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Time Series Analysis of Rainfall and Temperature Interactions in Coastal Catchments | Science Publications

机译:流域降雨与温度相互作用的时间序列分析科学出版物

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> Problem statement: As a result of climate change more work is now being done on climate indices such as SOI, rainfall, temperature and so on. The research concerning rainfall and temperature variations in coastal tropical and subtropical catchments as noted by the dated references in this study shows a lack of attention. The authors examined long term data from coastal areas of Queensland. Australian climate is highly variable making the identification of trends or interactions between rainfall and temperature difficult to discern from background variation. Due to the lack of attention in the past, this study examined the relationships between rainfall, temperature, minimum temperature and maximum temperature as well as over time using time series methods. In particular, the study examined whether a cyclic nature existed in the data sets and whether a simple trend relationship between rainfall and temperature existed. To examine autocorrelation and seasonality ARIMA models were also investigated. Approach: A large data set involving more that 50 years of rainfall and temperature data were examined using spectral analysis, time series analysis-ARIMA methodology to analyse climatic trends and interactions. Fourier analysis, linear regression and ARIMA based time series models were used to analyze the large data sets using Matlab, SPSS and SAS programs. Results: The rainfall data was variable and appeared seasonal while the temperature data appeared stationary. Interestingly, spectral analysis showed variations in rainfall and temperature over 50-60 years but the results showed that rainfall and temperature varied coherently, with a cycle of about 2-3 years. An inverse relationship in trend was noted between rainfall and daily temperature range using linear regression among the variables. The ARIMA models showed autocorrelation and seasonality providing time series models. Conclusion/Recommendations: There is a cyclic pattern noted in both the rainfall and temperature time series and a cycle of about 3 years in the rainfall and temperature data sets suggesting a coherent variance in the relationship. This is an interesting finding suggesting a cyclic nature of large rainfall events over time and has been confirmed by the recent large rainfalls events in 2009-10. Linear regression showed an inverse relationship in trend between rainfall and temperature range only even though the r value was around 0.27. The autocorrelation in the data appears to have caused the low r and ARIMA methods was used giving time series models for each series allowing for autocorrelation and seasonality. This study on rainfall and temperature is valuable contribution to the lack of research noted particularly in Queensland as noted in the dated references found; also contributing to the climate change debate forcing it on the cautious side. Further work involving multivariate and dynamic conditional correlation methods may provide further insights regarding the relationships between rainfall and temperature. More climatic indices such as SOI may be used in future studies.
机译: > 问题陈述:气候变化的结果是,目前正在对诸如SOI,降雨量,温度等气候指数进行更多的工作。注明日期的参考文献指出,关于沿海热带和亚热带流域降雨和温度变化的研究缺乏关注。作者检查了昆士兰沿海地区的长期数据。澳大利亚的气候变化很大,因此很难从背景变化中识别出降雨和温度之间的趋势或相互作用。由于过去缺乏关注,本研究使用时间序列方法研究了降雨,温度,最低温度和最高温度以及随时间变化之间的关系。尤其是,该研究检查了数据集中是否存在周期性,以及降雨和温度之间是否存在简单的趋势关系。为了检查自相关和季节性,还研究了ARIMA模型。 方法:使用光谱分析,时间序列分析-ARIMA方法对气候趋势和相互作用进行分析的大型数据集涉及50多年的降雨和温度数据。使用傅立叶分析,线性回归和基于ARIMA的时间序列模型,使用Matlab,SPSS和SAS程序分析大型数据集。 结果:降雨数据是可变的,呈季节性,而温度数据​​则呈稳定状态。有趣的是,光谱分析显示了50-60年内降雨和温度的变化,但结果表明降雨和温度变化连贯,周期约为2-3年。使用变量之间的线性回归,发现降雨量和日温度范围之间趋势呈反比关系。 ARIMA模型显示了自相关和季节性,提供了时间序列模型。 结论/建议:降雨和温度时间序列中均存在一个周期性模式,降雨和温度数据集中存在约3年的周期,表明这种关系存在连贯变化。这是一个有趣的发现,表明大型降雨事件随时间推移具有周期性,并且已被2009-10年度的近期大型降雨事件所证实。线性回归显示降雨与温度范围之间的趋势呈反比关系,即使r值约为0.27。数据中的自相关似乎导致了较低的r值,并且使用ARIMA方法给出了每个序列的时间序列模型,从而考虑了自相关和季节性。这项对降雨和温度的研究是对缺乏研究的宝贵贡献,特别是在昆士兰州,如已发现的已注明日期的参考文献中所述;也推动了对气候变化的辩论,迫使人们采取谨慎的态度。涉及多元和动态条件相关方法的进一步工作可能会提供有关降雨与温度之间关系的进一步见解。诸如SOI之类的更多气候指数可能会在未来的研究中使用。

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