Authors
Alireza Arabameri, Sunil Saha, Jagabandhu Roy, John P Tiefenbacher, Artemi Cerda, Trent Biggs, Biswajeet Pradhan, Phuong Thao Thi Ngo, Adrian L Collins
Publication date
2020/7/15
Journal
Science of the Total Environment
Volume
726
Pages
138595
Publisher
Elsevier
Description
Land subsidence (LS) is a significant problem that can cause loss of life, damage property, and disrupt local economies. The Semnan Plain is an important part of Iran, where LS is a major problem for sustainable development and management. The plain represents the changes occurring in 40% of the country. We introduce a novel-ensemble intelligence approach (called ANN-bagging) that uses bagging as a meta- or ensemble-classifier of an artificial neural network (ANN) to predict LS spatially on the Semnan Plain in Semnan Province, Iran. The ensemble model's goodness-of-fit (to training data) and prediction accuracy (of the validation data) are compared to benchmarks set by ANN-bagging. A total of 96 locations of LS and 12 LS conditioning factors (LSCFs) were collected. Each feature in the LS inventory map (LSIM) was randomly assigned to one of four groups or folds, each comprising 25% of cases. The …
Total citations
20202021202220232024813332319
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