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Using parallel random forest classifier in predicting land suitability for crop production

机译:使用并行随机森林分类器预测土地适合作物生产

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In this paper, we present an optimized Machine Learning (ML) algorithm for predicting land suitability for crop (sorghum) production, given soil properties information. We set-up experiments using Parallel Random Forest (PRF), Linear Regression (LR), Linear Discriminant Analysis (LDA), KNN, Gaussian Na?ve Bayesian (GNB) and Support Vector Machine (SVM). Experiments were evaluated using 10 cross fold validation. We observed that, parallel random forest had a better accuracy of 0.96 and time of execution of 1.7 sec. Agriculture is the main stream of food security. Kenya relies on agriculture to feed its population. Land evaluation gives potential of land use, in this case for crop production. In the Department of Soil Survey in Kenya Agriculture and Livestock Research Organization (KALRO) and other soil research organizations, land evaluation is done manually, is stressful, takes a long time and is prone to human errors. This research outcomes can save time and improve accuracy in land evaluation process. We can also be able to predict land suitability for crop production from soil properties information without intervention of a soil scientist expert. Therefore, agricultural stakeholders will be able to efficiently make informed decisions for optimal crop production and soil management.
机译:在本文中,我们给出了一种优化的机器学习(ML)算法,用于在给定土壤特性信息的情况下预测土地对农作物(高粱)生产的适宜性。我们使用并行随机森林(PRF),线性回归(LR),线性判别分析(LDA),KNN,高斯朴素贝叶斯(GNB)和支持向量机(SVM)进行实验。使用10个交叉折叠验证对实验进行评估。我们观察到,并行随机林的精度为0.96,执行时间为1.7秒。农业是粮食安全的主要来源。肯尼亚依靠农业养活其人口。土地评估提供了土地利用的潜力,在这种情况下是用于农作物生产。在肯尼亚农业和畜牧研究组织(KALRO)的土壤调查局以及其他土壤研究组织中,土地评估是人工完成的,压力很大,需要很长时间,并且容易出现人为错误。这项研究成果可以节省时间并提高土地评估过程的准确性。我们还可以通过土壤特性信息来预测土地是否适合作物生产,而无需土壤科学家的干预。因此,农业利益相关者将能够有效地做出明智的决策,以实现最佳的作物生产和土壤管理。

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