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Rice crop yield forecasting of tropical wet and dry climatic zone of India using data mining techniques

机译:利用数据挖掘技术预测印度热带湿润和干旱气候区的水稻收成

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Data mining is the process of identifying the hidden patterns from large and complex data. It may provide crucial role in decision making for complex agricultural problems. Data visualisation is also equally important to understand the general trends of the effect of various factors influencing the crop yield. The present study examines the application of data visualisation techniques to find correlations between the climatic factors and rice crop yield. The study also applies data mining techniques to extract the knowledge from the historical agriculture data set to predict rice crop yield for Kharif season of Tropical Wet and Dry climatic zone of India. The data set has been visualised in Microsoft Office Excel using scatter plots. The classification algorithms have been executed in the free and open source data mining tool WEKA. The experimental results provided include sensitivity, specificity, accuracy, F1 score, Mathews correlation coefficient, mean absolute error, root mean squared error, relative absolute error and root relative squared error. General trends in the data visualisation show that decrease in precipitation in the selected climatic zone increases the rice crop yield and increase in minimum, average or maximum temperature for the season increases the rice crop yield. For the current data set experimental results show that J48 and LADTree achieved the highest accuracy, sensitivity and specificity. Classification performed by LWL classifier displayed the lowest accuracy, sensitivity and specificity results.
机译:数据挖掘是从大型和复杂数据中识别隐藏模式的过程。它可能在决策复杂农业问题上发挥关键作用。数据可视化对于理解影响作物产量的各种因素的总体趋势也同样重要。本研究考察了数据可视化技术的应用,以发现气候因素与水稻作物产量之间的相关性。该研究还应用数据挖掘技术从历史农业数据集中提取知识,以预测印度热带湿润和干旱气候区的Kharif季节的水稻收成。数据集已在Microsoft Office Excel中使用散点图可视化。分类算法已在免费和开放源数据挖掘工具WEKA中执行。提供的实验结果包括灵敏度,特异性,准确性,F1分数,Mathews相关系数,平均绝对误差,均方根误差,相对绝对误差和均方根误差。数据可视化的总体趋势表明,所选气候区降水的减少增加了稻谷作物的产量,而本季节最低,平均或最高温度的升高也增加了稻谷作物的产量。对于当前的数据集,实验结果表明J48和LADTree达到了最高的准确性,敏感性和特异性。 LWL分类器进行的分类显示出最低的准确性,敏感性和特异性结果。

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