基于JSO和作物产量大数据智能技术的土壤预测与分类

S. Nithishkumar, T. Surya, S. Jebaman, V. Saraswathi, N. Shanmugasundaram
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引用次数: 0

摘要

. 基于大空间数据的土壤类型快速准确的空间分类和产量预测已被证明是实现现实目的的重要因素。在这方面,可以建设性地利用关于作物类型的空间上明确的信息来评估该地区,用于各种监测和决策应用,例如作物保险、土地租赁和供应。供应链和金融市场预测。当前研究的主要推动力是改进的支持向量机(MSVM)的有效描述,以实现土壤类型的有效分类。收成和预期产量的预测完全取决于土壤的类型。在本文中,在多种因素相互作用的基础上,对企业进行充分的生产预测,对企业的有效管理是非常重要的。该文件具有三个主要功能,例如:重要数据缩减、土壤分类和植物组成,包括产量预测。事实上,每个农场的收成都是不同的,这取决于种植日期、品种、土壤和收获组织。因此,必须有效地确定要使用的土壤种类。该文件显示了插入的大数据。土壤的种类是通过收缩纸张的方法确定的。核主成分分析(KPCA)依次去除了这些映射。顺便提一下,地图还原涉及两个基本过程,如制图和减速机。地理学家,也就是减速器,而土壤类别是在测绘端决定的,获取方法是在传输端执行的。此外,该创新技术利用最优递归神经网络(ORNN)和水母搜索优化算法(JSO)的最佳副本考虑了作物的组成和预测。该文件提出了未来几年种植和生产的预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Soil Forecasting and Classification Using JSO and Intelligent Technique With Big Data on Crop Yield
. Accurate and rapid spatial classification of soil types and predicted production based on large spatial data has proven to be important factors for realistic purposes. In this regard, spatially clear information about the type of crop can be used constructively to assess the area for a variety of monitoring and decision-making applications, such as crop insurance, land leasing and supplies. Supply chain and financial market forecasts. The main impetus behind the current research is the effective description of the modified support vector machine (MSVM) for efficient classification of soil types. The forecast of the harvest and the expected yield depend entirely on the type of soil. In this paper, it is very important for an effective management of the company to have an adequate production forecast based on the combination of many factors that have a corresponding effect. The document performs three main functions, for example: Significant data reduction, soil classification and plant composition, including production forecasts. The harvest, in fact, varies from farm to farm depending on the date of planting, the variety, the soil and the organization of the harvest. Therefore, the category of soil to be used must be determined effectively. The document shows the big data inserted. The category of soil is determined by the method of shrinking the paper. Kernel principle component analysis (KPCA) in turn removes the maps. Incidentally, map reduction involves two basic processes, such as the cartograph and the reducer. The geographer and therefore the reducer whereas the soil class is decided on the mapping side, the acquisition method is performed on the transmission side.. In addition, the innovative technology takes into account the composition and prediction of crops using the best replicas for Optimal Recurrent Neural Networks (ORNN) and the Jellyfish Search optimization algorithm (JSO). The document proposes a forecast of cultivation and production for the next few years.
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