Affiliation:
1. School of Intelligent Construction, Fuzhou University of International Studies and Trade, Fujian, China
2. Fujian Provincial Key Laboratory of Data Intensive Computing, Fujian Province University, Quanzhou, 362000, China
Abstract
Objective:
Natural disasters caused by landslides have done great harm to agricultural
production, people's lives, and property. Considering the slope disaster caused by heavy
rainfall, it is important to establish an early warning system to monitor rainfall disaster
prevention. Huafang University Slope Sustainable Development Research Center (HUSSDRC)
has set up a meteorological station equipped with many sensors to provide early warning for
landslides in Taiwan. Since the amount of data collected will soon become very large, there is a
need to implement strong parallel frameworks containing information from the meteorological
station and the displacement of tiltmeters required to predict the landslides caused by rainfall.
Apache Spark (AS) is a general framework that contains the parallel process engine for data
analytics. In this study, a hybrid method is utilized to predict rainfall-induced landslides. The
proposed method combines support vector regression (SVR) with an artificial bee colony (ABC)
algorithm on the parallel platform of AS. For the proposed method, the RMSE is 0.562, and it is
the best value among these compared approaches.
Methods:
The SVR together with an ABC algorithm is applied to predict rainfall-induced
landslides on AS. The AS can perform parallel data analytics in memory to speed up
performance. However, it is hard to set up the best parameters for SVR. Thereafter, the ABC
algorithm is utilized to search for the best parameters for SVR.
Results:
Compared with other methods, the proposed method results provide the smallest root
mean square error (RMSE) for predicting rainfall-induced landslides.
Conclusion:
A hybrid method is proposed to predict rainfall-induced landslides. The proposed
hybrid method is based on the parallel platform of AS in which SVR predicts the rainfall-induced
landslides, and the ABC algorithm adjusts the best values of parameters for SVR. The
comparison of RMSE for the method with existing approaches shows that the method indeed has
the best value among compared approaches.
Publisher
Bentham Science Publishers Ltd.
Cited by
1 articles.
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