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Deep Learning Based LSTM and SeqToSeq Models to Detect Monsoon Spells of India

机译:基于深度学习的LSTM和SEQTOSEQ模型,用于检测印度的季风法术

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Monsoon spells are important climatic phenomenon modulating the quality and quantity of monsoon over a year. India being an agricultural country, identification of monsoon spells is extremely important to plan agricultural policies following the phases of monsoon to attain maximum productivity. Monsoon spells' detection involve analyzing and predicting monsoon at daily levels which make it more challenging as daily-variability is higher as compared to monsoon over a month or an year. In this article, deep-learning based long short-term memory and sequence-to-sequence models are utilized to classify monsoon days, which are finally assembled to detect the spells. Dry and wet days are classified with precision of 0.95 and 0.87, respectively. Break spells are observed to be forecast with higher accuracy than the active spells. Additionally, sequence-to-sequence model is noted to perform superior to that of long-short term memory model. The proposed models also outperform traditional classification models for monsoon spell detection.
机译:季风法术是调制一年多的季风质量和数量的重要气候现象。印度是一个农业国家,季风法术的鉴定对于季风阶段进行季度阶段以获得最大生产率的农业政策非常重要。季风法术检测涉及分析和预测日常水平的季风,这使得与每月或一年以上的季风相比,每日变异性更高。在本文中,利用基于深度学习的长短期内存和序列到序列模型来分类季风天,最终组装以检测法术。干燥和潮湿的日子分别为0.95和0.87的精度分类。观察到突破法术,预测比活跃法术更高的准确性。另外,注意序列到序列模型以优于长期存储器模型的优异。拟议的模型也优于传统的传统分类模型,用于季风法术检测。

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