Entropy-Based Metrics for Occupancy Detection Using Energy Demand

Smart Meters provide detailed energy consumption data and rich contextual information that can be utilized to assist electricity providers and consumers in understanding and managing energy use. The detection of human activity in residential households is a valuable extension for applications, such as home automation, demand side management, or non-intrusive load monitoring, but it usually requires the installation of dedicated sensors. In this paper, we propose and evaluate two new metrics, namely the sliding window entropy and the interval entropy, inspired by Shannon’s entropy in order to obtain information regarding human activity from smart meter readings. We emphasise on the application of the entropy and analyse the effect of input parameters, in order to lay the foundation for future work. We compare our method to other methods, including the Page–Hinkley test and geometric moving average, which have been used for occupancy detection on the same dataset by other authors. Our experimental results, using the power measurements of the publicly available ECO dataset, indicate that the accuracy and area under the curve of our method can keep up with other well-known statistical methods, stressing the practical relevance of our approach.

[1]  J. Zico Kolter,et al.  A Large-Scale Study on Predicting and Contextualizing Building Energy Usage , 2011, AAAI.

[2]  Prashant J. Shenoy,et al.  Private memoirs of a smart meter , 2010, BuildSys '10.

[3]  Ding Du,et al.  Entropy-Based Measures of Hypnopompic Heart Rate Variability Contribute to the Automatic Prediction of Cardiovascular Events , 2020, Entropy.

[4]  Guillaume Habert,et al.  The impact of future scenarios on building refurbishment strategies towards plus energy buildings , 2016 .

[5]  H. Pourghasemi,et al.  Predicting Habitat Suitability and Conserving Juniperus spp. Habitat Using SVM and Maximum Entropy Machine Learning Techniques , 2019, Water.

[6]  Martin Kappes,et al.  Using multiple data sources to detect manipulated electricity meter by an entropy-inspired metric , 2020, Sustainable Energy, Grids and Networks.

[7]  Ben Anderson,et al.  Electricity consumption and household characteristics: Implications for census-taking in a smart metered future , 2017, Comput. Environ. Urban Syst..

[8]  Zoltán Nagy,et al.  Using machine learning techniques for occupancy-prediction-based cooling control in office buildings , 2018 .

[9]  Antonio Guillamón,et al.  A New Approach to Measure Volatility in Energy Markets , 2012, Entropy.

[10]  Arash Miranian,et al.  Mid-Term Energy Demand Forecasting by Hybrid Neuro-Fuzzy Models , 2011 .

[11]  T. Vafeiadis,et al.  Machine Learning Based Occupancy Detection via the Use of Smart Meters , 2017, 2017 International Symposium on Computer Science and Intelligent Controls (ISCSIC).

[12]  R. Fisher The Advanced Theory of Statistics , 1943, Nature.

[13]  Fintan McLoughlin,et al.  Characterising Domestic Electricity Demand for Customer Load Profile Segmentation , 2013 .

[14]  Tuan Anh Nguyen,et al.  Energy intelligent buildings based on user activity: A survey , 2013 .

[15]  Vincent Becker,et al.  Exploring zero-training algorithms for occupancy detection based on smart meter measurements , 2018, Computer Science - Research and Development.

[16]  Ming Jin,et al.  Virtual Occupancy Sensing: Using Smart Meters to Indicate Your Presence , 2017, IEEE Transactions on Mobile Computing.

[17]  Silvia Santini,et al.  Household occupancy monitoring using electricity meters , 2015, UbiComp.

[18]  Abbas Javed,et al.  Occupancy detection in non-residential buildings – A survey and novel privacy preserved occupancy monitoring solution , 2020, Applied Computing and Informatics.

[19]  Sean Lyons,et al.  Reducing household electricity demand through smart metering: The role of improved information about energy saving , 2014 .

[20]  Cheng Wu,et al.  Expected Utility and Entropy-Based Decision-Making Model for Large Consumers in the Smart Grid , 2015, Entropy.

[21]  Luis M. Candanedo,et al.  Accurate occupancy detection of an office room from light, temperature, humidity and CO2 measurements using statistical learning models , 2016 .

[22]  W Wim Zeiler,et al.  Occupancy measurement in commercial office buildings for demand-driven control applications : a survey and detection system evaluation , 2015 .

[23]  Silvia Santini,et al.  Automatic socio-economic classification of households using electricity consumption data , 2013, e-Energy '13.

[24]  Christoph Kawan Editorial: Entropy in Networked Control , 2019, Entropy.

[25]  Patrick James,et al.  The role of digital trace data in supporting the collection of population statistics – the case for smart metered electricity consumption data , 2016 .