Classification model for forest fire hotspot occurrences prediction using ANFIS algorithm

AK Wijayanto, O Sani, ND Kartika… - IOP Conference Series …, 2017 - iopscience.iop.org
IOP Conference Series: Earth and Environmental Science, 2017iopscience.iop.org
This study proposed the application of data mining technique namely Adaptive Neuro-Fuzzy
inference system (ANFIS) on forest fires hotspot data to develop classification models for
hotspots occurrence in Central Kalimantan. Hotspot is a point that is indicated as the
location of fires. In this study, hotspot distribution is categorized as true alarm and false
alarm. ANFIS is a soft computing method in which a given inputoutput data set is expressed
in a fuzzy inference system (FIS). The FIS implements a nonlinear mapping from its input …
Abstract
This study proposed the application of data mining technique namely Adaptive Neuro-Fuzzy inference system (ANFIS) on forest fires hotspot data to develop classification models for hotspots occurrence in Central Kalimantan. Hotspot is a point that is indicated as the location of fires. In this study, hotspot distribution is categorized as true alarm and false alarm. ANFIS is a soft computing method in which a given inputoutput data set is expressed in a fuzzy inference system (FIS). The FIS implements a nonlinear mapping from its input space to the output space. The method of this study classified hotspots as target objects by correlating spatial attributes data using three folds in ANFIS algorithm to obtain the best model. The best result obtained from the 3rd fold provided low error for training (error= 0.0093676) and also low error testing result (error= 0.0093676). Attribute of distance to road is the most determining factor that influences the probability of true and false alarm where the level of human activities in this attribute is higher. This classification model can be used to develop early warning system of forest fire.
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