Reshaping consumption habits by exploiting energy-related micro-moment recommendations: A case study

The environmental change and its effects, caused by human influences and natural ecological processes over the last decade, prove that it is now more prudent than ever to transition to more sustainable models of energy consumption behaviors. User energy consumption is inductively derived from the time-to-time standards of living that shape the user's everyday consumption habits. This work builds on the detection of repeated usage consumption patterns from consumption logs. It presents the structure and operation of an energy consumption reduction system, which employs a set of sensors, smart-meters and actuators in an office environment and targets specific user habits. Using our previous research findings on the value of energy-related micro-moment recommendations, the implemented system is an integrated solution that avoids unnecessary energy consumption. With the use of a messaging API, the system recommends to the user the proper energy saving action at the right moment and gradually shapes user's habits. The solution has been implemented on the Home Assistant open source platform, which allows the definition of automations for controlling the office equipment. Experimental evaluation with several scenarios shows that the system manages first to reduce energy consumption, and second, to trigger users' actions that could potentially urge them to more sustainable energy consumption habits.

[1]  Weicong Kong,et al.  Non-intrusive energy saving appliance recommender system for smart grid residential users , 2017 .

[2]  Iraklis Varlamis,et al.  Extracting User Habits from Google Maps History Logs , 2018, 2018 IEEE/ACM International Conference on Advances in Social Networks Analysis and Mining (ASONAM).

[3]  Iván Cantador,et al.  Time-aware recommender systems: a comprehensive survey and analysis of existing evaluation protocols , 2013, User Modeling and User-Adapted Interaction.

[4]  Daniel Hernández de La Iglesia,et al.  Multi-Agent Recommendation System for Electrical Energy Optimization and Cost Saving in Smart Homes , 2019, Energies.

[5]  Charles Duhigg,et al.  The Power of Habit: Why We Do What We Do, and How to Change , 2012 .

[6]  Jaideep Srivastava,et al.  Web usage mining: discovery and applications of usage patterns from Web data , 2000, SKDD.

[7]  Shanlin Yang,et al.  Understanding household energy consumption behavior: The contribution of energy big data analytics , 2016 .

[8]  D. Fesenmaier,et al.  The Role of Smartphones in Mediating the Touristic Experience , 2012 .

[9]  Peter Stokes,et al.  Micro‐moments, choice and responsibility in sustainable organizational change and transformation , 2012 .

[10]  Bao Hong,et al.  433MHz Wireless Network Technology for Wireless Manufacturing , 2008, 2008 Second International Conference on Future Generation Communication and Networking.

[11]  Viorel Negru,et al.  A Multi-Agent Recommendation System for Energy Efficiency Improvement , 2011, ICeND.

[12]  Nadine Mandran,et al.  "Will the Last One Out, Please Turn off the Lights": Promoting Energy Awareness in Public Areas of Office Buildings , 2018, AmI.

[13]  B. Dong,et al.  A survey on energy consumption and energy usage behavior of households and residential building in urban China , 2017 .

[14]  Mohamed F. Mokbel,et al.  Location-based and preference-aware recommendation using sparse geo-social networking data , 2012, SIGSPATIAL/GIS.

[15]  Hans Friedrich Witschel,et al.  Using Consumer Behavior Data to Reduce Energy Consumption in Smart Homes: Applying Machine Learning to Save Energy without Lowering Comfort of Inhabitants , 2015, 2015 IEEE 14th International Conference on Machine Learning and Applications (ICMLA).

[16]  Jilei Tian,et al.  Towards Personalized Context-Aware Recommendation by Mining Context Logs through Topic Models , 2012, PAKDD.

[17]  Lisa Jørgensen I want to show - How user-centered design methods can assist when preparing for micro moments , 2017 .

[18]  Marina Snegirjova,et al.  Micro-moments : new context in information system success theory , 2017 .

[19]  Hiroshi Tsuji,et al.  Social Experiment on Advisory Recommender System for Energy-Saving , 2013, HCI.

[20]  Zainab Al-zanbouri,et al.  Data-Aware Web Service Recommender System for Energy-Efficient Data Mining Services , 2018, 2018 IEEE 11th Conference on Service-Oriented Computing and Applications (SOCA).

[21]  Jesper Kjeldskov,et al.  Designing the Desirable Smart Home: A Study of Household Experiences and Energy Consumption Impacts , 2018, CHI.

[22]  Abdulmotaleb El-Saddik,et al.  Leveraging biosignal and collaborative filtering for context-aware recommendation , 2013, MIIRH '13.

[23]  Martijn C. Willemsen,et al.  Effective User Interface Designs to Increase Energy-efficient Behavior in a Rasch-based Energy Recommender System , 2017, RecSys.

[24]  Kirsten Gram-Hanssen,et al.  Efficient technologies or user behaviour, which is the more important when reducing households’ energy consumption? , 2013 .

[25]  Jiyong Eom,et al.  Energy use in buildings in a long-term perspective , 2013 .

[26]  Christian S. Jensen,et al.  Mining significant semantic locations from GPS data , 2010, Proc. VLDB Endow..

[27]  Sanjib Kumar Panda,et al.  ReViCEE: A recommendation based approach for personalized control, visual comfort & energy efficiency in buildings , 2019, Building and Environment.

[28]  Ramakrishnan Srikant,et al.  Fast algorithms for mining association rules , 1998, VLDB 1998.

[29]  Abbes Amira,et al.  "I Want to ... Change": Micro-moment based Recommendations can Change Users' Energy Habits , 2019, SMARTGREENS.

[30]  Abbes Amira,et al.  Endorsing domestic energy saving behavior using micro-moment classification , 2019, Applied Energy.

[31]  Mohamed F. Mokbel,et al.  Recommendations in location-based social networks: a survey , 2015, GeoInformatica.

[32]  Sarah C. Darby,et al.  Smart technology in the home: time for more clarity , 2018 .

[33]  Hong Cao,et al.  Mining smartphone data for app usage prediction and recommendations: A survey , 2017, Pervasive Mob. Comput..

[34]  Jörn Loviscach The design space of personal energy conservation assistants , 2011, PsychNology J..