基于遗传算法和人工神经网络的气象预报建模改进方法

Long Jin, Cai Yao, Xiaoyan Huang
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引用次数: 12

摘要

针对利用遗传算法和神经网络方法进行台风路径预测的问题,提出了一种新的预测建模方案,用于选择网络结构和确定初始连接权值。在遗传进化的计算过程中,通过设计在一定代数后保留每一代最优个体的策略,提高了获得全局最优解的概率。对南海台风路径的实例预报结果表明,该预报模式1990 ~ 2003年预报的平均绝对误差为150.0km,与上一代最优个体预报模式相比,在相同预报器和时段的条件下,预报误差为161.1km。结果表明,遗传算法和神经网络预测模型的预测精度高于台风路径客观预测技术和CLIPER方法的预测精度
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An Improved Method on Meteorological Prediction Modeling using Genetic Algorithm and Artificial Neural Network
Aiming at forecasting typhoon tracks by using genetic algorithm and neural network approach, this paper presents a new prediction modeling scheme for selecting the structure of networks and determining the initial connection weight. The probability for obtaining a global optimal solution is raised by designing a strategy that the optimum individual for each generation is reserved after a certain number of generations in the computational process of genetic evolution. The case forecast results of the typhoon track over the South China sea area show that mean absolute error of the prediction during 1990-2003 is 150.0km form this new forecast model, and in comparison with the optimum individual form the last generation, under the conditions of the same predictors and period forecast error is 161.1km. Furthermore, it is also found that higher predictive accuracy form the forecast models using genetic algorithm and neural network approach, comparing the results to those form objective prediction technique of typhoon tracks and the climatology and persistence (CLIPER) methods
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