Principles of Engineering System Design Dr T Asokan

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Presentation transcript:

Principles of Engineering System Design Dr T Asokan

Asokan T ED 309 System Modelling and Simulation

- What kind of trade-off I can have

Asokan T ED 309 Modelling – Heuristic Modelling – Mathematical Modelling – Physical system modelling (Bondgraph etc.) – Dimensional Analysis – Numerical modelling (Finite difference, finite element etc.) Simulation – Time domain analysis – Frequency domain analysis

Asokan T ED 309 Heuristic modeling Case study: Atlas Missile Project: Managed by US Air force and Corps of Engineers (COE). Install missile and supporting equipment in a vertical underground concrete silo. Missile to be lowered to the silo through open doors at the ground. One of the propellant lines (prefabricated piping sections) could not be maneuvered into the propellant systems shaft. Cost of redoing the section~ 300,000 dollars (for 70 sites) Common-sense/ minimum cost physical modeling.

Asokan T ED 309 Physical modelling provides a grasp of the problem, that cannot be achieved by any other technique. Crude models can be easily developed from basic materials at minimal cost. A good bit of caution needs to be applied to any conclusions reached.

Asokan T ED 309 Mathematical model- Example Spring-Mass-Damper System Traffic flows 1.The traffic lights at a road junction are set to operate with a red phase of length 100 seconds and a green phase of length 60 seconds. Vehicles arrive at the traffic lights on average one every 4 seconds, and when the lights turn to green the vehicles in the queue leave at a rate of one every second.

A red and green cycle is hence of length 160 seconds during which, on average, 40 vehicles arrive. During the green phase a maximum of 60 vehicles may pass through the road junction. Hence we would expect all the vehicles arriving during one cycle to pass through the junction during that cycle. The system may be modelled by assuming that the vehicles arrive every 4 seconds precisely i.e. at times 2, 6, 10,….., 154, 158, after the start of the red phase, and that the first vehicle in the queue leaves at the start of the green phase, the next one second later, etc.

Average delay per vehicle: 1/40 ΣDelay(s) =1650/40=41.25 secs = length of red phase (seconds). = length of green phase (seconds). a = time between arrivals of vehicles (seconds). d = time between departure of vehicles in the queue (seconds). Average Delay per vehicle = N = number of vehicles =

Asokan T ED 309 Numerical Methods When analytical solutions not available for the constitutive equation. – Finite difference method – Finite element method FDM gives a point wise approximation to the exact solution of a Partial Differential Equation.

Asokan T ED 309 Finite Element Method The domain can be analytically modeled or approximated by replacing it with an assemblage of discrete elements.

Asokan T ED 309