Earthquake Forecasting by Parallel Support Vector Regression Using CUDA

Manoj Kollam, A. Joshi
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Abstract

Earthquakes are a devastating natural hazard that can wipe out thousands of lives and cause economic loss to the geographical location. Seismic stations continuously monitor and gather data regarding the vibration and movement of the ground at a particular site. The collected data is processed by the model to forecast the occurrence of earthquakes in the Caribbean region. This paper presents a Parallel Support Vector Regression (PSVR) model to forecast earthquakes using Graphic Processing Unit (GPU). In the implementation of a PSVR using GPU, Computing Unified Device Architecture (CUDA) framework is utilized, which is a famous programming structure for General Purpose Computing on GPU. This newly computed PSVR model shows considerable improvement in training speed and achieved an accuracy of 92% when compared with Scikit Learn and LibSVM library on Central Processing Unit (CPU) and GPU.
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基于CUDA的并行支持向量回归地震预报
地震是一种毁灭性的自然灾害,可以消灭成千上万的生命,并给地理位置造成经济损失。地震台站不断监测和收集有关特定地点地面振动和运动的数据。该模型对收集到的数据进行处理,以预测加勒比海地区的地震发生。提出了一种基于图形处理器(GPU)的并行支持向量回归(PSVR)地震预报模型。在使用GPU实现PSVR时,采用了著名的GPU通用计算编程结构CUDA (Computing Unified Device Architecture)框架。与Scikit Learn和LibSVM库在中央处理器(CPU)和GPU上的训练相比,新计算的PSVR模型在训练速度上有很大的提高,准确率达到92%。
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