Community Flexible Load Dispatching Model Based on Herd Mentality
Abstract
:1. Introduction
2. The Herd Mentality of Community Users
3. Community Structure Guided by Herd Mentality
4. Community Energy System Model
4.1. Community User Model
4.2. User Herd Mentality Model
5. Case Study
5.1. Basic Data
5.2. Analysis of Flexible Load Scheduling Results Considering Herd Mentality
5.3. Analysis of Random Flexible Load Scheduling Results Considering Influence of Herd Mentality
6. Conclusions and Prospect
Author Contributions
Funding
Conflicts of Interest
Abbreviations
DFR | Distributed Flexible Resources |
CM | Community Manager |
DR | demand Response |
HM | Herd Mentality |
SWF | Social Welfare Function |
PV | Photovoltaic |
CV | Comfomsit Value |
ES | Energy Storage |
FL | Flexible Load |
Unit Time | |
Total User’s Utility | |
Utility Gained by Users Engaged in Other Activities | |
Electricity Charges at time t | |
Energy Consumption Utility at time t | |
Community Penalty Utility at time t | |
Community Herd Mentality Utility at time t | |
Time of Use Price at time t | |
Penalty Price at time t | |
User n Personal Benefits | |
Herd Mentality Utility Coefficient Normalized at time t | |
d | Flexible Load Changed Due to Herd Mentality |
Electric Load at time t | |
PV Forecast at time t | |
Deliverable Flexible Load at time t | |
Non-deliverable Flexible Load at time t | |
Shiftable Load at time t | |
Charge load at time t | |
Discharge load at time t | |
E | Preference Coefficient |
M | Herd Mentality Coefficient |
Q | Total Shiftable Load in a Period |
Up Limit of Flexible Load | |
Lower Limit of Flexible Load | |
Up Limit of Shiftable Load | |
Lower Limit of Shiftable Load | |
ES Loss | |
ES State | |
ComfomsitValue | The Utility of User’s Herd Mentality |
Deliverable Flexible Load | Flexible Load Used under the Influence of |
Community Information | |
Non-deliverable Flexible Load | Flexible Load Used by Users according to Preference |
Appendix A
ITEMs |
---|
1. age |
2. Education |
3. gender |
4. When I see that most of the neighbors are involved in demand response, what is your choice? |
5. The more people in the community who participate in demand response, |
the more I want to participate, do you agree? |
6. Do you choose to stand your ground when your opinion is contrary to most people’s? |
7. When you know that some neighbors are used to charging electric cars in the early morning |
but you are used to charging in the afternoon, what is your choice? |
8. In daily consumption, I like to be consistent with most of the people around me, |
do you agree with this point of view? |
9. Are you affected by your neighbour’s energy usage information? |
10. When you learned that your neighbors were involved in demand response, |
would you consider participating? |
11. Do you share information about your energy use with people? |
Constructs | Items | Frequency | Percentage |
---|---|---|---|
gender | Male | 102 | 48.6% |
Female | 108 | 51.4% | |
Education | Junior high school and below | 33 | 15.7% |
High school | 71 | 33.8% | |
Undergraduate | 67 | 31.9% | |
Graduate and above | 39 | 18.6% | |
Age | under 20 | 24 | 11.4% |
20–30 | 34 | 16.2% | |
30–40 | 48 | 22.9% | |
40–50 | 42 | 20% | |
50–60 | 51 | 24.3% | |
over 60 | 11 | 5.2% |
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Constructs | Items | CITC | Cronbach’s |
---|---|---|---|
Herd mentality [22] | Q4 | 0.652 | 0.816 |
Q5 | 0.682 | 0.808 | |
Q6 | 0.669 | 0.811 | |
Q7 | 0.666 | 0.812 | |
Q8 | 0.604 | 0.828 | |
Information impact [23,24] | Q9 | 0.539 | 0.666 |
Q10 | 0.590 | 0.608 | |
Q11 | 0.550 | 0.644 |
Parameter | Value |
---|---|
Initial ES | 20% |
Lower limit of ES | 10% |
upper limit of ES | 90% |
ES capacity | 40 kW |
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Huang, Q.; Jiang, A.; Zeng, Y.; Xu, J. Community Flexible Load Dispatching Model Based on Herd Mentality. Energies 2022, 15, 4546. https://doi.org/10.3390/en15134546
Huang Q, Jiang A, Zeng Y, Xu J. Community Flexible Load Dispatching Model Based on Herd Mentality. Energies. 2022; 15(13):4546. https://doi.org/10.3390/en15134546
Chicago/Turabian StyleHuang, Qi, Aihua Jiang, Yu Zeng, and Jianan Xu. 2022. "Community Flexible Load Dispatching Model Based on Herd Mentality" Energies 15, no. 13: 4546. https://doi.org/10.3390/en15134546
APA StyleHuang, Q., Jiang, A., Zeng, Y., & Xu, J. (2022). Community Flexible Load Dispatching Model Based on Herd Mentality. Energies, 15(13), 4546. https://doi.org/10.3390/en15134546