AI Analytics for Carbon-Neutral City Planning: A Systematic Review of Applications
Abstract
:1. Introduction
2. Background Literature
2.1. Related Reviews
2.2. Carbon-Neutral Approaches and Potential of AI in Planning
3. Research Method
4. Result
4.1. Topic Review
4.1.1. Emission Prediction
4.1.2. Carbon Storage and Sequestration
4.1.3. Land Use Change and Emission Response
4.1.4. Energy Consumption and Emission
4.2. Areas in Which AI Analytics Can Support Carbon Neutrality Planning
4.3. Cases Where AI Analytics May Have Limitations or Encounter Issues
4.3.1. Technical and Computational Challenges
4.3.2. Ethical and Societal Challenges
4.3.3. Governance Challenges
5. Discussion
5.1. Conditions in Which AI Analytics Can Support Carbon Neutrality Planning
5.2. Theory and Practice Gap
6. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
Appendix A
Title | Topic | Goal | Data | Category | Source Ref. Number |
---|---|---|---|---|---|
Carbon stock inversion study of a carbon peaking pilot urban combining machine learning and Landsat images | Carbon storage and sequestration | Factor analysis | Image | Machine learning | [43] |
Estimating the forest carbon storage of Chongming Eco-Island, China, using multisource remotely sensed data | Carbon storage and sequestration | Prediction | Image | Machine learning | [53] |
Quantification of carbon sequestration by urban forest using Landsat 8 OLI and machine learning algorithms in Jodhpur, India | Carbon storage and sequestration | Prediction | Image | Machine learning | [110] |
Two-step carbon storage estimation in urban human settlements using airborne LiDAR and Sentinel-2 data based on machine learning | Carbon storage and sequestration | Prediction | Image | Machine learning | [111] |
Multi-scenario simulation of carbon budget balance in arid and semi-arid regions | Carbon storage and sequestration | Prediction | Multi-source | Deep learning (CNN-LSTM) | [68] |
A spatio-temporal neural network learning system for estimating city-scale carbon storage capacity | Carbon storage and sequestration | Prediction | Multi-source | Recurrent neural network | [55] |
Estimation of aboveground carbon density of forests using deep learning and multisource remote sensing | Carbon storage and sequestration | Prediction | Multi-source | Convolutional neural networks | [112] |
Identifying drivers of county-level industrial carbon intensity by a generic machine learning framework | Carbon storage and sequestration | Factor analysis | Numerical | Machine learning | [44] |
The impact of green innovation on carbon reduction efficiency in China: Evidence from machine learning validation | Carbon storage and sequestration | Factor analysis | Spatial | Machine learning | [30] |
Energy-driven intelligent generative urban design based on deep reinforcement learning method with a nested Deep Q-R network | Computer-aid planning and design | Optimization | Multi-source | Deep reinforcement learning | [113] |
A machine learning approach to mapping suitable areas for forest vegetation in the eThekwini Municipality | Computer-aid planning and design | Optimization | Multi-source | GIS, light gradient boosting, artificial neural networks | [31] |
Multi-objective optimization of urban environmental system design using machine learning | Computer-aid planning and design | Optimization | Numerical | Gaussian process regression | [78] |
Challenges for computer vision as a tool for screening urban trees through street-view images | Emission prediction | Classification | Image | Convolutional neural networks | [19] |
Predicting neighborhood-level residential carbon emissions from street view images using computer vision and machine learning | Emission prediction | Prediction | Image | Machine learning | [39] |
Retail commercial space clustering based on post-carbon era context: A case study of Shanghai | Emission prediction | Clustering | Multi-source | Machine learning | [41] |
Illustrating the nonlinear effects of urban form factors on transportation carbon emissions based on gradient boosting decision trees | Emission prediction | Factor analysis | Multi-source | Gradient boosting decision trees | [7] |
GIS-enabled digital twin system for sustainable evaluation of carbon emissions: A case study of Jeonju city, south Korea | Emission prediction | Factor analysis | Multi-source | GIS, back-propagation neural network | [36] |
Towards low-carbon cities: A machine learning method for predicting urban blocks carbon emissions based on built environment factors in Changxing City, China | Emission prediction | Prediction | Multi-source | Back-propagation neural network | [114] |
Efficiency assessment of public transport vehicles using machine learning and non-parametric models | Emission prediction | Clustering | Numerical | Fuzzy clustering | [115] |
Quantifying the heterogeneous impacts of the urban built environment on traffic carbon emissions: New insights from machine learning techniques | Emission prediction | Factor analysis | Numerical | Machine learning | [8] |
Peeking inside the black-box: Explainable machine learning applied to household transportation energy | Emission prediction | Factor analysis | Numerical | Neural networks | [116] |
Identification of on-road vehicle CO2 emission pattern in China: A study based on a high-resolution emission inventory | Emission prediction | Factor analysis | Numerical | Machine learning | [35] |
Generic above-ground biomass estimator for urban forests using machine learning | Emission prediction | Prediction | Numerical | Machine learning | [117] |
IoT-driven multi-source sensor emission monitoring and forecasting using multi-source sensor integration with reduced noise series decomposition | Emission prediction | Prediction | Numerical | Recurrent neural networks, long short-term memory | [38] |
Carbon emission causal discovery and multi-step forecasting for global cities | Emission prediction | Prediction | Numerical | Reinforce learning | [37] |
Machine learning predictions for carbon monoxide levels in urban environments | Emission prediction | Prediction | Numerical | Artificial Neural Networks | [118] |
Predictive modeling of energy-related greenhouse gas emissions in Ghana towards a net-zero future | Emission prediction | Prediction | Numerical | Machine learning | [119] |
Can China achieve its 2030 carbon emissions commitment? Scenario analysis based on an improved general regression neural network | Emission prediction | Prediction | Numerical | General regression neural network | [120] |
Carbontracker: Tracking and predicting the carbon footprint of training deep learning models | Emission prediction | Prediction | Numerical | Convolutionalneural networks | [121] |
Forecasting air transportation demand and its impacts on energy and emission | Emission prediction | Prediction | Numerical | Artificial neural networks | [122] |
Assessment and regression of carbon emissions from the building and construction sector in China: A provincial study using machine learning | Emission prediction | Prediction | Numerical | Machine learning | [42] |
Machine learning based estimation of urban on-road CO2 concentration in Seoul | Emission prediction | Prediction | Numerical | Machine learning | [123] |
Forecast energy demand, CO2 emissions and energy resource impacts for the transportation sector | Emission prediction | Prediction | Numerical | Machine learning | [40] |
An interpretable forecasting framework for energy and CO2 emissions | Emission prediction | Prediction | Numerical | Machine learning | [124] |
Modelling of CO2 emission prediction for dynamic vehicle travel behavior using ensemble machine learning technique | Emission prediction | Prediction | Numerical | Gradient boosting regression | [82] |
Analyzing the impact of three-dimensional building structure on CO2 emissions based on random forest regression | Emission prediction | Factor analysis | Spatial | Machine learning | [81] |
A novel approach for predicting anthropogenic CO2 emissions using machine learning based on clustering of the CO2 concentration | Emission prediction | Prediction | Spatial | Gradient-boosted decision trees | [125] |
Industrial carbon emission efficiency prediction and carbon emission reduction strategies based on multi-objective particle swarm optimization-backpropagation: A perspective from regional clustering | Emission prediction | Prediction | Spatial | Back-propagation neural network | [76] |
The power of attention: Government climate-risk attention and agricultural-land carbon emissions | Emission prediction | Factor analysis | Text | Natural language processing | [23] |
Developing urban building energy models for Shanghai City with multi-source open data | Energy consumption estimation | Clustering | Multi-source | Machine learning | [6] |
Data-driven estimation of building energy and GHG emissions using explainable artificial intelligence | Energy consumption estimation | Factor analysis | Multi-source | Light gradient boosting machine | [32] |
SynCity: Using open data to create a synthetic city of hourly building energy estimates by integrating data-driven and physics-based methods | Energy consumption estimation | Prediction | Multi-source | Gradient boosting regression | [69] |
The what, why, and how of changing cooling energy consumption in India’s urban households | Energy consumption estimation | Factor analysis | Numerical | Statistical analysis | [126] |
An explainable artificial intelligence approach to understanding drivers of economic energy consumption and sustainability | Energy consumption estimation | Factor analysis | Numerical | Deep neural network | [72] |
Investigating the application of a transportation energy consumption prediction model for urban planning scenarios in machine learning and Shapley additive explanations method | Energy consumption estimation | Factor analysis | Numerical | Machine learning | [127] |
Investigating application of a commercial and residential energy consumption prediction model for urban planning scenarios with machine learning and Shapley additive explanation methods | Energy consumption estimation | Factor analysis | Numerical | Machine learning | [20] |
Fine-grained RNN with transfer learning for energy consumption estimation for EVs | Energy consumption estimation | Prediction | Numerical | Recurrent neural network, Transfer Learning | [75] |
Analysis and forecast of China’s energy consumption structure | Energy consumption estimation | Prediction | Numeric | Machine learning | [128] |
Impact of urban expansion and in situ greenery on community-wide carbon emissions: Method development and insights from 11 US cities | Land use change and emission responses | Prediction | Image | Machine learning | [129] |
A novel geospatial machine learning approach to quantify non-linear effects of land use/land cover change (LULCC) on carbon dynamics | Land use change and emission responses | Prediction | Image | Convolutionalneural networks | [34] |
Multi-scenario land use/cover change and its impact on carbon storage based on the coupled GMOP-PLUS-InVEST model in the Hexi Corridor, China | Land use change and emission responses | Prediction | Image | Land use simulation | [130] |
Spatial correlation evolution and prediction scenario of land use carbon emissions in the Yellow River Basin | Land use change and emission responses | Prediction | Multi-source | Land use simulation | [131] |
Ecosystem carbon storage considering combined environmental and land use changes in the future and pathways to carbon neutrality in developed regions | Land use change and emission responses | Prediction | Multi-source | Artificial neural networks | [56] |
Scenario simulation of land use change and carbon storage response in Henan Province, China: 1990–2050 | Land use change and emission responses | Prediction | Multi-source | Land use simulation | [57] |
A network-based framework for characterizing urban carbon metabolism associated with land use changes: A case of Beijing city, China | Land use change and emission responses | Prediction | Multi-source | Land use simulation | [67] |
Using explainable machine learning to understand how urban form shapes sustainable mobility | Land use change and emission responses | Factor analysis | Numerical | Gradient boosting decision trees | [33] |
Built environment influences commute mode choice in a Global South megacity context: Insights from explainable machine learning approach | Land use change and emission responses | Factor analysis | Numerical | Machine learning | [132] |
How changes in landscape patterns affect the carbon emission: a case study in the Chengdu-Chongqing Economic Circle, China | Land use change and emission responses | Prediction | Numerical | Statistical analysis | [133] |
Unequal impacts of urban industrial land expansion on economic growth and carbon dioxide emissions | Land use change and emission responses | Factor analysis | Spatial | Machine learning | [134] |
The nonlinear influence of land conveyance on urban carbon emissions: An interpretable ensemble learning-based approach | Land use change and emission responses | Factor analysis | Spatial | Gradient boosting decision trees | [66] |
Spatial–temporal dynamics of land use carbon emissions and drivers in 20 urban agglomerations in China from 1990 to 2019 | Land use change and emission responses | Factor analysis | Spatial | Geographically and temporally weighted regression, boosted regression trees | [135] |
Implementing policies to mitigate urban heat islands: Analyzing urban development factors with an innovative machine learning approach | Land use change and emission responses | Factor analysis | Spatial | Decision trees, back-propagation neural network | [136] |
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Sources | No. of Articles Reviewed | Topics | Major Findings |
---|---|---|---|
[6] | 91 | Algorithmic urban planning for smart and sustainable development | AI application fields: (1) urban data analytics and planning decision support, (2) urban and infrastructure management, (3) urban environmental and disaster management, and (4) urban monitoring and development control. |
[11] | A scoping review (1000+) | How planners interact with AI tools | A topology of urban planning using AI, from traditional planning to AI-autonomized planning. |
[12] | 44 | AI-based solutions for climate change | Focus on automated operations: discovery, distribution, and transmission enabled through AI. |
[13] | 56 | Using AI for climate change adaptation | Identifies AI advantages in forecasting, projection, and modeling extreme weather events, resource use, and conservation and adaptation efforts. |
[14] | 140 | Unsupervised machine learning in urban studies | Records and summarizes the topic and techniques of unsupervised learning used in planning studies and provides insights into methods’ evolution and prominent future application trends. |
[15] | 521 | ML method for sustainable urban development | Identifies most urban planning issues for sustainability, including land use/cover, urban growth, urban buildings, urban mobility, and urban environment. |
Research Topic | AI Pathways to Carbon Neutrality Goals |
---|---|
Emission control | Identify emission pattens and drivers; predict total and sectoral emissions. |
Nature conservation | Estimate carbon storage capacity; anticipate carbon sink loss due to changes in land use change. |
Energy saving | Model energy use of buildings; estimate heating and cooling energy consumption; evaluate energy policies. |
Land use and transportation planning | Estimate emission reduction through optimizing trips, routing, and ridesharing and anticipating walking, biking, and the use of public transport. |
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Cong, C.; Page, J.; Kwak, Y.; Deal, B.; Kalantari, Z. AI Analytics for Carbon-Neutral City Planning: A Systematic Review of Applications. Urban Sci. 2024, 8, 104. https://doi.org/10.3390/urbansci8030104
Cong C, Page J, Kwak Y, Deal B, Kalantari Z. AI Analytics for Carbon-Neutral City Planning: A Systematic Review of Applications. Urban Science. 2024; 8(3):104. https://doi.org/10.3390/urbansci8030104
Chicago/Turabian StyleCong, Cong, Jessica Page, Yoonshin Kwak, Brian Deal, and Zahra Kalantari. 2024. "AI Analytics for Carbon-Neutral City Planning: A Systematic Review of Applications" Urban Science 8, no. 3: 104. https://doi.org/10.3390/urbansci8030104
APA StyleCong, C., Page, J., Kwak, Y., Deal, B., & Kalantari, Z. (2024). AI Analytics for Carbon-Neutral City Planning: A Systematic Review of Applications. Urban Science, 8(3), 104. https://doi.org/10.3390/urbansci8030104