A Review of Scheduling Techniques and Communication Protocols for Smart Homes Capable of Implementing Demand Response

This paper presents a literature review of scheduling techniques and communication protocols (STCP), which make adaptable smart home (SH) capable of implementing demand response. In addition, it presents advantages and disadvantages of various STCP mentioned in the literature. Also, the paper provides the pathway to future researchers for designing of smart homes, as it briefly mentions various specifications of STCP so that one could select according to their application.

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