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DC (Drought Classifier): Forecasting and Classification of Drought Using Association Rules

机译:DC(干旱分类器):使用关联规则预测和分类干旱

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Normally droughts are viewed as the nature disasters which show heavy economic impact in the affected regions. Indemnifying the information about the pattern, area, severity and timing of droughts effect, can be used for operational planning and decision making. In this work, combination of Artificial Neural Network (ANN) coupled with Fuzzy C-means and association rule mining are used to develop a model to identify the severity of drought by forecasting the climate conditions for upcoming season. A suitable Feed Forward Neural network (FFNN) is developed with forward selection to forecast the rainfalls for future years with the input dataset of several archived data. Later fuzzy c-means (FCM) clustering is used for partitioning the forecasted data in three groups like low, medium and high rainfall. Finally association rules are used to find associations among data belonging to the climate information using proposed rule based model. The low rain data group generated by FCM is used for classifying the drought effect from the predicted results.
机译:通常干旱被视为在受影响地区表现出繁重的经济影响的自然灾害。赔偿有关旱灾效应的模式,区域,严重程度和时间的信息,可用于运营规划和决策。在这项工作中,与模糊C型C型型和关联规则采矿联接的人工神经网络(ANN)的组合用于开发模型,以确定通过预测即将到来的季节的气候条件进行干旱的严重程度。使用若干存档数据的输入数据集来开发合适的馈送前向神经网络(FFNN),以预测未来几年的降雨。后来的模糊C-means(FCM)聚类用于将预测数据分为3组,如低降雨,中和高降雨。最后,使用基于规则的模型用于查找属于气候信息的数据之间的关联。 FCM生成的低雨数据组用于对预测结果进行分类干旱效果。

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