Various procedures to extend the applicability and to increase the ef®ciency of Monte Carlo simulation (MCS) for the analysis of complex dynamical systems are discussed. In particular, the capabilities of the methods denoted Russian Roulette and Splitting (RR&S) and Double and Clump (D&C) are review
Stochastic analysis of dynamical systems by phase-space-controlled Monte Carlo simulation
✍ Scribed by N. Harnpornchai; H.J. Pradlwarter; G.I. Schnëller
- Publisher
- Elsevier Science
- Year
- 1999
- Tongue
- English
- Weight
- 850 KB
- Volume
- 168
- Category
- Article
- ISSN
- 0045-7825
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✦ Synopsis
A simulation
technique for the stochastic analysis of dynamical systems subjected to stochastic excitation is presented. The proposed technique is applied in conjunction with the Monte Carlo Simulation (MCS) procedure.
The concept is based on the manipulation of the generated samples in phase space by utilizing a geometrical criterion, thus denoted as Phase-Space-Controlled (PSC) simulation technique. This criterion is common to the phase space of genera1 dynamical systems. The results of various examples show that MCS utilizing PSC has significantly higher efficiency than direct MCS, especially in case where the tail of the response distribution is required. In addition, PSC shows the potential of its application for larger dynamical systems.
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