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Time series analysis and prediction on complex dynamical behavior observed in a blast furnace

机译:高炉中复杂动力行为的时间序列分析与预测

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This paper describes a strategy for building a predictive model for actual complex time series. Time series data of temperature fluctuations observed in a blast furnace for iron-making are taken as an example. Chaotic features of the data are investigated with diagnostic algorithm for instability and parallelism of neighboring trajectories in phase space reconstructed from the time series data. Stationarity of the data is examined with diagnostic algorithm based on the KM2O-Langevin equations developed by Okabe. A short time series for which no control actions were taken to the plant during measurement is diagnosed as possibly low-dimensional chaos, while for a long time series including many control actions during measurement, determinism is less visible and its predicted behavior exhibits a scaling property similar to self-affine random noise. Characteristic exponents are estimated from the scaling properties of the prediction error as a function of the prediction-time interval. Such information is exploited as prior knowledge for designing a generalized Gaussian radial basis function network as a predictor The performance of the network is improved when linear algebraic polynomials are added to the network. The characteristic exponents estimated are used as reliability indices of forecasting future trends of the data. (C)2000 Elsevier Science B.V. All rights reserved. [References: 28]
机译:本文介绍了一种为实际的复杂时间序列建立预测模型的策略。以在炼铁高炉中观察到的温度波动的时间序列数据为例。使用诊断算法研究了数据的混沌特征,以用于从时间序列数据重构的相空间中相邻轨迹的不稳定性和并行性。使用基于Okabe开发的KM2O-Langevin方程的诊断算法检查数据的平稳性。在测量过程中未对植物采取任何控制措施的短时间序列被诊断为可能是低维混乱,而在测量过程中包括许多控制行为的较长时间序列中,确定性较不明显,其预测行为表现出缩放特性类似于自仿射随机噪声。根据预测误差的缩放特性,根据预测时间间隔来估计特征指数。此类信息被用作设计广义高斯径向基函数网络作为预测变量的先验知识。当将线性代数多项式添加到网络时,网络的性能将得到改善。估计的特征指数用作预测数据未来趋势的可靠性指标。 (C)2000 Elsevier Science B.V.保留所有权利。 [参考:28]

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