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Modelling the impact of agrometeorological variables on regional tea yield variability in South Indian tea-growing regions: 1981-2015

机译:农业气象变量对南印度茶种植区区域茶产量变异的影响建模:1981-2015年

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As tea (Camellia sinensis L.) yield strongly determined by local environmental conditions, thus assessing the potential impact of the seasonal and inter-annual climate variability on regional crop yield has become crucial. The present study assessed the region-level tea yield variability at different temporal scales utilising observed climate data for the period 1981–2015, to understand how the climate variability influences tea yields across the South Indian Tea Growing Regions (SITR)? Using statistical models, step-wise multiple regression (SMLR), seasonal autoregressive integrated moving average (SARIMAX), artificial neural network (ANN) and vector autoregressive model (VAR), the relations between meteorological factors and crop yield variability was measured. The higher explaining ability of ANN and VAR models over SMLR and SARIMAX shows that the multivariate time series models are better suited for capturing the nonlinear short-term fluctuations and long-term variations. The analysis showed considerable spatial variation in the relative contributions of different climate factors to the variance of historical tea yield from 3 to 95%. Climate variability explained ~84.8% of the annual tea yield variability of 1.9?t ha~(?1) y~(?1), over 106.85 thousand ha translates into an annual variation of ~0.02 million ton in tea production over the study area. Among the climatic factors, temperature variability identified to be the most serious factor determining the tea yield uncertainty than rainfall variability in South India (SI). Hence, the study recommends the policymakers to develop imperative regional specific adaptation strategies and effective management practices (for temperature related issues) to reduce the negative impact of climate change on crop yields.
机译:由于茶(Camellia sinensis L.)的产量在很大程度上取决于当地环境条件,因此评估季节和年际气候变化对区域作物产量的潜在影响已变得至关重要。本研究利用观测到的1981-2015年期间的气候数据,评估了不同时间尺度上区域一级的茶叶产量变异性,以了解气候变异性如何影响整个南印度茶种植区(SITR)的茶叶产量?使用统计模型,逐步多元回归(SMLR),季节性自回归综合移动平均值(SARIMAX),人工神经网络(ANN)和矢量自回归模型(VAR),测量了气象因素与农作物产量变异性之间的关系。与SMLR和SARIMAX相比,ANN和VAR模型具有更高的解释能力,表明多元时间序列模型更适合捕获非线性短期波动和长期变化。分析表明,不同气候因素对历史茶产量变化的相对贡献有很大的空间变化,从3%到95%。气候变异性解释了1.9?t ha〜(?1)y〜(?1)的年度茶产量变异的〜84.8%,超过10.685万公顷转化为研究区域的茶叶年产量〜0.02亿吨。在气候因素中,与南印度(SI)的降雨变化相比,温度变化被确定为决定茶产量不确定性的最严重因素。因此,该研究建议政策制定者制定当务之急的区域特定适应策略和有效的管理措施(针对温度相关问题),以减少气候变化对农作物产量的负面影响。

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