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Improved GM (1,1) Model by Optimizing Initial Condition to Predict Satellite Clock Bias

机译:通过优化初始条件预测卫星时钟偏差来改进GM(1,1)模型

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摘要

The variation law of satellite clock bias (SCB) can be regarded as a grey system because the spaceborne atomic clock is very sensitive and vulnerable to many factors. GM (1,1) model is the core and foundation of the grey system, which has been highly valued and successfully applied in SCB prediction since its production. However, there are still some problems to be further studied such as the lack of stability of its prediction effect in practical application. In view of this, an improved GM (1,1) model by optimizing the initial condition has been proposed in this paper so as to increase the prediction performance. The new initial condition is obtained by the weighted combination of the latest and oldest components of the original clock bias sequence. And the weight values of these two components are acquired from a method of minimizing the sum of squares of fitting errors. We adopt GPS rapid precision SCB data provided by the International GNSS Service (IGS) for 15?mins, 30?mins, 1?h, 3?h, 6?h, 12?h, and 24?h prediction experiments. The results show that the improved GM (1,1) model is effective and feasible, and its prediction accuracy and stability are significantly better than those of the traditional GM (1,1) model, ARIMA model, and QP model, even for the SCB signal with obvious fluctuation.
机译:星载原子钟偏差(SCB)的变化规律可以看作是一个灰色系统,因为星载原子钟非常敏感,容易受到许多因素的影响。GM(1,1)模型是灰色系统的核心和基础,自提出以来,在SCB预测中得到了高度重视和成功应用。然而,在实际应用中,其预测效果缺乏稳定性等仍存在一些问题需要进一步研究。有鉴于此,该文提出一种通过优化初始条件的改进GM(1,1)模型,以提高预测性能。新的初始条件是通过原始时钟偏置序列的最新和最旧分量的加权组合获得的。这两个分量的权重值是通过最小化拟合误差平方和的方法获得的。采用国际GNSS服务(IGS)提供的GPS快速精度SCB数据进行15分钟、30分钟、1小时、3小时、6小时、12小时和24小时的预报实验。结果表明,改进的GM(1,1)模型有效可行,其预测精度和稳定性均明显优于传统的GM(1,1)模型、ARIMA模型和QP模型,即使对于波动明显的SCB信号也是如此。

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