Author:
Li Haoyang,Liu Jianxiang,Cao Zhenkun,Liu Yujun,Ni Ruju
Abstract
Abstract
Aiming at the current situation of unsatisfactory fire prediction index and accuracy, this study obtains the optimal network hyperparameter values for LSTM by introducing the GWO algorithm, obtaining the optimal solution of model parameters through fitness calculation, compensating for the drawback of traditional LSTM easily converging to local optimal solutions, accelerating the convergence speed of LSTM neural networks, and reducing training time. The MATLAB simulation experiments show that the accuracy of the improved LSTM model is 92.54%, 97.04%, and 88.17% respectively, with prediction accuracy improvements of 10.6%, 4.33%, and 22.3%. This significant improvement demonstrates the effectiveness of the improvement method and provides a reference for the development of fire detection technology.