Technologies and IoT Protocols applied to Energy Management in Smart Home Environment
Descrizione
Formato
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Dottorato di ricerca in Information and Communication technologies. Ciclo
XXXIII; This thesis presents the studies during this period of my PhD course. In the first
research period, I focused the activities principally on the study and analysis of the
protocols and technologies used for the IoT solutions in Smart Home environment.
It was analyzed the MQTT protocol and its possible applications. The MQTT protocol
uses the event-driven publish/subscribe pattern. In our tests, MQTT usage was
compared with a classic HTTP request/response paradigm, used in REST and CoAP
approaches.
A layered IoT communication architecture will be proposed and described. The
usage of proposed IoT communication architecture was analyzed in Smart Home
context and in other application contexts such as e-Health and Internet of Vehicles
(IoV). After an analysis of Data Mining and Machine learning concepts, the focus of
the activities was on Neural Networks. The use of LSTM networks was analyzed
for time-series forecasting and prediction of consumption in two different environments
(home and office).
In the smart home environment, smart objects are characterized by limited resources.
Our proposal to increase the computational capabilities of these smart devices is
a hidden cognitive object that uses pre-trained NN and continuous learning for
anomaly detection and suggested action prediction tasks. The Cognitive Smart Object
is the joining of a smart device and a hidden cognitive object. The Cognitive
Smart Object was used in thermal comfort control application and manage better
energy consumption. The concepts introduced have been used for an assisted comfort
solution and the neural network results were used to suggest to the user conventional
management of the climatic comfort levels. A Continuous Learning mechanism
was been implemented with the usage of user feedback to shape the neural
network and obtain a neural network that follows user behaviours that diverge from
behaviour compliant with the ASHRAE standard. From the analysis of the results
obtained, it was possible to highlight how NN has given results closer to the user’s
habits and at the same time the user has been educated to use the right levels of
thermal comfort.Soggetto
IoT; Cognitive IoT; M2M; Machine learning; Smart home