Application of the Artificial Neural Network and Support Vector Machines in Forest Fire Prediction in the Guangxi Autonomous Region, China
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Ziyu Zhao | Shilin Chen | Yudong Li | Zhongke Feng | Fengge Wang | Zhongke Feng | Shilin Chen | Fengge Wang | Ziyu Zhao | Yudong Li
[1] P. Pavone,et al. The pre-Linnaean herbarium of Paolo Boccone (1633–1704) kept in Leiden (the Netherlands) and its connections with the imprinted one in Paris , 2018 .
[2] Hussein A. El-Naggar,et al. Effect of human activities on biodiversity in Nabq Protected Area, South Sinai, Egypt , 2019, The Egyptian Journal of Aquatic Research.
[3] Hai-qing Hu,et al. [Applicability of different models in simulating the relationships between forest fire occurrence and weather factors in Daxing' an Mountains]. , 2010, Ying yong sheng tai xue bao = The journal of applied ecology.
[4] Tomàs Margalef,et al. Applying a Dynamic Data Driven Genetic Algorithm to Improve Forest Fire Spread Prediction , 2008, ICCS.
[5] Dengyi Zhang,et al. SVM based forest fire detection using static and dynamic features , 2011, Comput. Sci. Inf. Syst..
[6] Stephen A. Billings,et al. A new maximum relevance-minimum multicollinearity (MRmMC) method for feature selection and ranking , 2017, Pattern Recognit..
[7] V. Caselles,et al. Application of artificial neural networks and logistic regression to the prediction of forest fire danger in Galicia using MODIS data , 2012 .
[8] Tomàs Margalef,et al. Time aware genetic algorithm for forest fire propagation prediction: exploiting multi‐core platforms , 2017, Concurr. Comput. Pract. Exp..
[9] Gustavo Eduardo Marcatti,et al. Forest fire hazard zoning in Mato Grosso State, Brazil , 2019, Land Use Policy.
[10] Hamid Reza Pourghasemi,et al. A comparative assessment between linear and quadratic discriminant analyses (LDA-QDA) with frequency ratio and weights-of-evidence models for forest fire susceptibility mapping in China , 2017, Arabian Journal of Geosciences.
[11] Yu Chang,et al. Predicting fire occurrence patterns with logistic regression in Heilongjiang Province, China , 2013, Landscape Ecology.
[12] A. D. Botanica. HUMAN IMPACT ASSESSMENT ON THE SICILIAN AGROECOSYSTEMS THROUGH THE EVALUATION OF MELLIFEROUS AREAS , 2013 .
[13] D. Xie,et al. Prediction for Burned Area of Forest Fires Based on SVM Model , 2014 .
[14] P. Cortez,et al. A data mining approach to predict forest fires using meteorological data , 2007 .
[15] Maria Alessandra Ragusa,et al. New enviromentally sensitive patch index - ESPI - for MEDALUS protocol , 2014 .
[16] D. Every,et al. Australian wildland-urban interface householders’ wildfire safety preparations: ‘Everyday life’ project priorities and perceptions of wildfire risk , 2019, International Journal of Disaster Risk Reduction.
[17] Carrie V. Kappel,et al. A Global Map of Human Impact on Marine Ecosystems , 2008, Science.
[19] A. Lillebø,et al. Exploring variability in environmental impact risk from human activities across aquatic ecosystems. , 2019, The Science of the total environment.
[20] R. Stephenson. A and V , 1962, The British journal of ophthalmology.
[21] Tsuyoshi Murata,et al. {m , 1934, ACML.
[22] M. A. Ragusa,et al. Study of Saharan dust influence on PM10 measures in Sicily from 2013 to 2015 , 2017, 2005.06192.
[23] Shen Hua-yu,et al. Determining the number of BP neural network hidden layer units , 2008 .
[24] Hu Haiqing,et al. Relationship between forest lighting fire occurrence and weather factors in Daxing'an Mountains based on negative binomial model and zero-inflated negative binomial models. , 2010 .
[25] Biswajeet Pradhan,et al. A hybrid artificial intelligence approach using GIS-based neural-fuzzy inference system and particle swarm optimization for forest fire susceptibility modeling at a tropical area , 2017 .
[26] V. Sevinç,et al. A Bayesian network model for prediction and analysis of possible forest fire causes , 2020 .
[27] A. Murat Ozbayoglu,et al. Estimation of the Burned Area in Forest Fires Using Computational Intelligence Techniques , 2012, Complex Adaptive Systems.
[28] Sebastián Ventura,et al. Scalable extensions of the ReliefF algorithm for weighting and selecting features on the multi-label learning context , 2015, Neurocomputing.
[29] Amparo Alonso-Betanzos,et al. A Neural Network Approach for Forestal Fire Risk Estimation , 2002, ECAI.
[30] Samaher AlJanabi,et al. Assessing the suitability of soft computing approaches for forest fires prediction , 2018, Applied Computing and Informatics.
[31] Imad H. Elhajj,et al. Efficient forest fire occurrence prediction for developing countries using two weather parameters , 2011, Eng. Appl. Artif. Intell..
[32] A. Zhu,et al. Applying genetic algorithms to set the optimal combination of forest fire related variables and model forest fire susceptibility based on data mining models. The case of Dayu County, China. , 2018, The Science of the total environment.
[33] ByoungChul Ko,et al. Fire detection based on vision sensor and support vector machines , 2009 .
[34] Long Sun,et al. Understanding fire drivers and relative impacts in different Chinese forest ecosystems. , 2017, The Science of the total environment.
[35] Danna Zhou,et al. d. , 1934, Microbial pathogenesis.
[36] Futao Guo,et al. What drives forest fire in Fujian, China? Evidence from logistic regression and Random Forests , 2016 .