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On the Use of Regression Models to Predict Tea Crop Yield Responses to Climate Change: A Case of Nandi East, Sub-County of Nandi County, Kenya

机译:利用回归模型预测茶农作物产量对气候变化的响应:以肯尼亚楠迪县亚县楠迪东部为例

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Tea is a major cash crop in Kenya. Predicting the potential effects of climate change on tea crops prompts the use of statistical models to measure how the crop responds to climate variables. The statistical model was trained on historical tea yields, and how they related to past data on maximum temperature, minimum temperature and precipitation over Nandi East Sub-County. Scatter diagrams for selected months were generated from tea yield and temperature data. A multiple linear model was developed to predict tea yield using climatic variables. A contingency table was used to verify the model. Results from an analysis of trends in rainfall depicted a positive trend and revealed an increased frequency of annual droughts. The study showed that the frequency of extreme rainfall events during September-October-November (SON) season has decreased. Results from an analysis of the trends in temperature revealed that the minimum temperatures are increasing and that the frequency of extreme events has increased. Rising maximum temperatures were observed in March. The study revealed that May, the cold month, is becoming warmer. Correlation analysis indicated that the climatic variables during some months in both the concurrent year and the previous year were positively correlated with the tea yield. However, there was an inverse relationship between maximum temperature and rainfall. Results of model verification revealed that that 70% of model forecasts were correct. The results also showed that at least half of the observed events were correctly forecasted and thus the majority of the forecasts were true. An equation for predicting the yield of tea from the climate variables is presented.
机译:茶是肯尼亚的主要经济作物。预测气候变化对茶农的潜在影响,促使人们使用统计模型来衡量茶农对气候变量的反应。对统计模型进行了历史茶产量的培训,以及它们与南迪东部亚县最高温度,最低温度和降水的过去数据之间的关系。根据茶叶产量和温度数据生成选定月份的散点图。建立了多元线性模型,以使用气候变量预测茶产量。列联表用于验证模型。降雨趋势分析的结果显示出正趋势,并揭示了每年干旱的频率增加。研究表明,9月-10月-11月(SON)季节极端降雨事件的发生频率降低了。对温度趋势的分析结果表明,最低温度正在增加,极端事件的频率已经增加。三月观察到最高气温上升。研究表明,寒冷的月份五月正在变暖。相关分析表明,同期和上年某些月份的气候变量与茶产量成正相关。但是,最高温度与降雨量之间存在反比关系。模型验证的结果表明,模型预测的70%是正确的。结果还表明,至少有一半的观测事件是正确预测的,因此大多数预测是正确的。提出了根据气候变量预测茶产量的方程式。

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