Redirigiendo al acceso original de articulo en 18 segundos...
ARTÍCULO
TITULO

Predictive Model for Hydrostatic Curves of Chine-Type Small Ships Based on Deep Learning

Dongkeun Lee    
Chaeog Lim    
Sang-jin Oh    
Minjoon Kim    
Jun Soo Park and Sung-chul Shin    

Resumen

Capsizing accidents are regarded as marine accidents with a high rate of casualties per accident. Approximately 89% of all such accidents involve small ships (vessels with gross tonnage of less than 10 tons). Stability calculations are critical for assessing the risk of capsizing incidents and evaluating a ship?s seaworthiness. Despite the high frequency of capsizing accidents involving them, small ships are generally exempt from adhering to stability regulations, thus remaining systemically exposed to the risk of capsizing. Moreover, the absence of essential design documents complicates direct ship stability calculations. This study utilizes hull form feature data?obtained from the general arrangement of small ships?as input for a deep learning model. The model is structured as a multilayer neural network and aims to infer hydrostatic curves, which are required data for stability calculations.