Agent Based Modelling of a Local Energy Market: A Study of the Economic Interactions between Autonomous PV Owners within a Micro-Grid
Abstract
:1. Introduction
1.1. The Problem of Climate Change Has Been Internationally Recognized, The Political Will Is in Place
1.2. How Change Can Happen
1.3. Existing Optimization of Urban PV Systems and Research Gap
1.4. Relevant Research
1.5. Aim and Objectives
- What is the effect of the price scheme adopted by the prosumers on their savings and revenues?
- Is the micro-grid of a positive energy district economically feasible when some of the households refuse to invest any money in the shared PV system?
- Which are the most promising market designs to encourage the adoption of a shared PV system?
2. Research Methodology
2.1. Agent Based Modelling and Scenarios
- Every household is represented by one independent agent in the simulation.
- Every agent has an energy balance in each HOY (Hour of the Year). The energy balance is determined by its PV power (if it owns a PV system) minus its power demand in that particular HOY. If the balance is negative, the agent will be a net buyer in that HOY, otherwise it will be a seller. This rule implies that each agent can only sell electric power if it has already satisfied its own demand. Simply, each household can sell only excess PV production.
- Each seller can set the price for the power he has to export.
- If the electricity is offered by multiple sellers, the buying agent will buy preferentially from the cheapest source.
- If the aggregated demand of the district exceeds the offer of the cheapest source, the demand of each household is satisfied proportionally by the cheapest source. If, for example, the cheapest source covers 30% of the aggregated demand in that HOY, each household is provided 30% of its power demand by the cheapest source.
- If the on-site renewable power exceeds the power demand in a certain HOY, the cheapest sources are consumed preferentially, while the more expensive ones risk being in excess of the demand and sell part (or all) their power to the grid. Those who sell to the grid cannot set the price but are simply valued by the price paid by the grid (which is always way lower than that of the local sellers).
2.2. Modelling of the Economic Performance
- Inc. represents the cumulative income derived by the ownership of the share of the PV system during its lifetime; it represents the figure before costs (i.e., capital expenditure and operational expenditure) and it is calculated according to Equation (2).
- CAPEX is the capital expenditure; it includes the turn-key cost of the system including design and installation costs, but it assumes no taxation. It can be calculated by multiplying the unitary cost by the installed capacity (see Table 4).
- OPEX is the operational expenditure; it includes a standard annual cost of 80 SEK/kWp year for the substitution and cleaning of the modules, plus substitution of the inverter in case of rupture. The inverters have a cost of 3.5 KSEK/kWp and should be changed at least once in the planned lifetime of the system.
- Lifetime is expressed in years and is assumed as 30 years in this model.
- T represents the number of years since the construction of the PV system.
- Sav. Represents the savings due to the avoided purchase of electric power from the external grid, it is calculated according to Equation (3).
- Rev. Represents the revenues obtained by each shareholder by selling excess PV power from their share, it is calculated according to Equation (4).
- Δη is the variation of the efficiency due to ageing of the PV system. The shared PV is assumed to lose 1% per year (see Table 4).
- Δd is the variation in the price of the electricity for the consumer, it is assumed as +1.5% per year in design stage (see Table 4), but it is then assumed 0 or 2% in the agent based model (see Figure 8 in the results and Figure A1 in the Appendix A).
- Ts represents the internal time-step of the model, in this case it is set as 1 h.
- Pself,Ts is the power self-consumed in a specific time-step.
- dgrid,Ts is the cost of electric power offered by the external grid in a specific time-step.
- Ppeer,Ts is the power bought from a peer within the local community in a specific time-step.
- dpeer,TS is the cost of electric power offered by a peer in a specific time-step.
- P′peer,Ts is the power sold to all peers in a specific time-step
- d′peer,Ts is the price set for selling power to the peers in a specific time-step
- P′grid,Ts is the power sold to the grid in a specific time-step
- d′grid is the price at which the grid purchases power. This price is static, thus is independent by the time-step.
2.3. Case Study Description
2.4. Electric Demand Assumptions
2.5. Calculation of the Optimal PV System
3. Results and Discussion
3.1. Self-Sufficiency within the Micro-Grid
3.2. Effects of the Local Energy Market on the Price
3.3. Savings and Revenues
3.4. Small Consumers Are ‘Sale Oriented’, Large Consumers Are ‘Savings Oriented’ (Scenario 1 vs. Scenario 2)
3.5. When Some Agents Refuse to Invest in the Shared System, The Remaining Investors Have Larger Benefits and Lower Risks (Scenarios 3 and 4 vs. 1 and 2)
3.6. Interaction of Competing Sale Strategies within the Micro-Grid (Scenario 5 and Scenario 6)
3.7. Effects of the Phenomenon Observed on the Cagr (Compound Annual Growth Rate) for Every Household
4. Conclusions
4.1. Key Findings
4.2. Future Work
- It has been shown that reducing the number of PV owners (leaving unchanged the aggregated PV capacity, which is the optimal one) boosts the CAGRs for those who remain. Nevertheless, this has been done only in two scenarios, in which the percentage of owners was invariably 50% instead of 100%. It would be useful to explore an array of different percentages of PV owners combined in different price schemes, thus understanding the phenomenon more thoroughly. Being a very encouraging aspect of the micro-grid, this advantage of the ‘rare owners’ might be hiding some effective business models.
- One feature of this local energy market is represented by rule ‘e’ from Section 2.1. This rule commands that, in the case of insufficient supply of the cheapest source, the power from the cheapest source should be provided proportionally to every agent’s demand. Given the disadvantage experienced by smallest consumers, especially when the overall price of the electricity is low, it would be interesting to explore what happens with a different rule. For example, it would be interesting to provide each agent with equal power instead of satisfying the same proportion. With this difference, having a low consumption would actually boost the self-sufficiency considerably, and perhaps lead to a more balanced share of benefits and risks.
- The dynamic pricing behaviour with which half of the agents were endowed in Scenario 6 demonstrates the effectiveness of a simple dynamic pricing strategy. While only a proof of concept, this strategy is the first step in exploring a large array of behaviors that the agents could assume. It would be interesting to explore the impact of machine learning driven behaviours varying in complexity and in inputs required (both historical and real-time) [50].
- This study focuses on economic sustainability and fairness of different ownership and pricing schemes. Thus, it assumes the regulatory aspects as capable to allow a fruitful market structure. However, the regulatory design will be essential to achieve such local market, such as metering, and billing/collection, as well as responsibility allocation etc.
- The results of this study are obtained in a purely residential district; nevertheless, the presence of commercial, office, or public buildings would increase the contemporaneity of production and load. This effect would generally improve the techno-economic performance of the whole system; this improvement should be quantified to allow for spatial planning of the electric infrastructure.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Appendix A
- The Section ‘Practical issues’ below deals with some technical and legislative aspects of the modelling presented and tries to offer a link between the model and its application in the real world.
- Figure A2 shows the growth rates for Scenario 4 (one of the most promising for implementation) considering a linear growth of the price of electricity of 2% per year.
- Table A1 shows the composition of the 48 households in the study by gender and age bracket.
HH 1 | HH 2 | HH 3 | HH 4 | HH 5 | HH 6 | HH 7 | HH 8 |
---|---|---|---|---|---|---|---|
Male 25–54 Female 25–54 Male 0–14 Male 0–14 Female 0–14 | Male 25–54 Female 25–54 Male 0–14 Female 0–14 Male 0–14 | Male 25–54 Female 25–54 Female 0–14 Male 0–14 | Male 25–54 Female 25–54 Female 0–14 Male 15–24 | Male 25–54 Female 25–54 Female 15–24 Male 0–14 | Male 25–54 Female 25–54 Female 0–14 Male 15–24 | Male 25–54 Female 25–54 Female 15–24 Male 0–14 | Male 25–54 Female 25–54 Female 0–14 |
HH 9 | HH 10 | HH 11 | HH 12 | HH 13 | HH 14 | HH 15 | HH 16 |
Male 25–54 Female 25–54 Male 15–24 | Male 25–54 Female 25–54 Female 15–24 | Male 25–54 Female >65 Male 0–14 | Female 25–54 Female 0–14 Male 15–24 | Male >65 Female >65 | Male >65 Female >65 | Male >65 Female >65 | Female 25–54 Male 0–14 |
HH 17 | HH 18 | HH 19 | HH 20 | HH 21 | HH 22 | HH 23 | HH 24 |
Male 25–54 Female 0–14 | Male 25–54 Female 25–54 | Male 25–54 Female 15–24 | Male 55–64 Female 25–54 | Male >65 Female 55–64 | Male 25–54 Female >65 | Male 55–64 Female 25–54 | Male >65 Female 55–64 |
HH 25 | HH 26 | HH 27 | HH 28 | HH 29 | HH 30 | HH 31 | HH 32 |
Male 25–54 Female >65 | Male 55–64 Female 25–54 | Male >65 Female 55–64 | Female >65 | Male 25–54 | Female 25–54 | Male 55–64 | Female 55–64 |
HH 33 | HH 34 | HH 35 | HH 36 | HH 37 | HH 38 | HH 39 | HH 40 |
Male >65 | Female >65 | Male 25–54 | Female 25–54 | Male 55–64 | Female 55–64 | Male >65 | Female >65 |
HH 41 | HH 42 | HH 43 | HH 44 | HH 45 | HH 46 | HH 47 | HH 48 |
Male 15–24 | Female 15–24 | Male 25–54 | Female 25–54 | Male 55–64 | Female 55–64 | Male >65 | Female >65 |
Practical Issues
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Scenario | PV Capacity (kW/Household) | Electricity Price (at Year 0) (SEK/kWh) |
---|---|---|
(1) | 1.36 | 1 |
(2) | 1.36 | 1.19 (summer), 1.78 (winter) |
(3) | 2.73 or 0 | 1 |
(4) | 2.73 or 0 | 1.19 (summer), 1.78 (winter) |
(5) | 1.36 | 1 or 1.19 (summer), 1.78 (winter) |
(6) | 1.36 | 1 or dynamic |
- | Male Minor | Female Minor | Male Adult | Female Adult | n Households |
---|---|---|---|---|---|
Single | 0 | 0 | 921,495 | 957,910 | 1,879,405 |
Single + 1 minor | 113,287 | 84,195 | 55,871 | 141,611 | 197,482 |
Single + 2 minor | 108,963 | 96,493 | 25,907 | 76,821 | 102,728 |
Single + 3 minor | 65,725 | 59,947 | 6146 | 30,676 | 36,822 |
Couple | 0 | 0 | 1,134,261 | 1,132,893 | 1,132,893 |
Couple + 1 minor | 208,795 | 169,207 | 377,046 | 378,958 | 377,046 |
Couple + 2 minor | 494,165 | 453,061 | 472,734 | 474,492 | 472,734 |
Couple + 3 minor | 340,621 | 309,381 | 194,487 | 194,905 | 194,487 |
- | Male Minor | Female Minor | Male Adult | Female Adult | n Households |
---|---|---|---|---|---|
Single | 0 | 0 | 10 | 11 | 21 |
Single + 1 minor | 2 | 1 | 1 | 2 | 3 |
Single + 2 minor | 1 | 1 | 0 | 1 | 1 |
Single + 3 minor | 0 | 0 | 0 | 0 | 0 |
Couple | 0 | 0 | 12 | 12 | 12 |
Couple + 1 minor | 2 | 2 | 4 | 4 | 4 |
Couple + 2 minor | 5 | 5 | 5 | 5 | 5 |
Couple + 3 minor | 3 | 3 | 2 | 2 | 2 |
Parameters | Values |
---|---|
Unitary cost of the PV system | 12 KSEK/kWp (ca. 1175 €/kWp) |
Unitary cost of electric storage | 5.11 KSEK/kWh (ca. 500 €/kWh) |
Planned lifetime of the system | 30 years |
Degradation of the PV system | −1%/year (annual percentual efficiency losses) |
Nominal efficiency of the system | 16.5% |
Performance ratio of the system at standard test conditions | 0.9 |
Price of the electricity from external grid | 1.2 SEK/kWh (summer), 1.8 SEK/kWh (winter) |
Price of the electricity sold to the external grid | 0.3 SEK/kWh |
Annual discount rate | 3% |
Growth of electric price for consumer | +1.5%/year (annual percentual price increases) |
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Lovati, M.; Huang, P.; Olsmats, C.; Yan, D.; Zhang, X. Agent Based Modelling of a Local Energy Market: A Study of the Economic Interactions between Autonomous PV Owners within a Micro-Grid. Buildings 2021, 11, 160. https://doi.org/10.3390/buildings11040160
Lovati M, Huang P, Olsmats C, Yan D, Zhang X. Agent Based Modelling of a Local Energy Market: A Study of the Economic Interactions between Autonomous PV Owners within a Micro-Grid. Buildings. 2021; 11(4):160. https://doi.org/10.3390/buildings11040160
Chicago/Turabian StyleLovati, Marco, Pei Huang, Carl Olsmats, Da Yan, and Xingxing Zhang. 2021. "Agent Based Modelling of a Local Energy Market: A Study of the Economic Interactions between Autonomous PV Owners within a Micro-Grid" Buildings 11, no. 4: 160. https://doi.org/10.3390/buildings11040160
APA StyleLovati, M., Huang, P., Olsmats, C., Yan, D., & Zhang, X. (2021). Agent Based Modelling of a Local Energy Market: A Study of the Economic Interactions between Autonomous PV Owners within a Micro-Grid. Buildings, 11(4), 160. https://doi.org/10.3390/buildings11040160