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Artificial Neural Network for Markov Chaining of Rainfall Over India

机译:人工神经网络,用于马尔可夫的降雨锁定印度

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Rainfall forecasting plays a significant role in water management for agriculture in a country like India where the economy depends heavily upon agriculture. In this paper, a feed forward artificial neural network (ANN) and a multiple linear regression model has been utilized for lagged time series data of monthly rainfall. The data for 23 years from 1990 to 2012 over Indian region has been used in this study. Convincing values of root mean squared error between actual monthly rainfall and that predicted by ANN has been found. It has been found that during monsoon months, rainfall of every n+3rd month can be predicted using last three months' (n, n+1, n+2) rainfall data with an excellent correlation coefficient that is more than 0.9 between actual and predicted rainfall. The probabilities of dry seasonal month, wet seasonal month for monsoon and non-monsoon months have been found.
机译:在像印度这样的国家,经济在很大程度上取决于农业的国家,降雨预测在农业水管理中起着重要作用。 在本文中,已将饲料前向人工神经网络(ANN)和多个线性回归模型用于每月降雨的滞后时间序列数据。 从1990年到2012年,印度地区的数据已在这项研究中使用了23年。 在实际的每月降雨和ANN预测之间的令人信服的根平方误差值。 已经发现,在季风的月份中,可以使用最后三个月(n,n,n+1,n+2)降雨量的降雨量,具有出色的相关系数,该数据在实际和实际和实际之间的相关系数超过0.9 预测降雨。 已经发现了干燥的季节月份,季风和非季风月份的潮湿季节月的概率。

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