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Home Management System: Artificial Intelligence

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Part of the Sustainable Development Goals Series book series (SDGS)

Abstract

Artificial Intelligence is changing the way we work and the way we live. Today, we are witnessing the first moments of a long and profound revolution that will affect the future of industries, jobs and lives. Even though electronic devices have become smarter thanks to IoT, they cannot provide as much service as desired. Therefore, to experience smart homes in theory and daily life, there is a need to develop an automatic system capable of being self-sustaining and responding to modern life needs. This research aims to study the possibilities of Artificial Intelligence applications for domestic use, particularly in establishing a Home Management System (HMS) that reduces consumption, wastes and optimises resources to impact on a small and large scale positively. For this purpose, this study provides a comprehensive analysis of machine learning techniques such as deep learning and reinforcement learning on sustainable smart homes considering several application fields. We present how this system can be used at homes, such as energy management, food & agriculture, water consumption & generation, waste management, healthcare, customisation & entertainment and security.

The author would like to acknowledge the help and contributions of Mehmet Mücahit Kaya, Ada Kanoğlu, Asiye Demirtaş, Emirhan Zor, Fatma Tuğçe Akgül, İlke Burçak, Mustafa Can Nacak, and Yusuf Taşkıran in completing of this chapter.

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Correspondence to Sinan Küfeoğlu .

Appendix

Appendix

Appendix: DDQN Algorithm for home energy management (Liu et al. 2020).

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Küfeoğlu, S. (2021). Home Management System: Artificial Intelligence. In: The Home of the Future. Sustainable Development Goals Series. Springer, Cham. https://doi.org/10.1007/978-3-030-75093-0_6

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