pp. 2103-2129
S&M1918 Research Paper of Special Issue https://doi.org/10.18494/SAM.2019.2298 Published in advance: April 4, 2019 Published: June 28, 2019 A Machine-learning-enabled Context-driven Control Mechanism for Software-defined Smart Home Networks [PDF] Ru Huang, Xiaoli Chu, Jie Zhang, Yu Hen Hu, and Huaicheng Yan (Received January 22, 2019; Accepted March 1, 2019) Keywords: smart home control mechanism (SHCM), machine learning, software-defined networks, context
To address the challenges of autonomous capability enhancement in a smart home scenario, in this paper, we present a context-driven smart home control mechanism (SHCM) following software-defined network (SDN) design principles and a context cognition process. SHCM has three SDN-based layers: a control plane, a fog computing plane, and a data plane. We integrate a machine learning (ML) algorithm and an ontology model into the context cognition process, which will be leveraged to enhance the context-awareness-enabled automation level of smart home control systems. In the control plane, a controller adopts a ML-based tool to make connotative clustering and association rules via mining multiattribute context features inherent in diverse sensing applications, and utilizes an ontology model to automate integrated context management. Additionally, the fog computing plane applies edge-computing-supported context middleware to perform compressive sensing (CS)-based cross-layer context fusion. Furthermore, smart home devices implement context feedback in the data plane instructed by context-driven control strategies, which are mapped into the parameter matrix and matching rules in the lightweight flow-table mode. The effectiveness of this proposed control mechanism is validated by experiments using a context-oriented smart home prototype platform, which implements a closed-loop context-oriented feedback control from cognition-deduced knowledge generation to knowledge-driven cooperation in a cyber-physical smart home scenario. It is observed that the control mechanism can improve smart home automation and outperform baseline schemes.
Corresponding author: Ru HuangThis work is licensed under a Creative Commons Attribution 4.0 International License. Cite this article Ru Huang, Xiaoli Chu, Jie Zhang, Yu Hen Hu, and Huaicheng Yan, A Machine-learning-enabled Context-driven Control Mechanism for Software-defined Smart Home Networks, Sens. Mater., Vol. 31, No. 6, 2019, p. 2103-2129. |