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Optimization of learning the neuronetworking data processing system for non-satinary objects recognition and forecasting

机译:用于非缎面物体识别和预测的神经网络数据处理系统的学习优化

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摘要

The problem of construction the neuronetworking systems for non-stationary information adaptive processing at various practical applications is formulated. The developed methods and algorithms of neural network training subset formation allow to take into account the conditions of information transfer, variation of statistical parameters and dynamic properties of data. The controlling algorithms which process the data with continuous nature are developed by criteria of minimal mean-squared error. The models and algorithms are offered for optimization and neurosystem learning.
机译:提出了在各种实际应用中构造用于非平稳信息自适应处理的神经网络系统的问题。神经网络训练子集形成的开发方法和算法可以考虑到信息传递的条件,统计参数的变化和数据的动态特性。通过最小均方误差标准开发了具有连续性质的数据处理控制算法。提供了用于优化和神经系统学习的模型和算法。

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