New math method accelerates earthquake risk assessments

Scientists have developed a mathematical technique that speeds up seismic simulations by a factor of 1,000, making it easier to map underground layers and assess earthquake risks. Led by Kathrin Smetana from Stevens Institute of Technology, the approach uses model order reduction to handle complex computations more efficiently. While it does not enable earthquake prediction, it could enhance preparedness in vulnerable areas.

Earthquakes strike frequently, with the United States Geological Survey estimating about 55 occurrences daily worldwide, totaling around 20,000 annually. Events of magnitude 7 or higher happen roughly 15 times a year, and one reaches magnitude 8 or above. In 2025, a 7.0 magnitude quake hit Alaska on December 6, while an 8.8 magnitude offshore event near Russia's Kamchatka Peninsula ranked among the strongest ever recorded.

These disasters cause significant damage, costing the United States an estimated $14.7 billion yearly, according to a 2023 report from the USGS and the Federal Emergency Management Agency. Urbanization in seismic zones exacerbates the financial and human toll. Although prediction remains impossible, understanding subsurface structures can improve risk evaluation.

Researchers employ full waveform inversion to image underground layers, simulating seismic waves and comparing them to real data from seismograms. Kathrin Smetana, an assistant professor in mathematical sciences at Stevens Institute of Technology, notes that materials like solid rock, sand, or clay affect wave propagation differently. "You may have layers of solid rock, or you may have sand or clay," she explains.

Traditional simulations, involving millions of variables and repeated thousands of times, can take hours on powerful computers, limiting practical use. To address this, Smetana collaborated with Rhys Hawkins and Jeannot Trampert from Utrecht University, and Matthias Schlottbom and Muhammad Hamza Khalid from the University of Twente. Their method reduces the system size by about 1,000 times while maintaining accuracy. "Essentially we reduced the size of the system that you need to solve by about 1000 times," Smetana says.

Detailed in the paper "Model Order Reduction for Seismic Applications" published in the SIAM Journal on Scientific Computing (2025, volume 47, issue 5), the technique aids in creating detailed subsurface models for better risk assessment. It could also support tsunami simulations, providing time for emergency responses. "There's no way to predict earthquakes at this time," Smetana emphasizes, "but our work can help generate a realistic view of the subsurface with less computational power, which would make our models more practical and help us be more earthquake resilient."

관련 기사

Illustration of Japanese coastal residents urgently preparing for evacuation amid the first megaquake advisory following a major Aomori earthquake.
AI에 의해 생성된 이미지

일본, 아오모리 지진 후 최초 메가퀘이크 경보 발령

AI에 의해 보고됨 AI에 의해 생성된 이미지

아오모리현 동부 해안 앞바다에서 규모 7.5 지진 발생 후, 일본이 홋카이도부터 치바까지 182개 지방자치단체를 대상으로 사상 최초 메가퀘이크 경보를 발령했다. 1주일간 지속되는 이 경보는 주민들에게 즉시 대피 준비를 촉구한다. 일부 노인 요양 시설은 준비됐다고 밝혔으나, 다른 시설들은 대응에 불확실성을 표했다.

A powerful earthquake struck Myanmar on March 28, 2025, along the Sagaing Fault, providing rare insights into how ancient faults release energy. Researchers found that the event transferred seismic motion fully to the surface, challenging previous models of shallow slip deficits. This discovery has implications for faults like California's San Andreas.

AI에 의해 보고됨

Scientists have used swarms of minuscule earthquakes to map a hidden and intricate tectonic structure beneath northern California. This region, at the intersection of the San Andreas fault and the Cascadia subduction zone, involves five moving pieces rather than the expected three. The findings help explain past seismic events and improve hazard predictions.

Researchers have developed the most detailed simulations yet of how matter accretes around black holes, incorporating full general relativity and radiation effects. Led by Lizhong Zhang from the Institute for Advanced Study and the Flatiron Institute, the study matches real astronomical observations. Published in The Astrophysical Journal, it focuses on stellar-mass black holes and uses powerful supercomputers.

AI에 의해 보고됨

12월 12일 아오모리현 앞바다 규모 6.7 지진 발생, 일본 최초 메가퀘이크 주의보 촉발한 7.5 지진에 이은 것. 일본 기상청, 홋카이도·도호쿠 해안 쓰나미 주의보 발령, 최대 1m 파도 예상, 지역 위험 지속 속 바다 접근 자제 촉구.

중국 연구원들이 위성 데이터와 AI 기술을 활용한 폭풍 단기 예보 시스템을 개발해 최대 4시간 앞선 효과적인 대류 예보를 가능하게 했다. 이 획기적인 성과는 국립위성기상센터의 왕징송 연구원과 여러 대학 및 연구소 연구원들이 공동으로 이루었으며, 미국 국립과학원 학술원보에 발표됐다.

AI에 의해 보고됨

An analysis of satellite data reveals that subsidence in the world's major river deltas poses a greater flooding risk to populations than sea-level rise alone. Up to half a billion people, including residents of ten megacities, live in these vulnerable low-lying areas. Groundwater extraction emerges as the primary driver of this sinking land.

 

 

 

이 웹사이트는 쿠키를 사용합니다

사이트를 개선하기 위해 분석을 위한 쿠키를 사용합니다. 자세한 내용은 개인정보 보호 정책을 읽으세요.
거부