Climate change is worsening water scarcity across the globe,
leading to droughts, wildfires, and crop failures. Also, with growing
urbanization and climate change issues, the demand for sustainable water
management has increased more than ever. For instance, a recent report by the
Global Commission on the Economics of Water states that by the end of the
decade, demand for fresh water will outstrip supply by 40%. However, the integration
of AI and Big Data has proven to be useful in solving critical issues related
to water environment and thereby having a positive impact on the environment
and the ecosystem and also on the management of critical resources like water.
Understanding the terms AI and Big Data
- Artificial
intelligence (AI) stands for the simulation of human intelligence
processes by machines, like computer systems.
- Big data is used
to describe large volumes of data – both structured and unstructured.
Fast advances in high-resolution remote sensing techniques,
smart information and communication technologies, and social media have
contributed to the proliferation of Big Data in several environment and
water management (EWM) fields, such as smart water and energy management
systems, and remote sensing. The convergence of Artificial Intelligence (AI)
and Big Data is useful in solving critical issues in the water sector such as detecting
leaks and reducing river pollution, crop management, etc.
Major Water Issues Facing the World:
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Scarcity of Clean Drinking Water- Billions
of people across the world lack adequate access to one of the essential
elements of life, that is clean water. The global warming and climate change
continue to pose challenges to the availability of water for consumption and
other uses. Despite the efforts by the governments and several groups the
problem is projected to aggravate in the coming future and if not monitored may
be become a critical issue for the future generation.
The United Nations has predicted that without interventions
in climate change, the water scarcity in semi-arid and arid regions will dislocate
hundreds of millions of people by 2030.
Even high-income countries like the United States experience
water scarcity or water stress.
In 2022, the US administration announced an action plan
related to global water security, which focused it on being a critical
component of its efforts to achieve U.S. foreign policy objectives. However,
the pace of climate change and the COVID-19 pandemic have presented new
challenges. At present, several countries have stated that they are unlikely to
implement integrated water management systems by 2030, the target date for
fulfilling the UN Sustainable Development Goals (SDGs).
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Impact on Agriculture: The
agricultural sector depends on water for crop production. However, the unpredictability
in rain and soaring temperatures increases the evaporation of water from soil,
hence impacting the farming. This also increases the frequency of floods,
thereby damaging the crops. Also, water stress in certain regions can make it
difficult for farmers to grow crops. Technologies like AI can help farmers in
optimizing their irrigation systems based on the data collected on factors such
as precipitation, humidity, etc.
Efficient management and conservation of water resources is essential,
and experts claim that circularity of water systems is as
important as the road to Net Zero.
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Wildfire and Drought: Wildfires
and drought in 2010 wiped out Russian crops, which resulted in an increase in
commodities prices and food riots in Egypt and Tunisia at the start of the
Arab uprisings. Within the European Union (EU), both the frequency and
severity of droughts have risen, impacting nearly 20% more areas and
people between 1976 and 2006. Therefore, efficient water management is
important and helps in securing a consistent water supply for human
consumption, industry and agriculture, and also enhancing the ability to
withstand water shortages caused by climate fluctuations.
According to TechSci Research report, “Big
Data Analytics Market – Global Industry Size, Share, Trends,
Opportunity, and Forecast, 2018-2028, Segmented By Component (Solutions and
Services), By Deployment Mode (On-Premises, Cloud and Hybrid), By Application
(Risk & Fraud Analytics, Enterprise Data Warehouse Optimization, Internet
of Things, Customer Analytics, Operational Analytics, Security Intelligence and
Others), By Organization Size (Large Enterprises and SMEs), By Industry (BFSI,
Healthcare, Government, IT & Telecom, Manufacturing, Retail and Others), By
Region, Competition,” the Global Big Data Analytics Market is expected to
reach USD 304. 57 billion by the end of 2023, with a compound annual growth
rate (CAGR) of 14.81% during the forecast period. The growth of the market can
be attributed to the increasing adoption of data driven decision making as
enterprises across various industries focus on extracting insights and optimize
business operations. Moreover, the digital footprint provides a rich source of
information that can be used for target marketing and offering better customer
experience. Also, the growing adoption of cloud computing is contributing to
the market growth.
The Role of AI and Big Data in Water Management
The use of AI and Big Data technologies have made
far-reaching changes in the monitoring and prediction of water-related
phenomena. One of the best examples of this is the use of satellite imagery,
sensors, and machine learning for tracking water quality, detecting pollution levels,
and predicting harmful algal blooms. These real-time insights enable policy
makers to take preliminary measures, and hence protect both the public health
and ecosystems. For instance, in South-West England, a pilot project in
Devon is using AI to predict and prevent water pollution. The data on local
environmental conditions can be gathered by connected sensors in rivers and
fields, and then combined with satellite imagery. This helps in the real
time identification of pollution from sources such as agricultural runoff
and sewage discharges, and hence timely action on preventative measures.
Machine Learning (ML) Models for Water and Wastewater Treatment
In addition to optimizing water treatment operations, in a
recent research Machine Learning (ML) was applied to estimate the count of
microplastic particles based on aggregate particle weight measurements. The
research focused on saving the large amount of time required for manual counting
of microplastics.
Real Time Monitoring of Water Quality
The traditional water quality monitoring systems are outdated
and expensive, and the accuracy of the readings is questionable. However, AI
and big data, can help in analyzing large amounts of data accurately and
quickly, detect patterns and anomalies, and provide real-time information about
water quality. This helps water management organizations to make more informed
decisions about water treatment processes, and thereby decrease the risk of
contaminations and ensuring public safety.
Reducing Water Wastage
AI and big data can also help to reduce water wastage. In
many cities worldwide, huge amounts of fresh water are lost due to leakages in
infrastructure systems. AI and big data can monitor these systems continually
and detect potential leakages before they become significant problems. The data
collected from these systems can provide useful insights that help water
management organizations to make decisions about infrastructure maintenance and
improve water conservation.
Flood Control and Management
Droughts and Floods are a recurring threat in many parts of
the world. These have devastating effects. The flood prediction models
empowered by AI can be useful in preventing such occurrences and analyzing
historical weather data, river levels, and other relevant information to
generate accurate forecasts. These predictions are valuable for disaster
preparedness and response, helping to mitigate the impact of floods on
communities and infrastructure and thereby saving lives.
Water Conservation
Efficient water management is crucial for sustainable
development. AI-driven smart water grids can optimize water distribution,
detect leaks, and minimize wastage. These systems ensure that water is used
more efficiently, reducing the burden on already stressed water resources. Water
management companies are increasingly implementing AI technology to identify
leaks and effectively manage waste. This adoption has the potential to lower
expenses and optimize resource utilization. For example, Thames
Water in the UK has begun to adopt AI technology for managing both its
clean water and wastewater systems. The adoption of high-tech artificial
intelligence (AI) detection solutions by UK utility providers will hopefully
prove more effective in conservation and management of water resources in the
long term.
Wastewater Treatment
Treating wastewater is essential to safeguard public health
and the environment. AI and Big Data support the development of smarter
wastewater treatment plants. Predictive maintenance algorithms help prevent
breakdowns, while machine learning models optimize the treatment process,
reducing energy consumption and improving the quality of treated water.
Desalination
With the depletion of freshwater sources, desalination plays
a pivotal role in providing a sustainable water supply. AI is used to enhance
desalination processes by optimizing energy consumption, membrane performance,
and plant operations. This results in more cost-effective and environmentally
friendly desalination process.
Ecosystem Health
AI-driven models can be used to understand and protect
fragile ecosystems in an effective manner. Aquatic ecosystems depend on clean
water and stable conditions. AI is used to monitor and protect these
environments by tracking changes in water quality, habitat conditions, and
species distribution. Moreover, researchers can use these AI-driven models to
understand and protect the ecosystems.
Regulations and Decision-Making
Data-driven decision-making is essential in water resource
management. The integration of Big Data analytics and AI provides policymakers
with insights to generate evidence-based policies and regulations. These tools
allow governments and policy makers to make informed decisions about water
allocation, quality standards, and infrastructure investments.
Future Trends in AI and Big Data in Water Management
The future is expected to witness more technological
advancements and use of AI and Big data in water sector. It is quite evident
that in the near future there will be more focus on use of sophisticated AI
algorithms, IoT and technologies like blockchain for real time monitoring of
water distribution and water quality. All these will also help in management of
water pollution levels and enhancing smart irrigation systems.
Challenges and Considerations
While AI and Big Data offer immense promise in water
environments, there are several challenges and considerations that need to be
taken care of such as data quality, privacy and security, adoption costs and
expertise.
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Data Quality: Accurate and reliable data
is essential for AI models to perform effectively. Inconsistent or incomplete
data can lead to unreliable predictions and decisions.
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Privacy and Security:
Protecting sensitive water data from cyber threats is critical. Ensuring data
privacy and security is paramount, especially when dealing with water
infrastructure.
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Adoption Costs: Implementing AI and Big Data
solutions can be expensive. Smaller municipalities or regions may face budget
constraints that limit their ability to leverage these technologies.
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Expertise: Utilizing AI and Big Data
requires specialized skills and knowledge. Training and retaining experts in
this field can be a challenge for organizations.
According to TechSci Research report, “Global Artificial
Intelligence Market By Component (Hardware, Software,
Services), By Application (Image Recognition, Natural Language Processing,
Speech Recognition, Computer Vision, Other), By Business Function (Finance,
Security, Human Resource, Law, Marketing & Sales, Operations, Supply Chain
Management), By End User (BFSI, Fashion and Retail, Healthcare and Life
Sciences, Manufacturing, Automotive, Aerospace and Defense, Construction,
Other), By Region, Competition, 2018-2028,” the Global Artificial
Intelligence Market was valued at USD135.83 billion by the end of 2022, with a
compound annual growth rate (CAGR) of 36.62% during the forecast period. The
market is undergoing transformation and AI technologies have the potential to
automate tasks and make predictive decisions. For example, in the healthcare
sector, the AI is being used to assist in diagnosis and management of diseases.
Conclusion
In conclusion as the world grapples with water scarcity issues, the
debate over the impact of Big Data and AI in water management is one of
critical importance. AI and Big Data are transforming the way water
environments can be managed. From predicting floods to optimizing wastewater
treatment, these technologies are transforming the ability to protect this
invaluable resource for the current and future generation. Thus, it is crucial
to address challenges, such as data quality and privacy, and ensure that these
innovations are accessible to all communities across the globe. It is therefore
important to continue investing in these technologies to further enhance the
water quality and foster a commitment to sustainable water management, and
thereby build a more resilient and water-secure future for all.