Regression Analysis-based Model Equation Predicting the Concentration of Phytoncide (Monoterpenes) - Focusing on Suri Hill in Chuncheon -

Seog-Jong Lee, Byoung-Ug Kim, Y. Hong, Y. Lee, Y. Go, Seung-Pyo Yang, Geun-Woo Hyun, Ge Yi, Jea-Chul Kim, Dae-Yeoal Kim
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Abstract

Background: Due to the emergence of new diseases such as COVID-19, an increasing number of people are struggling with stress and depression. Interest is growing in forest-based recreation for physical and mental relief. Objectives: A prediction model equation using meteorological factors and data was developed to predict the quantities of medicinal substances generated in forests (monoterpenes) in real-time. Methods: The concentration of phytoncide and meteorological factors in the forests near Chuncheon in South Korea were measured for nearly two years. Meteorological factors affecting the observation data were acquired through a multiple regression analysis. A model equation was developed by applying a linear regression equation with the main factors. Results: The linear regression analysis revealed a high explanatory power for the coefficients of determination of temperature and humidity in the coniferous forest (R=0.7028 and R=0.5859). With a temperature increase of 1°C, the phytoncide concentration increased by 31.7 ng/Sm. A humidity increase of 1% led to an increase in the coniferous forest by 21.9 ng/Sm. In the deciduous forest, the coefficients of determination of temperature and humidity had approximately 60% explanatory power (R=0.6611 and R=0.5893). A temperature increase of 1°C led to an increase of approximately 9.6 ng/Sm, and 1% humidity resulted in a change of approximately 6.9 ng/Sm. A prediction model equation was suggested based on such meteorological factors and related equations that showed a 30% error with statistical verification. Conclusions: Follow-up research is required to reduce the prediction error. In addition, phytoncide data for each region can be acquired by applying actual regional phytoncide data and the prediction technique proposed in this study.
基于回归分析的植物杀虫剂(单萜)浓度预测模型方程——以春川苏里山为例
背景:由于新冠肺炎等新型疾病的出现,越来越多的人正与压力和抑郁作斗争。人们对以森林为基础的身心休闲活动的兴趣日益浓厚。目的:建立基于气象因子和数据的森林药材产生量预测模型方程,实时预测森林药材产生量(单萜)。方法:对韩国春川附近森林近两年的植物杀虫剂浓度及气象因子进行测定。通过多元回归分析获得影响观测数据的气象因子。应用线性回归方程与主要因素建立了模型方程。结果:线性回归分析表明,针叶林温度和湿度的决定系数具有较高的解释力(R=0.7028和R=0.5859)。温度每升高1℃,植物杀菌素浓度增加31.7 ng/Sm。湿度每增加1%,针叶林的生物量增加21.9 ng/Sm。在落叶林中,温度和湿度的决定系数的解释力约为60% (R=0.6611和R=0.5893)。温度每升高1℃,其变化幅度约为9.6 ng/Sm,湿度每升高1%,其变化幅度约为6.9 ng/Sm。根据这些气象因子和相关方程提出了预报模型方程,经统计验证误差为30%。结论:为减少预测误差,需进行后续研究。此外,利用本研究提出的预测技术和实际区域的植物杀素数据,可以获得各区域的植物杀素数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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