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智慧地铁车站系统:数据科学与工程:data science and engineering:英文版

智慧地铁车站系统:数据科学与工程:data science and engineering:英文版

作者:刘辉等著
出版社:中南大学出版社出版时间:2022-03-01
开本: 26cm 页数: 272页
本类榜单:工业技术销量榜
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智慧地铁车站系统:数据科学与工程:data science and engineering:英文版 版权信息

智慧地铁车站系统:数据科学与工程:data science and engineering:英文版 内容简介

智慧地铁专注于铁路系统的新概念和新模式,是数据科学与工程的跨学科研究。智慧地铁车站系统基于车站中的全息感知,终端平台控制和高度自治的操作。它提供实时的自主服务和车站服务设施的监控以实现车站设备、环境和乘客的智能管理。智慧地铁是一个新兴的领域。本书介绍智慧地铁车站系统中数据科学和工程学的关键技术,并将其分为三个部分,包括环境、人类和能源。本书介绍智慧地铁车站系统中数据科学和工程学的*新技术。。本书可以为研究人员提供重要参考,并鼓励以后在智慧地铁、智能铁路、数据科学与工程、人工智能和其他相关领域进行后续研究。本书与爱思唯尔联合出版。

智慧地铁车站系统:数据科学与工程:data science and engineering:英文版 目录

Chapter 1 Exordium
1.1 Overview of data science and engineering
1.2 Framework of smart metro station systems
1.3 Human and smart metro station systems
1.4 Environment and smart metro station systems
1.5 Energy and smart metro station systems
1.6 Scope of this book
References
Chapter 2 Metro traffic flow monitoring and passenger guidance
2.1 Introduction
2.2 Description of metro traffic flow data
2.3 Prediction of metro traffic flow based on Elman neural network
2.4 Prediction of metro traffic flow based on deep echo state network
2.5 Passenger guidance strategy based on prediction results
2.6 Conclusions
References
Chapter 3 Individual behavior analysis and trajectory prediction
3.1 Introduction
3.2 Description of individual GPS data
3.3 Preprocessing of individual GPS data
3.4 Prediction of GPS trajectory based on optimized extreme learning machine
3.5 Prediction of GPS trajectory based on optimized support vector machine
3.6 Analysis of individual behavior based on prediction results
3.7 Conclusions
References
Chapter 4 Clustering and anomaly detection of crowd hotspot regions
4.1 Introduction
4.2 Description of crowd GPS data
4.3 Preprocessing of crowd GPS data
4.4 Clustering of crowd hotspot regions based on K-means
4.5 Clustering of crowd hotspot regions based on DBSCAN
4.6 Anomaly detection of crowd hotspot regions based on Markov chain
4.7 Conclusions
References
Chapter 5 Monitoring and deterministic prediction of station humidity
5.1 Introduction
5.2 Description of station humidity data
5.3 Deterministic prediction of station humidity based on optimization ensemble
5.4 Deterministic prediction of station humidity based on stacking ensemble
5.5 Evaluation of deterministic prediction results
5.6 Conclusions
References
Chapter 6 Monitoring and probabilistic prediction of station temperature
6.1 Introduction
6.2 Description of station temperature data
6.3 Interval prediction of station temperature based on quantile regression
6.4 Interval prediction of station temperature based on kernel density estimation
6.5 Evaluation of probabilistic prediction results
6.6 Conclusions
References
Chapter 7 Monitoring and spatial prediction of multi-dimensional air pollutants
7.1 Introduction
7.2 Description of multi-dimensional air pollutants data
7.3 Dimensionality reduction of multi-dimensional air pollutants data
7.4 Spatial prediction of air pollutants based on Long Short-Term Memory
7.5 Evaluation of spatial prediction results
7.6 Conclusions
References
Chapter 8 Time series feature extraction and analysis of metro load
8.1 Introduction
8.2 Description of metro load data
8.3 Feature extraction of metro load based on statistical methods
8.4 Feature extraction of metro load based on transform methods
8.5 Feature extraction of metro load based on model
8.6 Conclusions
References
Chapter 9 Characteristic and correlation analysis of metro load
9.1 Introduction
9.2 The theoretical basis of correlation analysis
9.3 Description of metro load data
9.4 Correlation analysis of metro load and environment data
9.5 Correlation analysis of metro load and operation data
9.6 Comprehensive correlation ranking of metro load and related data
9.7 Conclusions
References
Chapter 10 Metro load prediction and intelligent ventilation control
10.1 Introduction
10.2 Description of short-term and long-term metro load data
10.3 Short-term prediction of metro load data based on ANFIS model
10.4 Long-term prediction of metro load data based on SARIMA model
10.5 Performance evaluation of prediction results
10.6 Intelligent ventilation control based on prediction results
10.7 Conclusions
References
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智慧地铁车站系统:数据科学与工程:data science and engineering:英文版 作者简介

刘辉,现任中南大学二级教授、博导、交通院副院长。 主要研究方向为轨道交通与人工智能。获中德双博士学位(交通运输工程/自动化工程)、德国教授文凭。入选国家万人计划青年拔尖人才、全球2%顶尖科学家榜单、爱思唯尔中国高被引学者。 获国家科技进步奖一等奖(排15)、教育部自然科学奖二等奖(排1)、中国交通运输协会科技进步奖一等奖(排1)等;获施普林格-自然“中国新发展奖”、中国智能交通协会科技领军人才奖、中国交通运输协会首届青年奖、湖南省青年科技奖、宝钢优秀教师奖等。

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