualcomm: Bringing cognitive technologies to life
IoT Seminar (Jan. 2016) - (1) dr omar elloumi - onem2m interworking and seman...
Internet of Things - Future & Opportunities * اینترنت اشیاء - فرصتهای پیش رو
Lpwa 2016 amsterdam endetec keynote 20160607_e03
Internet of Things Security Challlenges
Innovation Summit 2015 - 08 - gsma
An Overview of LoRA, Sigfox, and IEEE 802.11ah
Marketing plan template - Dr Yahya Alavi برنامه بازاریابی دکتر یحیی علوی
Emerging vision technologies
تدوین طرح کسب و کار بر اساس مدل تسهیلات وزارت ارتباطات
Ad

Similar to 5 levels of IOT intelligence (20)

PDF
Keeping Your Cloud Infrastructure Healthy with the Internet of Things
PPT
Industry 4.0 with Instrumentation
PDF
Automation's Perfect Storm! These Changes Aren't Coming, They're Here!
PDF
Industrial Iot and Legacy Scada system - the solution for future ?
PPTX
Internet of Things in Partnership with Open Learning Campus
PDF
industrial IoT can monitor critical machinery
PDF
Eurotech: Smart Systems Innovator by Harbor Research
PDF
Designing for Manufacturing's 'Internet of Things'
PPTX
Smart manufacturing
PPTX
IIOT on Variable Frequency Drives
PDF
How the Internet of Things Leads to Better, Faster Crisis Communication
PDF
White Paper - Delivering on the IoT Experience - The HPE Universal IoT Platfo...
PDF
Webinar - Transforming Manufacturing with IoT
PDF
Smart factory trends to watch in 2018 - Future of Industry 4.0
PDF
Guardhat Award Write Up
PDF
Cloud for Internet of Things Insights from Patents
PDF
ft_mckinsey digital oil and gas
PDF
Infozech tower xchange-africa-dossier-2015
PDF
Smarter QA for Smart Homes
PDF
IoT White Paper
Keeping Your Cloud Infrastructure Healthy with the Internet of Things
Industry 4.0 with Instrumentation
Automation's Perfect Storm! These Changes Aren't Coming, They're Here!
Industrial Iot and Legacy Scada system - the solution for future ?
Internet of Things in Partnership with Open Learning Campus
industrial IoT can monitor critical machinery
Eurotech: Smart Systems Innovator by Harbor Research
Designing for Manufacturing's 'Internet of Things'
Smart manufacturing
IIOT on Variable Frequency Drives
How the Internet of Things Leads to Better, Faster Crisis Communication
White Paper - Delivering on the IoT Experience - The HPE Universal IoT Platfo...
Webinar - Transforming Manufacturing with IoT
Smart factory trends to watch in 2018 - Future of Industry 4.0
Guardhat Award Write Up
Cloud for Internet of Things Insights from Patents
ft_mckinsey digital oil and gas
Infozech tower xchange-africa-dossier-2015
Smarter QA for Smart Homes
IoT White Paper
Ad

More from Derick Jose (14)

PDF
IOT -6 key transitions
PDF
6 use cases
PDF
5 reasons why iot rocks
PDF
Wp05 iot+big data-reactive to preventive
PDF
Wp04 industry iot-6 key transitions
PDF
Wp03 5 levels of iot intelligence
PDF
22 non statistical questions for a statistician v2
PDF
Machine intelligence framework
PDF
Big data in oil n gas (1)
PDF
Rep broker analytics
PDF
5 benefits of load curve analysis
PDF
How Pricing Analytics is helping Retail Energy Provides compete in Market pla...
PDF
7 Ways to unlock value from Smartmeter Big Data
PDF
Whitepaper 1 - butterfly effect and big data
IOT -6 key transitions
6 use cases
5 reasons why iot rocks
Wp05 iot+big data-reactive to preventive
Wp04 industry iot-6 key transitions
Wp03 5 levels of iot intelligence
22 non statistical questions for a statistician v2
Machine intelligence framework
Big data in oil n gas (1)
Rep broker analytics
5 benefits of load curve analysis
How Pricing Analytics is helping Retail Energy Provides compete in Market pla...
7 Ways to unlock value from Smartmeter Big Data
Whitepaper 1 - butterfly effect and big data

Recently uploaded (20)

PPTX
Supervised vs unsupervised machine learning algorithms
PDF
Introduction to Business Data Analytics.
PDF
Launch Your Data Science Career in Kochi – 2025
PPTX
climate analysis of Dhaka ,Banglades.pptx
PPTX
Acceptance and paychological effects of mandatory extra coach I classes.pptx
PPTX
Business Ppt On Nestle.pptx huunnnhhgfvu
PPTX
Major-Components-ofNKJNNKNKNKNKronment.pptx
PPTX
STUDY DESIGN details- Lt Col Maksud (21).pptx
PPTX
CEE 2 REPORT G7.pptxbdbshjdgsgjgsjfiuhsd
PPT
Quality review (1)_presentation of this 21
PDF
Galatica Smart Energy Infrastructure Startup Pitch Deck
PPTX
Database Infoormation System (DBIS).pptx
PDF
.pdf is not working space design for the following data for the following dat...
PDF
BF and FI - Blockchain, fintech and Financial Innovation Lesson 2.pdf
PPTX
05. PRACTICAL GUIDE TO MICROSOFT EXCEL.pptx
PPTX
mbdjdhjjodule 5-1 rhfhhfjtjjhafbrhfnfbbfnb
PPT
Miokarditis (Inflamasi pada Otot Jantung)
PPTX
Introduction-to-Cloud-ComputingFinal.pptx
PPT
Chapter 3 METAL JOINING.pptnnnnnnnnnnnnn
Supervised vs unsupervised machine learning algorithms
Introduction to Business Data Analytics.
Launch Your Data Science Career in Kochi – 2025
climate analysis of Dhaka ,Banglades.pptx
Acceptance and paychological effects of mandatory extra coach I classes.pptx
Business Ppt On Nestle.pptx huunnnhhgfvu
Major-Components-ofNKJNNKNKNKNKronment.pptx
STUDY DESIGN details- Lt Col Maksud (21).pptx
CEE 2 REPORT G7.pptxbdbshjdgsgjgsjfiuhsd
Quality review (1)_presentation of this 21
Galatica Smart Energy Infrastructure Startup Pitch Deck
Database Infoormation System (DBIS).pptx
.pdf is not working space design for the following data for the following dat...
BF and FI - Blockchain, fintech and Financial Innovation Lesson 2.pdf
05. PRACTICAL GUIDE TO MICROSOFT EXCEL.pptx
mbdjdhjjodule 5-1 rhfhhfjtjjhafbrhfnfbbfnb
Miokarditis (Inflamasi pada Otot Jantung)
Introduction-to-Cloud-ComputingFinal.pptx
Chapter 3 METAL JOINING.pptnnnnnnnnnnnnn

5 levels of IOT intelligence

  • 2. 5 levels of IOT intelligence There is a seismic shift under way in the engineering industries. The decreased cost of sensors, the increased amount of instrumentation on assets and need for new revenue streams are forcing engineering firms to re-imagine business models. The fusion of “atoms with bytes” promises to unlock new value previously unrecognised which generate additional revenue streams predicated on intelligence generated from the data. As machines increasingly become nodes in a vast array of industrial network, value is shifting towards the intelligence which controls machines. Intelligent Platformization of machines has begun Keeping in mind this fundamental shift in value from atoms to intelligence, Flutura has defined 5 levels of maturity to assess the machine intelligence quotient of an engineering organisation. The highest level of maturity is "Facebook of machines" with ubiquitous sensor connectivity and the lowest is an asset which is "unplugged" where the device is offline. As organisations embark on a journey to intensify the intelligence layer in their IOT offering it makes sense to map where they are in their current state of maturity. The 5 levels of machine intelligence with specific illustrative examples are outlined below 2 ©Fluturasolutions2015
  • 3. organisation. A vast majority of engineering firms manufacture assets which fall into this category. For example a vast variety of industrial pumps still are completely mechanical devices with no sensors to instrument them. This is the lowest level in the maturity in the maturity map. At this level of maturity, the device or sensor is 'unplugged' from the network. There are no “eyes” to see the state of the machines at any point in time.The machine is offline to engineering 3 ©Fluturasolutions2015
  • 4. This is the next level of machine intelligence which exists in the maturity curve. At this level of intelligence the device is connected to the network. There is also rudimentary intelligence exists on the device to take corrective healing action. Examples of assets having edge intelligence include cars which can alert the drivers to basic conditions which need intervention. Other examples include a boiler which has edge intelligence to switch on/switch off valves based on steam pressure 4 ©Fluturasolutions2015
  • 5. At this stage the device can be remotely monitored and monitored from a central command centre network. For example Flutura was working with an asset service provider who was monitoring the health of connected buildings geographically dispersed and monitored in real time. This requires the ability of the platform to ingest billions of events from boilers, chillers, alarms etc. in real time and make sense of which assets need intervention from the command centre and which assets are healthy. 5 ©Fluturasolutions2015
  • 6. This is taking the intimate understanding of assets to the next level. This involves triangulating patterns from historical asset data, its ambient conditions etc. to predict failures, defects etc. At this stage, there is enough causal knowledge available to model when the device would break down and proactively trigger an intervention be it a field visit or a part replacement. 6 ©Fluturasolutions2015
  • 7. This is the most evolved state of engineering intelligence where all assets the organisation has deployed is connected in real time seamlessly to field force, head office engineers and command centre observers in real time. Very few of global engineering firms are at this level of maturity. 7 ©Fluturasolutions2015
  • 8. As business models evolve driven by pervasive hyper connectivity of devices across industries like Utility, energy, Oil n Gas, Intelligent building management systems etc, competitive advantage will shift towards differentiated value adding intelligence platforms. Flutura intends to leverage its Cerebra Signal Studio Platform to accelerate signal detection and deliver value added business outcomes. 8 ©Fluturasolutions2015