Global Warming: New Frontier of Research Deep Learning- Age of Distributed Green Smart Microgrid

Document Type : Research Article

Author

Professor The Ohio State University

Abstract

The exponential increase in carbon-dioxide resulting Global Warming would make the planet earth to become inhabitable in many parts of the world with ensuing mass starvation. The rise of digital technology all over the world fundamentally have changed the lives of humans. The emerging technology of the Internet of Things, IoT, machine learning, data mining, biotechnology, biometric, and deep learning facilitate the development of distributed green smart microgrids. We have gained godlike powers as to become unrecognizable, and we have the power to destroy ourselves through environmental mismanagement and nuclear calamities.
The exponential increase in carbon-dioxide resulting Global Warming would make the planet earth to become inhabitable in many parts of the world with ensuing mass starvation. The rise of digital technology all over the world fundamentally have changed the lives of humans. The emerging technology of the Internet of Things, IoT, machine learning, data mining, biotechnology, biometric, and deep learning facilitate the development of distributed green smart microgrids. We have gained godlike powers as to become unrecognizable, and we have the power to destroy ourselves through environmental mismanagement and nuclear calamities. . . . . . . . . . . . . . . . . . . . . . . . . . . . . ...................................

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