利用植被指数预测火灾危险区域,案例研究:伊朗戈列斯坦省森林

A. Karimi, Sara Abdollahi, K. Ostad‑Ali‑Askari, S. Eslamian, V. Singh
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引用次数: 11

摘要

每年,世界各地的森林和牧场都会发生数百起火灾,破坏数千公顷的树木、灌木和植物,造成环境和经济损失。本研究旨在建立一个实时森林火灾警报系统,以更好地管理和监测戈列斯坦省的森林。本研究基于Golestan森林的火灾数据和MODIS传感器数据,生成了所需的层数,以编制火险图。首先,将自然火灾数据随机分为训练样本和测试样本两类。然后,利用NDVI、MSI、WDVI、OSAVI、GVMI和NDWI 6个指标,在火灾发生前一天和长15年的时间内,对训练类自然火区植被水分胁迫和绿化率进行考虑,并考虑各参数的风险阈值,选择最佳植被光谱指数。最后,针对测试类别的5次出现验证了模型输出。结果表明,在火灾发生前对火场进行预测的可能性达到80%以上。
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Predicting Fire Hazard Areas Using Vegetation Indexes, Case Study: Forests of Golestan Province, Iran
Every year, hundreds of fires occur in the forests and rangelands across the world and damage thousands hectare of trees, shrubs, and plants which cause environmental and economical damages. This study aims to establish a real time forest fire alert system for better forest management and monitoring in Golestan Province. In this study, in order to prepare fire hazard maps, the required layers were produced based on fire data in Golestan forests and MODIS sensor data.At first, the natural fire data was divided into two categories of training and test samples randomly. Then, the vegetation moisture stresses and greenness were considered using six indexes of NDVI, MSI, WDVI, OSAVI, GVMI and NDWI in natural fire area of training category on the day before fire occurrence and a long period of 15 years, and the risk threshold of the parameters was considered in addition to selecting the best spectral index of vegetation. Finally, the model output was validated for fire occurrences of the test category. The results showed the possibility of prediction of fire site before occurrence of fire with more than 80 percent accuracy.
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