利用 RAE-LSTM 融合技术提升下一代交通预测的智能城市流动性

N. Rafalia, Idriss Moumen, Fatima Zahra Raji, J. Abouchabaka
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引用次数: 0

摘要

随着高效城市交通管理需求的不断增长,有必要对交通拥堵情况进行准确预测,这凸显了时间序列数据分析的本质。本文深入探讨了如何利用复杂的深度学习方法,特别是长短期记忆(LSTM)网络、卷积神经网络(CNN)及其混合网络(如 Conv-LSTM 和双向 LSTM(Bi-LSTM)),来提高交通模式预测的精确度。这些技术有望囊括交通流的复杂动态,但其功效取决于输入数据的质量,这就强调了数据预处理的关键作用。本研究仔细研究了各种预处理技术,包括归一化、转换、离群点检测和特征工程。其独到的实施方法大大提高了深度学习模型的性能。通过将先进的深度学习架构与各种预处理方法相结合,本研究提出了宝贵的见解,有助于提高交通预测的准确性和可靠性。本文介绍的创新 RD-LSTM 方法利用了反向 AutoEncoder 和 LSTM 模型的混合,为该领域做出了新的贡献。在城市交通管理中实施这些渐进式策略,有望大幅提高效率,缓解拥堵。最终,这些进步将为卓越的城市体验铺平道路,通过优化交通管理系统丰富城市生活质量。
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Elevating smart city mobility using RAE-LSTM fusion for next-gen traffic prediction
The burgeoning demand for efficient urban traffic management necessitates accurate prediction of traffic congestion, spotlighting the essence of time series data analysis. This paper delves into the utilization of sophisticated deep learning methodologies, particularly long short-term memory (LSTM) networks, convolutional neural networks (CNN), and their amalgamations like Conv-LSTM and bidirectional-LSTM (Bi-LSTM), to elevate the precision of traffic pattern forecasting. These techniques showcase promise in encapsulating the intricate dynamics of traffic flow, yet their efficacy hinges upon the quality of input data, emphasizing the pivotal role of data preprocessing. This study meticulously investigates diverse preprocessing techniques encompassing normalization, transformation, outlier detection, and feature engineering. Its discerning implementation significantly heightens the performance of deep learning models. By synthesizing advanced deep learning architectures with varied preprocessing methodologies, this research presents invaluable insights fostering enhanced accuracy and reliability in traffic prediction. The innovative RD-LSTM approach introduced herein harnesses the hybridization of a reverse AutoEncoder and LSTM models, marking a novel contribution to the field. The implementation of these progressive strategies within urban traffic management portends substantial enhancements in efficiency and congestion mitigation. Ultimately, these advancements pave the way for a superior urban experience, enriching the quality of life within cities through optimized traffic management systems.
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CiteScore
2.90
自引率
0.00%
发文量
782
期刊介绍: The aim of Indonesian Journal of Electrical Engineering and Computer Science (formerly TELKOMNIKA Indonesian Journal of Electrical Engineering) is to publish high-quality articles dedicated to all aspects of the latest outstanding developments in the field of electrical engineering. Its scope encompasses the applications of Telecommunication and Information Technology, Applied Computing and Computer, Instrumentation and Control, Electrical (Power), Electronics Engineering and Informatics which covers, but not limited to, the following scope: Signal Processing[...] Electronics[...] Electrical[...] Telecommunication[...] Instrumentation & Control[...] Computing and Informatics[...]
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