Analisis Fisika Gelombang Tsunami untuk Desain Sistem Peringatan Dini Berbasis Komputasi Cepat

Authors

  • Marsiska Ariesta Putri Institut Teknologi dan Bisnis
  • Ninik Dwi Atmin Institut Teknologi dan Bisnis

DOI:

https://doi.org/10.59031/jnts.v2i4.764

Keywords:

Computational Acceleration, Early Warning System, Machine Learning, Numerical Simulation, Tsunami Detection

Abstract

The increasing frequency and severity of tsunamis in coastal areas underscore the urgent need for efficient Tsunami Early Warning Systems (TEWS). This research aims to optimize TEWS by integrating fast computational tsunami wave modeling to enhance prediction speed and accuracy. The study utilizes numerical simulations employing finite volume methods, along with GPU acceleration, to model tsunami wave propagation and its impact on coastal areas. Machine learning techniques, such as regression trees, are incorporated to analyze large datasets of pre-computed tsunami simulations for accurate forecasting. The results reveal that by applying rapid computational methods, detection time can be reduced by up to 7 minutes, particularly for near-field tsunamis. This significant time-saving enables more effective evacuation procedures and better disaster mitigation efforts. In comparison to conventional systems, the fast computation model also provides more accurate predictions, including tsunami heights and arrival times. The implications of these findings suggest that fast computational methods can substantially improve the current TEWS, allowing for quicker and more reliable tsunami warnings. Moreover, the integration of advanced machine learning techniques ensures the system's adaptability and robustness in predicting tsunami behaviors based on varying data inputs. The potential for implementing this model in tsunami-prone regions worldwide is considerable, offering an improved approach to tsunami disaster preparedness and response. By reducing detection time and enhancing prediction accuracy, the optimized TEWS can significantly minimize loss of life and infrastructure damage, making it a valuable tool for global disaster management strategies.

 

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Published

2024-11-30

How to Cite

Marsiska Ariesta Putri, & Ninik Dwi Atmin. (2024). Analisis Fisika Gelombang Tsunami untuk Desain Sistem Peringatan Dini Berbasis Komputasi Cepat. Journal of New Trends in Sciences, 2(4), 27–38. https://doi.org/10.59031/jnts.v2i4.764