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Application of Artificial Neuron Networks and Hurst Exponent to Forecasting of Successive Values of a Time Series Representing Environmental Measurements in an Intelligent Building

机译:人工神经元网络在智能建筑中表达环境测量时序列的连续值预测

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Control systems for intelligent buildings based on environmental measurements. The information contained in the measurement data in many cases are independent and chaotic. You can not interact with the control system, but only to monitor. In many cases, the use of measurement data for the purpose of building automation control, requires the use of forecasting systems. For the needs forecasting this type of measurement data apply artificial neural networks. Learning provides a mechanism to adjust its internal parameters of artificial neural network to characterize the trend of the time series reflects the measurement data. For time series with greater variability of smoothing is necessary. The intention initial classification time series smoothing and allows the use of artificial neural networks to forecast the next value of the time series irrespective of their volatility.
机译:基于环境测量的智能建筑控制系统。许多情况下测量数据中包含的信息是独立的并且是混乱的。您无法与控制系统交互,但仅用于监视。在许多情况下,使用测量数据的目的是建立自动化控制,需要使用预测系统。对于预测此类测量数据的需求应用人工神经网络。学习提供了一种调整人工神经网络的内部参数的机制,以表征时间序列的趋势反映了测量数据。对于时间序列,需要更大的平滑变化。意图初始分类时间序列平滑并允许使用人工神经网络来预测时间序列的下一个值,而不论其波动性如何。

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