Governance of Artificial Intelligence in Water and Wastewater Management: The Case Study of Japan
Abstract
:1. Introduction
2. Materials and Methods
3. Findings
3.1. Frameworks on AI in Japan
3.1.1. Positioning of AI in Growth and Development Strategies
- Japan Renaissance Strategy 2013 (revised in 2014 and 2015);
- Japan Renaissance Strategy 2016;
- Future Investment Strategy 2017;
- Future Investment Strategy 2018;
- Growth Strategy 2019;
- Growth Strategy 2020.
3.1.2. Strategies on AI
3.1.3. Other Relevant Frameworks
3.2. Applications of AI in Water and Wastewater Management
3.3. Legislative Issues
4. Discussion
4.1. Gaps and Challenges
4.1.1. Data Collection and Management
4.1.2. Development of AI
4.1.3. Utilization of AI
4.2. Policy Recommendations
- Public entities need to prepare a legal structure to outsource their services pertaining to AI to private entities. Currently, service providers are expected to provide collected big data (such as operation and maintenance, water quality, accidents, etc.) to the platform founded by the government for creating or improving an AI system without financial incentive. In the worst-case scenario, the data provided ends up profiting a rival company. The creation of AI systems is costly, and analysis of big data collected from other entities is necessary. Therefore, a legal framework is required to ensure the private sector is protected, as well as to ensure that the best data becomes available for the users to benefit from a robust AI system developed by feeding the big data. The process of promoting private participation in water and sewerage services also contributes to achieving better service efficiency. To utilize the output of the AI, municipalities should consider the approval process before implementation. If there is a possibility that any given outcome of a decision-making process including AI could induce critical issues such as human loss, injuries, or health problems, the output of the AI algorithm should not be automatically reflected in the service operation, and a safeguard process including human decision-making should judge if the output is reasonable. This has the triple function of ensuring user safety, operator safety, and protection of the AI development company. The decision-making process should be transparent and inclusive.
- The decision-making process which the AI system will support needs to be considered carefully in consultation with the relevant public sector entity and multistakeholders in an inclusive and transparent method.
- Analyzing big data provided by the current service providers is necessary to create a good AI system. Intellectual property rights of such data should be legally obtained, and data should be controlled and guarded carefully.
- Regardless of the technical levels of an AI system, it may not be feasible to glean how outcomes or outputs from the AI system were achieved. Utilities should carefully monitor or have redundant processes to check if the output is accurate considering the purpose of the analysis and the actual impact of the output on the services. Safeguards should be implemented for deploying countermeasures in case an output is not appropriate. This can prevent unnecessary economic or human damage to municipalities or users.
- The governance systems including laws and legislations regarding AI are expected to develop rapidly. The private sector needs to stay alert to how the public sector governs the AI system as well as property rights issues of information.
- Considering the current governmental policies, it is highly probable that subsides for AI systems will increase. It is recommended for private companies to take advantage of such subsidies to accelerate the development of the AI system.
5. Conclusions
- There is increasing evidence that AI systems are highly useful in water and wastewater management. A robust governance framework at national and local levels including strategies and legislations is required to support the rapid development of technologies.
- The Japanese Government established the AI Strategy in 2019 and has doubled the number of subsidized projects under this strategy from 2019 to 2020. It would benefit the private sector to maximize this opportunity to innovate existing technologies and services utilizing cutting-edge AI technologies.
- The public sector needs to focus on mechanisms, including education and training, to enable the private sector to profit sustainably from AI systems without relying on subsidies.
- The private sector, whether responsible for developing or utilizing AI systems in water and wastewater management, needs to ensure that safeguards and backup systems are in place to take over if the AI systems fail or malfunction.
- Multistakeholder collaboration is required for AI governance, including the decision-making process, to become inclusive and accessible.
- Speeding up and scaling up of discussions to update governance frameworks and legislation surrounding AI in water and wastewater management are required; furthermore, this will benefit the whole of society given the holistic outlook is maintained.
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
Abbreviations
AI | Artificial Intelligence |
B-DASH | Breakthrough by Dynamic Approach in Sewage High Technology Project |
CAO | Cabinet Office |
IEC | International Electrotechnical Commission |
ISO | International Organization for Standardization |
IT | Information Technology |
METI | Ministry of Economy, Trade, and Industry |
MHLW | Ministry of Health, Labour, and Welfare |
MLIT | Ministry of Land, Infrastructure, Transport, and Tourism |
OECD | Organisation for Economic Co-operation and Development |
UN | United Nations |
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Action Plan Component | Fiscal Year * 2019 | Fiscal Year * 2020 | ||
---|---|---|---|---|
Total Number of Projects | Number of Projects on Track (% of Total in Brackets) | Total Number of Projects | Number of Projects on Track (% of Total in Brackets) | |
(1) Human resource development | 31 | 27 (87%) | 63 | 58 (92%) |
(2) Implementation of AI applications in priority areas | 16 | 11 (69%) | 35 | 33 (94%) |
(3) Promotion of research and development | 26 | 24 (92%) | 44 | 43 (98%) |
(4) Support for AI-utilizing entities | 9 | 8 (89%) | 12 | 9 (75%) |
(5) Data infrastructure construction | 3 | 3 (100%) | 10 | 6 (60%) |
(6) Ethical principles in AI utilization | 4 | 4 (100%) | 7 | 5 (71%) |
Total | 89 | 77 (87%) | 171 | 154 (90%) |
Classification | Application | Description of Case Studies |
---|---|---|
Water resource management | Short and long-term water demand predictions/management | Smart tools coupled with geospatial information and modeling to detect and predict water resource management issues [22] |
Water and wastewater treatment | Performance evaluation | Water quality data mining [23,24] |
Optimization of operation | Optimize and control systems including pumping rates impacting energy costs [25] | |
Prediction of water quality | Prediction of raw water quality or treated water quality based on multiple input parameters [26,27,28,29,30] | |
Water supply | Leak detection | Identify leaks and non-revenue water [31,32] |
Pipe aging monitoring | Modeling and prediction of deterioration of water and wastewater pipes [33] | |
Optimization of water use | Smart home devices to control water consumption [34] | |
Wastewater discharge | Management of wastewater discharge | Coordination of wastewater discharge to avoid combined sewer overflow during rainy periods, and to reduce pumping cost. Similarly, water withdrawals [26] |
Tracing pollutants | Identification of the source of pollutants observed downstream [23] | |
Treatment of sludge | Management of sludge treatment | Optimization of incineration processes utilizing AI [20] |
Customer service | Awareness, and additional services. | Customer engagement using AI tools such as chatbots [21] |
Tariffs and subsidiaries | Optimization of service through cumulative data management and predictions [35] | |
Resilience | Cybersecurity | AI has been proposed as a proactive tool to protect critical infrastructure against cyberattacks [22] |
Resilience against natural hazards | AI-powered early warning systems against urban flooding [20,36] |
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Takeda, T.; Kato, J.; Matsumura, T.; Murakami, T.; Abeynayaka, A. Governance of Artificial Intelligence in Water and Wastewater Management: The Case Study of Japan. Hydrology 2021, 8, 120. https://doi.org/10.3390/hydrology8030120
Takeda T, Kato J, Matsumura T, Murakami T, Abeynayaka A. Governance of Artificial Intelligence in Water and Wastewater Management: The Case Study of Japan. Hydrology. 2021; 8(3):120. https://doi.org/10.3390/hydrology8030120
Chicago/Turabian StyleTakeda, Tomoko, Junko Kato, Takashi Matsumura, Takeshi Murakami, and Amila Abeynayaka. 2021. "Governance of Artificial Intelligence in Water and Wastewater Management: The Case Study of Japan" Hydrology 8, no. 3: 120. https://doi.org/10.3390/hydrology8030120
APA StyleTakeda, T., Kato, J., Matsumura, T., Murakami, T., & Abeynayaka, A. (2021). Governance of Artificial Intelligence in Water and Wastewater Management: The Case Study of Japan. Hydrology, 8(3), 120. https://doi.org/10.3390/hydrology8030120