Probabilistic evaluation of dynamic positioning operability with a Quasi-Monte Carlo approach

Mauro, F and Nabergoj, R (2024) Probabilistic evaluation of dynamic positioning operability with a Quasi-Monte Carlo approach. Brodogradnja, 75 (1). pp. 1-13. ISSN 0007215X

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Abstract

During the design phase of an offshore unit, estimating the station-keeping capabilities of the dynamic positioning (DP) system is mandatory. This means, in conventional offshore applications, to determine the maximum sustainable wind speed as a function of the encounter heading, which the unit may counteract by employing the onboard actuators or mooring lines only. Besides the deterministic estimation of DP capability, it is possible to assess the operability of the DP system following a non-deterministic probabilistic process by employing the site-specific joint wind-wave distributions to model the environment. In such a case, the operability results from a Monte Carlo integration process. Here it is proposed to enhance the applicability of the probabilistic analysis of DP operability, investigating the application of a Quasi-Monte Carlo method. In this sense, the procedure uses quasi-random samplings following a Sobol sequence instead of employing random samples of the joint distributions. In this paper, the Quasi-Monte Carlo process is tested and compared on a reference ship, highlighting the improvements to the established probabilistic DP prediction concerning the number of calculations needed to estimate operability. The significant reduction of computational time makes the newly implemented method suitable for the early design stage applications.

Affiliation: Sharjah Maritime Academy
SMA Author(s): Mauro, F ORCID: https://orcid.org/0000-0003-3471-9411
All Author(s): Mauro, F and Nabergoj, R
Item Type: Article
Publisher Open Access Policy: https://openpolicyfinder.jisc.ac.uk/id/publication...
URI: https://academic.research.sma.ac.ae/id/eprint/17
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