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A comparative study of Data mining techniques to predict agricultural production: a case study in Thai rice

机译:数据挖掘技术预测农业产量的比较研究:以泰国大米为例

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In Thailand, rice crop is a major cereal crop that it be the main food and also for exports. Thailand was raked top exporters of high quality rice crop in this ASEAN. Until 2011, Vietnam has improved the production and the exporting so that Vietnam‘s rice has become the biggest rice exporter in the world. According to, information technology can help enhancing for the better rice crop productivity. Therefore, this research aimed to compare mining techniques to predict Thai rice production with high accuracy. This research starts from the identifying the appropriate factor to predict rice production. Then determine the high accuracy of data mining techniques to predict rice production. The results showed that there are eight appropriate factors to predict the rice production that are average rainfall, max-temperature, min-temperature, number of days of rain, relative humidity, average rice area, average rice harvest and average rice area. The data was collected by using every province according to the type of rice and period of farming 10 years throughout 2000-2009, which collecting from Office of Agricultural Economics and Thai Meteorology Department. The other results of a comparative data mining techniques by using four algorithms to predict rice crop production: neural networks, linear regression, support vector machines and decision trees, showed that the most coefficient of correlation is linear regression. So, the average of efficiency relation is 0.9895; and so on average of relative absolute error is 11.1937. As a result of prediction rice production can be used in policy formulation, planning, planting, and development of rice crop that suitable for increasing agriculture potential. The future work is to integrate the data mining techniques to do automatic data updating with an intelligent agent in order to predict more effectively by means of automatic update instead of static approach.
机译:在泰国,稻米作物是主要的谷物作物,既是主要粮食,也是出口商品。在该东盟,泰国被誉为优质稻米作物的最大出口国。直到2011年,越南改善了生产和出口,因此越南的大米已成为世界上最大的大米出口国。据称,信息技术可以帮助提高水稻作物的生产率。因此,本研究旨在比较采矿技术,以高精度预测泰国大米的产量。这项研究从确定预测水稻产量的适当因素开始。然后确定数据挖掘技术的高精度来预测水稻产量。结果表明,有八种预测水稻产量的适当因素:平均降雨量,最高温度,最低温度,降雨天数,相对湿度,平均水稻面积,平均水稻收成和平均水稻面积。该数据是根据2000-2009年间水稻的种类和10年的耕种时间在每个省份收集的,这些数据是从农业经济办公室和泰国气象局收集的。通过使用四种算法来预测水稻作物产量的比较数据挖掘技术的其他结果:神经网络,线性回归,支持向量机和决策树表明,相关系数最大的是线性回归。因此,效率关系的平均值为0.9895。因此平均相对绝对误差为11.1937。预测的结果是,水稻生产可用于制定政策,规划,种植和发展适合增加农业潜力的水稻作物。未来的工作是将数据挖掘技术与智能代理集成以进行自动数据更新,以便通过自动更新而不是静态方法来更有效地进行预测。

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