AI and Human-Centric Approach in Smart Cities Management: Case Studies from Silesian and Lesser Poland Voivodships
Abstract
:1. Introduction
- Sustainable urban mobility—enhancing transportation systems to be eco-friendlier and more efficient.
- Sustainable districts and built environment—developing urban areas to be more sustainable through improved construction and planning.
- Integrated infrastructures and processes—focusing on synergy between energy, ICT, and transport infrastructures for enhanced service delivery.
- Citizen focus—prioritizing the needs and involvement of citizens in urban development.
- Policy and regulation—establishing policies and regulatory frameworks that support smart city initiatives.
- Integrated planning and management—coordinating various aspects of urban planning and management for better efficiency and effectiveness.
- Knowledge sharing—facilitating the exchange of information and best practices among stakeholders.
- Baselines, performance indicators, and metrics—using specific benchmarks and metrics to assess the performance of smart city initiatives.
- Open data governance—managing open data policies to ensure transparency and accessibility of data.
- Standards—developing and implementing standards to guide the deployment of technologies and practices in smart cities.
- Business models, procurement, and funding—innovating in business models and financing mechanisms to support sustainable urban development.
- Q1: How does the implementation of AI technologies in smart city management differ between the Silesian and Lesser Poland Voivodships, and what are the region-specific challenges and opportunities?
- Q2: In what ways does a human-centric approach influence the adoption and effectiveness of AI in enhancing urban services, such as traffic management, healthcare, and environmental sustainability, in the Silesian and Lesser Poland Voivodships?
- Q3: What are the socio-technical dynamics involved in the deployment of AI in smart cities, and how do these dynamics affect the inclusivity, transparency, and ethical considerations in the Silesian and Lesser Poland regions?
- Q4: How do AI-driven smart city initiatives contribute to the achievement of sustainable development goals in the Silesian and Lesser Poland Voivodships, particularly in areas such as energy efficiency, waste management, and urban mobility?
- Q5: What are the key factors that determine the success of AI integration in smart city strategies within the context of regional innovation policies in Silesian and Lesser Poland Voivodships?
2. Artificial Intelligence in Smart Cities Management
3. Human-Centric Smart Cities
- Technology integration: Integral to human-centric smart cities is the seamless integration of IoT devices, which collect and analyze data to improve urban services. For instance, smart sensors can monitor air quality and traffic conditions, improving residents’ health and reducing commute times [83].
- Citizen engagement: Engaging citizens in the planning and implementation of smart initiatives is crucial. By utilizing platforms for civic engagement, cities can ensure that the services developed are in line with the needs and preferences of their residents [84].
- Sustainability: Sustainable practices are at the heart of human-centric smart cities. Technologies are employed to optimize resource use and reduce environmental footprints, thereby supporting urban sustainability goals [85].
4. Methodology
4.1. Smart Cities—Statistics
4.2. Silesian Voivodship and Innovations
- Intelligent specialization—Energy
- 2.
- Intelligent specialization—Medicine
- 3.
- Intelligent specialization—Information and Communication Technologies (ICT)
- 4.
- Intelligent specialization—Emerging Industries
- 5.
- Intelligent specialization—Green Economy
Katowice Smart City
- Intelligent LED Lighting System: Enhancing energy efficiency across the city.
- Low-Emission Economy Plan: A strategic document guiding sustainable and low-emission energy management.
- KISMiA (Katowice Intelligent Monitoring and Analysis System): Using 274 cameras to monitor and manage city traffic and safety effectively.
- AWAIR: The largest air monitoring network in Poland, with 127 sensors providing real-time data on air quality, displayed on 154 screens around the city.
- Śląska Karta Usług Publicznych (ŚKUP): A multipurpose card that facilitates payments for public transport, parking, and other services.
4.3. Lesser Poland Voivodship and Innovations
- Life Science:
- 2.
- Sustainable Energy:
- 3.
- Information and Communication Technologies (ICT):
- 4.
- Chemistry:
- 5.
- Production of Metals and Metal Products:
- 6.
- Electrotechnics and Machinery Industry:
- 7.
- Creative Industries and Leisure Time:
Kraków Smart City
4.4. Silesian and Lesser Poland—Innovations and AI Management
5. Discussion
6. Future Implications for Policy-Making
- Enhance inter-regional collaboration—future policies should foster increased collaboration between different voivodships, particularly in areas of common interest such as ICT, green economy, and smart city solutions. Shared platforms for innovation can be created, facilitating the exchange of best practices and leveraging synergies between regions. This could include joint research initiatives, shared infrastructure projects, and collaborative funding programs.
- Focus on scalability and replicability—strategies should include clear pathways for scaling successful initiatives and replicating them in different contexts within the regions. This approach will maximize the impact of innovative projects and ensure that successful models contribute to broader regional development.
- Strengthen links between academia and industry—policies need to continue and strengthen the integration of academic research with industry needs. This could be facilitated by incentivizing R&D projects that involve partnerships between universities, research institutions, and local businesses, particularly in strategic sectors like medicine and advanced manufacturing.
- Increase investment in key technologies—given the emphasis on sectors like ICT and emerging technologies across the strategies, increased funding, and support should be directed towards these areas. This includes supporting startups and SMEs through grants, loans, and incubation services, and also investing in educational programs to build a skilled workforce adept in these technologies.
- Improve regulatory frameworks—future policies should aim to streamline and simplify regulatory processes that affect innovation. This includes reducing bureaucratic hurdles for new businesses, speeding up the approval processes for new technologies, and ensuring that regulations keep pace with technological advancements.
- Promote sustainability and environmental goals—all strategies emphasize sustainability; policies should integrate environmental goals with economic development strategies. This includes promoting energy efficiency, supporting the transition to renewable energy sources, and implementing stricter environmental standards for industries.
- Expand digital infrastructure—to support the growth of ICT and smart city solutions, there is a need for expanded digital infrastructure. Future policies should prioritize investments in high-speed internet access, digital services, and smart technology integration in public services to ensure widespread benefits.
- Foster public engagement and communication—enhancing public engagement in the planning and implementation of innovation strategies can lead to more effective and inclusive outcomes. Policies should encourage regular communication between policymakers, businesses, and the community, ensuring that all stakeholders have a voice in shaping regional development.
- Monitor and evaluate impact—finally, there is a need for robust mechanisms to monitor and evaluate the impact of implemented strategies. This will not only assess the effectiveness of specific initiatives but also provide valuable feedback for refining and adjusting policies over time.
7. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Smart City Areas | Description of AI Usage |
---|---|
Automation and Decision-Making [7,8] | AI is used to automate routine administrative tasks, optimize resource allocation, and enhance decision-making processes through predictive analytics and real-time data analysis. These applications help improve efficiency, reduce costs, and support more informed policy-making in urban management. |
Education [48,49,50,51,52] | AI technologies enhance learning experiences through personalized education platforms, intelligent tutoring systems, and administrative automation. They provide tailored educational content, streamline administrative tasks, and enable data-driven decision-making to improve educational outcomes and resource management in schools and universities. |
Smart Infrastructure [13,14,15,16,17] | AI supports the development and maintenance of smart infrastructure, including energy-efficient buildings, intelligent water management systems, and smart grids. These systems optimize resource use, reduce environmental impact, and enhance the resilience and sustainability of urban infrastructure. |
Smart Mobility [4,9,10,11,12,71,72,73] | AI-driven smart mobility solutions include real-time traffic management, predictive maintenance of transportation systems, and integrated multimodal transport services. These technologies improve traffic flow, reduce congestion, and enhance the efficiency and reliability of urban transportation networks. |
Healthcare [18,19,20,21,22,23,24,25] | AI applications in healthcare include diagnostic tools, predictive analytics for disease outbreak management, and personalized treatment plans. These technologies enhance diagnostic accuracy, optimize treatment protocols, and improve patient outcomes while reducing healthcare costs and resource use. |
Transportation and Autonomous Cars [45,46,47,48] | AI powers autonomous vehicles and intelligent transportation systems, facilitating safer and more efficient road transport. These systems use real-time data and machine learning algorithms to navigate, reduce traffic accidents, and optimize route planning, contributing to the development of smart, interconnected transportation networks. |
Crime Detection and Prevention [26,27,28,29,30] | AI aids in crime detection and prevention through predictive policing, surveillance systems with facial recognition, and real-time crime mapping. These technologies help law enforcement agencies anticipate and respond to criminal activities more effectively, enhancing public safety and security. |
Environmental Management [30,31,32,33] | AI technologies support environmental management by monitoring air and water quality, managing waste, and predicting natural disasters. These systems enable proactive measures to protect and sustain urban ecosystems, ensuring a healthier and more resilient environment for city inhabitants. |
Smart Buildings [5,40,41,42,43,44] | AI in smart buildings involves energy management systems, automated lighting and climate control, and predictive maintenance. These applications enhance the efficiency and comfort of buildings, reduce operational costs, and contribute to sustainability goals. |
Tourism, Culture, Services, and Entertainment [34,35,36,37,38] | AI enhances tourism and cultural experiences through personalized recommendations, virtual tours, and intelligent service systems. In the entertainment sector, AI-driven platforms offer personalized content, enhance user experiences, and optimize service delivery, thereby boosting engagement and satisfaction in urban cultural and recreational activities. |
Principle of Human Centric Smart City | Description |
---|---|
Inclusivity and Accessibility | Ensuring that all residents, regardless of age, gender, income, or ability, have equal access to smart city technologies and benefits. This includes designing user-friendly interfaces, providing digital literacy programs, and implementing policies to bridge the digital divide. |
Transparency and Accountability | Maintaining open communication and clear information about how data are collected, used, and protected. This involves engaging residents in decision-making processes, providing access to public data, and establishing mechanisms for accountability and redress in case of misuse of technology. |
Privacy and Data Protection | Safeguarding personal data and ensuring privacy through robust data protection measures. This principle emphasizes the importance of consent, data minimization, and implementing security measures to prevent unauthorized access and breaches. |
Sustainability and Resilience [5,89,90,91,92,93] | Prioritizing environmental sustainability and resilience in urban planning and development. This includes using AI and smart technologies to reduce resource consumption, manage waste, and enhance the city’s ability to withstand and recover from environmental, economic, and social challenges. |
Community Engagement | Actively involving residents in the planning, development, and implementation of smart city initiatives. This includes conducting surveys, holding public consultations, and fostering collaboration between government, businesses, and citizens to ensure that the technology meets the community’s needs. |
Equity and Fairness | Promoting social equity by ensuring that the benefits of smart city technologies are distributed fairly and do not exacerbate existing inequalities. This involves targeting investments in underserved areas and addressing potential biases in AI systems that could disadvantage certain groups. |
Adaptability and Flexibility | Designing systems and policies that are adaptable to changing needs and technologies. This principle emphasizes the importance of continuous learning, innovation, and the ability to scale solutions to accommodate future growth and evolving urban challenges. |
Human Well-being | Focusing on improving the overall quality of life for all residents by enhancing health, safety, and social well-being. This includes leveraging technology to create safer, healthier, and more enjoyable urban environments, and ensuring that human needs and values remain at the core of smart city initiatives. |
Aspect | Silesian Voivodship | Lesser Poland Voivodship |
---|---|---|
Focus Areas | - Integration of AI in industrial frameworks, especially manufacturing and urban mobility | - Broad AI applications in life sciences, sustainable energy, ICT |
- Smart city solutions: digital public services, sustainable urban planning | - Development of digital innovation hubs for SMEs and industrial use | |
Implementation Strategies | - Projects and partnerships focusing on competitive traditional industries like manufacturing and energy | - Educational and infrastructural enhancements for AI and digital transformation |
- Strategic use of digital platforms and hubs for AI integration in public services and industry | - Collaborative approach with businesses, academia, and government | |
Challenges and Solutions | - Adapting to digital landscape, preparing workforce for new technologies | - Integrating diverse sectors into a cohesive digital and AI strategy |
- Partnerships for knowledge transfer and skill development | - Creation of specialized hubs and networks for AI development and diffusion | |
Economic Impact and Sustainability | - AI enhances efficiency in traditional industries, potential for smart, energy-efficient urban environments | - Focus on creating new economic opportunities, enhancing international competitiveness |
- Link between AI and development of technologically integrated, energy-efficient environments | - AI-driven development of green technologies and energy solutions |
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Skubis, I.; Wolniak, R.; Grebski, W.W. AI and Human-Centric Approach in Smart Cities Management: Case Studies from Silesian and Lesser Poland Voivodships. Sustainability 2024, 16, 8279. https://doi.org/10.3390/su16188279
Skubis I, Wolniak R, Grebski WW. AI and Human-Centric Approach in Smart Cities Management: Case Studies from Silesian and Lesser Poland Voivodships. Sustainability. 2024; 16(18):8279. https://doi.org/10.3390/su16188279
Chicago/Turabian StyleSkubis, Ida, Radosław Wolniak, and Wiesław Wes Grebski. 2024. "AI and Human-Centric Approach in Smart Cities Management: Case Studies from Silesian and Lesser Poland Voivodships" Sustainability 16, no. 18: 8279. https://doi.org/10.3390/su16188279
APA StyleSkubis, I., Wolniak, R., & Grebski, W. W. (2024). AI and Human-Centric Approach in Smart Cities Management: Case Studies from Silesian and Lesser Poland Voivodships. Sustainability, 16(18), 8279. https://doi.org/10.3390/su16188279