Disaster Prediction System using Convolution Neural Network

Purva Mohan Padmawar, Ashutosh Shinde, Talat Zakirhusen Sayyed, S. Shinde, K. Moholkar
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引用次数: 3

Abstract

Flood is a cataclysmic event that occurs far and wide by introducing extraordinary misfortunes. The floods additionally compromise the human life and the economy of the included nation likewise gets influenced. Neural Networks are generally connected in flood gauging and achieved great outcomes. The main objective of the project is to predict the flood situation and intimate about it to the people. The importance of predicting the flood is widely increased. The human life can get damaged due to floods; it can prevent loss to economy and human if it is predicted earlier. For prediction there are various methods but the most commonly used method is Neural Networks. This paper develops deep learning approach by combining Convolutional Neural Network (CNN) and Modified Particle Swarm Optimization (MPSO) for the prediction that the area is flooded or not. CNN extracts the attributes cataclysm in all respects productively. CNN is vigorous to shadow. CNN can get the attributes of calamity palatably and it additionally overpowers the misdetection or miscount by administrators, which further influence the handiness of fiasco help. MPSO is applied as optimizer to search for the optimal parameter values for the CNN training process.
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基于卷积神经网络的灾害预测系统
洪水是一种广泛发生的灾难性事件,它带来了非同寻常的不幸。洪水还危及人类的生活,受灾国家的经济也受到影响。神经网络在洪水测量中得到广泛应用,并取得了良好的效果。该项目的主要目的是预测洪水的情况,并让人们了解它。预测洪水的重要性大大提高了。人的生命可能因洪水而受损;如果及早预测,可以防止经济和人类的损失。对于预测有多种方法,但最常用的方法是神经网络。本文将卷积神经网络(CNN)和改进粒子群算法(MPSO)相结合,提出了一种深度学习方法来预测区域是否被淹没。CNN卓有成效地提取了灾变各方面的属性。CNN是蓬勃的影子。CNN可以很好地获得灾难属性,并且它还可以克服管理员的错误检测或错误计数,这进一步影响了惨败帮助的方便性。应用MPSO作为优化器,搜索CNN训练过程的最优参数值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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