Planning of an LVAC Distribution System with Centralized PV and Decentralized PV Integration for a Rural Village
Abstract
:1. Introduction
- Provide a planning tool for the LV distribution network with PV integration that is applicable to developing countries;
- Provide a possible scenario for PV injection into the grid that aligns with current and future regulations;
- Develop a tool using optimization solvers that allows distribution network planners to evaluate the LV topologies and the impact of PV integration on networks;
- Analyze the techno-economic viability of PV integration in an LV distribution network
2. Materials and Methods
2.1. Description Method and Algorithms
2.1.1. Shortest Path
2.1.2. Power Phase Balancing
- Pole balancing (PB): in this case, the concept of single-phase connection of electrical poles is proposed by randomizing its phase connection (possible phase connection of electrical poles: Phase A, B, or C), which is performed using WCA optimization with the objective function of power loss.
- Load balancing (LB): focuses on random single-phases in households (it means that each household has selected the possible phase connections on Phases A, B, or C). It also has the same objective function as pole balancing and is implemented using WCA optimization.
2.1.3. Methods for Energy Loss Minimization
- Method 1: It investigates how to minimize power loss at peak load, and after that, a topology is given for PB and LB at peak load. Additionally, a load profile is performed on this method to attain the energy loss for a day. Figure 4a presents the process of Method 1 as a flow chart. Step 1 begins with the input of coordinates, peak demands of the household, line impedances, and a load profile. Step 2 involves choosing either case pole balancing or load balancing to simulate peak load in this step. Step 3 checks to see if the time is less than 24 h. Step 4 changes bus data based on its load profile. Step 5 obtains new bus data for a given period (t) in hours. Step 6 involves running backward-forward load flow to calculate power loss, voltage, and current. Step 6 then loops back to Step 2 until a certain condition is met. The final step involves calculating the energy loss.
- Method 2: It is a technique that focuses on reducing energy loss during the load profile of a power system using PB and LB to optimize the distribution and balancing of power. This can help to reduce energy costs and improve the efficiency of the power system. Figure 4b shows the flowchart for method 2, which is also used for both PB and LB. The first step involves inputting data such as coordinates (X, Y), peak household demands, line impedances (Z), and a load profile. The second step has case pole and load balancing and selects one to test in this method. The third step is a random phase connection (x) for 24 h. The fourth step focuses on testing LV topology for load profile and x-phase connection by performing load flow (BWFW) to obtain power loss, voltage profile, and current during each hour over 24 h. The fifth step provides a formula to calculate energy loss by summing the power loss of each hour and multiplying it by 1 h. Lastly, WCA optimization is performed to find the smallest energy loss until this condition is met.
2.1.4. PV System Installation
2.1.5. Water Cycle Algorithms (WCA)
- Objective function
- Subjective to:
2.1.6. Economic Analysis
- CAPEX, OPEX, and NPC
- Real Discount Rate
2.1.7. Autonomous Operation Time, Energy, and CO2 Emissions
2.2. Case Study
2.2.1. PV Curve and Load Curve
2.2.2. Tariff Payment for MV Feeders and Households in Rural Areas
2.2.3. Input Parameters
3. Simulation Results and Discussion
3.1. Optimal Radial Topology
3.2. CePV and DePV Integration
3.2.1. Scenario 1: Zero Injection
3.2.2. Scenario 2: Injection to the MV Grid without Sell-Back Price
3.2.3. Scenario 3: Injection to the MV Grid with Sell-Back Price
- Strategy 1: Finding the sell-back price to get the profit
- Strategy 2: Minimize the sell-back price to get the profit
4. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Description | MV Feeder | |
---|---|---|
General Tariff | PV Consumer | |
Capacity charge [$/kW/Month] | - | 3.1 |
Tariff [$/kWh] | 0.121 | 0.118 |
Items | Provincial and Rural Areas | |||
---|---|---|---|---|
Electricity consumption [kWh/Month] | 0–10 | 11–50 | 51–200 | 201–2000 |
Tariff [$/kWh] | 0.095 | 0.12 | 0.1525 | 0.1825 |
Items | Value [Ref.] |
---|---|
Planning period [years] | 30 |
Load growth [%] | 3 [3] |
Nominal discount rate [%] | 12 [27] |
Expected inflation rate [%] | 3 [28] |
Real discount rate [%] | 8.74 |
PV price [k$/kWp] | 0.6 [3] |
PV lifetime [Years] | 30 [3] |
PV inverters [k$/kW] | 0.556 [3] |
Inverter lifetime [Years] | 15 [3] |
Inverter efficiency [%] | 95 [3] |
PV + inverter maintenance cost [k$/kW] | 0.02 [3] |
LV-2 × 4 mm2 [k$/km] | 0.625 |
LV-ABC-4 × 120 mm2 [k$/km] | 6.1 |
Life-cycle CO2 emissions of grid [kg/kWh] | 0.400 [29] |
Life-cycle CO2 emissions of CePV [kg/kWh] | 0.042 [30] |
Life-cycle CO2 emissions of DePV [kg/kWh] | 0.066 [30] |
Items | M1-PB | M1-LB | M2-PB | M2-LB |
---|---|---|---|---|
Transformer capacity [kVA] | 160 | 160 | 160 | 160 |
Length of mainline (4 wires) [m] | 852 | 852 | 852 | 852 |
Length of secondary (2 wires) [m] | 5105 | 5105 | 5105 | 5105 |
Max. Voltage [pu] | 1 | 1 | 1 | 1 |
Min. Voltage [pu] | 0.905 | 0.906 | 0.908 | 0.910 |
Payback period [Year. Month] | 3.652 | 3.635 | 3.643 | 3.634 |
Total energy loss [MWh] | 202.421 | 189.958 | 195.471 | 189.274 |
Energy purchased [MWh] | 7438.712 | 7426.248 | 7431.762 | 7425.564 |
Cost of energy purchased [k$] | 900.084 | 898.576 | 899.243 | 898.493 |
CO2 emissions [tons] | 2975.485 | 2970.499 | 2972.705 | 2970.226 |
CAPEX [k$] | 13.197 | 13.197 | 13.197 | 13.197 |
OPEX [k$] | 67.815 | 68.180 | 68.018 | 68.199 |
NPC [k$] | 54.619 | 54.983 | 54.821 | 55.003 |
Items | Base Case | Case 1 | Case 2 | Case 3 |
---|---|---|---|---|
PV capacity per HH [kWp] | - | - | 0.828 | 0.828 |
Number of PV | - | - | 87 | 87 |
Total PV capacity [kWp] | - | 72 | 72 | 72 |
Max. Voltage [pu] | 1 | 1 | 1 | 1 |
Min. Voltage [pu] | 0.910 | 0.910 | 0.910 | 0.910 |
Payback period [Year. Month] | 3.634 | - | - | - |
Total energy loss [MWh] | 189.274 | 184.948 | 162.007 | 157.673 |
Energy purchased [MWh] | 7425.564 | 5301.675 | 5210.281 | 5552.774 |
PV produced [MWh] | - | 2119.563 | 2188.016 | 1841.189 |
Cost of energy purchased [k$] | 898.493 | 641.503 | 630.444 | 671.886 |
CAPEX [k$] | 13.197 | 153.925 | 153.925 | 153.925 |
OPEX [k$] | 68.199 | 70.243 | 73.747 | 61.233 |
NPC [k$] | 55.003 | −83.683 | −80.178 | −92.692 |
Autonomous energy [%] | - | 29 | 30 | 25 |
CO2 emissions [tons] | 2970.226 | 2254.939 | 2168.381 | 2292.357 |
CO2 emissions reduction [%] | - | 24 | 27 | 23 |
Items | Base Case | Case 1 | Case 2 |
---|---|---|---|
PV capacity per HH [kWp] | - | - | 0.828 |
Number of PV | - | - | 87 |
Total PV capacity [kWp] | - | 72 | 72 |
Max. Voltage [pu] | 1 | 1 | 1 |
Min. Voltage [pu] | 0.910 | 0.910 | 0.910 |
Payback period [Year. Month] | 3.634 | - | - |
Total Energy loss [MWh] | 189.274 | 188.758 | 252.045 |
Energy purchased [MWh] | 7425.564 | 5187.568 | 5177.661 |
PV produced [MWh] | - | 4350.979 | 4350.979 |
Energy injects to MV grid [MWh] | - | 2113.498 | 2040.305 |
Cost of energy purchased [k$] | 898.493 | 627.696 | 626.497 |
CAPEX [k$] | 13.197 | 125.341 | 125.341 |
OPEX [k$] | 68.199 | 79.457 | 79.740 |
NPC [k$] | 55.003 | −45.884 | −45.601 |
Autonomous time [%] | - | 36 | 36 |
Autonomous energy [%] | - | 59 | 59 |
CO2 emissions [tons] | 2970.226 | 2362.192 | 2253.805 |
CO2 emissions reduction [%] | - | 20 | 24 |
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Eam, D.; Vai, V.; Chhlonh, C.; Eng, S. Planning of an LVAC Distribution System with Centralized PV and Decentralized PV Integration for a Rural Village. Energies 2023, 16, 5995. https://doi.org/10.3390/en16165995
Eam D, Vai V, Chhlonh C, Eng S. Planning of an LVAC Distribution System with Centralized PV and Decentralized PV Integration for a Rural Village. Energies. 2023; 16(16):5995. https://doi.org/10.3390/en16165995
Chicago/Turabian StyleEam, Dara, Vannak Vai, Chhith Chhlonh, and Samphors Eng. 2023. "Planning of an LVAC Distribution System with Centralized PV and Decentralized PV Integration for a Rural Village" Energies 16, no. 16: 5995. https://doi.org/10.3390/en16165995
APA StyleEam, D., Vai, V., Chhlonh, C., & Eng, S. (2023). Planning of an LVAC Distribution System with Centralized PV and Decentralized PV Integration for a Rural Village. Energies, 16(16), 5995. https://doi.org/10.3390/en16165995