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Forecasting China's SO2 Emissions by the Nonlinear Grey Bernoulli Self-memory Model

机译:预测中国的非线性灰色Bernoulli自我记忆模型的SO2排放量

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The paper presents a novel nonlinear grey Bernoulli self-memory model (NGBSM) for the data sequences characteristics of saturation or fluctuation. The NGBSM model combines the advantages of the self-memory principle of dynamic systems and the traditional nonlinear grey Bernoulli model through a coupling of the above two prediction methods. The weakness of the traditional grey prediction model, i.e., being sensitive to the initial value, can be overcome by using a multi-time-point initial field instead of only a single-time-point initial field in the system's self-memorization equation. As shown in the case study of China's SO2 emissions, the NGBSM model can take full advantage of the system's multi-time historical data and accurately predict the system's evolutionary trend. Three popular accuracy check criteria are adopted to test and verb) the reliability and stability of the NGBSM model, and its superior predictive performance over other traditional grey prediction models. The results show that the proposed NGBSM model enriches grey prediction theory, and can be applied to other similar data sequences.
机译:本文提出了一种新的非线性灰色伯努利自我存储器模型(NGBSM),用于饱和度或波动的数据序列特征。 NGBSM模型通过上述两种预测方法的耦合结合了动态系统和传统非线性灰色Bernoulli模型的自体存储器原理的优点。通过使用多时间点初始字段,可以克服传统灰色预测模型的弱点,即对初始值敏感,而不是系统的自记忆中的初始字段,而不是仅在系统的自记忆化方程中的单时间点初始字段。如在中国SO2排放的案例研究所示,NGBSM模型可以充分利用系统的多次历史数据,并准确预测系统的进化趋势。采用三种流行的准确性检查标准来测试和动词)NGBSM模型的可靠性和稳定性,以及其对其他传统灰色预测模型的卓越预测性能。结果表明,所提出的NGBSM模型丰富了灰色预测理论,可以应用于其他类似的数据序列。

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