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Neural Network Approaches to Unimodal Surjective Map Chaotic System Forecasting

机译:神经网络对单峰或外形地图混沌系统预测的方法

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The forecasting using neural networks in unimodal surjective map chaotic dynamic system will be studied carefully in this paper. And most of the forecasting precision has exceeded 90%. Because of the intrinsic property of chaos, the forecasting precision will decrease as the length of symbolic sequence is increasing. But in this place we have found a generating rule that may realize chaotic synchronization at least in short and medium term, and we can analysis and forecast in this way. Nonlinear dynamics maintain manifold links with biologic information system. We also hope to offer an effective prediction method to study certain properties of DNA base sequences, 20 amino acids symbolic sequences of proteid structure, and the time series that can be symbolic in finance market et al.
机译:在本文中将仔细研究使用单峰或外形地图混沌动态系统中的神经网络的预测。而大部分预测精度已超过90%。由于混沌的内在性质,随着符号序列的长度增加,预测精度将减少。但在这个地方,我们发现了一个产生规则,可以至少在短期和中期内实现混沌同步,我们可以以这种方式分析和预测。非线性动力学维护具有生物信息系统的歧管链路。我们还希望提供有效的预测方法来研究DNA碱基序列的某些性质,蛋白质结构的20个氨基酸象征性序列,以及在金融市场等中可以符号的时间序列。

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