Landslide susceptibility research method and system based on reinforcement learning-random forest

The invention discloses a landslide susceptibility research method and system based on reinforcement learning-random forest, and belongs to the field of geological disaster prediction and evaluation. The method comprises the following steps: S1, carrying out drawing unit division on a research area...

Full description

Saved in:
Bibliographic Details
Main Authors LU YANBAO, XU WANQIANG, KONG QIUPING, WANG XU, FAN MEILING, NIE WEN, ZHENG TIANSHOU, ZHU TIANQIANG, CHEN XINQUAN, ZHENG WENMING
Format Patent
LanguageChinese
English
Published 02.04.2024
Subjects
Online AccessGet full text

Cover

Loading…
More Information
Summary:The invention discloses a landslide susceptibility research method and system based on reinforcement learning-random forest, and belongs to the field of geological disaster prediction and evaluation. The method comprises the following steps: S1, carrying out drawing unit division on a research area to obtain a plurality of units; carrying out linear analysis on the landslide influence factors to obtain evaluation indexes; forming a data set by a plurality of units and evaluation indexes, and dividing the data set to obtain a training data set and a verification data set; s2, equivalently dividing the training data set according to a time sequence to obtain a first training data set, a second training data set and a third training data set; calculating a frequency ratio of the first training data set to obtain a first frequency ratio; s3, establishing an ILRF1 model based on the first frequency ratio; sequentially obtaining an ILRF2 model and an ILRF3 model based on the ILRF1 model, the second training data se
Bibliography:Application Number: CN202410016899