| Literature DB >> 32466175 |
Tan Yigitcanlar1, Luke Butler1, Emily Windle1, Kevin C Desouza2, Rashid Mehmood3, Juan M Corchado4,5,6,7.
Abstract
In recent years, artificial intelligence (AI) has started to manifest itself at an unprecedented pace. With highly sophisticated capabilities, AI has the potential to dramatically change our cities and societies. Despite its growing importance, the urban and social implications of AI are still an understudied area. In order to contribute to the ongoing efforts to address this research gap, this paper introduces the notion of an artificially intelligent city as the potential successor of the popular smart city brand-where the smartness of a city has come to be strongly associated with the use of viable technological solutions, including AI. The study explores whether building artificially intelligent cities can safeguard humanity from natural disasters, pandemics, and other catastrophes. All of the statements in this viewpoint are based on a thorough review of the current status of AI literature, research, developments, trends, and applications. This paper generates insights and identifies prospective research questions by charting the evolution of AI and the potential impacts of the systematic adoption of AI in cities and societies. The generated insights inform urban policymakers, managers, and planners on how to ensure the correct uptake of AI in our cities, and the identified critical questions offer scholars directions for prospective research and development.Entities:
Keywords: artificial intelligence (AI); artificially intelligence commons; artificially intelligent city; climate change; natural disasters; pandemics; smart city; smart urban technology; sustainable urban development; urban informatics
Mesh:
Year: 2020 PMID: 32466175 PMCID: PMC7287769 DOI: 10.3390/s20102988
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1Classification of AI-driven computational techniques, derived from Corea [14].
Figure 2Hype cycle of AI applications, derived from Gartner [28].
Figure 3Countries with a national AI strategy, derived from Holon IQ [29].
Figure A1Global landscape of national artificial intelligence strategies, derived from Holon IQ [29].
AI application areas for addressing planetary challenges, derived from World Economic Forum [43].
| Planetary Challenges | AI Application Areas |
|---|---|
| Climate change | Clean power |
| Smart transport options | |
| Sustainable production and consumption | |
| Sustainable land use | |
| Smart cities and homes | |
| Healthy oceans | Fishing sustainability |
| Preventing pollution | |
| Protecting habitats | |
| Protecting species | |
| Impacts from climate change (including acidification) | |
| Clean air | Filtering and capture |
| Monitoring and prevention | |
| Early warning | |
| Clean fuels | |
| Real-time, integrated, adaptive urban management | |
| Biodiversity and conversation | Habitat protection and restoration |
| Sustainable trade | |
| Pollution control | |
| Invasive species and disease control | |
| Realizing natural capital | |
| Water security | Water supply |
| Catchment control | |
| Water efficiency | |
| Adequate sanitation | |
| Drought planning | |
| Weather and disaster resilience | Prediction and forecasting |
| Early warning systems | |
| Resilient infrastructure | |
| Financial instruments | |
| Resilience planning |
AI applications and motivation for adoption in healthcare practice, derived from Park [60].
| Application | Motivation for Adoption |
|---|---|
| Robot-assisted surgery | Technological advances in robotic solutions for more types of surgery |
| Virtual nursing assistants | Increasing pressure caused by medical labor shortage |
| Administrative workflow | Easier integration with existing technology infrastructure |
| Fraud detection | Need to address complex service and payment fraud attempts |
| Dosage error reduction | Prevalence of medical errors, which leads to tangible penalties |
| Connected machines | Proliferation of connected machines and devices |
| Clinical trial participation | Client cliff, plethora of data, outcomes-driven approach |
| Preliminary diagnosis | Interoperability and data architecture to enhance accuracy |
| Automated image diagnosis | Storage capacity, greater trust in AI technology |
| Cybersecurity | Increase in breaches, pressure to protect health data |
Figure 4AI and big data analytics in natural disaster management, derived from Kankanamge et al. [59].
Priority AI specialization domains and their objectives, derived from Data61 [61].
| Domain | Objective |
|---|---|
| Natural resources and the environment | Developing AI solutions for enhanced natural resource management to reduce the costs and improve the productivity of agriculture, mining, fisheries, forestry, and environmental management |
| Health, aging, and disability | Developing AI solutions for health, aging, and disability support to reduce costs, improve wellbeing, and make quality care accessible for all Australians |
| Cities, towns, and infrastructure | Developing AI solutions for better towns, cities, and infrastructure to improve the safety, efficiency, cost-effectiveness, and quality of the built environment |
Figure 5AI capabilities and their use by domains, derived from McKinsey Global Research Institute [93].
Figure 6AI utilization for achieving sustainable development goals, derived from McKinsey Global Research Institute [93].
Promises and pitfalls of AI for cities, derived from Yigitcanlar et al. [22].
| Domains | Promises | Pitfalls |
|---|---|---|
| Economy |
Enhance productivity and innovation Reduce costs and increase resources Support the decision-making process Automate decision-making |
Biased decision-making Unstable job market Loss of revenue streams Loss of employment Economic inequality |
| Society |
Improve healthcare monitoring Enhance health diagnosis outcomes More adaptable education system More personalized teaching Task optimization |
Biased decision-making Misdiagnosis Unstable job market Loss of employment Data privacy and security |
| Environment |
Assist environmental monitoring Optimize energy consumption Optimize energy production Optimize transport systems Assist in developing more environmentally efficient transport systems |
Biased decision-making Increased urban sprawl More kilometers traveled by motor vehicles Changed property values Energy intensive technology Increased carbon footprint |
| Governance |
Enhance surveillance systems Improve cyber safety Aid in disaster management planning and operations Assist citizens with new technologies |
Biased decision-making Racial bias and discrimination Suppression of public voice/protest Violation of civil liberties Privacy concern Unethical use of technology Risk of misinformation Cybersecurity concern |