Visualization Techniques for Climate Change with Machine Learning and Artificial Intelligence covers computer-aided artificial intelligence and machine learning technologies as related to the impacts of climate change and its potential to prevent/remediate the effects. As such, different types of algorithms, mathematical relations and software models may help us to understand our current reality, predict future weather events and create new products and services to minimize human impact, chances of improving and saving lives and creating a healthier world.
This book covers different types of tools for the prediction of climate change and alternative systems which can reduce the levels of threats observed by climate change scientists. Moreover, the book will help to achieve at least one of 17 sustainable development goals i.e., climate action.
Please Note: This is an On Demand product, delivery may take up to 11 working days after payment has been received.
Table of Contents
1. Climate uncertainties and biodiversity: An overview Rohit Kamboj 2. Historical perspectives on climate change and its negative impacts on the nature Shama E. Haque 3. Impact of climate change on water quality and its assessment Sunita Verma 4. Climate change impacts on water resources and adaptation strategies Sukanya raghavan 5. Impact of Plastics in the Socio-economic disaster of Climate Change: The Roadblocks of Sustainability Arnab Banerjee 6. Impression of Climatic Variation on Flora, Fauna and Human Being: A present State of Art Dipankar Ghosh 7. Impact of air quality as a component of climate change on biodiversity-based ecosystem services Sylvester Chibueze Izah 8. Role of Climate Change in disasters occurrences: Forecasting and Management options Alok Pratap Singh 9. Forecasting and management of disasters triggered by climate change Fatemeh Rajabi 10. El-Ni�o Southern Oscillation and its Effects Sayantika Mukherjee 11. Impact of socio-economic parameters on adoption of climate resilient technology under varying vulnerability conditions: Evidences from Himalayan Region Pardeep Singh 12. Modelling and forecasting of climate change effects using artificial intelligence techniques Rajib Maity 13. The role of artificial intelligence strategies to mitigate abiotic stress and climate change in crop production Richa Saxena 14. Application of Artificial Intelligence in Environmental Sustainability and Climate Change Neeta Kumari 15. Machine learning approaches for climate change impact assessment in agriculture production Swati Singh 16. Benchmarking of traditional and advanced machine Learning modelling techniques for prediction of solarradiation Dwijendra Nath Dwivedi 17. Concept of climate smart villages using artificial intelligence/machine learning Purnima Mehta 18. Significance of AI to develop mitigation strategies against climate change in accordance with sustainable development goal (climate action) Vijaya Ilango 19. A cross-sectional study about the impacts of climate change on the flora, fauna and human society of Odisha, India Manojit Bhattacharya 20. Development of mitigation strategies for the climate change using artificial intelligence to attain sustainability Kartikey Sahil 21. Role of artificial intelligence in environmental sustainability. Mohamed Habila
Authors
Ashutosh Kumar Dubey Department of Computer Science and Engineering, Institute of Engineering and Technology, Chitkara University, India. Ashutosh Kumar Dubey is an Associate Professor in the Department of Computer Science and Engineering at Chitkara University, Himachal Pradesh, India. Ashutosh is also a Postdoctoral Fellow of the Ingenium Research Group Lab, Universidad de Castilla-La Mancha, Ciudad Real, Spain.. He has more than 14 years of teaching experience. His research areas are Data Mining, Health Informatics, Optimization, Machine Learning, Cloud Computing, Artificial Intelligence and Object-Oriented Programming. Abhishek Kumar Post-doctorate Fellow, Ingenium Research Group, Universidad De Castilla-La Mancha, Spain. Dr. Abhishek Kumar is a post-doctorate fellow in computer science at Ingenium Research Group, based at Universidad De Castilla-La Mancha in Spain. He has been teaching in academia for more than 8 years, and published more than 50 articles in reputed, peer reviewed national and international journals, books, and conferences. His research area includes artificial intelligence, image processing, computer vision, data mining, and machine learning. Sushil Kumar Narang Department of Computer Science, Chitkara University Institute of Engineering and Technology, Chitkara University, Punjab, India. Sushil Kumar Narang is Dean and an Associate Professor in the Department of Computer Science & Engineering at Chitkara University, Rajpura, Punjab (India) since 2019. From 2006-2019, He was head of IT department at SAS Institute of IT & Research, Mohali, Punjab (India). From 1996-2006, He was Assistant Professor at Department of Computer Science & Applications, MLN College, Yamuna agar, Haryana (India).He has completed his Ph.D. at Panjab University, Chandigarh (India). His Research on "Feature Extraction and Neural Network Classifiers for Optical Character Recognition for Good quality hand written GurmukhiandDevnagariCharacters� focused on various image processing, machine as well as deep learning algorithms. His research interests lie in the area of programming languages, ranging from theory to design to implementation, Image Processing, Data Analytics and Machine Learning. He has collaborated actively with researchers in several other disciplines of computer science; particularly Machine Learning on real world use cases.He is a certified Deep Learning Engineer from Edureka. ?He possesses expertise in Object-Oriented Analysis & Design and Development using Java and Python programming using OpenCV in Image Processing and Neural Network construction. ?He has strong knowledge of C++ and Java with experience in component architecture of product interface. With Solid training and management skills, He has demonstrated proficiency in leading and mentoring individuals to maximize levels of productivity, while forming cohesive team environments. Moonis Ali Khan Associate Professor, College of Science, King Saud University, Riyadh, Saudi Arabia. Moonis Ali Khan received his doctoral degree (Ph.D.) in Applied Chemistry from Aligarh Muslim University, Aligarh, India, in 2009. From 2009 to 2011, he worked as a Post-Doctoral Researcher at Yonsei University, South Korea and Universiti Putra Malaysia, Malaysia. In 2011, he joined the Chemistry Department at the King Saud University (KSU), Saudi Arabia as an Assistant Professor. Currently, he is working as an Associate Professor at KSU. He is an interfacial chemist and his research is focused on the synthesis and development of novel materials for environmental remediation applications. To date, he has guided two doctoral students for their respective degrees. He has published more than hundred (research and review) articles and has two U.S. patents to his credit. Arun Lal Srivastav Associate Professor, Chitkara University, Himachal Pradesh, India.Dr. Arun Lal Srivastav is working as an Associate Professor at Chitkara University, Himachal Pradesh in India. He is currently involved in the teaching of environmental science, environmental engineering, and disaster management to the undergraduate engineering students. His research interests include water treatment, river ecosystem, climate change, soil health maintenance, phytoremediation, and waste management. He has published around 91 research publication (as per SCOPUS) in various peer-reviewed, national and international journals, conferences, and books. He has also filed 25 patents on multidisciplinary topics. He is also working on four government-sponsored projects (worth ~16 million INR) on phytoremediation, adsorption, capacity building, organic farming, leachate treatment, agro-waste management, and so on.