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Quantitative Rainfall Prediction: Deep Neural Network-Based Approach

机译:定量降雨预测:基于深度神经网络的方法

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Forecasting the weather has always been a challenge using conventional methods of climatology, analogue and numerical weather prediction. To improvise the prediction of weather much further, the proposed method can be used. In this work, authors proposed a method which uses the advantages of deep neural network to achieve high degree of performance and accuracy compared to the old conventional ways of forecasting the weather. It is done by feeding the perceptrons of the DNN some specific features like temperature, relative humidity, vapor and pressure. The output generated is a highly accurate amount of the rainfall based on the given input data.
机译:预测天气始终是使用常规气候学,模拟和数值天气预报的挑战。为了进一步提高天气预测,可以使用该方法。在这项工作中,作者提出了一种使用深神经网络的优势来实现高度性能和准确性的方法,与旧的常规预测天气预报的方法相比。它是通过喂养DNN的一些特定特征的感知者,如温度,相对湿度,蒸汽和压力。产生的输出基于给定的输入数据是一种高度准确的降雨量。

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