利用改进的森林火险指数和长短期记忆深度学习重建非卫星时代的历史森林火险--中国西南部四川省的案例研究

IF 3.8 1区 农林科学 Q1 FORESTRY
Yuwen Peng , Huiyi Su , Min Sun , Mingshi Li
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引用次数: 0

摘要

历史森林火灾风险数据库对于评估过去森林管理方法的有效性、提高森林火灾预警和应急能力以及准确预算火灾可能造成的碳排放至关重要。然而,由于空间信息技术的不可得性,在非卫星时代建立可靠、完整的此类数据库极为困难。本研究提出了一个改进的森林火灾风险重建框架,该框架集成了基于深度学习的时间序列预测模型和空间插值,以解决中国西南部四川省面临的挑战。首先,通过补充坡度和坡向信息改进了森林火险指数(FFDI)。我们比较了自回归综合移动平均(ARIMA)、先知(Prophet)和长短期记忆(LSTM)这三种时间序列模型在预测修正的森林火险指数(MFFDI)方面的表现。使用表现最好的模型回溯了 1941 年至 1970 年各个站点的森林火险指数。随后,使用 Anusplin 空间插值法绘制了以五年为间隔的森林火险指数分布图,然后与河流距离层进行加权叠加,生成森林火险图,用于重建森林火险数据库。结果显示,LSTM 在拟合和预测历史 MFFDI 方面最为准确,拟合判定系数 (R2) 为 0.709,均方误差 (MSE) 为 0.047,验证 R2 和 MSE 分别为 0.508 和 0.11。对预测的森林火险图进行的独立验证表明,在 7 次历史森林火灾事件中,有 5 次位于森林火灾易发区,高于根据原始森林火灾指数确定的结果(7 次中有 2 次)。这证明了改进型 MFFDI 的有效性,并表明本研究提出的历史森林火险重建方法具有很高的可靠性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Reconstructing historical forest fire risk in the non-satellite era using the improved forest fire danger index and long short-term memory deep learning-a case study in Sichuan Province, southwestern China

Historical forest fire risk databases are vital for evaluating the effectiveness of past forest management approaches, enhancing forest fire warnings and emergency response capabilities, and accurately budgeting potential carbon emissions resulting from fires. However, due to the unavailability of spatial information technology, such databases are extremely difficult to build reliably and completely in the non-satellite era. This study presented an improved forest fire risk reconstruction framework that integrates a deep learning-based time series prediction model and spatial interpolation to address the challenge in Sichuan Province, southwestern China. First, the forest fire danger index (FFDI) was improved by supplementing slope and aspect information. We compared the performances of three time series models, namely, the autoregressive integrated moving average (ARIMA), Prophet and long short-term memory (LSTM) in predicting the modified forest fire danger index (MFFDI). The best-performing model was used to retrace the MFFDI of individual stations from 1941 to 1970. Following this, the Anusplin spatial interpolation method was used to map the distributions of the MFFDI at five-year intervals, which were then subjected to weighted overlay with the distance-to-river layer to generate forest fire risk maps for reconstructing the forest fire danger database. The results revealed LSTM as the most accurate in fitting and predicting the historical MFFDI, with a fitting determination coefficient (R2) of 0.709, mean square error (MSE) of 0.047, and validation R2 and MSE of 0.508 and 0.11, respectively. Independent validation of the predicted forest fire risk maps indicated that 5 out of 7 historical forest fire events were located in forest fire-prone areas, which is higher than the results determined from the original FFDI (2 out of 7). This proves the effectiveness of the improved MFFDI and indicates a high level of reliability of the historical forest fire risk reconstruction method proposed in this study.

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来源期刊
Forest Ecosystems
Forest Ecosystems Environmental Science-Nature and Landscape Conservation
CiteScore
7.10
自引率
4.90%
发文量
1115
审稿时长
22 days
期刊介绍: Forest Ecosystems is an open access, peer-reviewed journal publishing scientific communications from any discipline that can provide interesting contributions about the structure and dynamics of "natural" and "domesticated" forest ecosystems, and their services to people. The journal welcomes innovative science as well as application oriented work that will enhance understanding of woody plant communities. Very specific studies are welcome if they are part of a thematic series that provides some holistic perspective that is of general interest.
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