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LD4SC-­‐15	
  
Seman&cs	
  for	
  Smarter	
  Ci&es.	
  Hype	
  or	
  Reality?	
  	
  
A	
  Study	
  in	
  Dublin,	
  Bologna,	
  Miami,	
  and	
  Rio	
  
Freddy	
  Lecue	
  
LD4SC-­‐15	
  
Context	
  
LD4SC-­‐15	
  
Arrival of the “urban millennium”
By 2050 over 6 billion people, two thirds of humanity, will be living in towns and cities
Source: Smart Cities How will we manage our cities in the 21C?, Colin Harrison IBM Corporate
Strategy Member, IBM Academy of Technology
Indoor air pollution
resulting from the use of
solid fuels [by poorer
segments of society] is a
major killer!
Claims the lives of 1.5 million people
each year, more than half of them below
the age of five (4000 deaths per day)
Water problems affect
half of humanity!!!!
1.1 billion people in developing
countries have inadequate access to
water, and 2.6 billion lack basic
sanitation
1.6 billion people —
a quarter of
humanity — live
without electricity!
South Asia, Sub-Saharan Africa
and East Asia have the greatest
number of people living without
electricity (as high as 706 million
in South Asia)Source: 2008 UN Habitat; Smart Cities How will we manage our
cities in the 21C?, Colin Harrison IBM Corporate Strategy
Introduc&on	
  
Mo&va&on	
  –	
  Today’s	
  Ci&es	
  are	
  Confronted	
  with	
  Serious	
  Dilemmas	
  	
  
LD4SC-­‐15	
  
ASIA N.A. & EUROPE AFRICA LATIN AMERICA
Rapid expansion Negative growth
Rural exodus increasing
poverty
Decentralization
§ Over the next decade, Asia’s
urban areas will grow by more
than 100,000 people a day
§ Growth rates are more rapid
than the investment in
infrastructure
§ Benefits of new infrastructure
investments have not been
distributed equally
§ 46 countries (including
Germany, Italy, most former
Soviet states) are expected to
be smaller in 2050
§ The number of shrinking
cities has increased faster in
the last 50 years than the
number of expanding cities
§ In 2008, more than 12M
Africans left their rural homes
to live in urban areas
§ The projected increase in
urban migration will exacerbate
the problems of providing
infrastructure, sanitation.
health services, and food
§ Large cities have
incorporated nearby villages
and towns – as a result, large
urban areas developed sub-
centers whose functions
duplicated those of the central
city
§ Many large cities are
competing with their outlying
suburbs for people, revenue,
and employment
Source:	
  Various;	
  IBM	
  MI	
  Analysis;	
  
Introduc&on	
  
Mo&va&on	
  –	
  Regions	
  have	
  both	
  Common	
  and	
  Unique	
  Challenges	
  	
  
LD4SC-­‐15	
  
Source:	
  Various;	
  IBM	
  MI	
  Analysis;	
  
Introduc&on	
  
The Sustainable Eco-City	

The Well Planned City	

 The Healthy and Safe City	

The Cultural-
Convention Hub	

 The City of Digital Innovation	

Mo&va&on	
  –	
  Beyond	
  the	
  prac&cal	
  objec&ves,	
  ci&es	
  have	
  ‘aspira&ons’	
  	
  
The City of Commerce
LD4SC-­‐15	
  
Miami,	
  USA	
  
Dublin,	
  Ireland	
  
Rio,	
  Brazil	
  
• 5.5	
  billion	
  hours	
  of	
  travel	
  delay	
  	
  
• 2.9	
  billion	
  gallons	
  of	
  wasted	
  fuel	
  in	
  the	
  USA	
  
• $121	
  billion	
  /	
  year	
  	
  
• 0.7%	
  of	
  USA	
  GDP	
  
*5	
  over	
  the	
  past	
  30	
  years	
  
Bologna,	
  Italy	
  
How	
  to	
  reduce	
  	
  
traffic	
  congesHon	
  ?	
  
Introduc&on	
  
Mo&va&on	
  –	
  Socio-­‐Economic	
  Context	
  
LD4SC-­‐15	
  
Introduc&on	
  
Mo&va&on	
  –	
  Limita&on	
  of	
  Exis&ng	
  Systems	
  (Example:	
  Traffic)	
  (1)	
  
Most	
  traffic	
  	
  
systems	
  	
  
already	
  support	
  	
  
Basic	
  Analy&cs	
  	
  
and	
  Visualiza&on!!!	
  
Basic	
  AnalyHcs	
  from	
  	
  
Bus	
  /	
  Taxi	
  data	
  
LD4SC-­‐15	
  
•  All	
  exis&ng	
  traffic	
  management	
  systems	
  are	
  based	
  on	
  ONE	
  signal	
  /	
  stream	
  
•  No	
  possible	
  interpretaHon	
  of	
  traffic	
  Anomalies	
  
•  No	
  IntegraHon	
  of	
  Exogenous	
  Data	
  
No	
  SemanHcs	
  /	
  Context	
  !	
  
No	
  ExplanaHon	
  	
  
No	
  Diagnosis	
  
Introduc&on	
  
Mo&va&on	
  –	
  Limita&on	
  of	
  Exis&ng	
  Systems	
  (Example:	
  Traffic)	
  (2)	
  
LD4SC-­‐15	
  
•  Sensor	
  data	
  assimilaHon	
  
–  Data	
  diversity,	
  heterogeneity	
  
–  Data	
  accuracy,	
  sparsity	
  
–  Data	
  volume	
  
	
  
•  	
  Modelling	
  human	
  demand	
  
–  Understand	
  how	
  people	
  use	
  the	
  city	
  infrastructure	
  
–  Infer	
  demand	
  pa_erns	
  
•  	
  Factor	
  in	
  Uncertainty	
  
–  Opera&ons	
  and	
  planning	
  
–  Organise	
  and	
  open	
  data	
  and	
  knowledge,	
  to	
  engage	
  
ci&zens,	
  empower	
  universi&es	
  and	
  enable	
  business	
  
Introduc&on	
  
Seman&cs	
  for	
  ci&es:	
  How	
  can	
  Seman&cs	
  help	
  ci&es	
  transform	
  ?	
  
LD4SC-­‐15	
  
Introduc&on	
  
Seman&cs	
  for	
  ci&es:	
  why	
  now?	
  Open	
  Data!	
  
LD4SC-­‐15	
  
Introduc&on	
  
Seman&cs	
  for	
  ci&es:	
  why	
  now?	
  Ci&es	
  want	
  to	
  be	
  Smarter	
  Ci&es!	
  
Nowadays:	
  
Issues	
  of	
  Urban	
  Quality	
  such	
  as	
  housing,	
  economy,	
  culture,	
  social	
  and	
  environmental	
  condi&ons.	
  
LD4SC-­‐15	
  
Introduc&on	
  
Seman&cs	
  for	
  ci&es:	
  why	
  Seman&cs?	
  Big	
  Data	
  
LD4SC-­‐15	
  
Working harder is not sustainable
Cities require innovative approaches
Introduc&on	
  
Seman&cs	
  for	
  ci&es:	
  why	
  Seman&c	
  Web,	
  Linked	
  Open	
  Data?	
  Smart	
  Systems	
  
LD4SC-­‐15	
  
Introduc&on	
  
Seman&cs	
  for	
  ci&es	
  
Walkonomics	
  
FixMyStreet	
  
Schooloscope	
  
FloodAlerts	
  
BeatTheBurglar	
  
Where	
  can	
  I	
  live?	
  
LD4SC-­‐15	
  
Introduc&on	
  
Seman&cs	
  for	
  ci&es	
  –	
  Our	
  Experience	
  
LD4SC-­‐15	
  
Data	
  format	
  and	
  data	
  access,	
  collec&on,	
  storage,	
  transforma&on	
  
Big	
  Data	
  –	
  The	
  World	
  of	
  Data	
   Source:	
  Various;	
  IBM	
  MI	
  Analysis;	
  
LD4SC-­‐15	
  
Data	
  format	
  and	
  data	
  access,	
  collec&on,	
  storage,	
  transforma&on	
  
Big	
  Data	
  –	
  4Vs	
   Source:	
  Various;	
  IBM	
  MI	
  Analysis;	
  
LD4SC-­‐15	
  
Data	
  format	
  and	
  data	
  access,	
  collec&on,	
  storage,	
  transforma&on	
  
Data	
  Format	
  and	
  Heterogeneity	
  -­‐	
  City	
  Data	
  !=	
  Open	
  Data	
  (1)	
  
A Global
Movement Has
Begun to Provide
Transparency and
Democratization
of Data
18November 30, 2011
Don’t see your site?
Update via @usdatagov
(*)	
  “Driving	
  Innova&on	
  with	
  Open	
  Data”,	
  Jeanne	
  Holm,	
  Data.gov,	
  
February	
  9th,	
  2012	
  (Presenta&on	
  to	
  Ontology	
  2012)	
  
Think Big, Start Small, Innovate
Data.gov Quick Facts May 2009 October 2011
Total datasets available 47 >400,000
Hits to Data.gov 0 >200 million
Apps and mash ups by citizens and government 0 372 + 1113
RDF triples for semantic applications 0 6.7 billion
Dataset downloads 0 >2.0 million
Nations establishing open data sites 0 28
States offering open data sites 0 31
Cities in North America with open data sites 0 13
Open data contacts in Federal agencies 24 396
Agencies and subagencies participating 7 185
Communities 0 7
Community challenges 0 23
November 30, 2011 11
A	
  lot	
  of	
  relevant	
  open	
  data	
  
for	
  city	
  data	
  analy&cs	
  
LD4SC-­‐15	
  
Applica&ons	
  in	
  Ci&es:	
  
Bologna,	
  Dublin,	
  
Miami,	
  Rio…	
  and	
  
Airlines	
  
LD4SC-­‐15	
  
Miami,	
  USA	
  
STAR-­‐CITY	
  (Seman&c	
  Traffic	
  Analy&cs	
  and	
  Reasoning	
  for	
  CITY)	
  
Input	
  
•  Type	
  of	
  anomaly	
  (bus	
  speed,	
  
ambulance	
  delay…)	
  
•  Type	
  of	
  explana&on	
  (city	
  events,	
  
unplanned	
  events,	
  road	
  works,	
  …)	
  
Output	
  
•  Impact	
  of	
  events	
  and	
  their	
  
characteris&cs	
  on	
  anomalies	
  
SemanHc	
  
InterpretaHon	
  of	
  
Diagnosis	
  
SemanHc	
  Reasoning:	
  	
  
Diagnosis	
  	
  
SemanHc	
  Context	
  
SemanHc	
  Search:	
  	
  
Diagnosis	
  ExploraHon	
  
Live	
  IBM	
  demo:	
  h_p://208.43.99.116:9080/simplicity/demo.jsp	
  
Live	
  WWW	
  demo:	
  h_p://dublinked.ie/sandbox/star-­‐city/	
  	
  
Video:	
  h_p://goo.gl/TuwNyL	
  
LD4SC-­‐15	
  
STAR-­‐CITY	
  (Seman&c	
  Traffic	
  Analy&cs	
  and	
  Reasoning	
  for	
  CITY)	
  
Context	
   •  Dublin:	
  (Diagnosis	
  of)	
  Traffic	
  conges&on	
  
•  Bologna:	
  (Diagnosis	
  of)	
  Bus	
  conges&on	
  
•  Miami:	
  (Diagnosis	
  of)	
  Bus	
  bunching	
  
•  Rio:	
  (Diagnosis	
  of)	
  Low	
  on-­‐&me	
  performance	
  of	
  buses	
  
Source	
  of	
  
Anomaly	
  
Source	
  of	
  
Diagnosis	
  
LD4SC-­‐15	
  
Challenge:	
  
Source	
  of	
  
Anomaly	
  
Source	
  of	
  
Diagnosis	
  
•  Explaining	
  Traffic	
  Condi&ons	
  with	
  
Diagnosis	
  Reasoning	
  
•  Logical	
  correla&on	
  of	
  anomalies	
  and	
  
diagnosis	
  in	
  dynamic	
  sepngs	
  
•  Knowledge	
  Representa&on	
  and	
  Reasoning	
  
•  Machine	
  Learning	
  /	
  AI	
  Diagnosis	
  
•  Database:	
  Large	
  scale	
  data	
  integra&on	
  
•  Signal	
  Processing	
  /	
  Stream	
  Reasoning	
  
Core	
  Areas	
  /	
  Problems:	
  
STAR-­‐CITY	
  (Seman&c	
  Traffic	
  Analy&cs	
  and	
  Reasoning	
  for	
  CITY)	
  
LD4SC-­‐15	
  
Architecture	
  of	
  Diagnosis	
  Components	
  
STAR-­‐CITY	
  (Seman&c	
  Traffic	
  Analy&cs	
  and	
  Reasoning	
  for	
  CITY)	
  
LD4SC-­‐15	
  
STAR-­‐CITY	
  (Seman&c	
  Traffic	
  Analy&cs	
  and	
  Reasoning	
  for	
  CITY)	
  
Data	
  
Vocabulary	
  
LD4SC-­‐15	
  
Challenge:	
  
Predic&ve	
  reasoning	
  (as	
  opposed	
  to	
  analyHcs)	
  	
  
in	
  heterogeneous	
  and	
  dynamic	
  sepngs	
  
•  Knowledge	
  Representa&on	
  and	
  Reasoning	
  
•  Machine	
  Learning	
  /	
  Knowledge	
  Discovery	
  
•  Database:	
  Large	
  scale	
  data	
  integra&on	
  
•  Signal	
  Processing	
  /	
  Stream	
  Reasoning	
  
Core	
  Areas	
  /	
  Problems:	
  
Traffic	
  Condi&on	
  
Road	
  Incident	
  
Weather	
  Condi&on	
  
STAR-­‐CITY	
  (Seman&c	
  Traffic	
  Analy&cs	
  and	
  Reasoning	
  for	
  CITY)	
  
LD4SC-­‐15	
  
Miami,	
  USA	
  
STAR-­‐CITY	
  (Seman&c	
  Traffic	
  Analy&cs	
  and	
  Reasoning	
  for	
  CITY)	
  
Input	
  
•  Type	
  of	
  anomaly	
  (bus	
  speed,	
  
ambulance	
  delay…)	
  
•  Type	
  of	
  explana&on	
  (city	
  events,	
  
unplanned	
  events,	
  road	
  works,	
  …)	
  
Output	
  
•  Impact	
  of	
  events	
  and	
  their	
  
characteris&cs	
  on	
  anomalies	
  
	
  
Input	
  
•  Type	
  of	
  anomaly	
  (bus	
  speed,	
  
ambulance	
  delay…)	
  
•  Type	
  of	
  explana&on	
  (city	
  events,	
  
unplanned	
  events,	
  road	
  works,	
  …)	
  
Output	
  
•  Real-­‐&me/Historical	
  diagnosis	
  
results	
  
•  Evolu&on	
  of	
  diagnosis	
  over	
  &me/
space	
  
•  Comparison	
  vs.	
  historical	
  
	
  
Objec&ve:	
  Real-­‐Time	
  and	
  Historical	
  Traffic	
  Diagnosis	
  (1)	
  
Live	
  demo:	
  h_p://208.43.99.116:9080/simplicity/demo.jsp	
  
Video:	
  h_p://goo.gl/TuwNyL	
  
LD4SC-­‐15	
  
Miami,	
  USA	
  
STAR-­‐CITY	
  (Seman&c	
  Traffic	
  Analy&cs	
  and	
  Reasoning	
  for	
  CITY)	
  
Input	
  
•  Type	
  of	
  anomaly	
  (bus	
  speed,	
  
ambulance	
  delay…)	
  
•  Type	
  of	
  explana&on	
  (city	
  events,	
  
unplanned	
  events,	
  road	
  works,	
  …)	
  
Output	
  
•  Impact	
  of	
  events	
  and	
  their	
  
characteris&cs	
  on	
  anomalies	
  
	
  
Input	
  
•  Type	
  of	
  anomaly	
  (bus	
  speed,	
  
ambulance	
  delay…)	
  
•  Type	
  of	
  explana&on	
  (city	
  events,	
  
unplanned	
  events,	
  road	
  works,	
  …)	
  
Output	
  
•  Categoriza&on	
  of	
  diagnosis	
  
	
  
Live	
  demo:	
  h_p://208.43.99.116:9080/simplicity/demo.jsp	
  
Video:	
  h_p://goo.gl/TuwNyL	
  
Objec&ve:	
  Real-­‐Time	
  and	
  Historical	
  Traffic	
  Diagnosis	
  (2)	
  
LD4SC-­‐15	
  
Miami,	
  USA	
  h_p://vtce.altervista.org/	
  
Reverse	
  STAR-­‐CITY	
  system	
  for	
  city	
  managers	
  
LD4SC-­‐15	
  
Reverse	
  STAR-­‐CITY	
  system	
  for	
  city	
  managers	
  
Objec&ve:	
  City	
  Planning	
  
Input	
  
•  Type	
  of	
  anomaly	
  (bus	
  
speed,	
  ambulance	
  
delay…)	
  
•  Type	
  of	
  explana&on	
  
(city	
  events,	
  
unplanned	
  events,	
  
road	
  works,	
  …)	
  
Output	
  
•  Impact	
  of	
  events	
  and	
  
their	
  characteris&cs	
  
on	
  anomalies	
  
h_p://www.vtce.altervista.org/	
  
LD4SC-­‐15	
  
Reverse	
  STAR-­‐CITY	
  system	
  for	
  city	
  managers	
  
Data	
  
Vocabulary	
  
LD4SC-­‐15	
  
Miami,	
  USA	
  
Mobile	
  STAR-­‐CITY	
  app	
  for	
  ci&zen	
  in	
  Dublin	
  and	
  Bologna	
  
LD4SC-­‐15	
  
Miami,	
  USA	
  
Mobile	
  STAR-­‐CITY	
  app	
  for	
  ci&zen	
  in	
  Dublin	
  and	
  Bologna	
  
Use	
  case	
  scenario:	
  MeeHng	
  the	
  Increased	
  Mobility	
  Demand:	
  
	
  
•  Scenario	
  1	
  “Road	
  Traffic	
  Diagnosis”	
  
•  Scenario	
  2	
  “Road	
  Traffic	
  Predic&on”	
  
•  Scenario	
  3	
  “Personalized	
  Traffic	
  Restric&ons”	
  
Outcome:	
  
	
  
•  One	
  mobile	
  app	
  	
  
•  Two	
  pilot	
  ci&es	
  (Dublin	
  and	
  Bologna)	
  	
  
•  Live	
  and	
  real-­‐&me	
  environment	
  	
  
•  Real	
  data	
  (user	
  calendar,	
  open	
  data:	
  traffic	
  
conges&on,	
  weather,	
  events,	
  road	
  works,	
  accident	
  …)	
  	
  
•  but	
  with	
  simulated	
  car	
  sensor	
  data	
  –	
  Aus&n	
  ;-­‐)	
  
Context	
  
LD4SC-­‐15	
  
Mobile	
  STAR-­‐CITY	
  app	
  for	
  ci&zen	
  in	
  Dublin	
  and	
  Bologna	
  
Data	
  
Dublin	
  
Car-­‐related	
  
User-­‐related	
  
Vocabulary	
  
Bologna	
  
LD4SC-­‐15	
  
Mobile	
  STAR-­‐CITY	
  app	
  for	
  ci&zen	
  in	
  Dublin	
  and	
  Bologna	
  
User	
  Context-­‐aware	
  	
  
Driving	
  (User	
  data)	
  
Open	
  Context-­‐aware	
  	
  
Driving	
  (Open	
  data)	
  
Private	
  Context-­‐aware	
  	
  
Driving	
  (City	
  data)	
  
Objec&ve:	
  Context-­‐aware	
  driving	
  experience	
  (1)	
  
LD4SC-­‐15	
  
Mobile	
  STAR-­‐CITY	
  app	
  for	
  ci&zen	
  in	
  Dublin	
  and	
  Bologna	
  
Objec&ve:	
  Context-­‐aware	
  driving	
  experience	
  (2)	
  
Personal	
  Events-­‐aware	
  	
  
Driving	
  Car	
  Sensor	
  	
  
Simula@on	
  
Car	
  Sensor-­‐aware	
  	
  
Driving	
  
LD4SC-­‐15	
  
Real-­‐Time	
  Urban	
  Monitoring	
  in	
  Dublin	
  
h_ps://www.youtube.com/watch?v=ImTI0jm3OEw	
  Green:	
  Dublin	
  Bike	
  availability	
  
Purple	
  dot:	
  Bus	
  in	
  congesHon	
  
Blue:	
  Noise	
  
Purple	
  bar:	
  PolluHon	
  
Red:	
  AmeniHes	
  
Yellow:	
  Cameras	
  
LD4SC-­‐15	
  
Seman&c	
  Processing	
  of	
  Urban	
  Data	
  
h_ps://www.youtube.com/watch?v=lrUHet5awzw&feature=youtu.be	
  
h_p://50.97.192.242:8080/Dali/	
  
LD4SC-­‐15	
  
Cogni&ve	
  Explana&on	
  of	
  Flight	
  Delays	
  
LD4SC-­‐15	
  
LD4SC-­‐15	
  
Conclusion	
  
Ci&es	
  are	
  characterized	
  by:	
  
•  Big	
  Data	
  
•  Complex	
  Systems	
  
	
  
Ci&es	
  want	
  to	
  be	
  Smarter:	
  	
  
•  More	
  efficient	
  
•  More	
  reliable	
  
•  More	
  secure	
  
•  More	
  open	
  
Ci&es	
  can	
  benefits	
  from	
  	
  
•  REAL	
  World	
  data:	
  Open	
  Data	
  to	
  get	
  Smarter	
  
•  Advances	
  in	
  AI	
  
AI	
  already	
  helped	
  a	
  lot!!	
  ...	
  and	
  should	
  even	
  contribute	
  further	
  
•  Op&miza&on,	
  coordina&on	
  …	
  
•  Cheaper	
  
•  Faster	
  
•  More	
  integrated	
  
•  More	
  ci&zen-­‐centric	
  
•  More	
  a_rac&ve	
  	
  
•  More	
  Intelligent	
  
•  Sustainable	
  	
  
•  Be_er	
  city	
  planning	
  
•  Integrated	
  Problems	
  
•  Scalability	
  Challenges	
  
LD4SC-­‐15	
  
Future	
  Work	
  
Analy&cs	
  and	
  Reasoning:	
  Scalability	
  from	
  One	
  City	
  to	
  Another	
  One	
  
Picture	
  of	
  different	
  ci&es	
  
LD4SC-­‐15	
  
Future	
  Work	
  
Applica&on:	
  From	
  Ci&es	
  to	
  mini-­‐Ci&es	
  
Airport	
  
Supply-­‐Chain	
  
Building	
  
Stadium	
  
Warehouse	
  
LD4SC-­‐15	
  
Future	
  Work	
  
More	
  Mul&-­‐disciplinary:	
  AI	
  (Planning,	
  KRR,	
  ML,	
  …),	
  Database,	
  Mathema&cs	
  …	
  	
  	
  
More	
  Science	
  	
  
Integra&on	
  
LD4SC-­‐15	
  
References	
  (1)	
  
•  Freddy	
  Lecue,	
  Jeff	
  Z.Pan.	
  Consistent	
  Knowledge	
  Discovery	
  from	
  Evolving	
  Ontologies.	
  AAAI	
  2015.	
  	
  Aus&n,	
  Texas,	
  USA,	
  
January,	
  2015.	
  
•  Anika	
  Schumann,	
  Freddy	
  Lecue.	
  Minimizing	
  User	
  Involvement	
  for	
  Accurate	
  Ontology	
  Matching	
  Problems.	
  AAAI	
  2015.	
  	
  
Aus&n,	
  Texas,	
  USA,	
  January,	
  2015.	
  
•  Freddy	
  Lecue,	
  Simone	
  Tallevi-­‐Diotallevi,	
  Jer	
  Hayes,	
  Robert	
  Tucker,	
  Veli	
  Bicer,	
  Marco	
  Sbodio,	
  Pierpaolo	
  Tommasi.	
  Smart	
  
traffic	
  analy&cs	
  in	
  the	
  seman&c	
  web	
  with	
  STAR-­‐CITY:	
  Scenarios,	
  system	
  and	
  lessons	
  learned	
  in	
  Dublin	
  City.	
  In	
  Jour-­‐	
  nal	
  of	
  
Web	
  Seman&cs.	
  Web	
  Seman&cs:	
  Science,	
  Services	
  and	
  Agents	
  on	
  the	
  World	
  Wide	
  Web	
  (JWS).	
  Vol	
  XX	
  (2014).	
  
•  Spyros	
  Kotoulas,	
  Vanessa	
  Lopez,	
  Raymond	
  Lloyd,	
  Marco	
  Luca	
  Sbodio,	
  Freddy	
  Lecue,	
  MarHn	
  Stephenson,	
  Elizabeth	
  M.	
  
Daly,	
  Veli	
  Bicer,	
  Aris	
  Gkoulalas-­‐Divanis,	
  Giusy	
  Di	
  Lorenzo,	
  Anika	
  Schumann,	
  Pol	
  Mac	
  Aonghusa.	
  SPUD	
  -­‐	
  Seman&c	
  Pro-­‐	
  
cessing	
  of	
  Urban	
  Data.	
  In	
  Journal	
  of	
  Web	
  Seman&cs.	
  Web	
  Seman&cs:	
  Science,	
  Services	
  and	
  Agents	
  on	
  the	
  World	
  Wide	
  
Web	
  (JWS),	
  Vol	
  24	
  (2014).	
  
•  Freddy	
  Lecue,	
  Robert	
  Tucker,	
  Simone	
  Tallevi-­‐Diotallevi,	
  Rahul	
  Nair,	
  Yiannis	
  Gkoufas,	
  Giuseppe	
  Liguori,	
  Mauro	
  Borioni,	
  
Alexandre	
  Rademaker	
  and	
  Luciano	
  Barbosa.	
  Seman&c	
  Traffic	
  Diagnosis	
  with	
  STAR-­‐CITY:	
  Architecture	
  and	
  Lessons	
  Learned	
  
from	
  Deployment	
  in	
  Dublin,	
  Bologna,	
  Miami	
  and	
  Rio,	
  ISWC	
  2014,	
  Riva,	
  Italy,	
  October	
  2014	
  (Best	
  In	
  Use	
  Paper	
  Award)	
  
•  Joern	
  Ploennigs,	
  Anika	
  Schumann,	
  Freddy	
  Lecue.	
  AdapHng	
  SemanHc	
  Sensor	
  Networks	
  for	
  Smart	
  Building	
  Diagnosis.	
  In	
  
Proceedings	
  of	
  the	
  13th	
  Interna&onal	
  Seman&c	
  Web	
  Conference	
  (ISWC	
  2014),	
  pages	
  308-­‐323,	
  October	
  19-­‐23,	
  2014,	
  Riva	
  
del	
  Garda,	
  Italy.	
  Springer	
  2014	
  ISBN	
  978-­‐3-­‐319-­‐11914-­‐4.	
  (Best	
  In	
  Use	
  Paper	
  Award	
  Nominee)	
  
•  Jiewen	
  Wu,	
  Freddy	
  Lecue.	
  Towards	
  Consistency	
  Checking	
  over	
  Evolving	
  Ontologies.	
  Proceedings	
  of	
  the	
  23rd	
  ACM	
  
Conference	
  on	
  Informa&on	
  and	
  Knowledge	
  Management,	
  CIKM	
  2014,	
  Shanghai,	
  China,	
  November	
  3-­‐7,	
  2014.	
  
•  Anika	
  Schumann,	
  Freddy	
  Lecue,	
  Joern	
  Ploennigs.	
  Exploi&ng	
  the	
  Seman&c	
  Web	
  for	
  Systems	
  Diagnosis.	
  In	
  Proceedings	
  of	
  
the	
  Twenty-­‐First	
  European	
  Conference	
  on	
  Ar&	
  cial	
  Intelligence	
  (ECAI	
  2014),	
  pages	
  ??-­‐??,	
  August	
  18-­‐22,	
  2014,	
  Prague,	
  
Czech	
  Republic.	
  IOS	
  Press	
  2014.	
  
LD4SC-­‐15	
  
References	
  (2)	
  
•  Joern	
  Ploennigs,	
  Anika	
  Schumann,	
  Freddy	
  Lecue.	
  Extending	
  Seman&c	
  Sensor	
  Networks	
  for	
  Automa&cally	
  Tackling	
  Smart	
  
Building	
  Problems.	
  In	
  Proceedings	
  of	
  the	
  Twenty-­‐First	
  European	
  Conference	
  on	
  Ar&	
  cial	
  Intelligence	
  (ECAI	
  2014),	
  
pages	
  ??-­‐??,	
  August	
  18-­‐22,	
  2014,	
  Prague,	
  Czech	
  Republic.	
  IOS	
  Press	
  2014.	
  
•  Freddy	
  Lécué:	
  Towards	
  Scalable	
  Explora&on	
  of	
  Diagnoses	
  in	
  an	
  Ontology	
  Stream.	
  AAAI	
  2014:	
  87-­‐93	
  
•  Freddy	
  Lécué,	
  Robert	
  Tucker,	
  Veli	
  Bicer,	
  Pierpaolo	
  Tommasi,	
  Simone	
  Tallevi-­‐Diotallevi,	
  Marco	
  Luca	
  Sbodio:	
  Predic&ng	
  
Severity	
  of	
  Road	
  Traffic	
  Conges&on	
  Using	
  Seman&c	
  Web	
  Technologies.	
  ESWC	
  2014:	
  611-­‐627	
  (Best	
  In	
  Use	
  Paper	
  Award)	
  
•  Freddy	
  Lécué,	
  Simone	
  Tallevi-­‐Diotallevi,	
  Jer	
  Hayes,	
  Robert	
  Tucker,	
  Veli	
  Bicer,	
  Marco	
  Luca	
  Sbodio,	
  Pierpaolo	
  Tommasi:	
  
STAR-­‐CITY:	
  seman&c	
  traffic	
  analy&cs	
  and	
  reasoning	
  for	
  CITY.	
  IUI	
  2014:	
  179-­‐188	
  
•  Simone	
  Tallevi-­‐Diotallevi,	
  Spyros	
  Kotoulas,	
  Luca	
  Foschini,	
  Freddy	
  Lecue,	
  Antonio	
  Corradi.	
  Real-­‐Time	
  Urban	
  Monitoring	
  in	
  
Dublin	
  Using	
  Seman&c	
  and	
  Stream	
  Technologies.	
  In	
  Proceedings	
  of	
  the	
  12th	
  Interna&onal	
  Seman&c	
  Web	
  Confer-­‐	
  ence	
  
(ISWC	
  2013),	
  pages	
  178-­‐194,	
  October	
  21-­‐25,	
  2013,	
  Sydney,	
  NSW,	
  Australia.	
  Springer	
  2013	
  Lecture	
  Notes	
  in	
  Computer	
  
Science	
  ISBN	
  978-­‐3-­‐642-­‐41337-­‐7.	
  
•  Freddy	
  Lecue,	
  Jeff	
  Z,	
  Pan.	
  Predic&ng	
  Knowledge	
  in	
  an	
  Ontology	
  Stream.	
  In	
  Proceedings	
  of	
  the	
  Interna&onal	
  Joint	
  
Conference	
  on	
  Ar&ficial	
  Intelligence	
  (IJCAI	
  2013)	
  
•  Elizabeth	
  M.	
  Daly,	
  Freddy	
  Lecue,	
  Veli	
  Bicer.	
  Westland	
  Row	
  Why	
  So	
  Slow?	
  Fusing	
  Social	
  Media	
  and	
  Linked	
  Data	
  Sources	
  for	
  
Understanding	
  Real-­‐Time	
  Traffic	
  Condi&ons.	
  In	
  Proceedings	
  of	
  the	
  ACM	
  2013	
  Interna&onal	
  Conference	
  on	
  Intelligent	
  User	
  
Interfaces	
  (IUI	
  2013)	
  
•  Freddy	
  Lecue,	
  Anika	
  Schumann,	
  Marco	
  Luca	
  Sbodio.	
  Applying	
  Seman&c	
  Web	
  Technologies	
  for	
  Diagnosing	
  Road	
  Traffic	
  
Conges&ons.	
  In	
  Proceedings	
  of	
  the	
  11th	
  Interna&onal	
  Seman&c	
  Web	
  Conference	
  (ISWC	
  2012),	
  Springer	
  (Best	
  In	
  Use	
  Paper	
  
Award	
  Nominee)	
  
•  Freddy	
  Lecue:	
  Diagnosing	
  Changes	
  in	
  An	
  Ontology	
  Stream:	
  A	
  DL	
  Reasoning	
  Approach.	
  In	
  Proceedings	
  of	
  the	
  Twenty-­‐Sixth	
  
AAAI	
  Conference	
  on	
  Ar&ficial	
  Intelligence	
  (AAAI	
  2012),	
  July	
  22-­‐26,	
  2012,	
  Toronto,	
  Ontario,	
  Canada.	
  AAAI	
  Press	
  2012.	
  
LD4SC-­‐15	
  
Ques&ons	
  
Thank you!
Credits:	
  Pol	
  Mac	
  Aonghusa,	
  Luciano	
  Barbosa,	
  Veli	
  Bicer,	
  Antonio	
  Corradi,	
  Elizabeth	
  Daly,	
  Luca	
  Foschini,	
  Yiannis	
  Gkoufas,	
  Jer	
  
Hayes,	
  Pascal	
  Hitzler,	
  Vanessa	
  Lopez,	
  ,	
  Raghava	
  Mutharaju,	
  Rahul	
  Nair,	
  Jeff	
  Z.	
  Pan,	
  Joern	
  Ploennigs,	
  Alexandre	
  Rademaker,	
  
Marco	
  Luca	
  Sbodio,	
  Anika	
  Schumann,	
  Mar&n	
  Stephenson,	
  Simone	
  Tallevi-­‐Diotallevi,	
  Pierpaolo	
  Tommasi,	
  Robert	
  Tucker,	
  
Yuan	
  Ren,	
  Jiewen	
  Wu	
  

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Semantics for Smarter Cities

  • 1. LD4SC-­‐15   Seman&cs  for  Smarter  Ci&es.  Hype  or  Reality?     A  Study  in  Dublin,  Bologna,  Miami,  and  Rio   Freddy  Lecue  
  • 3. LD4SC-­‐15   Arrival of the “urban millennium” By 2050 over 6 billion people, two thirds of humanity, will be living in towns and cities Source: Smart Cities How will we manage our cities in the 21C?, Colin Harrison IBM Corporate Strategy Member, IBM Academy of Technology Indoor air pollution resulting from the use of solid fuels [by poorer segments of society] is a major killer! Claims the lives of 1.5 million people each year, more than half of them below the age of five (4000 deaths per day) Water problems affect half of humanity!!!! 1.1 billion people in developing countries have inadequate access to water, and 2.6 billion lack basic sanitation 1.6 billion people — a quarter of humanity — live without electricity! South Asia, Sub-Saharan Africa and East Asia have the greatest number of people living without electricity (as high as 706 million in South Asia)Source: 2008 UN Habitat; Smart Cities How will we manage our cities in the 21C?, Colin Harrison IBM Corporate Strategy Introduc&on   Mo&va&on  –  Today’s  Ci&es  are  Confronted  with  Serious  Dilemmas    
  • 4. LD4SC-­‐15   ASIA N.A. & EUROPE AFRICA LATIN AMERICA Rapid expansion Negative growth Rural exodus increasing poverty Decentralization § Over the next decade, Asia’s urban areas will grow by more than 100,000 people a day § Growth rates are more rapid than the investment in infrastructure § Benefits of new infrastructure investments have not been distributed equally § 46 countries (including Germany, Italy, most former Soviet states) are expected to be smaller in 2050 § The number of shrinking cities has increased faster in the last 50 years than the number of expanding cities § In 2008, more than 12M Africans left their rural homes to live in urban areas § The projected increase in urban migration will exacerbate the problems of providing infrastructure, sanitation. health services, and food § Large cities have incorporated nearby villages and towns – as a result, large urban areas developed sub- centers whose functions duplicated those of the central city § Many large cities are competing with their outlying suburbs for people, revenue, and employment Source:  Various;  IBM  MI  Analysis;   Introduc&on   Mo&va&on  –  Regions  have  both  Common  and  Unique  Challenges    
  • 5. LD4SC-­‐15   Source:  Various;  IBM  MI  Analysis;   Introduc&on   The Sustainable Eco-City The Well Planned City The Healthy and Safe City The Cultural- Convention Hub The City of Digital Innovation Mo&va&on  –  Beyond  the  prac&cal  objec&ves,  ci&es  have  ‘aspira&ons’     The City of Commerce
  • 6. LD4SC-­‐15   Miami,  USA   Dublin,  Ireland   Rio,  Brazil   • 5.5  billion  hours  of  travel  delay     • 2.9  billion  gallons  of  wasted  fuel  in  the  USA   • $121  billion  /  year     • 0.7%  of  USA  GDP   *5  over  the  past  30  years   Bologna,  Italy   How  to  reduce     traffic  congesHon  ?   Introduc&on   Mo&va&on  –  Socio-­‐Economic  Context  
  • 7. LD4SC-­‐15   Introduc&on   Mo&va&on  –  Limita&on  of  Exis&ng  Systems  (Example:  Traffic)  (1)   Most  traffic     systems     already  support     Basic  Analy&cs     and  Visualiza&on!!!   Basic  AnalyHcs  from     Bus  /  Taxi  data  
  • 8. LD4SC-­‐15   •  All  exis&ng  traffic  management  systems  are  based  on  ONE  signal  /  stream   •  No  possible  interpretaHon  of  traffic  Anomalies   •  No  IntegraHon  of  Exogenous  Data   No  SemanHcs  /  Context  !   No  ExplanaHon     No  Diagnosis   Introduc&on   Mo&va&on  –  Limita&on  of  Exis&ng  Systems  (Example:  Traffic)  (2)  
  • 9. LD4SC-­‐15   •  Sensor  data  assimilaHon   –  Data  diversity,  heterogeneity   –  Data  accuracy,  sparsity   –  Data  volume     •   Modelling  human  demand   –  Understand  how  people  use  the  city  infrastructure   –  Infer  demand  pa_erns   •   Factor  in  Uncertainty   –  Opera&ons  and  planning   –  Organise  and  open  data  and  knowledge,  to  engage   ci&zens,  empower  universi&es  and  enable  business   Introduc&on   Seman&cs  for  ci&es:  How  can  Seman&cs  help  ci&es  transform  ?  
  • 10. LD4SC-­‐15   Introduc&on   Seman&cs  for  ci&es:  why  now?  Open  Data!  
  • 11. LD4SC-­‐15   Introduc&on   Seman&cs  for  ci&es:  why  now?  Ci&es  want  to  be  Smarter  Ci&es!   Nowadays:   Issues  of  Urban  Quality  such  as  housing,  economy,  culture,  social  and  environmental  condi&ons.  
  • 12. LD4SC-­‐15   Introduc&on   Seman&cs  for  ci&es:  why  Seman&cs?  Big  Data  
  • 13. LD4SC-­‐15   Working harder is not sustainable Cities require innovative approaches Introduc&on   Seman&cs  for  ci&es:  why  Seman&c  Web,  Linked  Open  Data?  Smart  Systems  
  • 14. LD4SC-­‐15   Introduc&on   Seman&cs  for  ci&es   Walkonomics   FixMyStreet   Schooloscope   FloodAlerts   BeatTheBurglar   Where  can  I  live?  
  • 15. LD4SC-­‐15   Introduc&on   Seman&cs  for  ci&es  –  Our  Experience  
  • 16. LD4SC-­‐15   Data  format  and  data  access,  collec&on,  storage,  transforma&on   Big  Data  –  The  World  of  Data   Source:  Various;  IBM  MI  Analysis;  
  • 17. LD4SC-­‐15   Data  format  and  data  access,  collec&on,  storage,  transforma&on   Big  Data  –  4Vs   Source:  Various;  IBM  MI  Analysis;  
  • 18. LD4SC-­‐15   Data  format  and  data  access,  collec&on,  storage,  transforma&on   Data  Format  and  Heterogeneity  -­‐  City  Data  !=  Open  Data  (1)   A Global Movement Has Begun to Provide Transparency and Democratization of Data 18November 30, 2011 Don’t see your site? Update via @usdatagov (*)  “Driving  Innova&on  with  Open  Data”,  Jeanne  Holm,  Data.gov,   February  9th,  2012  (Presenta&on  to  Ontology  2012)   Think Big, Start Small, Innovate Data.gov Quick Facts May 2009 October 2011 Total datasets available 47 >400,000 Hits to Data.gov 0 >200 million Apps and mash ups by citizens and government 0 372 + 1113 RDF triples for semantic applications 0 6.7 billion Dataset downloads 0 >2.0 million Nations establishing open data sites 0 28 States offering open data sites 0 31 Cities in North America with open data sites 0 13 Open data contacts in Federal agencies 24 396 Agencies and subagencies participating 7 185 Communities 0 7 Community challenges 0 23 November 30, 2011 11 A  lot  of  relevant  open  data   for  city  data  analy&cs  
  • 19. LD4SC-­‐15   Applica&ons  in  Ci&es:   Bologna,  Dublin,   Miami,  Rio…  and   Airlines  
  • 20. LD4SC-­‐15   Miami,  USA   STAR-­‐CITY  (Seman&c  Traffic  Analy&cs  and  Reasoning  for  CITY)   Input   •  Type  of  anomaly  (bus  speed,   ambulance  delay…)   •  Type  of  explana&on  (city  events,   unplanned  events,  road  works,  …)   Output   •  Impact  of  events  and  their   characteris&cs  on  anomalies   SemanHc   InterpretaHon  of   Diagnosis   SemanHc  Reasoning:     Diagnosis     SemanHc  Context   SemanHc  Search:     Diagnosis  ExploraHon   Live  IBM  demo:  h_p://208.43.99.116:9080/simplicity/demo.jsp   Live  WWW  demo:  h_p://dublinked.ie/sandbox/star-­‐city/     Video:  h_p://goo.gl/TuwNyL  
  • 21. LD4SC-­‐15   STAR-­‐CITY  (Seman&c  Traffic  Analy&cs  and  Reasoning  for  CITY)   Context   •  Dublin:  (Diagnosis  of)  Traffic  conges&on   •  Bologna:  (Diagnosis  of)  Bus  conges&on   •  Miami:  (Diagnosis  of)  Bus  bunching   •  Rio:  (Diagnosis  of)  Low  on-­‐&me  performance  of  buses   Source  of   Anomaly   Source  of   Diagnosis  
  • 22. LD4SC-­‐15   Challenge:   Source  of   Anomaly   Source  of   Diagnosis   •  Explaining  Traffic  Condi&ons  with   Diagnosis  Reasoning   •  Logical  correla&on  of  anomalies  and   diagnosis  in  dynamic  sepngs   •  Knowledge  Representa&on  and  Reasoning   •  Machine  Learning  /  AI  Diagnosis   •  Database:  Large  scale  data  integra&on   •  Signal  Processing  /  Stream  Reasoning   Core  Areas  /  Problems:   STAR-­‐CITY  (Seman&c  Traffic  Analy&cs  and  Reasoning  for  CITY)  
  • 23. LD4SC-­‐15   Architecture  of  Diagnosis  Components   STAR-­‐CITY  (Seman&c  Traffic  Analy&cs  and  Reasoning  for  CITY)  
  • 24. LD4SC-­‐15   STAR-­‐CITY  (Seman&c  Traffic  Analy&cs  and  Reasoning  for  CITY)   Data   Vocabulary  
  • 25. LD4SC-­‐15   Challenge:   Predic&ve  reasoning  (as  opposed  to  analyHcs)     in  heterogeneous  and  dynamic  sepngs   •  Knowledge  Representa&on  and  Reasoning   •  Machine  Learning  /  Knowledge  Discovery   •  Database:  Large  scale  data  integra&on   •  Signal  Processing  /  Stream  Reasoning   Core  Areas  /  Problems:   Traffic  Condi&on   Road  Incident   Weather  Condi&on   STAR-­‐CITY  (Seman&c  Traffic  Analy&cs  and  Reasoning  for  CITY)  
  • 26. LD4SC-­‐15   Miami,  USA   STAR-­‐CITY  (Seman&c  Traffic  Analy&cs  and  Reasoning  for  CITY)   Input   •  Type  of  anomaly  (bus  speed,   ambulance  delay…)   •  Type  of  explana&on  (city  events,   unplanned  events,  road  works,  …)   Output   •  Impact  of  events  and  their   characteris&cs  on  anomalies     Input   •  Type  of  anomaly  (bus  speed,   ambulance  delay…)   •  Type  of  explana&on  (city  events,   unplanned  events,  road  works,  …)   Output   •  Real-­‐&me/Historical  diagnosis   results   •  Evolu&on  of  diagnosis  over  &me/ space   •  Comparison  vs.  historical     Objec&ve:  Real-­‐Time  and  Historical  Traffic  Diagnosis  (1)   Live  demo:  h_p://208.43.99.116:9080/simplicity/demo.jsp   Video:  h_p://goo.gl/TuwNyL  
  • 27. LD4SC-­‐15   Miami,  USA   STAR-­‐CITY  (Seman&c  Traffic  Analy&cs  and  Reasoning  for  CITY)   Input   •  Type  of  anomaly  (bus  speed,   ambulance  delay…)   •  Type  of  explana&on  (city  events,   unplanned  events,  road  works,  …)   Output   •  Impact  of  events  and  their   characteris&cs  on  anomalies     Input   •  Type  of  anomaly  (bus  speed,   ambulance  delay…)   •  Type  of  explana&on  (city  events,   unplanned  events,  road  works,  …)   Output   •  Categoriza&on  of  diagnosis     Live  demo:  h_p://208.43.99.116:9080/simplicity/demo.jsp   Video:  h_p://goo.gl/TuwNyL   Objec&ve:  Real-­‐Time  and  Historical  Traffic  Diagnosis  (2)  
  • 28. LD4SC-­‐15   Miami,  USA  h_p://vtce.altervista.org/   Reverse  STAR-­‐CITY  system  for  city  managers  
  • 29. LD4SC-­‐15   Reverse  STAR-­‐CITY  system  for  city  managers   Objec&ve:  City  Planning   Input   •  Type  of  anomaly  (bus   speed,  ambulance   delay…)   •  Type  of  explana&on   (city  events,   unplanned  events,   road  works,  …)   Output   •  Impact  of  events  and   their  characteris&cs   on  anomalies   h_p://www.vtce.altervista.org/  
  • 30. LD4SC-­‐15   Reverse  STAR-­‐CITY  system  for  city  managers   Data   Vocabulary  
  • 31. LD4SC-­‐15   Miami,  USA   Mobile  STAR-­‐CITY  app  for  ci&zen  in  Dublin  and  Bologna  
  • 32. LD4SC-­‐15   Miami,  USA   Mobile  STAR-­‐CITY  app  for  ci&zen  in  Dublin  and  Bologna   Use  case  scenario:  MeeHng  the  Increased  Mobility  Demand:     •  Scenario  1  “Road  Traffic  Diagnosis”   •  Scenario  2  “Road  Traffic  Predic&on”   •  Scenario  3  “Personalized  Traffic  Restric&ons”   Outcome:     •  One  mobile  app     •  Two  pilot  ci&es  (Dublin  and  Bologna)     •  Live  and  real-­‐&me  environment     •  Real  data  (user  calendar,  open  data:  traffic   conges&on,  weather,  events,  road  works,  accident  …)     •  but  with  simulated  car  sensor  data  –  Aus&n  ;-­‐)   Context  
  • 33. LD4SC-­‐15   Mobile  STAR-­‐CITY  app  for  ci&zen  in  Dublin  and  Bologna   Data   Dublin   Car-­‐related   User-­‐related   Vocabulary   Bologna  
  • 34. LD4SC-­‐15   Mobile  STAR-­‐CITY  app  for  ci&zen  in  Dublin  and  Bologna   User  Context-­‐aware     Driving  (User  data)   Open  Context-­‐aware     Driving  (Open  data)   Private  Context-­‐aware     Driving  (City  data)   Objec&ve:  Context-­‐aware  driving  experience  (1)  
  • 35. LD4SC-­‐15   Mobile  STAR-­‐CITY  app  for  ci&zen  in  Dublin  and  Bologna   Objec&ve:  Context-­‐aware  driving  experience  (2)   Personal  Events-­‐aware     Driving  Car  Sensor     Simula@on   Car  Sensor-­‐aware     Driving  
  • 36. LD4SC-­‐15   Real-­‐Time  Urban  Monitoring  in  Dublin   h_ps://www.youtube.com/watch?v=ImTI0jm3OEw  Green:  Dublin  Bike  availability   Purple  dot:  Bus  in  congesHon   Blue:  Noise   Purple  bar:  PolluHon   Red:  AmeniHes   Yellow:  Cameras  
  • 37. LD4SC-­‐15   Seman&c  Processing  of  Urban  Data   h_ps://www.youtube.com/watch?v=lrUHet5awzw&feature=youtu.be   h_p://50.97.192.242:8080/Dali/  
  • 38. LD4SC-­‐15   Cogni&ve  Explana&on  of  Flight  Delays  
  • 40. LD4SC-­‐15   Conclusion   Ci&es  are  characterized  by:   •  Big  Data   •  Complex  Systems     Ci&es  want  to  be  Smarter:     •  More  efficient   •  More  reliable   •  More  secure   •  More  open   Ci&es  can  benefits  from     •  REAL  World  data:  Open  Data  to  get  Smarter   •  Advances  in  AI   AI  already  helped  a  lot!!  ...  and  should  even  contribute  further   •  Op&miza&on,  coordina&on  …   •  Cheaper   •  Faster   •  More  integrated   •  More  ci&zen-­‐centric   •  More  a_rac&ve     •  More  Intelligent   •  Sustainable     •  Be_er  city  planning   •  Integrated  Problems   •  Scalability  Challenges  
  • 41. LD4SC-­‐15   Future  Work   Analy&cs  and  Reasoning:  Scalability  from  One  City  to  Another  One   Picture  of  different  ci&es  
  • 42. LD4SC-­‐15   Future  Work   Applica&on:  From  Ci&es  to  mini-­‐Ci&es   Airport   Supply-­‐Chain   Building   Stadium   Warehouse  
  • 43. LD4SC-­‐15   Future  Work   More  Mul&-­‐disciplinary:  AI  (Planning,  KRR,  ML,  …),  Database,  Mathema&cs  …       More  Science     Integra&on  
  • 44. LD4SC-­‐15   References  (1)   •  Freddy  Lecue,  Jeff  Z.Pan.  Consistent  Knowledge  Discovery  from  Evolving  Ontologies.  AAAI  2015.    Aus&n,  Texas,  USA,   January,  2015.   •  Anika  Schumann,  Freddy  Lecue.  Minimizing  User  Involvement  for  Accurate  Ontology  Matching  Problems.  AAAI  2015.     Aus&n,  Texas,  USA,  January,  2015.   •  Freddy  Lecue,  Simone  Tallevi-­‐Diotallevi,  Jer  Hayes,  Robert  Tucker,  Veli  Bicer,  Marco  Sbodio,  Pierpaolo  Tommasi.  Smart   traffic  analy&cs  in  the  seman&c  web  with  STAR-­‐CITY:  Scenarios,  system  and  lessons  learned  in  Dublin  City.  In  Jour-­‐  nal  of   Web  Seman&cs.  Web  Seman&cs:  Science,  Services  and  Agents  on  the  World  Wide  Web  (JWS).  Vol  XX  (2014).   •  Spyros  Kotoulas,  Vanessa  Lopez,  Raymond  Lloyd,  Marco  Luca  Sbodio,  Freddy  Lecue,  MarHn  Stephenson,  Elizabeth  M.   Daly,  Veli  Bicer,  Aris  Gkoulalas-­‐Divanis,  Giusy  Di  Lorenzo,  Anika  Schumann,  Pol  Mac  Aonghusa.  SPUD  -­‐  Seman&c  Pro-­‐   cessing  of  Urban  Data.  In  Journal  of  Web  Seman&cs.  Web  Seman&cs:  Science,  Services  and  Agents  on  the  World  Wide   Web  (JWS),  Vol  24  (2014).   •  Freddy  Lecue,  Robert  Tucker,  Simone  Tallevi-­‐Diotallevi,  Rahul  Nair,  Yiannis  Gkoufas,  Giuseppe  Liguori,  Mauro  Borioni,   Alexandre  Rademaker  and  Luciano  Barbosa.  Seman&c  Traffic  Diagnosis  with  STAR-­‐CITY:  Architecture  and  Lessons  Learned   from  Deployment  in  Dublin,  Bologna,  Miami  and  Rio,  ISWC  2014,  Riva,  Italy,  October  2014  (Best  In  Use  Paper  Award)   •  Joern  Ploennigs,  Anika  Schumann,  Freddy  Lecue.  AdapHng  SemanHc  Sensor  Networks  for  Smart  Building  Diagnosis.  In   Proceedings  of  the  13th  Interna&onal  Seman&c  Web  Conference  (ISWC  2014),  pages  308-­‐323,  October  19-­‐23,  2014,  Riva   del  Garda,  Italy.  Springer  2014  ISBN  978-­‐3-­‐319-­‐11914-­‐4.  (Best  In  Use  Paper  Award  Nominee)   •  Jiewen  Wu,  Freddy  Lecue.  Towards  Consistency  Checking  over  Evolving  Ontologies.  Proceedings  of  the  23rd  ACM   Conference  on  Informa&on  and  Knowledge  Management,  CIKM  2014,  Shanghai,  China,  November  3-­‐7,  2014.   •  Anika  Schumann,  Freddy  Lecue,  Joern  Ploennigs.  Exploi&ng  the  Seman&c  Web  for  Systems  Diagnosis.  In  Proceedings  of   the  Twenty-­‐First  European  Conference  on  Ar&  cial  Intelligence  (ECAI  2014),  pages  ??-­‐??,  August  18-­‐22,  2014,  Prague,   Czech  Republic.  IOS  Press  2014.  
  • 45. LD4SC-­‐15   References  (2)   •  Joern  Ploennigs,  Anika  Schumann,  Freddy  Lecue.  Extending  Seman&c  Sensor  Networks  for  Automa&cally  Tackling  Smart   Building  Problems.  In  Proceedings  of  the  Twenty-­‐First  European  Conference  on  Ar&  cial  Intelligence  (ECAI  2014),   pages  ??-­‐??,  August  18-­‐22,  2014,  Prague,  Czech  Republic.  IOS  Press  2014.   •  Freddy  Lécué:  Towards  Scalable  Explora&on  of  Diagnoses  in  an  Ontology  Stream.  AAAI  2014:  87-­‐93   •  Freddy  Lécué,  Robert  Tucker,  Veli  Bicer,  Pierpaolo  Tommasi,  Simone  Tallevi-­‐Diotallevi,  Marco  Luca  Sbodio:  Predic&ng   Severity  of  Road  Traffic  Conges&on  Using  Seman&c  Web  Technologies.  ESWC  2014:  611-­‐627  (Best  In  Use  Paper  Award)   •  Freddy  Lécué,  Simone  Tallevi-­‐Diotallevi,  Jer  Hayes,  Robert  Tucker,  Veli  Bicer,  Marco  Luca  Sbodio,  Pierpaolo  Tommasi:   STAR-­‐CITY:  seman&c  traffic  analy&cs  and  reasoning  for  CITY.  IUI  2014:  179-­‐188   •  Simone  Tallevi-­‐Diotallevi,  Spyros  Kotoulas,  Luca  Foschini,  Freddy  Lecue,  Antonio  Corradi.  Real-­‐Time  Urban  Monitoring  in   Dublin  Using  Seman&c  and  Stream  Technologies.  In  Proceedings  of  the  12th  Interna&onal  Seman&c  Web  Confer-­‐  ence   (ISWC  2013),  pages  178-­‐194,  October  21-­‐25,  2013,  Sydney,  NSW,  Australia.  Springer  2013  Lecture  Notes  in  Computer   Science  ISBN  978-­‐3-­‐642-­‐41337-­‐7.   •  Freddy  Lecue,  Jeff  Z,  Pan.  Predic&ng  Knowledge  in  an  Ontology  Stream.  In  Proceedings  of  the  Interna&onal  Joint   Conference  on  Ar&ficial  Intelligence  (IJCAI  2013)   •  Elizabeth  M.  Daly,  Freddy  Lecue,  Veli  Bicer.  Westland  Row  Why  So  Slow?  Fusing  Social  Media  and  Linked  Data  Sources  for   Understanding  Real-­‐Time  Traffic  Condi&ons.  In  Proceedings  of  the  ACM  2013  Interna&onal  Conference  on  Intelligent  User   Interfaces  (IUI  2013)   •  Freddy  Lecue,  Anika  Schumann,  Marco  Luca  Sbodio.  Applying  Seman&c  Web  Technologies  for  Diagnosing  Road  Traffic   Conges&ons.  In  Proceedings  of  the  11th  Interna&onal  Seman&c  Web  Conference  (ISWC  2012),  Springer  (Best  In  Use  Paper   Award  Nominee)   •  Freddy  Lecue:  Diagnosing  Changes  in  An  Ontology  Stream:  A  DL  Reasoning  Approach.  In  Proceedings  of  the  Twenty-­‐Sixth   AAAI  Conference  on  Ar&ficial  Intelligence  (AAAI  2012),  July  22-­‐26,  2012,  Toronto,  Ontario,  Canada.  AAAI  Press  2012.  
  • 46. LD4SC-­‐15   Ques&ons   Thank you! Credits:  Pol  Mac  Aonghusa,  Luciano  Barbosa,  Veli  Bicer,  Antonio  Corradi,  Elizabeth  Daly,  Luca  Foschini,  Yiannis  Gkoufas,  Jer   Hayes,  Pascal  Hitzler,  Vanessa  Lopez,  ,  Raghava  Mutharaju,  Rahul  Nair,  Jeff  Z.  Pan,  Joern  Ploennigs,  Alexandre  Rademaker,   Marco  Luca  Sbodio,  Anika  Schumann,  Mar&n  Stephenson,  Simone  Tallevi-­‐Diotallevi,  Pierpaolo  Tommasi,  Robert  Tucker,   Yuan  Ren,  Jiewen  Wu