Neural Networks with LSTM and GRU in Modeling Active Fires in the Amazon

Ramon Tavares
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Abstract

This study presents a comprehensive methodology for modeling and forecasting the historical time series of fire spots detected by the AQUA_M-T satellite in the Amazon, Brazil. The approach utilizes a mixed Recurrent Neural Network (RNN) model, combining Long Short-Term Memory (LSTM) and Gated Recurrent Unit (GRU) architectures to predict monthly accumulations of daily detected fire spots. A summary of the data revealed a consistent seasonality over time, with annual maximum and minimum fire spot values tending to repeat at the same periods each year. The primary objective is to verify whether the forecasts capture this inherent seasonality through rigorous statistical analysis. The methodology involved careful data preparation, model configuration, and training using cross-validation with two seeds, ensuring that the data generalizes well to the test and validation sets, and confirming the convergence of the model parameters. The results indicate that the mixed LSTM and GRU model offers improved accuracy in forecasting 12 months ahead, demonstrating its effectiveness in capturing complex temporal patterns and modeling the observed time series. This research significantly contributes to the application of deep learning techniques in environmental monitoring, specifically in fire spot forecasting. In addition to improving forecast accuracy, the proposed approach highlights the potential for adaptation to other time series forecasting challenges, opening new avenues for research and development in machine learning and natural phenomenon prediction. Keywords: Time Series Forecasting, Recurrent Neural Networks, Deep Learning.
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使用 LSTM 和 GRU 的神经网络模拟亚马逊活跃火灾
本研究提出了一种综合方法,用于模拟和预测巴西亚马逊地区 AQUA_M-T 卫星探测到的火点历史时间序列。该方法利用混合递归神经网络(RNN)模型,结合长短期记忆(LSTM)和门控递归单元(GRU)架构,预测每日检测到的火点的月度累积量。对数据的总结显示,随着时间的推移,火点具有一致的季节性,每年的最大和最小火点值往往在同一时期重复出现。主要目的是通过严格的统计分析来验证预测是否捕捉到了这种固有的季节性。该方法包括仔细的数据准备、模型配置和使用两个种子进行交叉验证的训练,确保数据能很好地概括到测试集和验证集,并确认模型参数的收敛性。结果表明,LSTM 和 GRU 混合模型提高了对未来 12 个月预测的准确性,证明了其在捕捉复杂时间模式和模拟观测时间序列方面的有效性。这项研究极大地促进了深度学习技术在环境监测领域的应用,特别是在火点预测方面。除了提高预测准确性,所提出的方法还突出了适应其他时间序列预测挑战的潜力,为机器学习和自然现象预测的研究与发展开辟了新途径。关键词:时间序列预测、循环神经网络、深度学习。
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