Abstract

Forest fires have caused considerable losses to ecologies, societies, and economies worldwide. To minimize these losses and reduce forest fires, modeling and predicting the occurrence of forest fires are meaningful because they can support forest fire prevention and management. In recent years, the convolutional neural network (CNN) has become an important state-of-the-art deep learning algorithm, and its implementation has enriched many fields. Therefore, we proposed a spatial prediction model for forest fire susceptibility using a CNN. Past forest fire locations in Yunnan Province, China, from 2002 to 2010, and a set of 14 forest fire influencing factors were mapped using a geographic information system. Oversampling was applied to eliminate the class imbalance, and proportional stratified sampling was used to construct the training/validation sample libraries. A CNN architecture that is suitable for the prediction of forest fire susceptibility was designed and hyperparameters were optimized to improve the prediction accuracy. Then, the test dataset was fed into the trained model to construct the spatial prediction map of forest fire susceptibility in Yunnan Province. Finally, the prediction performance of the proposed model was assessed using several statistical measures—Wilcoxon signed-rank test, receiver operating characteristic curve, and area under the curve (AUC). The results confirmed the higher accuracy of the proposed CNN model (AUC 0.86) than those of the random forests, support vector machine, multilayer perceptron neural network, and kernel logistic regression benchmark classifiers. The CNN has stronger fitting and classification abilities and can make full use of neighborhood information, which is a promising alternative for the spatial prediction of forest fire susceptibility. This research extends the application of CNN to the prediction of forest fire susceptibility.

Highlights

  • Forest fires have caused considerable losses in global forest resources and people’s lives and property, seriously impacting the global ecological balance, and have received considerable attention from countries worldwide

  • This section first shows the results of multicollinearity analysis and an information gain ratio (IGR) for the selection of forest fire influencing factors

  • The test dataset was fed into the trained model and the prediction map of ignition probabilities was constructed by the convolutional neural network (CNN) model

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Summary

Introduction

Forest fires have caused considerable losses in global forest resources and people’s lives and property, seriously impacting the global ecological balance, and have received considerable attention from countries worldwide. Various approaches have been developed for modeling forest fire susceptibility, ranging from physics-based methods to statistical and machine learning (ML) methods (Dimuccio et al 2011; Tien Bui et al 2017; Leuenberger et al 2018; Hong et al 2019; Jaafari et al 2019). The ML approaches mentioned above are pixel-based classifiers with shallow architectures, which do not make use of the spatial patterns that are implicit in images (Zhang et al 2018) These classifiers directly classify the input data without feature extraction, and representative features cannot be mined from the input data to improve classification accuracy

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