TY - JOUR
T1 - Flood susceptibility mapping using GIS-based frequency ratio and Shannon’s entropy index bivariate statistical models
T2 - A Case Study of Chandrapur District, India
AU - Sharma, Asheesh
AU - Poonia, Mandeep
AU - Rai, Ankush
AU - Biniwale, Rajesh B.
AU - Tügel, Franziska
AU - Holzbecher, Ekkehard
AU - Hinkelmann, Reinhard
N1 - Publisher Copyright:
© 2024 by the authors.
PY - 2024/8/22
Y1 - 2024/8/22
N2 - Flooding poses a significant threat as a prevalent natural disaster. To mitigate its impact, identifying flood-prone areas through susceptibility mapping is essential for effective flood risk management. This study conducted flood susceptibility mapping (FSM) in Chandrapur district, Maharashtra, India, using geographic information system (GIS)-based frequency ratio (FR) and Shannon’s entropy index (SEI) models. Seven flood-contributing factors were considered, and historical flood data were utilized for model training and testing. Model performance was evaluated using the area under the curve (AUC) metric. The AUC values of 0.982 for the SEI model and 0.966 for the FR model in the test dataset underscore the robust performance of both models. The results revealed that 5.4% and 8.1% (FR model) and 3.8% and 7.6% (SEI model) of the study area face very high and high risks of flooding, respectively. Comparative analysis indicated the superiority of the SEI model. The key limitations of the models are discussed. This study attempted to simplify the process for the easy and straightforward implementation of FR and SEI statistical flood susceptibility models along with key insights into the flood vulnerability of the study region.
AB - Flooding poses a significant threat as a prevalent natural disaster. To mitigate its impact, identifying flood-prone areas through susceptibility mapping is essential for effective flood risk management. This study conducted flood susceptibility mapping (FSM) in Chandrapur district, Maharashtra, India, using geographic information system (GIS)-based frequency ratio (FR) and Shannon’s entropy index (SEI) models. Seven flood-contributing factors were considered, and historical flood data were utilized for model training and testing. Model performance was evaluated using the area under the curve (AUC) metric. The AUC values of 0.982 for the SEI model and 0.966 for the FR model in the test dataset underscore the robust performance of both models. The results revealed that 5.4% and 8.1% (FR model) and 3.8% and 7.6% (SEI model) of the study area face very high and high risks of flooding, respectively. Comparative analysis indicated the superiority of the SEI model. The key limitations of the models are discussed. This study attempted to simplify the process for the easy and straightforward implementation of FR and SEI statistical flood susceptibility models along with key insights into the flood vulnerability of the study region.
KW - Chandrapur
KW - Flood inventory
KW - Flood susceptibility mapping
KW - Frequency ratio (FR)
KW - GIS
KW - Shannon’s entropy index (SEI)
KW - ITC-GOLD
KW - ITC-ISI-JOURNAL-ARTICLE
U2 - 10.3390/ijgi13080297
DO - 10.3390/ijgi13080297
M3 - Article
AN - SCOPUS:85202634782
SN - 2220-9964
VL - 13
JO - ISPRS international journal of geo-information
JF - ISPRS international journal of geo-information
IS - 8
M1 - 297
ER -