Regional rainfall forecasting is an important issue in hydrology and meteorology. This paper aims to design an integrated tool by applying various machine learning algorithms, especially the state-of-the-art deep learning algorithms including Deep Neural Network, Wide Neural Network, Deep and Wide Neural Network, Reservoir Computing, Long Short Term Memory, Support Vector Machine, K-Nearest Neighbor for forecasting regional precipitations over different catchments in Upstate New York. Through the experimental results and the comparison among machine learning models including classification and regression, we find that KNN is an outstanding model over other models to handle the uncertainty in the precipitation data. The data normalization methods such as ZScore and MinMax are also evaluated and discussed.
翻译:区域降雨预报是水文和气象学方面的一个重要问题,本文件旨在设计一个综合工具,采用各种机器学习算法,特别是最先进的深层学习算法,包括深神经网络、广神经网络、深和广神经网络、储量计算、长期短期内存、支持矢量机、用于预测纽约上州不同集水区区域降水量的K-Nearest邻居。通过实验结果和对机器学习模型(包括分类和回归)的比较,我们发现KNN是处理降水数据不确定性的杰出模型,还评估和讨论了ZScore和MinMax等数据正常化方法。