Circulation Simulation Andrew Moeding. Simulation Types Traffic flow pattern simulation Building/pedestrian circulation simulation.

Slides:



Advertisements
Similar presentations
Approaches, Tools, and Applications Islam A. El-Shaarawy Shoubra Faculty of Eng.
Advertisements

Modelling with expert systems. Expert systems Modelling with expert systems Coaching modelling with expert systems Advantages and limitations of modelling.
ARCHITECTURES FOR ARTIFICIAL INTELLIGENCE SYSTEMS
Ch:8 Design Concepts S.W Design should have following quality attribute: Functionality Usability Reliability Performance Supportability (extensibility,
Kellan Hilscher. Definition Different perspectives on the components, behavioral specifications, and interactions that make up a software system Importance.
Some questions o What are the appropriate control philosophies for Complex Manufacturing systems? Why????Holonic Manufacturing system o Is Object -Oriented.
Multimedia Specification Design and Production 2013 / Semester 1 / week 7 Lecturer: Dr. Nikos Gazepidis
Chapter 3 Process Models
Presented by: Thabet Kacem Spring Outline Contributions Introduction Proposed Approach Related Work Reconception of ADLs XTEAM Tool Chain Discussion.
Gautam Sanka. Analyze and Elucidate the behavior of complex systems Complex Systems Collection of interconnected elements (system) Behavior and Characteristics.
Crowd Simulation Sai-Keung Wong. Crowd Simulation A process of simulating the movement of a large number of entities or characters. While simulating these.
Constructing the Future with Intelligent Agents Raju Pathmeswaran Dr Vian Ahmed Prof Ghassan Aouad.
TRANSIMS Research and Deployment Project TRACC TSM Staff Dr. Vadim Sokolov Dr. Joshua Auld Dr. Kuilin Zhang Mr. Michael Hope.
Introduction and Overview “the grid” – a proposed distributed computing infrastructure for advanced science and engineering. Purpose: grid concept is motivated.
On management aspects of future ICT systems Associate Professor Evgeny Osipov Head of Dependable Communication and Computation group Luleå University of.
Intelligent Agent Systems. Artificial Intelligence Systems that think like humans Systems that think rationally Systems that act like humans Systems that.
A Multi-Agent System for Visualization Simulated User Behaviour B. de Vries, J. Dijkstra.
April 15, 2005Department of Computer Science, BYU Agent-Oriented Software Engineering Muhammed Al-Muhammed Brigham Young University Supported in part by.
Creating Architectural Descriptions. Outline Standardizing architectural descriptions: The IEEE has published, “Recommended Practice for Architectural.
Continuum Crowds Adrien Treuille, Siggraph 王上文.
A.M. Florea, Cognitive systems, COST Action IC0801 – WG1, 15 December, Ayia Napa, Cyprus.
LINTAR: Artificial Intelligence Lab DISCo, Università di Milano-Bicocca Tel , EDIFICIO U14.
SDLC. Information Systems Development Terms SDLC - the development method used by most organizations today for large, complex systems Systems Analysts.
Intelligent Agents: an Overview. 2 Definitions Rational behavior: to achieve a goal minimizing the cost and maximizing the satisfaction. Rational agent:
Towards A Multi-Agent System for Network Decision Analysis Jan Dijkstra.
Welcome & Introduction
©Ian Sommerville 2004Software Engineering, 7th edition. Chapter 2 Slide 1 Systems engineering 1.
Chapter 1 The Systems Development Environment
Basic Concepts The Unified Modeling Language (UML) SYSC System Analysis and Design.
1.Database plan 2.Information systems plan 3.Technology plan 4.Business strategy plan 5.Enterprise analysis Which of the following serves as a road map.
Crosscutting Concepts and Disciplinary Core Ideas February24, 2012 Heidi Schweingruber Deputy Director, Board on Science Education, NRC/NAS.
LAYING OUT THE FOUNDATIONS. OUTLINE Analyze the project from a technical point of view Analyze and choose the architecture for your application Decide.
Chapter 1 Introduction to Simulation
INFORMATION SYSTEMS Overview
Assessing the Suitability of UML for Modeling Software Architectures Nenad Medvidovic Computer Science Department University of Southern California Los.
SWARM INTELLIGENCE Sumesh Kannan Roll No 18. Introduction  Swarm intelligence (SI) is an artificial intelligence technique based around the study of.
Artificially Intelligent Smart Objects in Modern Computer Games Presentation by: Venetsian T. Jakimov.
Role-Based Guide to the RUP Architect. 2 Mission of an Architect A software architect leads and coordinates technical activities and artifacts throughout.
Fundamentals of Information Systems, Third Edition2 Principles and Learning Objectives Artificial intelligence systems form a broad and diverse set of.
ARTIFICIAL INTELLIGENCE [INTELLIGENT AGENTS PARADIGM] Professor Janis Grundspenkis Riga Technical University Faculty of Computer Science and Information.
FRE 2672 TFG Self-Organization - 01/07/2004 Engineering Self-Organization in MAS Complex adaptive systems using situated MAS Salima Hassas LIRIS-CNRS Lyon.
NAVEEN AGENT BASED SOFTWARE DEVELOPMENT. WHAT IS AN AGENT? A computer system capable of flexible, autonomous (problem-solving) action, situated in dynamic,
Previous experience n Background (Carleton / Ottawa U / Special ?) –Systems/Computer Engineering –Computer Science –Electronic/Electrical Engineering –Industrial/Mechanical.
1 Introduction to Software Engineering Lecture 1.
Modeling Complex Dynamic Systems with StarLogo in the Supercomputing Challenge
I Robot.
Information & Decision Superiority Case studies in applying AI planning technologies to military & civil applications Dr Roberto Desimone Innovations.
Agent Based Modeling (ABM) in Complex Systems George Kampis ETSU, 2007 Spring Semester.
Bio-Networking: Biology Inspired Approach for Development of Adaptive Network Applications 21 May 2005Ognen Paunovski Bio-Networking: Biology Inspired.
Neural Networks and Machine Learning Applications CSC 563 Prof. Mohamed Batouche Computer Science Department CCIS – King Saud University Riyadh, Saudi.
Chapter 4 Decision Support System & Artificial Intelligence.
Technical Seminar Presentation Presented By:- Prasanna Kumar Misra(EI ) Under the guidance of Ms. Suchilipi Nepak Presented By Prasanna.
Distributed Models for Decision Support Jose Cuena & Sascha Ossowski Pesented by: Gal Moshitch & Rica Gonen.
Behavior-based Multirobot Architectures. Why Behavior Based Control for Multi-Robot Teams? Multi-Robot control naturally grew out of single robot control.
Week 04 Object Oriented Analysis and Designing. What is a model? A model is quicker and easier to build A model can be used in simulations, to learn more.
Internet of Things. IoT Novel paradigm – Rapidly gaining ground in the wireless scenario Basic idea – Pervasive presence around us a variety of things.
Public Transport Pricing Strategies using an Agent-based Simulation Platform (A Case study of Singapore and Lessons for Pakistan) Speaker : Dr. Muhammad.
Artificial Intelligence: Research and Collaborative Possibilities a presentation by: Dr. Ernest L. McDuffie, Assistant Professor Department of Computer.
Company LOGO Network Architecture By Dr. Shadi Masadeh 1.
An Architecture-Centric Approach for Software Engineering with Situated Multiagent Systems PhD Defense Danny Weyns Katholieke Universiteit Leuven October.
AUTOMATIC CONTROL THEORY II Slovak University of Technology Faculty of Material Science and Technology in Trnava.
Building Systems for Today’s Dynamic Networked Environments A Methodology for Building Sustainable Enterprises in Dynamic Environments through knowledge.
Agent-Based Modeling ANB 218a Jeff Schank.
Marco Mamei Franco Zambonelli Letizia Leonardi ESAW '02
Complexity Time: 2 Hours.
UML dynamic Modeling (Behavior Diagram)
Design and Implementation
Information Systems General Information.
Chapter 4 System Modeling.
Information Systems General Information.
Presentation transcript:

Circulation Simulation Andrew Moeding

Simulation Types Traffic flow pattern simulation Building/pedestrian circulation simulation

Who is using it ? Engineers, Architects, Urban Planners, Corporations, Universities, Event Organizers, Police –Security / egress testing –Walkability studies –Building circulation –Pedestrian / traffic interaction Highway / Transportation departments –Interchange Design –Signal coordination –Rapid transit operations –Transit station design – – –

Software Products Trafficware – Sim Traffic TSI-CORSIM SimWalk, Legion Studio, popup1.php popup1.php AI Implant Massive

How it works Agent Based Model –Agent based models consist of dynamically interacting rule based agents. The systems within which they interact can therefore create complexity like that which we see in the real world. –The idea is that a system adapts to internal and external pressures so as to maintain functionalities. The task of harnessing that complexity requires consideration of the agents themselves -- their diversity, connectedness, and level of interactions. –The system of interest is simulated by capturing the behavior of individual agents and their interconnections. Agent-based modeling tools can be used to test how changes in individual behaviors will affect the overall, emergent system behavior. – – – – Wikipedia

How it works Multi-Agent System –(MAS) is a system composed of several software agents, collectively capable of reaching goals that are difficult to achieve by an individual agent or monolithic system.software agents system –Multi-agent systems can manifest self-organization and complex behaviors even when the individual strategies of all their agents are simple.self-organization –The study of Multi-Agent Systems is concerned with the development and analysis of sophisticated Artificial intelligence problem solving and control architectures for both single-agent and multiple-agent systems.Artificial intelligence –Another paradigm commonly used with MAS systems is the pheromone, where components "leave" information for other components "next in line" or "in the vicinity". These "pheromones" may "evaporate" with time, that is their values may decrease (or increase) with time. – Wikipedia

How it works Multi-Agent System Cont. –MAS systems are also referred to as "self-organized systems" as they tend to find the best solution for their problems "without intervention". There is high similarity here to physical phenomena, such as energy minimizing, where physical objects tend to reach the lowest energy possible, within the physical constrained world.self-organized systems Crowd Simulation –The entities - also called agents - are given artificial intelligence, which guides the entities based on one or more functions, such as sight, hearing, basic emotion, energy level, aggressiveness level, etc.. The entities are given goals and then interact with each other as members of a real crowd would. They are often programmed to respond to changes in environment, enabling them to climb hills, jump over holes, scale ladders, etc. This system is much more realistic than particle motion, but is very expensive to program and implement.agentsartificial intelligence Wikipedia

AI Implant What it is – implant.com/solutions/simulation__training/technical_specifications.htmhttp:// implant.com/solutions/simulation__training/technical_specifications.htm Examples – – –

Sulan Kolatan, Columbia studio AIA - Architectural Intelligence Agency: In choosing to work with software specifically created for industrial design and film animation rather than for architectural design, our studio explicitly engaged the issue of cross-categorical pollination by problematizing it in the design process itself. In this way, the architectural design process was affected by a "productive inadequacy". The design tool was not entirely but somewhat inadequate in that it had not been made to address the conventions of architectural design but rather those of another kind of design. It was like having to write with a knife. One had to rethink "writing" through the logic of "cutting" to arrive at "carving". The studio's intent was to introduce computational methodologies into architectural design through the use of self-organizing system software. Play was combined with analytical and speculative thought to diagram and construct architectures without fixed scale but with set rules. Scalability was to be understood as referring to a diagram (set of rules) capable of being translated into many scales and -- by extension -- contexts. Particularly viable scales and contexts were those where performative affinities to the diagram already existed. The studio was structured in five phases focusing on Investigative Play, Identity Programming, Dynamic Chimerization, Variable Inhabitation and Performative Taxonomy.

Sulan Kolatan, Columbia studio

Projects Frank Gesualdi “We were scripting behavior into a population of agents and allowing these agents to mix as if in a virtual petry dish of sorts. We were particularly interested in scripting behavior that was "programmatic" ie this population of agents represented quiet space, this population was akin to attraction to groups over 10…”

Additional Research