基于CLARANS算法的作物生产回归分析

A. Vatresia, Ruvita Faurina, Yanti Simanjuntak
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引用次数: 0

摘要

作物产量取决于雷江勒邦地区的降雨量。数据显示,Rejang Lebong地区的作物产量增加与降雨量之间存在差异。然而,作物变量依赖关系的时空分布仍不清楚。本研究基于机器学习方法的性能分析了reang Lebong地区降雨与作物产量之间的关系。此外,本研究还进行了回归分析,以开展降雨集群与作物产量的关系。该顺序以集群结果的形式提供信息,以确定降雨变量对每个集群中作物产量的影响程度。利用肘部、CLARANS、简单线性回归和廓形系数方法,本研究使用了来自Bengkulu BMKG的231个降雨数据和来自BPS Bengkulu省2000-2022年的110个植物生产数据。本研究发现,最优集群为3个集群。C1包含106个数据,辣椒的最大回归值为0.127,C2包含15个数据,芥菜的最大回归值为0.135,C3包含110个数据,卷心菜的最大回归值为0.408,茄子的最大回归值为0.197,胡萝卜的最大回归值为0.201。此外,本研究还发现,显著改良作物相关性最大的是白菜商品(Y=0.4114X+0.2013)和RSME较高的辣椒种植区(0.9897)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Regression Analysis for Crop Production Using CLARANS Algorithm
Crop production rate relies on rainfall over Rejang Lebong district. Data showed a discrepancy between increased crop production and rainfall in Rejang Lebong District. However, the spatiotemporal distribution of the crop variable's dependencies remains unclear. This study analyses the relationship between rainfall and crop production rate in the Rejang Lebong district based on the performance of the machine learning method. In addition, this research also performed regression analysis to carry out rainfall clusters and crop production. This order provides information in the form of cluster results to determine how much the rainfall variable influences the crop production rate  in each cluster. Harnessing the Elbow, CLARANS, Simple Linear Regression, and Silhouette Coefficient methods, this study used 231 rainfall data sourced from the Bengkulu BMKG and 110 data for plant production obtained from BPS Bengkulu Province from 2000-2022. This research found that the optimal clusters were 3 clusters. C1 contains 106 data with the largest regression value for chili = 0.127, C2 contains 15 data with the largest regression value for mustard greens = 0.135, and C3 contains 110 data with the largest regression value for cabbage = 0.408, eggplant = 0.197, and carrots = 0.201. Furthermore, this research also found that the biggest correlation of crops with highly significant improvement would be cabbage commodity (Y=0.4114X+0.2013) and chili plantation with high RSME (0.9897).
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