Rainfall is a natural process which is of utmost importance in various areas including water cycle, ground water recharging, disaster management and economic cycle. Accurate prediction of rainfall intensity is a challenging task and its exact prediction helps in every aspect. In this paper, we propose a deep and wide rainfall prediction model (DWRPM) and evaluate its effectiveness to predict rainfall in Indian state of Rajasthan using historical time-series data. For wide network, instead of using rainfall intensity values directly, we are using features obtained after applying a convolutional layer. For deep part, a multi-layer perceptron (MLP) is used. Information of geographical parameters (latitude and longitude) are included in a unique way. It gives the model a generalization ability, which helps a single model to make rainfall predictions in different geographical conditions. We compare our results with various deep-learning approaches like MLP, LSTM and CNN, which are observed to work well in sequence-based predictions. Experimental analysis and comparison shows the applicability of our proposed method for rainfall prediction in Rajasthan.
翻译:降雨是一个自然过程,在水循环、地下水补给、灾害管理和经济周期等各个领域都至关重要。准确预测降雨强度是一项艰巨的任务,准确预测降雨强度对各方面都有帮助。在本文件中,我们提出一个深度和广度的降雨预测模型(DWRPM),并使用历史时间序列数据评估其在印度拉贾斯坦邦预测降雨量的有效性。对于广域网而言,我们不是直接使用降雨强度值,而是使用在应用进化层后获得的特征。在深处,我们使用了多层透视器(MLP),以独特的方式纳入了地理参数信息(纬度和纬度)。它为模型提供了一种一般化能力,帮助一种单一模型在不同地理条件下进行降雨量预测。我们将我们的结果与MLP、LSTM和CNN等各种深层学习方法进行比较,在基于序列的预测中观察到这些方法效果良好。实验和比较表明我们提议的降雨预测方法在拉贾斯坦坦地区的适用性。