Towards a Rigorous Consideration of Occupant Behaviours of Residential Households for Effective Electrical Energy Savings: An Overview
Abstract
:1. Introduction
2. Research Methodology and Bibliometric Findings
2.1. Occupant Behaviors Receive an Increasing Interest in the Recent Years
2.2. Research Works on Occupant Behaviors Are Majorly Led by Developed Economies
2.3. Building Energy-Saving Is Increasingly Considering OB Rather Than Passive Building Features and Operation
3. Definitions of Occupant Behaviors in the Literature
3.1. Applied Definitions of Occupant Behavior
3.2. Theoretical Frameworks of Occupant Behavior
- Drivers: represent the stimulating factors that provoke an occupant into performing an energy-related behavior or an interaction with a system.
- Needs: represent the physical and non-physical requirements of an occupant that must be met in order to ensure the satisfaction of the occupant with their environment.
- Actions: are interactions with systems or activities that an occupant can conduct in order to achieve environmental comfort.
- Systems: refer to the equipment or mechanisms within a building with which an occupant may interact to restore or maintain the environmental comfort of the occupant(s).
3.3. Occupant Behavior Data
3.3.1. Load Profile and Load Signature
3.3.2. OB Meta-Data
4. Major Categories of Occupant-Behaviors Related Works
4.1. Improving Energy Consumption Forecasting
4.1.1. Improvements Based on Occupancy
4.1.2. Improvement Based on Load Profiles
4.1.3. Improvement Based on Household Socio-demographic and Psychological Characteristics
4.1.4. Improvement Based on Predicting Appliance-Use Patterns
4.1.5. Summary of Load Forecasting Works Considering OBs
4.2. Households Segmentation
4.2.1. Clustering of Household Energy-Use Behavior
4.2.2. Classification of Household and Building Characteristics
4.2.3. Determination of Appliance Load Profile in Buildings
5. Changing Occupant Behaviors towards Energy-Saving
5.1. Changing Appliances Use-Behaviors
5.2. Strategies to Change Occupant Behaviors
5.2.1. Increasing the Level of Awareness and Commitment to Change
5.2.2. Reward, Incentives and Social Norms
6. Lessons Learned
6.1. Challenges and Limitations
- Oversimplified definition of Occupant Behavior. Both adaptive and non-adaptive occupant behaviors are mostly ignored or omitted throughout the whole building operation process. In the best case, the definition of OB is oversimplified and the occupant behavior is represented by one or few characteristics or activities of occupants in a building. For instance, many researchers narrowed down OB to be expressed as the occupancy rate [33,83,84]. However, as identified by Jia et al. [33], occupancy is an important quantitative element of occupant behavior, but it is not sufficient to represent the OB in many energy-use environments. Hence, a priority requirement is to identify a more comprehensive set of quantitative aspects for defining OB.
- Lack of common agreement on validity and applicability of OB modeling in energy simulation systems. In many research works, occupant behavior is found to be important but its involvement in the energy simulation is limited to assumptions rather than realistic behaviors that should be based on actual data. For example, Peng et al. [85] assumed three typical lifestyles of occupants derived from a simple description of occupant activities, in their simulation study. Other engineers employ user-defined profiles to determine HVAC set-points, lights scheduling and plug-in loads [86], while some user customized code for the similar operation [87]. More details of these approaches are presented in [16].
- Occupant Behaviors are interdisciplinary and complex. Occupant behaviors are driven by finding solutions to improve the occupant’s comfort, satisfaction and health, while looking for potential energy savings behavioral programs, sociological, psychological and engineering considerations have to be taken into account to identify a representative set of aspects of OBs and policy effectiveness from the building-level scale to the community scale. For instance, some authors provide evaluations while engineers provide more abstract and stringent solutions to improve building regulation codes. Some researchers founded their OB’s description on human nature [41] which is intricate and multifaceted. In this direction, Hong et al. [41] proposed a definition of occupant behavior based on four components: drivers, needs, actions, and systems. These components served to understand the occupant situations and their impact on building energy consumption in an organized way. Other researchers advocated that occupant behavior is very hard to model since individuals behaviors are too random as pointed out by Tabak and devries [88]. The complexity of OB definition is also due the double horizon from which we look at the OB. In the long-term, the occupant behavior reflects the patterns or habits of building occupant. In the short-term, it represents the occupant activities applied to HVAC, lighting schedule update, schedules based on occupancy, and many other energy adaptive controls [33].
- Lack of agreed real-data on occupant behaviors. Despite the availability of a wide spectrum of technologies that provide appropriate tools and equipment for OB data collection, there is no clear agreements on what to record or to measure. Such a lack of agreement is subsequent of the absence of a comprehensive definition of occupant behavior. Hence, many researches opted to collect small data reflecting their in-house OB parameters definitions, and many other research studies chose to simulate occupant behavior and energy use based on assumptions rather than real data [16,33]. The lack of real OB-data for exact inputs was at the origin of discrepancy between predicted and measured energy use [66]. However, it is worth to note that although the shortage of real-world OB data, some studies succeeded collect partial data based on real-time accurate occupancy collected by sensors [39,44]. We believe that with a comprehensive definition of OBs, and its components, various types of devices and tools such as sensors, meters, cameras, and image processing software could be utilized to collect the relevant data for accurate modeling and energy simulation.
- Survey for collecting OBs are erroneous, time-consuming but preferred. Collecting household characteristic data which is not always available makes the surveys costly error-prone and suffer from response biases [89] like social desirability bias [90], meaning that respondents tend to answer questions in a way such that they are viewed favorably by others as energy savers. However, self-reported attitudes and beliefs regarding climate change is still playing an insignificant role in energy consumption [39]. In spite of being time-consuming and error-prone, surveys seem to be the preferred method of collecting household characteristics. However, obtaining such information for each individual household inside a district is impractical, and census-data available from districts is usually very limited with respect to consumption behavior.
6.2. Opportunities and Trends
- A hierarchy of cross-sector factors influencing occupant behaviors
- An ontology that introduces the various representations of occupant behaviors, their definitions, formal namings, properties, categories, as well as the relationships among them. The targeted ontology shall consider a multidisciplinary approach in defining the OB metrics and the methods of their data acquisitions in order to achieve an agreement on what to record and measure them.
6.2.1. Alleviating Data Complexity and Households Variability
6.2.2. Analyzing Load Profile and Household Characteristics Extraction
6.2.3. Clustering OBs as a Prior Step for Better-Performing Building Load Prediction
6.2.4. Differentiating Workdays, Weekend and Holidays OBs Data Granularity
6.3. Potential for Future Research
7. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Consumption Granularity | Data Collection Method | Feature Type | Time Scale | Algorithm | Ref. |
---|---|---|---|---|---|
Household | Smart Metering, Survey | Load Profile, Household Characteristics | 30 min | KNN, LDA, Mahalanobis Classifier, SVM | [44] |
- | - | Load Profile, Household Characteristics | 30 min | C4.5 Decision Trees | [45] |
- | Smart Metering, Survey, Weather Service | Load Profile, Household Characteristics, Weather | 10 min, 30 min | HMM, EM, AdaBoost | [7] |
- | - | Load Profile, Household Characteristics, Building Characteristics, Weather | 30 min, hourly, daily | Linear Regression, LDA | [46] |
Appliance | Appliance Metering | Active Power, Reactive Power | 1 s | SVM | [47] |
- | Appliance Metering, Smart Metering | Load Profile | Hourly | Binary Relevance, Label Powerset | [48] |
- | - | Load Profile, Load Signature | 3 s | Bayesian Classification | [49] |
- | - | Load Profile, Load Signature | 10 s | KNN, EM | [50] |
Consumption Granularity | Household/Building Characteristics | Behavioural Determinants | Other Characteristics | Techniques | References |
---|---|---|---|---|---|
Household | - | Load profile | - | k-Means | [53] |
Household | - | Load profile | 8 Weather characteristics, 4 Time characteristics, 10 Calendar characteristics, 12 Economic characteristics | Hierarchical Clustering, C5.0 Decision tree, BPNN | [54] |
Household | 23 characteristics, such as: Family size, House size, Frequency of cooking | 27 determinants, e.g.: Monthly consumption, Air-conditioning use, Refrigerator use, Lighting use | Weather Intervention Strategy | AIC, SVR, Linear Regression | [19] |
Household & district | Occupancy type, No. of adults, No. of children, House rate, Age, Income | Annual consumption, Occupancy pattern | - | Neural Regression Model, FCM | [43] |
Household & district | Building structure, Tenure type, Heat fuel type, Income, Move in time, Year of building, Number of bedrooms, Total rooms, Household size | Annual electric bill, Annual natural gas bill, Annual other bill | - | Elastic Net Regularisation, Lasso-, Ridge- and Linear Regression, Bagging, Random Forest, Gradient Boosting, AdaBoost, Extra Trees | [57] |
District | A total of 249 census characteristics collected from a survey, e.g., Age group, Education Individual Income, Household income, Number of residents | Annual consumption | Climate zone | Regression Analysis | [56] |
Appliance | — | Appliance load profile | Appliance load and signature | Sequential Association Rule Mining, APRIORI, GMM | [59] |
Consumption Granularity | Household/Building Characteristics | Behavioural Determinants | Other Determinants | Techniques | References |
---|---|---|---|---|---|
Household | - | Load profile | - | k-Means | [63] |
Household | - | Load profile | - | Adaptive k-Means Agglomerative Hierarchical Clustering | [70] |
Household | 89 characteristics, e.g.: Number of home appliance, Number of refrigerators, Number of computers, Air-conditioning | Load Profile | Weather | k-Means, k-Medoids, Spectral Clustering, HMM, EM, AdaBoost | [7] |
Household | 14 characteristics, e.g.: Household composition, Household income band, Family lifestyle | Load profile | - | Subgroup discovery, k-Means, C4.5 Decision tree, Linear regression | [45] |
Household | 11 characteristics, e.g.: Monthly income, Number of appliances, Type of refrigerator, Space heating type | 16 determinants, e.g.: Monthly consumption, Bi-monthly consumption, Shower time, Time at home | - | k-Means, GTM | [66] |
Household | 18 characteristics, e.g.: Number of adults, children Employment status, Social class Yearly income, Retirement status Building age, Number of bedrooms | Load profile, 22 derived determinants, e.g.: Mean morning consumption, Mean weekend consumption, Maximum daily load | - | SOM | [23] |
Household | 12 characteristics, e.g.: Number of residents, Employment status, Social class, Floor area | Load profile, 22 derived determinants, e.g.: Mean morning consumption, Mean weekend consumption, Maximum daily load | - | Mahalanobis Classifier, kNN, LDA, SVM | [44] |
Household | 18 characteristics, e.g.: Number of adults, of children Employment status, Yearly income Social class, Family size Floor area, Age of building | Load profile, 25 derived determinants, e.g.: Maximum weekly load, Weekly consumption, Principal components | - | Mahalanobis classifier, kNN, LDA, SVM, AdaBoost, PCA | [22] |
Household | 18 characteristics, e.g.: Occupancy, Age of family chief Employment status, Yearly income Age of building, Floor area | Load profile, 25 derived determinants, e.g.: Maximum weekly load, Weekly consumption, Principal components | Weather information | Linear regression, LDA, PCA | [46] |
Household | 8 characteristics, e.g.: Appliance ownership, Household size, Number of rooms, Building type | Annual electricity consumption, Number of meal services, Number of washing services, Number of hot water services, Number of entertainment services | - | Stochastic Frontier Analysis | [71] |
Household | 11 characteristics, e.g.: Household size & income, Type of heating/cooling, Building size & age | Energy demand | Heating degree days, Cooling degree days, Energy prices | Stochastic Frontier Analysis | [72] |
Household | Appliance ownership, Household income,& size | Annual electricity consumption | Weather information | Stochastic Frontier Analysis | [73] |
Household | Household size, & income, Household floor area | Annual household consumption | Mean cooling-degree day, Mean heating-degree day, Ageing population ratio, Electricity price | Stochastic Frontier Analysis | [74] |
Appliance | - | Appliance usage start times, Appliance usage duration | Hour, Day, Month Weekend vs. Working day | Bayesian Networks | [61] |
Household | Solar panel ownership | Load Profiles | - | SOM, GMM, Hebbian Neural Network | [67] |
Consumption Granularity | Data Collection Method | Feature Type | Time Scale | Techniques | Reference |
---|---|---|---|---|---|
Household | Smart Metering, Survey | Load Profile, Household Characteristics | 30 min | KNN, LDA, Mahalanobis Classifier, SVM | [44] |
- | - | Load Profile, Household Characteristics | 30 min | C4.5 Decision Trees | [45] |
- | Smart Metering, Survey, Weather Service | Load Profile, Household Characteristics, Weather | 10 min, 30 min | HMM, EM, AdaBoost | [7] |
- | - | Load Profile, Household Characteristics, Building Characteristics, Weather | 30 min, hourly, daily | Linear Regression, LDA | [46] |
Appliance | Appliance Metering | Active Power, Reactive Power | 1 s | SVM | [47] |
- | Appliance Metering, Smart Metering | Load Profile | Hourly | Binary Relevance, Label Powerset | [48] |
- | - | Load Profile, Load Signature | 3 s | Bayesian Classification | [49] |
- | - | Load Profile, Load Signature | 10 s | KNN, EM | [50] |
- | - | Load Profile, Load Signature | 1 s, 3 s | SVM, ANN, AdaBoost | [76] |
Intervention Type | Intervention Strategy | Purpose | Ref |
Inform | Increase awareness of energy-use behavior | Energy Savings | [78] |
Inform | Percentage of energy originating from renewable sources throughout the day | Load Shifting | [20] |
Financial Incentives | Dynamic electricity pricing | Load Shifting | [81] |
Financial Incentives | Responsibility for electricity bill | Energy Savings | [25] |
Social Incentives | Social norms | Energy Savings | [79] |
Social Incentives | Competition with peers | Energy Savings | [79] |
Feedback | Given on paper Given via an online chatroom Consultation with experts | Energy Savings | [19] |
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Bouktif, S.; Ouni, A.; Lazarova-Molnar, S. Towards a Rigorous Consideration of Occupant Behaviours of Residential Households for Effective Electrical Energy Savings: An Overview. Energies 2022, 15, 1741. https://doi.org/10.3390/en15051741
Bouktif S, Ouni A, Lazarova-Molnar S. Towards a Rigorous Consideration of Occupant Behaviours of Residential Households for Effective Electrical Energy Savings: An Overview. Energies. 2022; 15(5):1741. https://doi.org/10.3390/en15051741
Chicago/Turabian StyleBouktif, Salah, Ali Ouni, and Sanja Lazarova-Molnar. 2022. "Towards a Rigorous Consideration of Occupant Behaviours of Residential Households for Effective Electrical Energy Savings: An Overview" Energies 15, no. 5: 1741. https://doi.org/10.3390/en15051741
APA StyleBouktif, S., Ouni, A., & Lazarova-Molnar, S. (2022). Towards a Rigorous Consideration of Occupant Behaviours of Residential Households for Effective Electrical Energy Savings: An Overview. Energies, 15(5), 1741. https://doi.org/10.3390/en15051741