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Artificial Intelligence-Driven Models for Environmental Management
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Artificial Intelligence-Driven Models for Environmental Management in Chattanooga, TN
Current price: $185.00

Barnes and Noble
Artificial Intelligence-Driven Models for Environmental Management in Chattanooga, TN
Current price: $185.00
Loading Inventory...
Size: Hardcover
Step-by-step guidelines for the development of artificial neural network-based environmental pollution models
Artificial Intelligence-Driven Models for Environmental Management
delves into the application of AI across a plethora of areas in environmental management, including climate forecasting, natural resource optimization, waste management, and biodiversity conservation. This book shows how AI can help in monitoring, predicting, and mitigating environmental impacts with tremendous accuracy and speed by leveraging machine learning, deep learning, and other data-driven models. The methodologies explored in this volume reflect a synthesis of computational intelligence, data science, and ecological expertise, underscoring how AI-driven systems have been making strides in managing and preserving our planet’s natural resources.
The text is structured to guide readers through numerous AI models and their practical environmental management applications, showcasing theoretical foundations as well as case studies. This book also addresses the challenges and ethical considerations related to deploying AI in ecological contexts, underscoring the importance of transparency, inclusivity, and alignment with sustainability goals.
Sample topics discussed in
include:
Tools and methods for monitoring and predicting environmental pollutants faster and more accurately
AI technology for the protection of water supplies from contamination to produce healthier foods
Use of AI for the evaluation of the impacts of environmental pollution on human health
AI and waste management technologies for sustainable agriculture and soil management
The role of AI in environmental research and sustainability and key social and economic aspects of natural resource management through AI
is a timely, forward-thinking resource for a diverse readership, including researchers, policymakers, environmental scientists, and AI practitioners.
Artificial Intelligence-Driven Models for Environmental Management
delves into the application of AI across a plethora of areas in environmental management, including climate forecasting, natural resource optimization, waste management, and biodiversity conservation. This book shows how AI can help in monitoring, predicting, and mitigating environmental impacts with tremendous accuracy and speed by leveraging machine learning, deep learning, and other data-driven models. The methodologies explored in this volume reflect a synthesis of computational intelligence, data science, and ecological expertise, underscoring how AI-driven systems have been making strides in managing and preserving our planet’s natural resources.
The text is structured to guide readers through numerous AI models and their practical environmental management applications, showcasing theoretical foundations as well as case studies. This book also addresses the challenges and ethical considerations related to deploying AI in ecological contexts, underscoring the importance of transparency, inclusivity, and alignment with sustainability goals.
Sample topics discussed in
include:
Tools and methods for monitoring and predicting environmental pollutants faster and more accurately
AI technology for the protection of water supplies from contamination to produce healthier foods
Use of AI for the evaluation of the impacts of environmental pollution on human health
AI and waste management technologies for sustainable agriculture and soil management
The role of AI in environmental research and sustainability and key social and economic aspects of natural resource management through AI
is a timely, forward-thinking resource for a diverse readership, including researchers, policymakers, environmental scientists, and AI practitioners.
Step-by-step guidelines for the development of artificial neural network-based environmental pollution models
Artificial Intelligence-Driven Models for Environmental Management
delves into the application of AI across a plethora of areas in environmental management, including climate forecasting, natural resource optimization, waste management, and biodiversity conservation. This book shows how AI can help in monitoring, predicting, and mitigating environmental impacts with tremendous accuracy and speed by leveraging machine learning, deep learning, and other data-driven models. The methodologies explored in this volume reflect a synthesis of computational intelligence, data science, and ecological expertise, underscoring how AI-driven systems have been making strides in managing and preserving our planet’s natural resources.
The text is structured to guide readers through numerous AI models and their practical environmental management applications, showcasing theoretical foundations as well as case studies. This book also addresses the challenges and ethical considerations related to deploying AI in ecological contexts, underscoring the importance of transparency, inclusivity, and alignment with sustainability goals.
Sample topics discussed in
include:
Tools and methods for monitoring and predicting environmental pollutants faster and more accurately
AI technology for the protection of water supplies from contamination to produce healthier foods
Use of AI for the evaluation of the impacts of environmental pollution on human health
AI and waste management technologies for sustainable agriculture and soil management
The role of AI in environmental research and sustainability and key social and economic aspects of natural resource management through AI
is a timely, forward-thinking resource for a diverse readership, including researchers, policymakers, environmental scientists, and AI practitioners.
Artificial Intelligence-Driven Models for Environmental Management
delves into the application of AI across a plethora of areas in environmental management, including climate forecasting, natural resource optimization, waste management, and biodiversity conservation. This book shows how AI can help in monitoring, predicting, and mitigating environmental impacts with tremendous accuracy and speed by leveraging machine learning, deep learning, and other data-driven models. The methodologies explored in this volume reflect a synthesis of computational intelligence, data science, and ecological expertise, underscoring how AI-driven systems have been making strides in managing and preserving our planet’s natural resources.
The text is structured to guide readers through numerous AI models and their practical environmental management applications, showcasing theoretical foundations as well as case studies. This book also addresses the challenges and ethical considerations related to deploying AI in ecological contexts, underscoring the importance of transparency, inclusivity, and alignment with sustainability goals.
Sample topics discussed in
include:
Tools and methods for monitoring and predicting environmental pollutants faster and more accurately
AI technology for the protection of water supplies from contamination to produce healthier foods
Use of AI for the evaluation of the impacts of environmental pollution on human health
AI and waste management technologies for sustainable agriculture and soil management
The role of AI in environmental research and sustainability and key social and economic aspects of natural resource management through AI
is a timely, forward-thinking resource for a diverse readership, including researchers, policymakers, environmental scientists, and AI practitioners.

















