Climate change has intensified the frequency and severity of wildfires, making rapid and accurate prediction of fire spread essential for effective mitigation and response. Physics-based simulators such as FARSITE offer high-fidelity predictions but are computationally intensive, limiting their applicability in real-time decision-making, while existing deep learning models often yield overly smooth predictions that fail to capture the complex, nonlinear dynamics of wildfire propagation. This study proposes an autoregressive conditional generative adversarial network (CGAN) for probabilistic wildfire spread prediction. By formulating the prediction task as an autoregressive problem, the model learns sequential state transitions, ensuring long-term prediction stability. Experimental results demonstrate that the proposed CGAN-based model outperforms conventional deep learning models in both overall predictive accuracy and boundary delineation of fire perimeters. These results demonstrate that adversarial learning allows the model to capture the strong nonlinearity and uncertainty of wildfire spread, instead of simply fitting the pixel average. Furthermore, the autoregressive framework facilitates systematic temporal forecasting of wildfire evolution. The proposed CGAN-based autoregressive framework enhances both the accuracy and physical interpretability of wildfire spread prediction, offering a promising foundation for time-sensitive response and evacuation planning.
翻译:气候变化加剧了野火的频率和严重程度,使得快速准确地预测火势蔓延对于有效的减灾和响应至关重要。基于物理的模拟器(如FARSITE)能够提供高保真度的预测,但计算密集,限制了其在实时决策中的应用;而现有的深度学习模型通常产生过于平滑的预测,无法捕捉野火传播的复杂非线性动态。本研究提出了一种用于概率性野火蔓延预测的自回归条件生成对抗网络(CGAN)。通过将预测任务表述为自回归问题,该模型学习序列状态转移,确保长期预测的稳定性。实验结果表明,所提出的基于CGAN的模型在整体预测精度和火场边界的轮廓描绘方面均优于传统的深度学习模型。这些结果表明,对抗学习使模型能够捕捉野火蔓延的强非线性和不确定性,而非简单地拟合像素平均值。此外,自回归框架促进了野火演化的系统性时间预测。所提出的基于CGAN的自回归框架提高了野火蔓延预测的准确性和物理可解释性,为时间敏感的响应和疏散规划提供了有前景的基础。