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Assistance- and Knowledge-Services
for Smart Production
Results from the APPsist Project
Carsten Ullrich, Matthias Aust, Roland Blach, Michael Dietrich, Christoph Igel, Niklas
Kreggenfeld, Denise Kahl, Christopher Prinz and Simon Schwantzer
Michael Dietrich
Center for Learning Technology
(CeLTech) im
Deutschen Forschungszentrum für
Künstliche Intelligenz
michael.dietrich@dfki.de
The Workplace is Transforming
Seite/Page 2
• Challenges for Europe's
manufacturing industry:
 Increasing flexibility…
 Ever increasing number of
product variants
 Same time smaller batch sizes
(batch size 1)
 Shorter product cycles
 … while keeping/increasing level
of competitiveness
 … with fewer and fewer
employees
Need for increasing flexibility of
 shopfloor
 usage of employees
Assistance- and Knowledge-Services
for Smart Production
• Information providing and training processes will become
– more flexible
– integrated in the workplace
– individualized
• Need for tools that
– adapt themselves intelligently to the knowledge level and tasks of the
human operators
– integrate and connect the knowledge sources available in the company
– generate useful recommendations of actions.
Seite/Page 3
© 2015 APPSIST
Seite 4
APPsist
Anwendung&
Validierung
Forschung&
Entwicklung
Beratung
* Partner im Unterauftrag
*
Anwendung:
Produktion
Anwendung:
Produkt
Duration 1.1.2014-31.12.2016
Partly automated assembly
line
Support for maintenance
5-axis drill
Support for machine usage
© 2015 APPSIST
Seite 5
APPsist Pilot Scenarios
Partner
Pilot Area
Pilot Scenario
Production line
Support for failure detection
Pilot study Festo: Changing Loctite
Seite/Page 6
Seite/Page 7
 Process models represent a complete and applicable
description of steps required to perform a task
 Process models are formally defined (BPMN) and
therefore
 have a defined meaning
 can be executed by process engines
 Used as a basis for the intelligent assistance
Modelling the Maintenance Process Loctite empty
Get
required
items
Stop
station
Replace
materials
Start
station
Disposal
Learningmaterials
Content
Machine data
User data
Process data
APPsist
HUMAN-
MACHINE-
INTERACTION
HUMAN-
MACHINE-
INTERACTION
Assistance-
services
Knowledge-
acquisition-
services
APPsist Architecture Overview
APPsist System Overview(Technical)
© 2015 APPSIST
Overview: A few of the APPsist Services
© 2015 APPSIST
• Content-Delivery-Service (IAD)
• Content-Interaction-Service (IID)
• Machine-Information-Service (MID)
• User-Modell-Service (BMD)
• User-Context-Service (BKD)
• Performance-Support-Service (PSD)
• Process-Coordination-Service (PKI)
• Content-Selector (IhS)
• Measure-Selector (MD)
• …
 Integration into architecture
Service Description
© 2015 APPSIST
• Performance-Support-Service (PSD)
• Guides the users through the assistance process.
• Process-Coordination-Service (PKI)
• Instantiates and administers processes, reacting to incoming events and
coordinates other services relevant for current process.
• Content-Selector (IhS)
• Retrieves content adapted to individual user and context based on rules
• Uses semantic knowledge repository for reasoning.
• Measure-Selector (MD)
• Determines applicable assistance processes according to user and machine
state based on rules.
• Uses semantic knowledge repository for reasoning.
APPsist Ontology
Seite/Page 12
• Describes relevant concepts
for and their relationships
• User
• Content
• Manufacturing
• Representation in OWL
(Semantic Web standard)
• Used for communication
between services and for
reasoning by intelligent
services
User Model (current state)
• Connection to domain-model concepts
• Concepts from domain-model are enriched with user specific valuesOrdnet jedem
• Number RUNs (for processsteps)
• Number VIEWS (for contents/documents)
• Number USAGES (manufacturing/production objects)
• Relevant user properties
• Workplacegroups
• Permissions
• „State“: main working phase, side working phase
• Development Goals
• Mastered measures
Examples of Adaptivity in APPsist
Adaptivity with respect to three parameters:
Depending on the context:
1. Reacting to the current situation on the shop floor, e.g., Loctite is empty
Depending on the employee:
2. Reacting to recently occurring events (e.g., a large number of correctly or
incorrectly performed measures)
3. Long-term development goals (e.g., working towards a new job position)
Example Rule: Determine Measure
© 2015 APPSIST
Condition:
Employee is in workstate „Learningtime“ and asks for assistance measures, then
find measure relevant to his/her long-term development goals.
Steps:
1. D = Development Goals. [User-Model Request].
2. M = Relevant Measures for D. [Domain-Model Request]
3. M_n = Measures M without Measures which are already mastered by
Employee. [User-Model Request]
Returns:
M_N, plus a note, that measures will be important in the future and that should be
walked through without an actual machine.
© 2015 APPSIST
© 2015 APPSIST
© 2015 APPSIST
© 2015 APPSIST
© 2015 APPSIST
© 2015 APPSIST
Outlook
© 2015 APPSIST
• Stabilize and further improve system
• Setup installations on industrial partner sites
• Evaluate Systems
• Improve system with respect to evaluations
• Improve adaptation rules
Assistance- and Knowledge-Services
for Smart Production
Results from the APPsist Project
Carsten Ullrich, Matthias Aust, Roland Blach, Michael Dietrich, Christoph Igel, Niklas
Kreggenfeld, Denise Kahl, Christopher Prinz und Simon Schwantzer
Michael Dietrich
Center for Learning Technology
(CeLTech) im
Deutschen Forschungszentrum für
Künstliche Intelligenz
michael.dietrich@dfki.de

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Assistance- and Knowledge-Services for Smart Production

  • 1. Assistance- and Knowledge-Services for Smart Production Results from the APPsist Project Carsten Ullrich, Matthias Aust, Roland Blach, Michael Dietrich, Christoph Igel, Niklas Kreggenfeld, Denise Kahl, Christopher Prinz and Simon Schwantzer Michael Dietrich Center for Learning Technology (CeLTech) im Deutschen Forschungszentrum für Künstliche Intelligenz michael.dietrich@dfki.de
  • 2. The Workplace is Transforming Seite/Page 2 • Challenges for Europe's manufacturing industry:  Increasing flexibility…  Ever increasing number of product variants  Same time smaller batch sizes (batch size 1)  Shorter product cycles  … while keeping/increasing level of competitiveness  … with fewer and fewer employees Need for increasing flexibility of  shopfloor  usage of employees
  • 3. Assistance- and Knowledge-Services for Smart Production • Information providing and training processes will become – more flexible – integrated in the workplace – individualized • Need for tools that – adapt themselves intelligently to the knowledge level and tasks of the human operators – integrate and connect the knowledge sources available in the company – generate useful recommendations of actions. Seite/Page 3
  • 4. © 2015 APPSIST Seite 4 APPsist Anwendung& Validierung Forschung& Entwicklung Beratung * Partner im Unterauftrag * Anwendung: Produktion Anwendung: Produkt Duration 1.1.2014-31.12.2016
  • 5. Partly automated assembly line Support for maintenance 5-axis drill Support for machine usage © 2015 APPSIST Seite 5 APPsist Pilot Scenarios Partner Pilot Area Pilot Scenario Production line Support for failure detection
  • 6. Pilot study Festo: Changing Loctite Seite/Page 6
  • 7. Seite/Page 7  Process models represent a complete and applicable description of steps required to perform a task  Process models are formally defined (BPMN) and therefore  have a defined meaning  can be executed by process engines  Used as a basis for the intelligent assistance Modelling the Maintenance Process Loctite empty Get required items Stop station Replace materials Start station Disposal
  • 8. Learningmaterials Content Machine data User data Process data APPsist HUMAN- MACHINE- INTERACTION HUMAN- MACHINE- INTERACTION Assistance- services Knowledge- acquisition- services APPsist Architecture Overview
  • 10. Overview: A few of the APPsist Services © 2015 APPSIST • Content-Delivery-Service (IAD) • Content-Interaction-Service (IID) • Machine-Information-Service (MID) • User-Modell-Service (BMD) • User-Context-Service (BKD) • Performance-Support-Service (PSD) • Process-Coordination-Service (PKI) • Content-Selector (IhS) • Measure-Selector (MD) • …  Integration into architecture
  • 11. Service Description © 2015 APPSIST • Performance-Support-Service (PSD) • Guides the users through the assistance process. • Process-Coordination-Service (PKI) • Instantiates and administers processes, reacting to incoming events and coordinates other services relevant for current process. • Content-Selector (IhS) • Retrieves content adapted to individual user and context based on rules • Uses semantic knowledge repository for reasoning. • Measure-Selector (MD) • Determines applicable assistance processes according to user and machine state based on rules. • Uses semantic knowledge repository for reasoning.
  • 12. APPsist Ontology Seite/Page 12 • Describes relevant concepts for and their relationships • User • Content • Manufacturing • Representation in OWL (Semantic Web standard) • Used for communication between services and for reasoning by intelligent services
  • 13. User Model (current state) • Connection to domain-model concepts • Concepts from domain-model are enriched with user specific valuesOrdnet jedem • Number RUNs (for processsteps) • Number VIEWS (for contents/documents) • Number USAGES (manufacturing/production objects) • Relevant user properties • Workplacegroups • Permissions • „State“: main working phase, side working phase • Development Goals • Mastered measures
  • 14. Examples of Adaptivity in APPsist Adaptivity with respect to three parameters: Depending on the context: 1. Reacting to the current situation on the shop floor, e.g., Loctite is empty Depending on the employee: 2. Reacting to recently occurring events (e.g., a large number of correctly or incorrectly performed measures) 3. Long-term development goals (e.g., working towards a new job position)
  • 15. Example Rule: Determine Measure © 2015 APPSIST Condition: Employee is in workstate „Learningtime“ and asks for assistance measures, then find measure relevant to his/her long-term development goals. Steps: 1. D = Development Goals. [User-Model Request]. 2. M = Relevant Measures for D. [Domain-Model Request] 3. M_n = Measures M without Measures which are already mastered by Employee. [User-Model Request] Returns: M_N, plus a note, that measures will be important in the future and that should be walked through without an actual machine.
  • 22. Outlook © 2015 APPSIST • Stabilize and further improve system • Setup installations on industrial partner sites • Evaluate Systems • Improve system with respect to evaluations • Improve adaptation rules
  • 23. Assistance- and Knowledge-Services for Smart Production Results from the APPsist Project Carsten Ullrich, Matthias Aust, Roland Blach, Michael Dietrich, Christoph Igel, Niklas Kreggenfeld, Denise Kahl, Christopher Prinz und Simon Schwantzer Michael Dietrich Center for Learning Technology (CeLTech) im Deutschen Forschungszentrum für Künstliche Intelligenz michael.dietrich@dfki.de

Editor's Notes

  1. Service gateway (orchestrates microservice to one app) Connector to databases
  2. Service gateway (orchestrates microservice to one app) Connector to databases
  3. Development Goals have been set in talks with superiors.