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Frontiers in Ocean Engineering, 2021, 2(2); doi: 10.38007/FOE.2021.020207.

Safety Performance of Structures in Ocean Engineering Based on Neural Network Surface Method

Author(s)

Aditiya Kumarien

Corresponding Author:
Aditiya Kumarien
Affiliation(s)

Universiti Teknologi MARA, Malaysia

Abstract

In the actual marine engineering analysis, the structure is often connected by multiple components or multiple units according to the corresponding laws. We regard this structural safety research from the perspective of the whole as the systematic reliability of the structure. Sexuality analysis and research on safety performance. Therefore, the purpose of this paper is to study the safety performance of structures in marine engineering based on the neural network response surface method. In the experiment, using the function algorithm, the research on the safety performance of the structure in marine engineering based on the neural network surface method is investigated and analyzed. The experimental results show that the neural network-based structural system reliability method proposed in this paper has a general, practical and effective function for the safety performance of structures in marine engineering.

Keywords

Neural Network, Response Surface Method, Marine Engineering, Structural Safety and Reliability

Cite This Paper

Aditiya Kumarien. Safety Performance of Structures in Ocean Engineering Based on Neural Network Surface Method. Frontiers in Ocean Engineering (2021), Vol. 2, Issue 2: 51-59. https://doi.org/10.38007/FOE.2021.020207.

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