Prediction of remaining parking spaces based on EMD-LSTM-BiLSTM neural network

IF 7.4 2区 工程技术 Q1 ENGINEERING, CIVIL
Changxi Ma, Xiaoting Huang, Ke Wang, Yongpeng Zhao
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引用次数: 0

Abstract

The traffic congestion caused by the mismatch between the demand of car owners and the supply of parking spaces has become one of the severe traffic problems in various places. It is important to predict the remaining parking space which can not only help the driver to plan their trips reasonably but also reduce the pressure on urban road traffic. To reduce the stochastic fluctuations of complex data and improve the predictability of parking spaces, a hybrid prediction model EMD-LSTM-BiLSTM is proposed, which is combined the adaptive ability of empirical mode decomposition (EMD) to process time series data and the advantage of long short-term memory network (LSTM) and bidirectional long short-term memory network (BiLSTM) to solve long-range dependencies. First, the EMD algorithm is employed to decompose the components of different scales in the time series and generate a series of mode functions with the same characteristic scale. Next, the construction, training, and prediction of the LSTM-BiLSTM neural network are completed in the deep learning framework of Keras. BiLSTM was built for proposing the bi-directional temporal features of the sequences, and LSTM was responsible for learning the output features, which effectively avoids large prediction errors. Finally, the performance of the model is verified by the actual parking data sets of different parking lots for parking space prediction. The proposed hybrid model is compared with a variety of current mainstream deep learning algorithms, and the effectiveness of the EMD-LSTM-BiLSTM method is validated. The results may provide some potential insights for parking prediction.
基于EMD-LSTM-BiLSTM神经网络的剩余车位预测
由于车主需求与停车位供给不匹配而导致的交通拥堵,已成为各地严重的交通问题之一。对剩余停车空间进行预测,不仅可以帮助驾驶员合理规划行程,而且可以减轻城市道路交通的压力。为了降低复杂数据的随机波动,提高停车位的可预测性,提出了一种混合预测模型EMD-LSTM-BiLSTM,该模型结合了经验模态分解(EMD)处理时间序列数据的自适应能力和长短期记忆网络(LSTM)和双向长短期记忆网络(BiLSTM)解决长期依赖关系的优势。首先,利用EMD算法对时间序列中不同尺度的分量进行分解,生成一系列具有相同特征尺度的模态函数。接下来,在Keras的深度学习框架中完成LSTM-BiLSTM神经网络的构建、训练和预测。BiLSTM用于提出序列的双向时间特征,LSTM负责学习输出特征,有效避免了较大的预测误差。最后,通过不同停车场的实际停车数据集对模型的性能进行验证,用于车位预测。将所提出的混合模型与当前多种主流深度学习算法进行比较,验证了EMD-LSTM-BiLSTM方法的有效性。研究结果可能为停车预测提供一些潜在的见解。
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来源期刊
CiteScore
13.60
自引率
6.30%
发文量
402
审稿时长
15 weeks
期刊介绍: The Journal of Traffic and Transportation Engineering (English Edition) serves as a renowned academic platform facilitating the exchange and exploration of innovative ideas in the realm of transportation. Our journal aims to foster theoretical and experimental research in transportation and welcomes the submission of exceptional peer-reviewed papers on engineering, planning, management, and information technology. We are dedicated to expediting the peer review process and ensuring timely publication of top-notch research in this field.
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