Integrated Smart-Home Architecture for Supporting Monitoring and Scheduling Strategies in Residential Clusters

Author:

Stroia Nicoleta,Moga Daniel,Petreus DorinORCID,Lodin Alexandru,Muresan Vlad,Danubianu MirelaORCID

Abstract

The monitoring of power consumption and the forecasting of load profiles for residential appliances are essential aspects of the control of energy savings/exchanges at multiple hierarchical levels: house, house cluster, neighborhood, and city. External environmental factors (weather conditions) and inhabitants’ behavior influence power consumption, and their usage as part of forecasting activity may lead to added value in the estimation of daily-load profiles. This paper proposes a distributed sensing infrastructure for supporting the following tasks: the monitoring of appliances’ power consumption, the monitoring of environmental parameters, the generation of records for a database that can be used for both identifying load models and testing load-scheduling algorithms, and the real-time acquisition of consumption data. The hardware/software codesign of an integrated architecture that can combine the typical distributed sensing and control networks present in modern buildings (targeting user comfort) with energy-monitoring and management systems is presented. Methods for generating simplified piecewise linear (PWL) representations of the load profiles based on these records are introduced and their benefits compared with classic averaged representations are demonstrated for the case of peak-shaving strategies. The proposed approach is validated through implementing and testing a smart-meter node with wireless communication and other wired/wireless embedded modules, enabling the tight integration of the energy-monitoring system into smart-home/building-automation systems. The ability of this node to process power measurements with a programable granularity level (seconds/minutes/hours) at the edge level and stream the processed measurement results at the selected granularity to the cloud is identified as a valuable feature for a large range of applications (model identification, power saving, prediction).

Publisher

MDPI AG

Subject

Building and Construction,Civil and Structural Engineering,Architecture

Reference74 articles.

1. A review of urban energy systems at building cluster level incorporating renewable-energy-source (RES) envelope solutions

2. Open-Source Data Collection and Data Sets for Activity Recognition in Smart Homes

3. Reducing the Magnitude and Reshaping the Temporal Distribution of Residential Electrical Loads Purposed to Achieve a Zero Peak House in a Southern Ontario Climate;Pietila;Master’s Thesis,2011

4. The zero-peak house: Full-scale experiments and demonstration

5. Heat Pump Manufacturing Supply Chain Research Project, Final Report. December 2020;Eunomia Research & Consulting Ltd.

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