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CNLSTM模型预测城市积水
引用本文:周小力,李云,王国胤,张毅. CNLSTM模型预测城市积水[J]. 重庆邮电大学学报(自然科学版), 2021, 33(4): 529-535. DOI: 10.3979/j.issn.1673-825X.201912240455
作者姓名:周小力  李云  王国胤  张毅
作者单位:重庆邮电大学 移动通信技术重庆市重点实验室,重庆400065;重庆邮电大学 移动通信技术重庆市重点实验室,重庆400065;重庆邮电大学 计算智能重庆市重点实验室,重庆400065;重庆邮电大学 计算智能重庆市重点实验室,重庆400065;中电科技集团 重庆声光电有限公司,重庆400060
基金项目:重庆市技术创新与应用发展专项重点项目(cstc2019jscx-fxyd0210)
摘    要:物联网平台能够为积水预测提供海量的传感器时间序列数据基础.为了精准且快速地预测城市内涝点积水趋势,提出一种基于神经网络的组合时序预测模型(CNLSTM),对多变量积水时间序列数据进行建模预测.此模型利用卷积神经网络(convolutional neural network,CNN)提取多变量数据之间的空间特征,得到具有...

关 键 词:物联网  卷积神经网络(CNN)  长短时记忆网络(LSTM)  积水预测
收稿时间:2019-12-24
修稿时间:2021-03-06

CNLSTM model predicts urban water accumulation
ZHOU Xiaoli,LI Yun,WANG Guoyin,ZHANG Yi. CNLSTM model predicts urban water accumulation[J]. Journal of Chongqing University of Posts and Telecommunications, 2021, 33(4): 529-535. DOI: 10.3979/j.issn.1673-825X.201912240455
Authors:ZHOU Xiaoli  LI Yun  WANG Guoyin  ZHANG Yi
Affiliation:Chongqing Key Laboratory of Mobile Communication Technology, Chongqing University of Posts and Telecommunications, Chongqing 400065, P. R. China;Chongqing Key Laboratory of Mobile Communication Technology, Chongqing University of Posts and Telecommunications, Chongqing 400065, P. R. China;Chongqing Key Laboratory of Computational Intelligence, Chongqing University of Posts and Telecommunications, Chongqing 400065, P. R. China; Chongqing Acoustic-Optic-Electronic Co., Ltd. of China Electronics Technology Group Corporation, Chongqing 400060, P. R. China
Abstract:The Internet of Things platform can provide massive sensor time series data to the prediction of water level. In order to predict the trend of urban waterlogging accurately and quickly, this paper proposes a combined time series prediction model CNLSTM based on neural networks to model and predict multivariate waterlogging time series data. This model first uses convolutional neural networks (CNN) to extract spatial features between multivariate data to obtain the feature vectors with spatial correlation, and then uses long short-term memory networks (LSTM) to extract the time correlation between feature vectors to predict future water level. The simulation results show that the proposed prediction model can well capture the non-linear relationship between the water level and other input variables, and has a better result of fitting actual water levels than CNN, LSTM and back propagation (BP) networks. It also achieves higher prediction accuracy and stronger generalization ability. The validity and applicability of this model in the prediction of water level have been verified. It can provide a reliable reference for the early warning, preparation and the formulation of control plans of the waterlogging sites.
Keywords:internet of things  convolutional neural network(CNN)  long short-term memory(LSTM)  water level prediction
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