- published: 25 Sep 2012
- views: 1007
7:27
Linearizing non-linear dynamic equations
In this lecture, we go through the steps of linearizing non-linear differential equations ...
published: 25 Sep 2012
Linearizing non-linear dynamic equations
In this lecture, we go through the steps of linearizing non-linear differential equations about a given operating/equilibrium point. We will use the multi-variate Taylor series expansion to find the linear approximation to the non-linear function.
- published: 25 Sep 2012
- views: 1007
56:46
Multiagent Dynamical Systems
I will show how to model multiagent systems using dynamical systems theory by deriving a c...
published: 04 May 2012
Multiagent Dynamical Systems
I will show how to model multiagent systems using dynamical systems theory by deriving a class of macroscopic differential equations that describe mutual adaptation in agent collectives, starting from a discrete-time stochastic (microscopic) model. The resulting dynamical systems show that the agents' adaptation is a dynamic balance between optimization of actions that achieve the highest rewards (exploitation) and randomization that chooses locally suboptimal, but novel actions (exploration). It turns out that, although individual agents interact with their environment and other agents in a purely self-interested way without sharing knowledge and ignorant of a context larger than immediate interaction, a strategic dynamic emerges naturally between agents. Under suitable assumptions, the strategic interactions can be interpreted as a game. Overall, though, the emergent strategies are determined by environment-mediated interactions and agents' local reinforcement schemes and so are not amenable to game-theoretic techniques. Application to several familiar, explicitly game-theoretic interactions shows that the adaptation dynamics exhibits a diversity of collective behaviors, including stable limit cycles, quasiperiodicity, intermittency, and deterministic chaos. The simplicity of the assumptions underlying the macroscopic equations suggests that these behaviors should be expected broadly in multiagent systems.
Computational Science and Engineering, UC Davis
Speaker: James Crutchfield
- published: 04 May 2012
- views: 239
11:07
Using Simulink to Simulate a Simple System
An example of how to use Simulink to simulate a simple system whose dynamics are described...
published: 28 Aug 2010
Using Simulink to Simulate a Simple System
An example of how to use Simulink to simulate a simple system whose dynamics are described by a first-order constant coefficient differential equation.
This video is one in a series of videos being created to support EGR 433:Transforms & Systems Modeling at Arizona State University. Links to the other videos can be found at http://sites.google.com/a/asu.edu/signals-and-systems/
- published: 28 Aug 2010
- views: 13725
5:52
Simulink tutorial: Second Order Dynamic System
This tutorial shows how to create a 2nd order system in Simulink. The code can be found in...
published: 20 Jan 2012
Simulink tutorial: Second Order Dynamic System
This tutorial shows how to create a 2nd order system in Simulink. The code can be found in the tutorial section in http://www.eeprogrammer.com/. More engineering tutorial videos are available in eeprogrammer.com
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"Best engineering service at a low price"
We provide low cost and high quality engineering services to help you, your research team or your company increasing productivity and improving quality. If your company needs fast technical solutions, please contact us.
No matter the scale of your project, we welcome your business. You can see different sizes and types of projects we did in our recent projects page.
**Recent Projects
http://eeprogrammer.com/pps/pps1.html
- published: 20 Jan 2012
- views: 2983
66:18
Inaugural Lecture: Professor Huaizhong Zhao
Professor Huaizhong Zhao from the Department of Mathematical Sciences gives his Inaugural ...
published: 02 Nov 2012
Inaugural Lecture: Professor Huaizhong Zhao
Professor Huaizhong Zhao from the Department of Mathematical Sciences gives his Inaugural Lecture for Loughborough University, 'Stochastic (Partial) Differential Equations and Stochastic Dynamical Systems'
- published: 02 Nov 2012
- views: 192
45:56
Physics 111: Non-Linear Dynamics and Chaos (NLD)
Physics 111 Advanced Laboratory
This video accompanies the Non-Linear Dynamics and Chaos ...
published: 08 Mar 2012
Physics 111: Non-Linear Dynamics and Chaos (NLD)
Physics 111 Advanced Laboratory
This video accompanies the Non-Linear Dynamics and Chaos Experiment, providing students with an introduction to the theory, apparatus, and procedures.
This experiment is an introduction to Non-Linear Dynamics, Data Acquisition, Chaos theory and Fractals. Limited as we are by our senses and relatively short powers of recall, much of the physical world seems aperiodic and defies quantitative description. While we have yet to discover closed form solutions to the simplest of systems (e.g. the one-dimensional gravitational three-body problem), the field of chaos reveals structure in their dynamics. The results of chaos theory have found practical applications in almost every branch of science.
In this experiment you will study the response of at least two different dynamical systems: A non-linear, damped harmonic oscillator and a system of op amps that reproduces the Lorentz attractor. You will measure their linear and non-linear behavior using software to measure their information dimension.
You will learn the basics of digital sampling, Fourier transforms, geometric analysis of autonomous differential equations, information entropy, correlation dimension and the basics of programming in LabView (a data-acquisition and control language written by National Instruments).
http://advancedlab.org
- published: 08 Mar 2012
- views: 1341
3:55
Modeling and control of dynamic systems - From electric vehicles to systems biology : Adachi's Group
At the Adachi Laboratory, the theme of research is modeling and control.
Control means ...
published: 21 Feb 2010
Modeling and control of dynamic systems - From electric vehicles to systems biology : Adachi's Group
At the Adachi Laboratory, the theme of research is modeling and control.
Control means actively changing a systems dynamics in a desired way. Control is utilized in various aspects of daily life.
Q. Specifically, as in the control of automobiles, satellites, and robots, were talking about controlling a moving object, that is, an object with dynamics. Control appears in various familiar settings, but we cant see it, so we may not know whats being controlled. For example, in a car engine, we control the timing to make the car run smoothly. We benefit from control in all sorts of places; its just that we dont know that because we cant see it happening. Were studying this kind of approach to control theoretically.
The Adachi Lab does research on control theory, which systemizes this approach to control. The subject of control theory is dynamic systems. Dynamic means that a systems motion can be represented by a set of differential equations. Virtually everything in the natural and artificial worlds can be considered as a dynamic system.
Q: Our group is strong in the field of system identification. We tackle difficult topics, such as how to construct a dynamic model of the subject system, and how to measure it. For example, if you want to control a robot, you need to know physical relationships and physical laws, such as what happens when the robot walks in a certain way. This sort of thing is called modeling, and thats what we do. System identification is one type of modeling, and were one of Japans top research groups in this field.
Model-based control has recently become a topical technology in industry. Most of the Adachi Labs research is done in collaboration with businesses. This work involves the practical application of control theory, using the latest experimental equipment.
Q: The really interesting thing about control is that it isnt restricted to certain things. As long as something moves, so it has dynamics, it can be a subject for control. If you ask why Im doing this research, its because: If I want to control a car, I just need to study cars, if I want to control a satellite, I just need to study satellites. And what Im doing now is trying to control protein networks in organisms. In other words, every time we find something new, we can utilize control in various places, and we can improve performance. I think thats extremely interesting. Conversely, control theory is abstract, in the sense that it can be used for anything. Whether someone finds that interesting depends on the person, but if you do enjoy that kind of abstract subject, this is a very interesting discipline. If we dont have people who find it interesting, well be in trouble! Everyones interested in things that move, like robots. Thats because you can understand them by watching them. Doing that is also very important, but we want students and researchers who can see whats actually happening inside.
- published: 21 Feb 2010
- views: 3622
1:44
State Space Control of 3 DOF Dual Inverted Pendulum
State space is a method of modeling complex dynamic systems as a set of first order differ...
published: 02 Aug 2009
State Space Control of 3 DOF Dual Inverted Pendulum
State space is a method of modeling complex dynamic systems as a set of first order differential equations. Control design in the state space is convenient for handling multiple inputs and outputs and allows the designer to manually shift the dynamic characteristics of the system in order to achieve stability. In this project, state space is used to model the dual inverted pendulum and design a controller that will balance it in the upright position.
The dual pendulum in this project is an electro-mechanical system with three degrees of motion. The physical bodies that make up the pendulum are the cart and the two arms. The cart sits on a linear track which can move on a single, horizontal axis. The first pendulum arm is connected at one end to the cart by a pivot joint whose axis of rotation is normal to the horizontal plane. The second pendulum arm is connected to the opposite end of the first arm by another pivot joint; the two arms rotate in parallel planes. The input force of the system is supplied by a DC motor connected to the cart with a belt transmission. The linear motion of the cart and the rotational motions of the two pendulum arms make up the three degrees of freedom of the system.
The natural, unforced state of the system is defined by an arbitrary location (x) of the cart and the two pendulum arms hanging downward, subjected to the force of gravity and the reaction forces at their joints. The purpose of this project is to design a controller to balance the two pendulum arms in the upright position (one on top of the other) and have the cart come to rest near the center of its range of motion.
For more information about this project you can download my masters thesis at bryankappa.com/resume.html.
- published: 02 Aug 2009
- views: 12063
49:46
System Dynamics Modeling & Analysis Lecture - 2007-08 Part III
This is part 3 of the 8. lecture in IE 602 System Dynamics Modeling & Analysis course of S...
published: 22 May 2012
System Dynamics Modeling & Analysis Lecture - 2007-08 Part III
This is part 3 of the 8. lecture in IE 602 System Dynamics Modeling & Analysis course of Spring 2007 in Bogazici University. The lecture is given by Prof. Yaman Barlas. Today's topic is "Dynamic Systems as Differential Equations".
Mert Nuhoglu
- published: 22 May 2012
- views: 28
5:41
A nice exercise in trigonometry ocr level
A nice exercise on elementary trigonometry, OCR level solved by Webtutorsgroup.co.uk, 0208...
published: 25 Jul 2012
A nice exercise in trigonometry ocr level
A nice exercise on elementary trigonometry, OCR level solved by Webtutorsgroup.co.uk, 02081443900, Arithmetic · Algebra (elementary -- linear -- multilinear -- abstract) · Geometry (Discrete geometry -- Algebraic geometry -- Differential geometry) · Calculus/Analysis · Set theory · Logic · Category theory · Number theory · Combinatorics · Graph theory · Topology · Lie theory · Differential equations/Dynamical systems · Mathematical physics · Numerical analysis · Computation · Information theory · Probability · Statistics · Optimization · Control theory · Game theory
Pure mathematics · Applied mathematics · Discrete mathematics · Computational mathematics
Analysis (e.g. functions, sequences, series, limits, derivatives, integrals, real analysis, complex analysis, complex number theory, functional analysis, measure theory)
Algebra (e.g. linear algebra, group theory, ring theory, Galois Theory, number theory, algebraic number theory, combinatorics)
Topology (e.g. point set topology, combinatorial topology, algebraic topology)
Logic and Set Theory (e.g. propositional calculus, predicate calculus, metamathematics, recursion theory, category theory, von Neumann-Bernays-Gödel (NBG) set theory, Zermelo-Fraenkel (ZF) set theory, model theory, fuzzy logic)
Applied Mathematics (e.g. ordinary differential equations (ODE), partial differential equations (PDE), Fourier series, Fourier transforms, game theory GCSE Mathematics SAT critical reading sat curve SAT Essay SAT essay prompt sat exams SAT Math SAT Maths SAT online prep SAT prep SAT preparation SAT GRE prep
- published: 25 Jul 2012
- views: 48
53:31
Logical Analysis of Hybrid Systems
RI Seminar, February 18, 2011
Andre Platzer
Assistant Professor, Computer Science Departme...
published: 17 Mar 2011
Logical Analysis of Hybrid Systems
RI Seminar, February 18, 2011
Andre Platzer
Assistant Professor, Computer Science Department, Carnegie Mellon University
Hybrid systems model cyber-physical systems as dynamical systems with interacting discrete transitions and continuous evolutions along differential equations. They arise frequently in many application domains, including aviation, automotive, railway, and robotics. Because these systems operate in the physical world, stringent safety requirements are usually imposed on cyber-physical system designs. There is a well-understood theory for guaranteeing correct functioning of computer programs using logic and formal verification techniques. But what about cyber-physical systems? How can we ensure that cyber-physical systems are guaranteed to meet their design goals, e.g., that an aircraft cannot crash into another one?
This talk describes how logic and formal verification can be lifted to hybrid systems. It presents the theoretical and practical foundations of logical analysis of hybrid systems. The talk describes a logic for hybrid systems called differential dynamic logic and gives a perfectly compositional proof technique. This logical approach is implemented in the verification tool KeYmaera and has been used successfully for verifying nontrivial properties of aircraft, railway, and car control applications. The logical approach is also interesting from a theoretical perspective, because it shows how verification techniques for continuous dynamics can be lifted completely to hybrid systems.
Speaker Biography
André Platzer is an Assistant Professor in the Computer Science Department at Carnegie Mellon. Dr. Platzer developed the theory, practice, and applications of logical analysis and verification of hybrid systems, and he proved the very first completeness theorem for hybrid systems. He introduced compositional verification techniques and methods that can verify hybrid systems without solving their differential equations (called differential invariants). In addition, he led the development of the first theorem prover for hybrid systems (KeYmaera) and he has worked on verification of aircraft, railway, and car control systems.
In recent work, André Platzer has introduced the first formal verification approach for distributed hybrid systems, in which participants can appear and disappear dynamically while the system follows its hybrid dynamics.
- published: 17 Mar 2011
- views: 628
89:02
System Dynamics Modeling & Analysis Lecture - 2007-09
This is the 9. lecture in IE 602 System Dynamics Modeling & Analysis course of Spring 2007...
published: 22 May 2012
System Dynamics Modeling & Analysis Lecture - 2007-09
This is the 9. lecture in IE 602 System Dynamics Modeling & Analysis course of Spring 2007 in Bogazici University. The lecture is given by Prof. Yaman Barlas. Today's topic is "Dynamic Systems as Differential Equations".
Mert Nuhoglu
- published: 22 May 2012
- views: 159
52:00
System Dynamics Modeling & Analysis Lecture - 2007-08 Part II
This is part 2 of the 8. lecture in IE 602 System Dynamics Modeling & Analysis course of S...
published: 22 May 2012
System Dynamics Modeling & Analysis Lecture - 2007-08 Part II
This is part 2 of the 8. lecture in IE 602 System Dynamics Modeling & Analysis course of Spring 2007 in Bogazici University. The lecture is given by Prof. Yaman Barlas. Today's topic is "Dynamic Systems as Differential Equations".
Mert Nuhoglu
- published: 22 May 2012
- views: 36
42:43
System Dynamics Modeling & Analysis Lecture - 2007-08 Part I
This is part 1 of the 8. lecture in IE 602 System Dynamics Modeling & Analysis course of S...
published: 22 May 2012
System Dynamics Modeling & Analysis Lecture - 2007-08 Part I
This is part 1 of the 8. lecture in IE 602 System Dynamics Modeling & Analysis course of Spring 2007 in Bogazici University. The lecture is given by Prof. Yaman Barlas. Today's topic is "Dynamic Systems as Differential Equations".
Mert Nuhoglu
- published: 22 May 2012
- views: 33
Youtube results:
2:05
Xiaoqiang Zhao.wmv
Dr. Xiaoqiang Zhao, Department of Mathematics and Statistics, is on the board of directors...
published: 07 Oct 2011
Xiaoqiang Zhao.wmv
Dr. Xiaoqiang Zhao, Department of Mathematics and Statistics, is on the board of directors of the Canadian Mathematical Society and editor of three international journals. In the following video, Dr. Zhao talks about his research is in the areas of applied dynamical systems, nonlinear differential equations, and mathematical biology.
- published: 07 Oct 2011
- views: 154
56:28
Lecture - 33 Discrete-Time Dynamical Systems-I
Lecture series on Dynamics of Physical System by Prof. Soumitro Banerjee, Department of El...
published: 20 Jan 2010
Lecture - 33 Discrete-Time Dynamical Systems-I
Lecture series on Dynamics of Physical System by Prof. Soumitro Banerjee, Department of Electrical Engineering, IIT Kharagpur.For more details on NPTEL visit http://nptel.iitm.ac.in
- published: 20 Jan 2010
- views: 1458
101:13
Dynamical Systems
Mathematics of Complexity lecture 3
Class description:
We've all heard the buzzwords - c...
published: 27 Oct 2012
Dynamical Systems
Mathematics of Complexity lecture 3
Class description:
We've all heard the buzzwords - chaos, fractals, networks, power laws. What do these terms mean in a rigorous, mathematical sense? This 1-2 credit seminar will explore formalisms associated with the study of complex systems. These include non-linear dynamics (and their associated phase space mappings, as well as chaos), graph theory (networks), and fractals (and their associated power laws). Through readings, in-class problem sets, and hands-on computer-based simulations, we will pursue a concrete understanding of these concepts as well as the ability to implement them as mathematical tools. A basic course in calculus and differential equations and some coding experience would be helpful but is not required.
Instructor(s): Oana Carja, Diamantis Sellis, Joel Thompson and Mark D. Longo
Faculty Sponsor: Marc Feldman
- published: 27 Oct 2012
- views: 171
10:29
Alexander Schubert - Bifurcation Fury (performed by John Eckhardt)
For electric bass guitar, live-electronics (and live-lights)
written for John Eckhardt
20...
published: 06 Nov 2012
Alexander Schubert - Bifurcation Fury (performed by John Eckhardt)
For electric bass guitar, live-electronics (and live-lights)
written for John Eckhardt
2012
10'
http://www.alexanderschubert.net/works/Bifurcation.php
http://www.johneckhardt.de/
Program Notes:
The story begins with two young girls fighting on the street. The winner, for the.
A differential equation system undergoes a bifurcation when a qualitative change in its orbit structure - obviously she's been petting them for too long by then - appears, as one or more parameters, oh, the strokes and offsets, I get it now, the undertow, such small volition, some heavy drag, of the dynamical system are changed. Bifurcation theory studies structurally unstable dynamical systems. She's been stripping for money the last few years.
Dynamic stability refers to perturbations in the phase space—the stability of fixed points.
And limit cycles. Structural stability refers to perturbations in the function space—the topological stability of orbit structures. A shadowed washout of your own repute.
Joey Berrenson, walks away and the loser attempts to throw something at him, but it goes through a nearby window. The store owner rushes out and pins adoption procedures. A key of heavy splinters, the nets draw in.
Also, for example: Pitchfork Bifurcation and Supercritical Hopf Bifurcation.
- published: 06 Nov 2012
- views: 379