Prediction of flood using optimized neural network with Gray wolf algorithm (Maroon River case study)

IF 0.5 Q3 GEOGRAPHY
S. Doumari
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引用次数: 0

Abstract

Floods, as one of the most frequent natural hazards, cause irreparable damage to infrastructure and agriculture, and housing every year. In order to avoid financial and human losses, the importance of flood forecasting seems inevitable. Considering that floods are caused by many natural and anthropogenic factors and also have limitations such as lack of complete information. In this study, artificial neural networks have been used as an efficient method for flood prediction. The neural network inputs include the Dubai River and the Eshel River, this data was collected over 8 Years from the Maroon River. The network used is a multilayer perceptron, also the neural network weights are optimized by the Gray wolf algorithm and the results are compared with other common methods. Analysis of the output results shows that the neural network with the Gray Wolf algorithm has better results than neural network and Genetic algorithms and the error of this method is 0.53%, which indicates high accuracy and precision for flood prediction compared to other evolutionary algorithms. This method is used to obtain the best amount of data for testing and training. As the results, the best rate is 80% for training and 20% for testing. Obtained results show the neural network error squares with 80% of the training data and 20% of the test data.
用优化神经网络和灰狼算法预测洪水(Maroon River案例研究)
洪水是最常见的自然灾害之一,每年都会对基础设施、农业和住房造成无法弥补的破坏。为了避免经济和人员损失,洪水预报的重要性似乎是不可避免的。考虑到洪水是由许多自然和人为因素引起的,也有缺乏完整信息等局限性。在本研究中,人工神经网络已被用作洪水预测的一种有效方法。神经网络输入包括迪拜河和埃舍尔河,这些数据是在8年多的时间里从马龙河收集的。所用的网络是一个多层感知器,并用Gray-wolf算法对神经网络的权值进行了优化,并将结果与其他常用方法进行了比较。对输出结果的分析表明,与神经网络和遗传算法相比,采用灰狼算法的神经网络具有更好的结果,该方法的误差为0.53%,表明与其他进化算法相比,该方法具有较高的洪水预测精度和准确性。该方法用于获得用于测试和训练的最佳数据量。结果表明,训练和测试的最佳比率分别为80%和20%。得到的结果表明,神经网络的误差与80%的训练数据和20%的测试数据成平方。
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来源期刊
自引率
28.60%
发文量
3
审稿时长
8 weeks
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