Simulation and Analysis Approaches to Microgrid Systems Design: Emerging Trends and Sustainability Framework Application
Abstract
:1. Introduction
2. Background on Energy Planning and Simulation Strategy
2.1. Existing Simulation Tools
2.2. Emerging Simulation Strategies
3. Materials and Methods
3.1. Input Unit
3.2. Processing and Optimization Unit
3.2.1. Solar Photovoltaic Power Model
3.2.2. Wind Power Model
3.2.3. Hydropower Model
3.2.4. Diesel Power Model
3.2.5. Battery Model
3.2.6. Inverter Model
3.2.7. Hybrid Power Model
3.2.8. Users’ Daily Demand Profile
3.2.9. Reliability of the System
3.2.10. Economic Analysis
3.2.11. Environmental Analysis
3.3. Output Unit
Policy Integration with STEE Model (Output 2)
3.4. Application of the Proposed Simulation Framework
4. Results
4.1. Need for Energy Systems Software Based on Sustainability Dimensions
4.2. Future Research Directions
- Design and simulation of microgrid systems using the artificial intelligence technique such as the fuzzy-based multi-criteria decision-making (MCDM) analysis based on the STEE input parameters presented in the paper compared with the strategy presented in this study;
- Development of a software based on STEEP criteria.
5. Conclusions
Author Contributions
Funding
Conflicts of Interest
References
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Study Presented | Planning Dimension | Software/Technique |
---|---|---|
Technical and economic design, modelling and performance analysis of microgrid systems based on renewable and non-renewable resources and storage | TE | MILP [10]; HOMER/ANN-BP and LM [11]; optimal and sensitivity analysis [13]; HOMER/comparative analysis [14,15]; MANGO [16]; HOMER/integrated analysis [18]; modified non-dominated sorting GA [19]; MATLAB/MILP [20]; mixed integer MOO [22]; GA [23]; HOMER [24]; Monte Carlo simulation [25]; HOMER/PSO [26]; HOMER/TOPSIS [27]; HOMER/MATLAB [28]; GA [32]; HOMER/MATLAB [33]; HOMER/MATLAB/DSM [34]; HOHER RETScreen [35]; CPLEX [37], MATLAB/MPM-GAMS [40]; MOO [42] |
Technical, economic and environmental design, simulation and performance analysis of microgrid system with storage | TEE | MILP [10]; Eco-SIM [31]; RETScreen [36]; AHP-MCDM [38] |
Social, technical and economic design, modelling and analysis of microgrid systems | STE | GA, PSO and TLBO [12]; DIgSILENT PowerFactory, HOMER/integrated analysis [21] |
Technical design, modelling and performance analysis of microgrid systems | T | GA and Python optimal control problem [29]; MOO and MCDM [30]; fuzzy logic control strategy [39]; MATLAB Simulink/agent-based model [41]; MATLAB and HOMER [43], IoT-based approach [44] |
Tool | Description | Features/Application |
---|---|---|
HOMER | Hybrid Optimization Model for Electric Renewables [45,46,47,48,49,50,51,52,53,54,55,56] | A commercial tool for district modeling of microgrids, advanced optimization modeling and simulation of solar PV, wind, fuel cells, and biomass energy systems with battery storage, including the performance analysis [46,47], cost and environmental evaluation [48,49,50]. It helps in determining the optimal component sizes. Advanced analysis such as harmonics, voltage and frequency analyses, dynamic simulation, etc., cannot be performed with HOMER. |
PVSyst | The name of the software is derived from PV and system [57,58,59,60,61,62] | For pre-sizing inverter and solar PV module in the design of solar photovoltaic microgrids. It can also perform different analyses such technical, economic and carbon emission balance [58,59,60]. It is limited by the fact that it supports only a single-source renewable energy system, i.e., PV but can be integrated with other tools to achieve a desired goal [46]. The tool cannot perform advanced analysis such as harmonics, voltage and frequency analyses, dynamic simulation, etc. |
DIgSILENT | Digital Simulation and Electrical Network Calculation Program [63,64,65,66,67] | A versatile tool used across the generation, transmission and distribution systems, including microgrids. It can perform technical and cost analyses. The DIgSILENT Programming Language (DPL) scrips [63] are embedded in the tool that enables it to perform different functions and rigorous simulations such balanced and un-balanced load flow, dynamic simulations, optimal and voltage stability issues, etc. |
PSCAD | Power System Computer-Aided Design [68,69,70,71] | A widely used software equipped with a flexible graphical user interface to the Electromagnetic Transients (EMTDC) simulation engine. It is sophisticated and can interface with Simulink similar to the Power Factory; it is employed for modelling AC/DC transmission [70,71], wind simulation [72]. It is also employed for advanced power systems analyses such as reactive control, integration of renewable energy and power flow [73,74,75,76,77]. |
ETAP | Electrical Transient Analyzer Program [78,79,80,81] | For designing protection systems in electrical grid systems, load flow and transient stability studies [82,83,84], including total harmonic distortion evaluation [85]. The tool can be used in simulating relay coordination in an electrical system with microgrids. |
MATLAB | Matrix Laboratory [86,87,88,89,90,91,92,93,94,95,96,97,98] | It performs numerical computations in such a manner that ensures flexibility of creating models and then using different blocks to represent the model; the tool can interoperate with Simulink tool box [87,88]. It is a sophisticated software that can model and simulate different aspects of electrical systems, including the technical, economic and control aspects of microgrids [89,90,91], optimization [92], voltage analysis, etc. [93,94,95]. |
SAM | System Advisor Model [99] | For residential and district modeling of energy systems [99]. Similar to the HOMER tool, SAM can model microgrids based on PV, wind fuel cells and biomass systems [100,101,102,103], including the concentrated solar thermal system [104]. The tool also supports weather-dependent data for simulating microgrid systems [105,106,107]. It is lacking in terms of optimization processes [46]. |
TRNSYS | Transient System Simulation [108,109,110,111,112,113]. | For designing and studying the behavior of electrical power systems [49]. It can also be used for modeling RE, batteries and thermal storage systems and the performance of heating, ventilating and air conditioning (HVAC) system [109]. One of the challenges of the tool is that it is tedious and time-consuming to design and set up individual components [108,110,111]. |
EnergyPLAN | Advanced energy system computer model [114] | For designing and simulating the operation of energy systems on an hourly basis [115]. It has a user-friendly interface and can present a techno-economic performance evaluation of microgrid systems. |
Sustainability Dimension | Parameters |
---|---|
Social | Users’ status: this provides information about the proposed users and their financial capacity. This is represented by a1. |
Users’ appliances: the kinds of appliances usually provide information about the electrical load requirements of the intended users. This is represented by a2. | |
Users’ preference: this indicates the choice of the energy system by the users, e.g., diesel/petrol, solar, wind, biomass, depending on the availability in the community. This is represented by a3. | |
Users’ availability: this provides information about the number of hours the proposed users are available at home to utilize the energy. For instance, some users can be available for 6 hrs, 9 hrs, 12 hrs, etc. This is represented by a4. | |
Willingness to pay for the energy supply is also key information, which is represented by a5. | |
Technical | Users’ energy demand: this describes the quantity of energy be utilized by the users on a daily basis. This is needed to ascertain the energy consumption over a period of 24 h, i.e., the users’ load demand profile. This is represented by b1. |
Users’ energy demand growth: this describes the increase in the users’ energy consumption over time. This may be assessed in terms of percentage demand increase per year, represented by b2. | |
Energy system configuration: this describes whether the system model is grid-connected or off-grid, and it is represented by b3. | |
Battery state of charge (SoC) and depth of discharge (DoD): these are presented in percentage to describe the minimum and maximum state of charge, and the depth of discharge of the battery bank. These are represented by b4 and b5. | |
Efficiency of components: this describes the efficiency of the energy generator, battery, and inverter. These are represented by b6, b7 and b8. | |
Project lifespan: this is the lifespan of the energy system and is represented by b9. | |
Economic | Initial capital cost of the participating components: this defines the initial component cost. This is represented by c1. |
Discount rate: this is represented by c2 | |
Inflation rate: this is represented by c3 | |
Project lifetime: this is represented by c4 Operation cost: this is represented by c5 | |
Environmental | Types of fuel used by the system: this ascertains whether the fuels used by the system is fossil fuel or renewable energy-based. It is represented by d1. |
Emission rate of the energy system: this describes the amount of emissions in kg released by the energy system per kWh of energy produced. These emissions carbon dioxide, carbon monoxide, unburned hydrocarbon, particulate matter, sulfur dioxide and nitrogen oxides are represented by d2, d3, d4, d5, d6 and d7. | |
Noise level of the energy system: this parameter describes the noise level of the energy system in decibel (dB). It is represented by d8. | |
Location’s energy resource: this describes the energy resource of the site for a whole year. The energy resources could be solar, wind, hydro, biomass, diesel/petrol, etc. These values from January to December are represented by d9 to d20. | |
Location’s ambient temperature: this describes the ambient temperature of the location for a year. These values are represented by d21 to d32. |
Sustainability Dimension | Parameters |
---|---|
Social | It is necessary to ascertain whether or not the energy system suits the users’ financial status. This aspect of the result is represented by . |
Users’ electrical load being powered by the energy system. This is represented by . | |
It is a crucial aspect of the result to indicate whether or not the users’ energy system preference has been met. This is represented by . | |
An aspect of the result is also meant to answer the question of whether or not the energy supply meets the users’ availability in terms of how many hours of users’ demand met. This is represented by . | |
Information about the number of people within the community or location who are willing to pay for the energy supply is represented by . | |
Technical | The users’ energy demand over a 24-h being satisfied by the energy system is represented by . It is necessary to showcase this to ascertain whether or not the energy generation meets the demand. |
An aspect of the result needs to reveal the amount of users’ energy demand growth catered for in terms of percentage demand increase per year. This is represented by . | |
The result obtained is also determined by whether the system is off-grid or grid-connected. This is represented by . | |
The value of availability and loss of load probability are represented by and . | |
Results of the battery SoC and DoD over the daily profile are represented by and . | |
The capacity of the energy system in (kW) is represented by . | |
The annual energy generation of the energy system, measured in kWh/yr, is represented by . | |
Renewable energy contribution versus diesel fuel contribution is represented by and . | |
Economic | Total initial capital cost of the energy system is represented by . |
Total cost of replacement of components is represented by . | |
Total operation and maintenance (O and M) is represented by . | |
Net present cost (NPC) is represented by . | |
Cost of Energy (CoE) is represented by . | |
Environmental | The emission rate is measured in kg/kWh. The carbon dioxide, carbon monoxide, unburned hydrocarbon, particulate matter, sulfur dioxide and the nitrogen oxides emissions of the energy system (kg/yr) are represented by , , ,, and . |
Noise level of the energy system is represented by , especially by rotating systems such as wind and diesel/petrol generators. | |
The average monthly value of the location’s energy resource is represented by | |
The average monthly location’s ambient temperature is represented by |
Appliance (a2) | Rating (W) | Unit | Total Load (kW) |
---|---|---|---|
Indoor lighting | 15 | 6 | 0.09 |
Outdoor lighting | 15 | 10 | 0.15 |
TV | 150 | 1 | 0.15 |
DVD | 25 | 1 | 0.025 |
Fridge | 150 | 1 | 0.15 |
Fan | 60 | 1 | 0.06 |
Clipper | 10 | 1 | 0.01 |
Total | 0.635 |
Month | Solar Irradiation (kWh/m2/hr) | |
---|---|---|
January | 5.28 | 28.3 |
February | 5.49 | 28.5 |
March | 5.46 | 28 |
April | 5.21 | 28 |
May | 4.76 | 27.9 |
June | 4.04 | 26.9 |
July | 3.95 | 25.9 |
August | 3.98 | 25.6 |
September | 4.09 | 26.1 |
October | 4.55 | 26.6 |
November | 4.95 | 27.3 |
December | 5.17 | 28 |
Component | Unit | Cost/Unit (USD) | Total Cost (USD) |
---|---|---|---|
PV module per W | 120,000 | 0.54878 | 65,853.66 |
Battery cell | 48 | 416.67 | 20,000.16 |
Inverter | 1 | 14,048.78 | 14,048.78 |
Installation | 4 | 2500 | 10,000 |
Gen | 1 | 1 | 3609.76 |
113,512.36 |
Sustainability Dimension | Input Parameters | Output Parameters |
---|---|---|
Social | a1: Low and medium income earners | : Users have different income and financial status and capability such as low to medium earners between less than USD 100 to USD 1000. For instance, minimum wage is NGN 30,000 (USD 73.2) and some earners exist with about USD 600 per month. |
a2: Appliances are as shown in Figure 3 0.635 kW load per house; 38.1 kW load for 60 houses. | : Users’ demand requirement is 141,737 kWh/yr for the 60 houses, with peak load of 32.82 kW. | |
a3: Clean and quiet energy solution such as solar PV electricity | : Users’ preference is met with a technical suggestion of solar and diesel hybrid system | |
a4: Users with different availability such as 12, 16, 18 and 24 h/d. | : the design guarantees a 24-h energy supply | |
a5: Users appreciate and willing to pay for reliable energy supply. | : cost of energy supply is expected to justify the affordability given the users’ financial status | |
Technical | b1: 6.472 kWh/d per house; 388.32 kWh/d for 60 houses | : Users’ demand of 141,737 kWh/yr is met by the solar/diesel energy design. |
b2: 25% load growth is assumed | : 25% load growth is 35,434.25 kWh/yr. Energy system will cater for a total users’ demand of 177,171.25 kWh/yr. | |
b3: Off-grid configuration | : Energy system is configured as off-grid to serve alternative electricity system to address the users’ energy-poverty situation. | |
b4: Minimum SoC = 30%; b5: Maximum DoD = 70% | : LOLP is 0. : Availability is 1. | |
b6: PV module efficiency = 18%; b7: Battery cell efficiency = 86%; b8: Inverter efficiency = 90% | : SoC > 30% level over the year : DoD < 70% level over the year : Battery size is 6719 Ah at 96 V : Inverter size is about 70 kVA. | |
: Solar PV is 120 kW and diesel gen is 37 kW. The capacity that caters for the load growth is 120 kW PV and 46 kW. | ||
: The energy system generates 239,702 kWh/yr. | ||
: Solar contribution is 62.13% : Diesel contribution is 37.87% | ||
Economic | : Initial cost of component as shown in Table 7. | : the total initial capital cost of the system is USD 113,512.36 |
: 6% : 5% | : the total replacement cost of the system is USD 61,446. | |
: 25 years | : the total operating and maintenance cost of the system is USD 393,863. : the life cycle cost of the system is USD 962,685. : the cost of energy is USD 0.314/kWh. | |
Environmental | : solar and diesel resources | : 78,253 kg/yr |
: 0.3265000 kg/kWh | : 493 kg/yr | |
: 0.0021000 kg/kWh | : 21.5 kg/yr | |
: 0.0000897 kg/kWh | : 2.99 kg/yr | |
: 0.0000012 kg/kWh | : 192 kg/yr | |
: 0.0008010 kg/kWh | : 463 kg/yr | |
: 0.0019316 kg/kWh | : Noise level of about 50 kVA diesel generator is much lower than the smaller generator because of a sound-proof design. | |
: Less than 90 dB for low-rated petrol gen such as 2.5 kW Elepaq Gen. | : Average solar irradiation is 4.74 kWh/m2/d | |
to : shown in Table 4 | : Average ambient temperature is 27.26 . | |
to : shown in Table 4. | ||
Policy | e1: Subsidy/incentive | |
e2: Transition to smart and energy-efficient appliances | ||
e3: Energy tariff and revenue generation | ||
e4: Usage credit and collaboration |
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Akinyele, D.; Amole, A.; Olabode, E.; Olusesi, A.; Ajewole, T. Simulation and Analysis Approaches to Microgrid Systems Design: Emerging Trends and Sustainability Framework Application. Sustainability 2021, 13, 11299. https://doi.org/10.3390/su132011299
Akinyele D, Amole A, Olabode E, Olusesi A, Ajewole T. Simulation and Analysis Approaches to Microgrid Systems Design: Emerging Trends and Sustainability Framework Application. Sustainability. 2021; 13(20):11299. https://doi.org/10.3390/su132011299
Chicago/Turabian StyleAkinyele, Daniel, Abraham Amole, Elijah Olabode, Ayobami Olusesi, and Titus Ajewole. 2021. "Simulation and Analysis Approaches to Microgrid Systems Design: Emerging Trends and Sustainability Framework Application" Sustainability 13, no. 20: 11299. https://doi.org/10.3390/su132011299
APA StyleAkinyele, D., Amole, A., Olabode, E., Olusesi, A., & Ajewole, T. (2021). Simulation and Analysis Approaches to Microgrid Systems Design: Emerging Trends and Sustainability Framework Application. Sustainability, 13(20), 11299. https://doi.org/10.3390/su132011299