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Modeling of Multiple Heating Substations Based on Long Short-Term Memory Networks

机译:基于长短期内存网络的多加热变电站建模

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The central heating is a complex nonlinear system. It is difficult to establish an accurate model based on multiple heating substations. In this paper, the Long Short-Term Memory (LSTM) algorithm is proposed to solve this problem. Heating substations generate data with the time series characteristics. The algorithm not only reflects the characteristics of time sequence of heating substations, but also solves the problem of long-term dependence. And, the necessary information can be saved in a limited memory capacity. Based on a large amount of historical data of the heating system of a Baotou heating company, ensuring that the total heat source is sufficient, the simulation results of the LSTM model in multiple substations show the validity, which provides the basis for the optimization of the central heating system, and a reference for LSTM to solve the complex time series modeling and prediction problems.
机译:中央供暖是复杂的非线性系统。难以基于多个加热变电站建立准确的模型。本文提出了长短期存储器(LSTM)算法来解决这个问题。加热变电站通过时间序列特性产生数据。该算法不仅反映了加热变电站的时间序列的特性,而且还解决了长期依赖性的问题。并且,可以在有限的内存容量中保存必要的信息。基于包头供热公司的加热系统的大量历史数据,确保总热源足够,多个变电站LSTM模型的仿真结果显示了有效性,为优化提供了依据中央供暖系统,以及LSTM解决复杂时间序列建模和预测问题的参考。

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