Title :
Comparison of NEVADA Simulation to Monte Carlo Simulation
Author_Institution :
AlliedSignal Engines, Phoenix, AZ, USA
Abstract :
A Monte Carlo simulation on a business jet engine thermodynamic performance was repeated using NEVADA Simulation in order to compare the accuracy and computing requirements of the different techniques. NEVADA Simulation is a quadrature technique for calculating functions of random variables. In NEVADA (NumErical integration of Variance And probabilistic Dependence Analyzer) Simulation, variables are modeled with mixtures of 4-parameter random variables, called "Continuous Trees". Functions of random variables are calculated using gaussian quadrature. NEVADA Simulation can take advantage of the probabilistic independence in a decision problem while allowing for probabilistic dependence to achieve close to polynomial computational time complexity. The results show that NEVADA Simulation was superior to Monte Carlo Simulation in terms of computational speed and accuracy. To achieve the accuracy of the NEVADA Simulation on specific fuel consumption, which took 3.9 seconds of 80486 time for NEVADA Simulation to solve, 187,000 Monte Carlo runs would be required. These 187,000 runs would require about 5.2 days of Cyber mainframe computer time.
Keywords :
Monte Carlo methods; aerospace simulation; computational complexity; digital simulation; integration; physics computing; probability; 4-parameter random variables; Cyber mainframe computer time; Monte Carlo Simulation; NEVADA Simulation; business jet engine; computational speed; computing requirements; continuous trees; gaussian quadrature; numerical integration; polynomial computational time complexity; probabilistic dependence; probabilistic dependence analyzer; probabilistic independence; quadrature technique; random variables; specific fuel consumption; thermodynamic performance; Analytical models; Computational modeling; Computer aided manufacturing; Fuels; Jet engines; Monte Carlo methods; Random variables; Thermodynamics; Turbines; Uncertainty;
Conference_Titel :
Simulation Conference Proceedings, 1994. Winter
Print_ISBN :
0-7803-2109-X
DOI :
10.1109/WSC.1994.717250