Demand Response Economic Assessment with the Integration of Renewable Energy for Developing Electricity Markets
Abstract
:1. Introduction
1.1. Sierra Leone’s Energy Sector Situation
1.2. Relevant Country-Wide Reports on DSM Implementation
1.3. Motivation for Research and Research Contribution
2. STAGE I: Implementation of Demand-Side Management (DSM)
2.1. Overview of the Proposed DSM Scheme and Analytical Modelling
2.1.1. Dr Elasticity Model
2.1.2. Modelling of Proposed Single and Multi-Period Elastic Load
2.1.3. Multi-Period Load Program Modelling
2.2. Demand Response Attribute Selection
3. Stage-Ii: Assessment of Renewable Energy (RE) Introduction
Output of Pv Array
Battery Energy Storage System (Bess) Dynamics
4. Case Study, Simulation Results, and Discussion
4.1. Stage I: Implementation of DSM
- Initial load (base case): The peak load curve considered without the implementation of the proposed DR program in Figure 2 as shown in Table 5 and Figure 3, the peak load is 96.5 MW, the energy consumption of 2085.7 MWh, a load factor of 87%, which depicts the lowest after the execution of the proposed scheme with a maximum peak to valley reduction of 22.500 MW observed. These four indices improved after implementation of the proposed DR model, as subsequently illustrated in the following subsections. Moreover, in Table 4, customer bill and utility revenue of $377,050 are achieved concurrently.
- Program 1: In this case, the DLC program is implemented. From Table 2, the incentive and penalty are given as 22.79 Us/kWh and 0 Us/kWh, respectively. In this program, IPPs reward consumers for modification in their load profile with zero penalties for load curtailment failure. From Table 4 and Table 5 and comparing the results to the baseload; peak reduction of 90.73 MW (5.98% peak reduction) is achieved. Moreover, as shown in Figure 3, the load profile characteristics enhanced the customer’s benefit to $42,052 with a peak to valley and energy reduction by 25.6% (16.73 MW) and 3.37%, respectively.
- Program 2: In this case, EDPR is executed, from Table 2 with incentive value of 22.79 Usc/kWh for load modification, with 0 Usc/kWh as the penalty, which implies that IPPs do not penalize customers for the violation if customers fail to modify the load agreed in the contract level. From the simulation results shown in Table 4 and Table 5, peak load reduction of 94.70 MW (1.86%), energy reduction of 0.50%, peak to valley reduction of 20.70 MW (8%), customer benefit of attained relative to the base case.
- Program 3: In this program, CAP is implemented, and it assumed that Usc/kWh is the penalty fee if customers fail to modify their load profile to a predetermined level during system contingency, and 5.8625 Usc/kWh as incentive fee for load profile alteration is employed by the IPPs. The result of executing this program is as shown in Figure 3. From the simulation results, shown in Table 4 and Table 5, 2066.60 MWh reduction in energy consumption, 0.92 % of energy reduction, 19.21 MW (14.6%) peak to valley reduction is observed as compared to the base case. Moreover, the load factor of 92 % and customer benefit of achieved.
- Program 4: For this program, the IC program is implemented, as shown in Figure 3. The penalty and incentive values set as 11.725 Usc/kWh and 22.79 Usc/kWh, respectively. Enhancement in the load profile characteristic with customer benefit of $51,303, is shown in Table 4. Furthermore, 91.62 MW (5.06%) of peak load reduction, 5.19% energy reduction, and 17.620 MW (21.69%) peak to valley reduction were achieved as compared to the base case shown in Table 5 with an achieved load factor increment of 90%.
- Program 5: As shown in Table 4 and Table 5 and Figure 4, the ToU program is implemented, with a reduction of 91.18 MW (5.51%) peak load, 0.48% energy reduction, 2075.6 MWh energy consumption, peak-to-valley by 17.18 MW (23.65%) as compared to the base case. Moreover, the customer benefit of $8835 was achieved.
- Program 6: In this case, the CPP program implemented at 19, 20, and 21 h, respectively, as shown in Table 2. The results obtained after the execution of the program in Table 4 and Table 5, Figure 4, shows enhancement in the load profile with customer benefits of $ 25419. This program has the highest customers’ bills, and a peak load reduction of 2.09%, in correlation with other programs due to the high electricity price. Moreover, an increase in energy reduction to 0.03% is observed.
- Program 7: As shown in Figure 4, the load profile characteristic is enhanced after the implementation of the RTP program. As shown in Table 4 and Table 5, the peak reduction of 93.02 MW (3.61%) and peak to valley reduction of 18.764 MW (16.6%) is realised in correlation with the base case. Moreover, there is an upsurge in the energy reduction of 0.17% and the load factor of 94%, which is the second-highest after the execution of the program as compared with the base case, with customer benefit of $11,079.
- Program 8: In this program, the ToU and CPP are executed concurrently, as shown in Figure 4. From the simulation result shown in Table 4 and Table 5, a load factor of 94% and 19.53 MW (13.12%) peak to valley reduction achieved, which is the maximum. Moreover, the customer benefit increased to $27,460, and the energy consumption reduced by 2102.3 MWh (0.8%) in assessment with the base case.
- Program 9: In this program, ToU and DLC are executed concurrently, as shown in Figure 5 with enhanced load profile characteristics. From the simulation results shown in Table 4 and Table 5, 90.20 MW (6.54%) peak load reduction, 16.20 MW reduction in peak to valley, 2.16% in energy reduction in comparison with the base case. Moreover, 94% load factor, which is the highest after the execution of this program and customer benefit of $29,409, was attained.
- Program 10: In this program, ToU and EDRP are executed concurrently, enhancement in the load profile characteristics is obtained, as shown in Figure 5. Moreover, an increase in the customer benefit of $60,025, peak load reduction, and peak to valley load reduction is accomplished, as shown in Table 4 and Table 5.
- Program 11: In this program, ToU and CAP executed simultaneously. As shown in Figure 5, the attributes of the load profiles are enhanced. As shown in Table 4 and Table 5, a peak load reduction of 90.67 MW (6.05%), reduction in energy consumption by 3.09% (2023.20 MWh), peak to valley reduction by 16.166 MW (28.1%) was achieved, while customer’s benefit increased by $29,901 was attained in comparison with the base case.
- Program 12: The ToU with IC executed concurrently. The load attribute of the load profile improved. From the simulation results shown in Table 4 and Table 5, 4.74% (91.93 MW) peak load reduction, energy reduction by 5.68%, and peak load to valley reduction of 0.3 % (22.45 MW) in comparison with the base case. Moreover, this increased customer benefit to $70,048, which is the maximum in the execution of this program was achieved.
4.2. Prioritizing DR Program for IPPs and Customer Perspective Using SSI Analysis
Stage Ii: Introduction of Renewable Energy
5. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Period | Low Peak (00:00–7:00) | Valley (8:00–14:00) | Peak Load (15:00–22:00) |
---|---|---|---|
Low Peak (00:00–7:00) | −0.1 | 0.01 | 0.012 |
Valley (8:00–14:00) | 0.01 | −0.1 | 0.016 |
Peak Load (15:00–22:00) | 0.012 | 0.016 | −0.1 |
Program no. | Program parameters | Electricity Price USc/kWh | Penalty USc/kWh | Incentive USc/kWh |
---|---|---|---|---|
0 | Initial load(Base Scenario) | 18.76 | 0 | 0 |
A | Incentive Base programs(IBP) | |||
1 | Direct load Control (DLC) | 18.76 | 0 | 22.79 |
2 | Emmergency Demand Response Program (EDRP) | 18.76 | 0 | 28.49 |
3 | Capacity Market Program (CAP) | 18.76 | 5.8625 | 11.725 |
4 | Interruptible/Curtaible (IC) | 18.76 | 11.725 | 22.79 |
B | Time Base programs(IBP) | |||
5 | Time of use (ToU) | 7.28(Valley), 18.76(Low peak), 28.14(Peak) | 0 | 0 |
6 | Critical Price Peaking (CPP) | 93.8 (20:00–22:00),18.76(Other hours) | 0 | 0 |
7 | Real Time Pricing (RTP) | 7.28 (00:00–03:00),3.64 (04:00–07:00),18.76(08:00–11:00), 23.45(12:00–15:00) 18.76(16:00-18:00),58.625(19:00–21:00), 18.76(22:00-23:00) | 0 | 0 |
8 | ||||
ToU & CPP | 7.28(Valley), 18.76(Low peak), 28.14(Peak) 93.8(20:00–22:00)Hrs | 0 | 0 | |
C | Incentive & Time Base programs(IBP) | |||
9 | ToU & DLC | 7.28(Valley), 18.76(Low peak), 28.14(Peak) | 0 | 11.395 |
10 | ToU & EDRP | 7.28(Valley), 18.76(Low peak), 28.14(Peak) | 0 | 22.79 |
11 | ToU & CAP | 7.28(Valley), 18.76(Low peak), 28.14(Peak) | 5.8625 | 11.725 |
12 | ToU & IC | 7.28(Valley), 18.76(Low peak), 28.14(Peak) | 11.395 | 22.79 |
Time | Solar Radiation w/m | Time | Solar Radiation w/m |
---|---|---|---|
0:00 | 0 | 12:00 | 531 |
1:00 | 0 | 13:00 | 873 |
2:00 | 0 | 14:00 | 543 |
3:00 | 0 | 15:00 | 587 |
4:00 | 0 | 16:00 | 646 |
5:00 | 0 | 17:00 | 347 |
6:00 | 0 | 18:00 | 0 |
7:00 | 0 | 19:00 | 0 |
8:00 | 0 | 20:00 | 0 |
9:00 | 50 | 21:00 | 0 |
10:00 | 60 | 22:00 | 0 |
11:00 | 66 | 23:00 | 0 |
Program No. | Program Parameters | Incentive ($) | Penalty $ | Customer Bill ($) | Customer Benefit ($) | Utility Revenue ($) |
---|---|---|---|---|---|---|
0 | Initial load(Base Scenario) | 0 | 0 | 377,050 | 0 | 377,050 |
1 | DLC | 20,083 | 0 | 355,080 | 42052 | 334,990 |
2 | EDRP | 471 | 0 | 373,680 | 3835 | 373,210 |
3 | CAP | 1414 | 1256 | 37,090 | 6316 | 370,730 |
4 | IC | 30,416 | 12,385 | 343,770 | 51,303 | 325,740 |
5 | ToU | 0 | 0 | 368,210 | 8835 | 368,210 |
6 | CPP | 0 | 0 | 578,600 | 25,419 | 578,600 |
7 | RTP | 0 | 0 | 422,560 | 11,079 | 422,560 |
8 | ToU & CPP | 0 | 0 | 535,730 | 27,460 | 535,730 |
9 | ToU & DLC | 9589 | 0 | 357,230 | 29,409 | 347,640 |
10 | ToU & EDRP | 29,220 | 0 | 346,240 | 60,025 | 317,020 |
11 | ToU & CAP | 12,675 | 8563 | 351,260 | 29,901 | 347,150 |
12 | ToU & IC | 39,262 | 11,003 | 335,260 | 70,048 | 307,000 |
Program No. | Program Parameters | Peak (MW) | Peak Reduction (%) | Energy Consumption (MWh) | Energy Reduction (%) | Load Factor (%) | Peak to Valley (MW) |
---|---|---|---|---|---|---|---|
0 | Base Scenario | 96.50 | 0.00 | 2085.70 | 0.00 | 87 | 22.50 |
1 | DLC | 90.73 | 5.98 | 2017.70 | 3.37 | 93 | 16.73 |
2 | EDRP | 94.70 | 1.86 | 2075.30 | 0.50 | 91 | 20.70 |
3 | CAP | 93.21 | 3.40 | 2066.60 | 0.92 | 92 | 19.21 |
4 | IC | 91.62 | 5.06 | 1982.80 | 5.19 | 90 | 17.62 |
5 | TOU | 91.18 | 5.51 | 2075.60 | 0.48 | 95 | 17.18 |
6 | CPP | 94.48 | 2.09 | 2086.30 | −0.03 | 92 | 19.06 |
7 | RTP | 93.02 | 3.61 | 2089.20 | −0.17 | 94 | 18.76 |
8 | ToU&CPP | 93.34 | 3.28 | 2102.30 | −0.79 | 94 | 19.53 |
9 | ToU&DLC | 90.20 | 6.53 | 2041.70 | 2.16 | 94 | 16.20 |
10 | ToU&EDRP | 91.06 | 5.64 | 2007.70 | 3.89 | 92 | 17.06 |
11 | ToU&CAP | 90.67 | 6.05 | 2023.20 | 3.09 | 93 | 16.67 |
12 | ToU&IC | 91.93 | 4.74 | 1973.70 | 5.68 | 89 | 22.45 |
Program Priority Order | CUSTOMER BENEFIT | IPPs REVENUE | LOAD FACTOR | |||
---|---|---|---|---|---|---|
Demand Response Program | SSI% | Demand Response Program | SSI% | Demand Response Program | SSI% | |
1 | ToU&IC | 100.00 | CPP | 100.00 | ToU | 100.00 |
2 | IC | 73.24 | ToU&CPP | 92.59 | ToU & DLC | 99.44 |
3 | ToU&EDRP | 64.45 | RTP | 73.03 | ToU & CPP | 98.95 |
4 | EDRP | 54.36 | BASE CASE | 65.17 | CAP | 98.87 |
5 | ToU&CAP | 48.14 | ToU | 63.64 | RTP | 98.67 |
6 | ToU&CPP | 39.22 | CAP | 62.72 | ToU & CAP | 98.03 |
7 | DLC | 36.50 | ToU&DLC | 61.67 | DLC | 97.69 |
8 | CPP | 36.29 | DLC | 60.75 | CPP | 97.01 |
9 | ToU&DLC | 28.91 | ToU&CAP | 59.33 | ToU & EDRP | 96.86 |
10 | CAP | 20.20 | EDRP | 58.58 | EDRP | 96.42 |
11 | RTP | 15.82 | ToU&EDRP | 57.36 | IC | 95.07 |
12 | ToU | 12.61 | IC | 56.30 | ToU & IC | 94.32 |
13 | BASE CASE | 0.00 | ToU&IC | 53.06 | BASE CASE | 91.43 |
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Conteh, A.; Lotfy, M.E.; Adewuyi, O.B.; Mandal, P.; Takahashi, H.; Senjyu, T. Demand Response Economic Assessment with the Integration of Renewable Energy for Developing Electricity Markets. Sustainability 2020, 12, 2653. https://doi.org/10.3390/su12072653
Conteh A, Lotfy ME, Adewuyi OB, Mandal P, Takahashi H, Senjyu T. Demand Response Economic Assessment with the Integration of Renewable Energy for Developing Electricity Markets. Sustainability. 2020; 12(7):2653. https://doi.org/10.3390/su12072653
Chicago/Turabian StyleConteh, Abdul, Mohammed Elsayed Lotfy, Oludamilare Bode Adewuyi, Paras Mandal, Hiroshi Takahashi, and Tomonobu Senjyu. 2020. "Demand Response Economic Assessment with the Integration of Renewable Energy for Developing Electricity Markets" Sustainability 12, no. 7: 2653. https://doi.org/10.3390/su12072653
APA StyleConteh, A., Lotfy, M. E., Adewuyi, O. B., Mandal, P., Takahashi, H., & Senjyu, T. (2020). Demand Response Economic Assessment with the Integration of Renewable Energy for Developing Electricity Markets. Sustainability, 12(7), 2653. https://doi.org/10.3390/su12072653