Systematic Analysis of Environmental Issues on Ecological Smart Bee Farm by Linear Regression Model

A. Rahman, Myeongbae Lee, Jonghyun Lim, Yongyun Cho, Changsun Shin
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引用次数: 1

Abstract

Environmental food and nutritional protection primarily depend on pollination from bees. Historically, beekeeping has been performed in different locations as part of the local food community. Beekeeping is increasing rapidly these days due to the high demand for honey and farmers are taking various forms of beekeeping methods to achieve high yield. Honey production also depends on different types of environmental factors. The main principle of this study is to show the analysis results of various types of environmental factors for three different bee farms by the linear regression model to figure out the best farm among all three farms. To improve the production of honey, farmers have to consider different types of environmental factors and this is the elevated time to support farmers by technology. This study analyzed different types of environmental factors like farm outside temperature, farm inside temperature, farm humidity for three different smart bee farms by using a linear regression model to know about their environmental conditions. The performance of prediction models is measured by R 2 error, Root Mean Squared Error (RMSE), Standard Error values (SE), and Mean Absolute Error (MAE). Based on the outcome, it is observed that the best results giving farm is farm 3 that has been able to give R 2 value 0.95,0.95, and 0.72 for the farm outside temperature, inside temperature, and farm humidity.
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基于线性回归模型的生态智能养蜂场环境问题系统分析
环境食品和营养保护主要依赖于蜜蜂的授粉。从历史上看,作为当地食物社区的一部分,养蜂人在不同的地方进行。由于对蜂蜜的高需求,养蜂人正在迅速增加,农民们正在采取各种形式的养蜂方法来实现高产。蜂蜜的生产还取决于不同类型的环境因素。本研究的主要原理是通过线性回归模型显示三个不同养蜂场的各种环境因素的分析结果,以找出三个养蜂场中的最佳养蜂场。为了提高蜂蜜产量,农民必须考虑不同类型的环境因素,这是通过技术支持农民的提升时间。本研究采用线性回归模型分析了三个不同智能蜂场的不同类型的环境因素,如猪场外部温度、猪场内部温度、猪场湿度等,以了解其环境状况。预测模型的性能通过r2误差、均方根误差(RMSE)、标准误差值(SE)和平均绝对误差(MAE)来衡量。根据结果,可以观察到,给出农场的最佳结果是农场3,它能够给出农场外部温度、内部温度和农场湿度的r2值分别为0.95、0.95和0.72。
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