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陈慕亚, 刘康, 张红娟, 张越. 基于太白山南坡巴山冷杉NPP动态变化的时间序列模型预测效果对比[J]. 植物科学学报, 2020, 38(3): 323-334. DOI: 10.11913/PSJ.2095-0837.2020.30323
引用本文: 陈慕亚, 刘康, 张红娟, 张越. 基于太白山南坡巴山冷杉NPP动态变化的时间序列模型预测效果对比[J]. 植物科学学报, 2020, 38(3): 323-334. DOI: 10.11913/PSJ.2095-0837.2020.30323
Chen Mu-Ya, Liu Kang, Zhang Hong-Juan, Zhang Yue. Comparison of time series models for predicting net primary productivity dynamic changes of Abies fargesii Franch. on the southern slopes of Taibai Mountain[J]. Plant Science Journal, 2020, 38(3): 323-334. DOI: 10.11913/PSJ.2095-0837.2020.30323
Citation: Chen Mu-Ya, Liu Kang, Zhang Hong-Juan, Zhang Yue. Comparison of time series models for predicting net primary productivity dynamic changes of Abies fargesii Franch. on the southern slopes of Taibai Mountain[J]. Plant Science Journal, 2020, 38(3): 323-334. DOI: 10.11913/PSJ.2095-0837.2020.30323

基于太白山南坡巴山冷杉NPP动态变化的时间序列模型预测效果对比

Comparison of time series models for predicting net primary productivity dynamic changes of Abies fargesii Franch. on the southern slopes of Taibai Mountain

  • 摘要: 基于收集整理的太白山地区1959-2016年58年间的气象数据及太白山巴山冷杉林(Abies fargesii Franch.forest)的生理参数数据,运用Biome-BGC模型模拟计算并对输出数据进行提取分析,得到太白山南坡巴山冷杉林的多年净初级生产力(NPP)。然后分别利用自回归求和移动平均模型(ARIMA)、R语言、NAR动态神经网络模型对太白山南坡巴山冷杉林NPP的动态变化进行趋势拟合和短期预测,建立适用于太白山南坡巴山冷杉林NPP的时间序列模型,并应用白噪声检验等相关检验方法对3种模型的预测效果进行评价。结果显示:太白山南坡巴山冷杉林NPP在短期内(2017-2026年)仍保持着波动上升的趋势,可能出现1959年以来的最高值;在对巴山冷杉林未来变化的预测过程中,3种预测模型各有特点,ARIMA模型对太白山南坡巴山冷杉林NPP的预测结果通过了白噪声检验,并给出了在不同置信区间下的可能结果;NAR动态神经网络模型的拟合效果较好,也通过了误差自相关性检验,预测结果较好地模拟了太白山南坡巴山冷杉林NPP在未来一段时期内的变化趋势;R语言在剔除异常数据点后能够运用基础数据较好地对太白山南坡巴山冷杉林NPP动态变化进行模拟,表明预测结果与验证结果相关性达到0.944,误差项的P值远低于0.01。本研究表明3种方法构建的模型在数据拟合中均呈现出较好的效果,预测结果均在可信范围内,在实际预测工作中可根据数据特点选用不同方法。

     

    Abstract: Based on meteorological data collected from 1959 to 2016 and physiological parameters of Abies fargesii Franch. forest in Taibai Mountain, we used the Biome-BGC model to calculate some results, and then analyzed the results. Then we got the annual net primary productivity (NPP) of Abies fargesii forest on the southern slopes of Taibai Mountain. Using the autoregressive integrated moving average (ARIMA) model, R language, and NAR (Nonlinear auto-regressive) dynamic neural network model to make trend fitting and short-term predictions regarding changes about NPP's dynamic change respectively, in order to establish a time series model that applied to NPP of Abies fargesii forest on the southern slopes of Taibai Mountain. Using the white noise test and other inspection methods, we evaluated the predictive results of the three models.Results indicated that:the NPP of Abies fargesii forest on the southern slopes of Taibai Mountain showed a rising trend from 2017 to 2026, and the highest value probably appeared since 1959. In forecasting future changes in Abies fargesii forest, the three prediction models demonstrated their own characteristics:the ARIMA model passed the white noise test on the NPP prediction results of the Abies fargesii forest, and given the possible results under different confidence intervals; NAR dynamic neural network model showed good fitting effect, and also passed the error autocorrelation test. The prediction results well simulated future change trends; R language can use the basic data to simulate the NPP dynamic change of Abies fargesii forest on the southern slopes of Taibai Mountain after removing abnormal data points. The results showed that the correlation between the prediction results and verification results was 0.944, and the P value of the error term was far lower than 0.01. The models constructed by the three methods showed good results in data fitting, and the prediction results were also in the credible range. Therefore, different methods can be selected according to the characteristics of data in practical work.

     

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