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Analysis of Soil Properties and Climatic Data to Predict Crop Yields and Cluster Different Agricultural Regions of Bangladesh

机译:对土壤特性和气候数据进行分析以预测孟加拉国的农作物产量和集群

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Bangladesh, a nation renowned for its rich fertile land and a population around 160 million, earns most of its living from agriculture. The nutrient rich lands help us providing year-round crop yields that play a crucial role for the economy of Bangladesh. Thus, this is important to deliberately work on agricultural planning and prediction models to ensure economic prosperity. The advancement of crop yields is significantly dependent on soil factors like Ph, nutrients and organic substances along with climatic factors like rainfall, temperature and humidity. Data of such factors are recorded to serve the purpose of scientific and statistical analysis. With the help of applying different data mining techniques on them, we are able to determine effective parameters to predict crop yield from different locations. This paper mainly focuses on the analysis to predict Bangladesh's four most yielding crops; wheat, jute, T-Aman and mustard. To carry out the whole experiment, we have analyzed soil properties of medium high land and high land from different sub districts of Bangladesh and also their respective climatic data and crop production of the last 6 years. For our analysis, we have applied different data mining techniques such as K-means, PAM, CLARA and DBSCAN for clustering and four linear regression methods to predict crop yields.
机译:孟加拉国以其肥沃的土地而闻名,拥有约1.6亿人口,其大部分生活以农业为生。营养丰富的土地帮助我们提供了全年的农作物产量,对孟加拉国的经济起着至关重要的作用。因此,这对于认真研究农业计划和预测模型以确保经济繁荣非常重要。作物单产的提高很大程度上取决于土壤因素,例如酸碱度,养分和有机物质,以及气候因素,例如降雨,温度和湿度。记录这些因素的数据,以达到科学和统计分析的目的。借助对它们应用不同的数据挖掘技术的帮助,我们能够确定有效的参数,以预测不同位置的作物产量。本文主要侧重于分析以预测孟加拉国四种产量最高的作物;小麦,黄麻,阿曼和芥末。为了进行整个实验,我们分析了孟加拉国不同分区的中高地和高地的土壤特性,以及过去六年中各自的气候数据和农作物产量。对于我们的分析,我们应用了不同的数据挖掘技术,例如K均值,PAM,CLARA和DBSCAN进行聚类,并采用了四种线性回归方法来预测农作物的产量。

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