Distribution Locational Marginal Price Based Transactive Energy Management in Distribution Systems with Smart Prosumers—A Multi-Agent Approach
Abstract
:1. Introduction
Novelty and Contribution
- Enhanced Multi-Agent-Based TE trading architecture with a high level of integration of the energy market to energy scheduling.
- A customized RBB strategy for trading agents such as consumers, distributed generators (DGs), and energy storage systems TE scheduling with congestion management and loss reduction;
- DLMP-based energy market with three cost components that encourage a fair process and loss and congestion reduction in distributed systems;
- A novel TE profit (earning) management, called MVP-based earning distribution, which includes the share of the TE stakeholders.
2. MAS Architecture of the DTEMS
2.1. LA—Load Agent
2.2. GA—Generator Agent
2.3. FA—Flexible Agent
2.4. RBB—Risk-Based Bidding
3. Proposed TE Model
3.1. Problem Formulation
3.2. TE Scheduling
3.3. DLMP-Based Market Mechanism
3.4. Nodal Earning Component
4. Case Study
5. Results and Discussion
6. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
Abbreviations
DER | Distributed energy resource |
DESS | Distributed energy storage system |
DG | Distributed generator |
DLMP | Distribution locational marginal price |
DR | Demand response |
DSO | Distribution system operator |
DTEMS | DLMP based management system |
EV | Electric vehicle |
FA | Flexible agent |
GA | Generator agent |
HEMS | Home energy management system |
LA | Load agent |
LVP | Least valuable player |
MAS | Multi-agent system |
MCP | Market clearing price |
MVP | Most valuable player |
NVP | Non-valuable player |
OPF | Optimal power flow |
PTDF | Power transfer distribution factor |
RBB | Risk-based bidding |
SVP | Second valuable player |
TE | Transactive energy |
TEMA | TE market agent |
TVP | Third valuable player |
Nomenclature
Requested energy capacity of aggregator (kWh) | |
Power Transfer Distribution Factor of branch l | |
Price of energy in the node (¢/kWh) | |
Line sensitivity factor | |
Locational Marginal Price at bus i (¢/kWh) | |
Nodal loss component at bus i (¢/kWh) | |
Uniform price at each bus k (¢/kWh) | |
Bid submitted by the load i in market interval t | |
R | Exchange rates of other uniform pricing rules |
Requested energy injection from node i to relieve congestion | |
Nodal earning component at bus i | |
z | Normally distributed random variable |
Congestion component of LMP/price MG i pay to responsive | |
load to clear congestion (¢/kWh) | |
Constraint cost a.k.a shadow price (¢/kW) | |
Loss factor at bus k | |
Line flow in branch l |
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Load | Bid in First Round | Risk | Eagerness Factor | Priority Rise |
---|---|---|---|---|
C1 | High | Low | High | Impossible |
C2 | Medium | Medium | depends on load | Possible |
C3 | Low | High | depends on load | Possible |
Bus | Type | Block 1 kW ‖ ¢/kWh | Block 2 kW ‖ ¢/kWh | Block 3 kW ‖ ¢/kWh |
---|---|---|---|---|
1 | GSP | inf ‖ 5.0 | - | - |
3 | Solar | 96 ‖ 3.0 | - | - |
4 | EV | 12 ‖ 2.0 | 24 ‖ 4.2 | 24 ‖ 8.0 |
17 | Battery | 12 ‖ 2.0 | 24 ‖ 4.4 | 24 ‖ 9.0 |
13 | Wind | 96 ‖ 2.0 | - | - |
31 | Controlable | 50 ‖ 2.0 | 50 ‖ 6.0 | 50 ‖ 8.0 |
Bus | Type | Block 1 kW ‖ ¢/kWh | Block 2 kW ‖ ¢/kWh | Block 3 kW ‖ ¢/kWh |
---|---|---|---|---|
7 | HVAC | 40 ‖ 10.0 | 30 ‖ 7.0 | 30 ‖ 6.0 |
15 | EV | 20 ‖ 10.0 | 20 ‖ 5.0 | 20 ‖ 2.0 |
30 | Industry | 100 ‖ 10.0 | 50 ‖ 6.0 | 50 ‖ 5.0 |
2 | GBP | inf ‖ 3.0 | - | - |
Bus | Pg (kW) | (¢/kWh) | Revenue (¢) | Cost (¢) | Earning (¢) | (¢/kWh) |
---|---|---|---|---|---|---|
1 | 2760.7 | 5.000 | 13,803.5 | 13,803.6 | 0.0 | 0.000 |
3 | 96.5 | 5.671 | 547.2 | 289.5 | 257.7 | 2.671 |
4 | 36.0 | 5.715 | 205.7 | 120.0 | 85.7 | 2.382 |
17 | 36.0 | 6.056 | 218.0 | 120.0 | 98.0 | 2.722 |
13 | 96.5 | 6.019 | 580.9 | 193.0 | 387.9 | 4.019 |
31 | 83.9 | 6.000 | 503.4 | 471.5 | 31.9 | 0.381 |
7 | −100.0 | 5.884 | −588.4 | −999.8 | 411.4 | −4.114 |
15 | −20.0 | 5.000 | −100.0 | −200.0 | 100.0 | −5.001 |
30 | −100.0 | 6.000 | −600.0 | −1000.0 | 400.0 | −4.000 |
2 | 0.0 | 5.017 | 0.0 | 0.0 | 0.0 | 0.000 |
Bus | (¢/kWh) | (¢/kWh) | ||||
---|---|---|---|---|---|---|
1 | 5.000 | 0.000 | 0.000 | 5.000 | 5.000 | 0.000 |
3 | 3.000 | 0.343 | 0.059 | 3.402 | 5.671 | 2.671 |
4 | 3.333 | 0.383 | 0.093 | 3.810 | 5.715 | 2.382 |
17 | 3.333 | 0.412 | 0.291 | 4.037 | 6.056 | 2.722 |
13 | 2.000 | 0.245 | 0.163 | 2.408 | 6.019 | 4.019 |
31 | 5.619 | 1.943 | -0.819 | 6.743 | 6.000 | 0.381 |
7 | 9.998 | 1.186 | 0.582 | 11.766 | 5.884 | −4.114 |
15 | 10.001 | −0.001 | 0.001 | 10.001 | 5.000 | −5.001 |
30 | 10.000 | 0.790 | 1.210 | 12.000 | 6.000 | −4.000 |
2 | 3.000 | 0.000 | 0.010 | 3.010 | 5.017 | 0.000 |
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Amanbek, Y.; Kalakova, A.; Zhakiyeva, S.; Kayisli, K.; Zhakiyev, N.; Friedrich, D. Distribution Locational Marginal Price Based Transactive Energy Management in Distribution Systems with Smart Prosumers—A Multi-Agent Approach. Energies 2022, 15, 2404. https://doi.org/10.3390/en15072404
Amanbek Y, Kalakova A, Zhakiyeva S, Kayisli K, Zhakiyev N, Friedrich D. Distribution Locational Marginal Price Based Transactive Energy Management in Distribution Systems with Smart Prosumers—A Multi-Agent Approach. Energies. 2022; 15(7):2404. https://doi.org/10.3390/en15072404
Chicago/Turabian StyleAmanbek, Yerasyl, Aidana Kalakova, Svetlana Zhakiyeva, Korhan Kayisli, Nurkhat Zhakiyev, and Daniel Friedrich. 2022. "Distribution Locational Marginal Price Based Transactive Energy Management in Distribution Systems with Smart Prosumers—A Multi-Agent Approach" Energies 15, no. 7: 2404. https://doi.org/10.3390/en15072404
APA StyleAmanbek, Y., Kalakova, A., Zhakiyeva, S., Kayisli, K., Zhakiyev, N., & Friedrich, D. (2022). Distribution Locational Marginal Price Based Transactive Energy Management in Distribution Systems with Smart Prosumers—A Multi-Agent Approach. Energies, 15(7), 2404. https://doi.org/10.3390/en15072404