Spatially Disaggregated Car Ownership Prediction Using Deep Neural Networks

被引:3
作者
Dixon, James [1 ,2 ]
Koukoura, Sofia [2 ]
Brand, Christian [1 ]
Morgan, Malcolm [3 ]
Bell, Keith [2 ]
机构
[1] Univ Oxford, Environm Change Inst, South Parks Rd, Oxford OX1 3QY, England
[2] Univ Strathclyde, Inst Energy & Environm, 99 George St, Glasgow City G1 1RD, Scotland
[3] Univ Leeds, Inst Transport Studies, 34-40 Univ Rd, Leeds LS2 9JT, England
来源
FUTURE TRANSPORTATION | 2021年 / 1卷 / 01期
基金
英国工程与自然科学研究理事会;
关键词
artificial neural networks; car ownership; spatial modelling; DATA-DRIVEN APPROACH; ELECTRIC VEHICLES; ENERGY-CONSUMPTION; URBAN AREAS; ALGORITHM; EMISSIONS; PANEL; DETERMINANTS; HOUSEHOLD; IMPACTS;
D O I
10.3390/futuretransp1010008
中图分类号
U [交通运输];
学科分类号
08 ; 0823 ;
摘要
Predicting car ownership patterns at high spatial resolution is key to understanding pathways for decarbonisation-via electrification and demand reduction-of the private vehicle fleet. As the factors widely understood to influence car ownership are highly interdependent, linearised regression models, which dominate previous work on spatially explicit car ownership modelling in the UK, have shortcomings in accurately predicting the relationship. This paper presents predictions of spatially disaggregated car ownership-and change in car ownership over time-in Great Britain (GB) using deep neural networks (NNs) with hyperparameter tuning. The inputs to the models are demographic, socio-economic and geographic datasets compiled at the level of Census Lower Super Output Areas (LSOAs)-areas covering between 300 and 600 households. It was found that when optimal hyperparameters are selected, these neural networks can predict car ownership with a mean absolute error of up to 29% lower than when formulating the same problem as a linear regression; the results from NN regression are also shown to outperform three other artificial intelligence (AI)-based methods: random forest, stochastic gradient descent and support vector regression. The methods presented in this paper could enhance the capability of transport/energy modelling frameworks in predicting the spatial distribution of vehicle fleets, particularly as demographics, socio-economics and the built environment-such as public transport availability and the provision of local amenities-evolve over time. A particularly relevant contribution of this method is that by coupling it with a technology dissipation model, it could be used to explore the possible effects of changing policy, behaviour and socio-economics on uptake pathways for electric vehicles -cited as a vital technology for meeting Net Zero greenhouse gas emissions by 2050.
引用
收藏
页码:113 / 133
页数:21
相关论文
共 71 条
[1]   Deep learning approach on tabular data to predict early-onset neonatal sepsis [J].
Alvi, Redwan Hasif ;
Rahman, Md Habibur ;
Khan, Adib Al Shaeed ;
Rahman, Rashedur M. .
JOURNAL OF INFORMATION AND TELECOMMUNICATION, 2021, 5 (02) :226-246
[2]  
[Anonymous], 2019, UK becomes first major economy to pass net zero emissions law - GOV
[3]  
[Anonymous], 2018, Lower layer Super Output Area population estimates (National Statistics)
[4]   Alternative Modeling Approaches Used for Examining Automobile Ownership: A Comprehensive Review [J].
Anowar, Sabreena ;
Eluru, Naveen ;
Miranda-Moreno, Luis F. .
TRANSPORT REVIEWS, 2014, 34 (04) :441-473
[5]   Heuristic nonlinear regression strategy for detecting phishing websites [J].
Babagoli, Mehdi ;
Aghababa, Mohammad Pourmahmood ;
Solouk, Vahid .
SOFT COMPUTING, 2019, 23 (12) :4315-4327
[6]   Slowly coming out of COVID-19 restrictions in Australia: Implications for working from home and commuting trips by car and public transport [J].
Beck, Matthew J. ;
Hensher, David A. ;
Wei, Edward .
JOURNAL OF TRANSPORT GEOGRAPHY, 2020, 88
[7]  
Best H., 2014, Regression Analysis: Assumptions and Diagnostics, P83, DOI [10.4135/9781446288146.n5, DOI 10.4135/9781446288146.N5]
[8]   Machine learning-based risk profile classification of patients undergoing elective heart valve surgery [J].
Bodenhofer, Ulrich ;
Haslinger-Eisterer, Bettina ;
Minichmayer, Alexander ;
Hermanutz, Georg ;
Meier, Jens .
EUROPEAN JOURNAL OF CARDIO-THORACIC SURGERY, 2021, 60 (06) :1378-1385
[9]   Robust Data Predictive Control Framework for Smart Multi-Microgrid Energy Dispatch Considering Electricity Market Uncertainty [J].
Brahmia, Ibrahim ;
Wang, Jingcheng ;
Xu, Haotian ;
Wang, Hongyuan ;
Turci, Luca De Oliveira .
IEEE ACCESS, 2021, 9 :32390-32404
[10]   The climate change mitigation impacts of active travel: Evidence from a longitudinal panel study in seven European cities [J].
Brand, Christian ;
Gotschi, Thomas ;
Dons, Evi ;
Gerike, Regne ;
Anaya-Boig, Esther ;
Avila-Palencia, Ione ;
de Nazelle, Audrey ;
Gascon, Mireia ;
Gaupp-Berghausen, Mailin ;
Iacorossi, Francesco ;
Kahlmeier, Sonja ;
Panis, Luc Int ;
Racioppi, Francesca ;
Rojas-Rueda, David ;
Standaert, Arnout ;
Stigell, Erik ;
Sulikova, Simona ;
Wegener, Sandra ;
Nieuwenhuijsen, Mark J. .
GLOBAL ENVIRONMENTAL CHANGE-HUMAN AND POLICY DIMENSIONS, 2021, 67