Dynamic simulation

From Wikipedia, the free encyclopedia

Dynamic simulation (or dynamic system simulation) is the use of a computer program to model the time-varying behavior of a dynamical system. The systems are typically described by ordinary differential equations or partial differential equations. A simulation run solves the state-equation system to find the behavior of the state variables over a specified period of time. The equation is solved through numerical integration methods to produce the transient behavior of the state variables. Simulation of dynamic systems predicts the values of model-system state variables, as they are determined by the past state values. This relationship is found by creating a model of the system.[1]

Overview[]

Simulation models are commonly obtained from discrete-time approximations of continuous-time mathematical models.[2] As mathematical models incorporate real-world constraints, like gear backlash and rebound from a hard stop, equations become nonlinear. This requires numerical methods to solve the equations.[3] A numerical simulation is done by stepping through a time interval and calculating the integral of the derivatives through numerical integration. Some methods use a fixed step through the interval, and others use an adaptive step that can shrink or grow automatically to maintain an acceptable error tolerance. Some methods can use different time steps in different parts of the simulation model.

There are two types of system models to be simulated: difference-equation models, and differential-equation models. Classical physics is usually based on differential equation models. This is why most old simulation programs are simply differential equation solvers and delegate solving difference-equations to “procedural program segments.”Some dynamic systems are modeled with differential equations that can only be presented in an implicit form. These differential-algebraic-equation systems require special mathematical methods for simulation.[4]

Some complex systems’ behavior can be quite sensitive to initial conditions, which could lead to large errors from the correct values. To avoid these possible errors, a rigorous approach can be applied, where an algorithm is found which can compute the value up to any desired precision. For example, the constant e is a computable number because there is an algorithm that is able to produce the constant up to any given precision.[5]

Applications[]

The first applications of computer simulations for dynamic systems was in the aerospace industry.[6] Commercial uses of dynamic simulation are many and range from nuclear power, steam turbines, 6 degrees of freedom vehicle modeling, electric motors, econometric models, biological systems, robot arms, mass-spring-damper systems, hydraulic systems, and drug dose migration through the human body to name a few. These models can often be run in real time to give a virtual response close to the actual system. This is useful in process control and mechatronic systems for tuning the automatic control systems before they are connected to the real system, or for human training before they control the real system. Simulation is also used in computer games and animation and can be accelerated by using a physics engine, the technology used in many powerful computer graphics software programs, like 3ds Max, Maya, Lightwave, and many others to simulate physical characteristics. In computer animation, things like hair, cloth, liquid, fire, and particles can be easily modeled, while the human animator animates simpler objects. Computer-based dynamic animation was first used at a very simple level in the 1989 Pixar short film Knick Knack to move the fake snow in the snowglobe and pebbles in a fish tank.

Example of dynamic simulation[]

This animation was made with a software system dynamics, with a 3D modeler. The calculated values are associated with parameters of the rod and crank. In this example the crank is driving, we vary both the speed of rotation, its radius, and the length of the rod, the piston follows.

See also[]

  • Comparison of system dynamics software — includes packages not listed below
  • Simulink — A MATLAB-based graphical programming environment for modeling, simulating and analyzing dynamical systems
  • MSC Adams — A multibody dynamics simulation software
  • SimulationX— Software for simulating multi-domain dynamic systems
  • AMESim — Software for simulating multi-domain dynamic systems
  • AGX Multiphysics — A physics engine for simulating multi-domain dynamic systems
  • EcosimPro — A simulation tool for modeling continuous-discrete systems
  • Hopsan — Software for simulating multi-domain dynamic systems
  • MapleSim — Software for simulating multi-domain dynamic systems
  • Modelica — A non-proprietary, object-oriented, equation-based language for dynamic simulation
  • Physics engine
  • VisSim — A visual language for nonlinear dynamic simulation
  • EICASLAB — A software suite allowing nonlinear dynamic simulation
  • PottersWheel — A Matlab toolbox to calibrate parameters of dynamic systems
  • Simcad Pro — A dynamic and interactive discrete event simulation software

References[]

  1. ^ Korn, Granino A. Advanced dynamic-system simulation: model-replication techniques and Monte Carlo simulation. John Wiley & Sons, 2007. p. 2.
  2. ^ Klee, Harold, and Randal Allen. Simulation of dynamic systems with MATLAB and Simulink. Crc Press, 2016. p. 3.
  3. ^ Klee, Harold, and Randal Allen. Simulation of dynamic systems with MATLAB and Simulink. Crc Press, 2016. p. 93.
  4. ^ Klee, Harold, and Randal Allen. Simulation of dynamic systems with MATLAB and Simulink. Crc Press, 2016. p. 3.
  5. ^ Galatolo, Stefano, Mathieu Hoyrup, and Cristóbal Rojas. "Dynamical systems, simulation, abstract computation." arXiv preprint arXiv:1101.0833 (2011).
  6. ^ Klee, Harold, and Randal Allen. Simulation of dynamic systems with MATLAB and Simulink. Crc Press, 2016. p. xiii.

External links[]

Retrieved from ""