首页> 外文会议>International Conference on Computing, Communication and Networking Technologies >Context-Aware Computing for Balanced Agricultural Production using Machine Learning
【24h】

Context-Aware Computing for Balanced Agricultural Production using Machine Learning

机译:利用机器学习实现上下文平衡的农业生产均衡计算

获取原文

摘要

Agriculture is the foundation factor of many developing countries' economy. Now we are in the era of industrial revolution and especially the developing countries are shifted their vision completely to this revolution. But, they are not thinking about smart cultivation and more production from this ancient key factor of economic growth. Still farmers are following the ancient techniques for cultivation without thinking different dimensions or key factors for better production. Farmers should understand the present context for cultivating any crops to get proper profit against any specific cultivation. And to do this study they have to analysis statistical data of production report over a long period considering climate, region, availability of pesticides, period specific demand and so many dimensions. So we have to employ the context-aware computing to estimate the reasonable balanced production of any crops. In many countries like; Bangladesh in every cultivation season many farmers are not getting proper price of their crops due to over production. Sometimes farmers fail to return their invested money for their cultivation where their time and physical effort is completely a loss. To address this vital issue our research work will do proper context-aware analysis. This paper's agricultural context-aware computing for balanced production deals with extract-transform-loading (ETL), data warehousing (DWH), dimension (period, weather, pesticides etc.) specific data visualization, and supervised learning process to estimate future production.
机译:农业是许多发展中国家经济的基础因素。现在,我们正处于工业革命时代,尤其是发展中国家已经将目光完全转向了这场革命。但是,他们并没有考虑从这个古老的经济增长关键因素来考虑明智的种植和更多的生产。农民们仍在沿用古老的耕作技术,却没有考虑不同的尺寸或提高生产的关键因素。农民应了解目前种植任何作物的情况,以从任何特定的种植中获得适当的利润。为了进行这项研究,他们必须考虑到气候,地区,农药的可利用性,特定时期的需求以及如此多的方面,对长期的生产报告的统计数据进行分析。因此,我们必须使用上下文感知计算来估算任何作物的合理均衡产量。在许多国家都喜欢;孟加拉国在每个种植季节都因产量过高而无法获得适当价格的农作物。有时,农民由于耕种所花费的时间和精力完全不知所措,因此无法将自己的投资资金退还给他们进行耕种。为了解决这一重要问题,我们的研究工作将进行适当的上下文感知分析。本文针对平衡生产的农业情境感知计算涉及提取转换加载(ETL),数据仓库(DWH),特定维度(期间,天气,农药等)的可视化,以及监督学习过程以估算未来产量。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号