An evaluation of CNN and ANN in prediction weather forecasting: A review

S. Kareem, Zhala Jameel Hamad, Shavan K. Askar
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引用次数: 7

Abstract

Artificial intelligence through deep neural networks is now widely used in a variety of applications that have profoundly altered human livelihoods in a variety of ways.  People's daily lives have become much more convenient. Image recognition, smart recommendations, self-driving vehicles, voice translation, and a slew of other neural network innovations have had a lot of success in their respective fields. The authors present the ANN applied in weather forecasting. The prediction technique relies solely upon learning previous input values from intervals in order to forecast future values. And also, Convolutional Neural Networks (CNNs) are a form of deep learning technique that can help classify, recognize, and predict trends in climate change and environmental data. However, due to the inherent difficulties of such results, which are often independently identified, non-stationary, and unstable CNN algorithms should be built and tested with each dataset and system separately. On the other hand, to eradicate error and provides us with data that is virtually identical to the real value we need Artificial Neural Networks (ANN) algorithms or benefit from it. The presented CNN model's forecasting efficiency was compared to some state-of-the-art ANN algorithms. The analysis shows that weather prediction applications become more efficient when using ANN algorithms because it is really easy to put into practice.
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CNN和ANN在天气预报中的评价综述
通过深度神经网络的人工智能现在被广泛应用于各种应用中,这些应用以各种方式深刻地改变了人类的生计。人们的日常生活变得更加方便。图像识别、智能推荐、自动驾驶汽车、语音翻译和一系列其他神经网络创新在各自的领域取得了很大的成功。介绍了人工神经网络在天气预报中的应用。预测技术完全依赖于从间隔中学习以前的输入值来预测未来的值。此外,卷积神经网络(cnn)是一种深度学习技术,可以帮助分类、识别和预测气候变化和环境数据的趋势。然而,由于这些结果往往是独立识别的,固有的困难,非平稳、不稳定的CNN算法需要分别在每个数据集和系统上进行构建和测试。另一方面,为了消除错误并为我们提供与实际价值几乎相同的数据,我们需要人工神经网络(ANN)算法或从中受益。将所提出的CNN模型的预测效率与一些最先进的人工神经网络算法进行了比较。分析表明,使用人工神经网络算法的天气预报应用效率更高,因为它很容易付诸实践。
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