Multi-task prediction model based on ConvLSTM and encoder-decoder

Author:

Luo Tao,Cao Xudong,Li Jin,Dong Kun,Zhang Rui,Wei Xueliang

Abstract

The energy load data in the micro-energy network are a time series with sequential and nonlinear characteristics. This paper proposes a model based on the encode-decode architecture and ConvLSTM for multi-scale prediction of multi-energy loads in the micro-energy network. We apply ConvLSTM, LSTM, attention mechanism and multi-task learning concepts to construct a model specifically for processing the energy load forecasting of the micro-energy network. In this paper, ConvLSTM is used to encode the input time series. The attention mechanism is used to assign different weights to the features, which are subsequently decoded by the decoder LSTM layer. Finally, the fully connected layer interprets the output. This model is applied to forecast the multi-energy load data of the micro-energy network in a certain area of Northwest China. The test results prove that our model is convergent, and the evaluation index value of the model is better than that of the multi-task FC-LSTM and the single-task FC-LSTM. In particular, the application of the attention mechanism makes the model converge faster and with higher precision.

Publisher

IOS Press

Subject

Artificial Intelligence,Computer Vision and Pattern Recognition,Theoretical Computer Science

Reference32 articles.

1. I. Sutskever, O. Vinyals and Q.V. Le, Sequence to Sequence Learning with Neural Networks [C], in: NIPS. MIT Press, 2014.

2. Multi-task learning based on deep architecture for various types of load forecasting in regional energy system integration [J];Jiaqi;Power System Technology,2018

3. A.Y. Saber and A.K.M.R. Alam, Short term load forecasting using multiple linear regression for big data [C], in: IEEE Symposium Series on Computational Intelligence (SSCI), 2017.

4. Heating, cooling, and electrical load forecasting for a large-scale district energy system [J];Powell;Energy,2014

5. L. Pengfei, Q. Xipeng and H. Xuanjing, Recurrent neural network for text classification with multi-task learning, in: International Joint Conference on Artificial Intelligence, 2016, pp. 2873–2879.

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