Anomaly Detection for Environmental Data Using Machine Learning Regression
Abstract
Environmental data exhibits as huge amount and complex dependency. Utilizing
these data to detect anomaly is beneficial to the disaster prevention. Big data approach using
the machine learning method has the advantage not requiring the geophysical and geochemical
knowledge to detect anomaly. This paper using the popular support vector regression (SVR ) to
model the correlation between factors. From the residual of the regression, it develops a
statistical method to quantify the extremity of some abnormal observed data. A case study is
proposed to demonstrate the developed methods.
Description
Published version, licensed under the terms of the Creative Commons Attribution 3.0 . Source at https://doi.org/10.1088/1757-899X/472/1/012089