Advances in the Design of Renewable Energy Power Supply for Rural Health Clinics, Case Studies, and Future Directions
Abstract
:1. Introduction
- A comprehensive overview and taxonomy of renewable energy microgrids.
- Detailed procedure on the feasibility analyses of renewable energy resources for electrical power generation.
- Extensive review and taxonomy on the design of electrical power for health care systems.
- A proposed system procedure for reliability studies of renewable energy microgrids suitable for health care services.
2. Renewable Sources and Availability for Rural Healthcare
2.1. Solar Energy Availability
- For the Dual Axis:
- For the Single Axis:
- For the Fixed Panel:
- : PV output power;
- : solar radiation at standard test conditions;
- solar radiation from the operating point;
- : output power under standard test conditions;
- : PV cell temperature;
- : ambient temperature;
- : reference temperature of the model;
- : nominal cell operating temperature;
- : Boltzmann’s constant;
- : empirically determined diode factor for each cell;
- : normalized temperature for ;
- : temperature coefficient for ;
- : temperature coefficient for ;
- : empirically determined coefficient relating ;
- : empirically determined coefficient relating .
2.2. Wind Resource Availability
3. Battery Storage Systems for Healthcare Power Systems
4. Design of a Renewable Energy Microgrid for Health Centers
4.1. Energy Demand of Rural Health Care Clinics
4.2. Probability Distributions
4.2.1. Weibull Distribution Function
4.2.2. Rayleigh Distribution
4.2.3. Gamma Distribution
4.2.4. Lognormal Probability Distribution
4.2.5. Beta Distribution
4.2.6. Logistic Distribution
4.3. Goodness of Fit
4.3.1. Root Mean Square Error (RMSE)
4.3.2. Kolmogorov–Smirnov Test
4.3.3. Anderson–Darling Test
4.3.4. Chi-Square Test
5. Optimization Approaches for Sizing Microgrid Systems for Healthcare Clinics
5.1. Conventional Approaches
5.2. Ampere Hourly Method
5.3. Trade-Off Technique
5.4. Classical Techniques
5.5. Biological Techniques of Sizing Microgrid
5.5.1. Particle Swarm Optimization
- and are the jth components of the ith particle’s position and velocity vector, respectively;
- and are the acceleration coefficients;
- and are uniformly distributed random numbers between 0 and 1;
- xbest(i) is the best position of particle i until iteration k;
- gbest is the best position of the group;
- k is the constriction factor.
5.5.2. Genetic Algorithm
5.5.3. Artificial Neural Network
6. Reliability of Power Supply for Rural Healthcare Clinics
- L: the expected load;
- CA: available system generation capacity;
- Cj: remaining system generation capacity;
- Pj: probability of a system capacity outage;
- P: probability;
- tj: % time when the system demand exceeds Cj.
6.1. System-Level Reliability Indices of Microgrids
6.2. Maintenance and Reliability Indices
7. Taxonomy of Proposed Energy Sources for Healthcare Facilities
8. Characteristics of Modeling Tools for Realistic Sizing of Healthcare Center Energy Requirements
8.1. Ability to Represent the Variability
8.2. Renewable Base Power Generation
8.3. General System Benefit
8.4. Validation of the Results
9. Future Directions and Lessons Learned
9.1. Inaccurate Load Modeling Techniques
9.2. Lack of Optimal Sizing
9.3. The Need for Reliable Power Supply
9.4. The Need for Realistic Reliability Studies of the Developed Models
9.5. Development of Maintenance Strategies
9.6. Applications of Artificial Intelligence Techniques for Rural Healthcare Applications
10. Conclusions
Funding
Acknowledgments
Conflicts of Interest
Abbreviations
AC | Alternating current |
ANN | Artificial neural network |
DC | Direct current |
ECDF | Empirical Cumulative Distribution Function |
GA | Genetic algorithm |
HOMER | Hybrid Optimization of Multiple Energy Resources |
IAE | The International Energy Agency |
PV | Photovoltaics |
RES | Renewable energy source |
USAID | The United States Agency for International Development |
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S/No | Index | Solar | Wind | Water |
---|---|---|---|---|
1 | Safety | Y | Y | Y |
2 | Effectiveness | Y | Y | Y |
3 | Durability | Y | Y | Y |
4 | Resilience | Y | Y | Y |
5 | Accessibility | Y | Y | P |
6 | Adaptability | Y | Y | Y |
7 | Marketability | Y | P | P |
8 | Affordability | N | P | P |
9 | Sustainability | P | P | Y |
10 | Environmental Ability | Y | Y | Y |
11 | Recycling Ability | P | P | P |
S/No | Index | Sodium-Based Batteries | Lithium-Based Batteries | Flywheels | Nickel-Based Batteries |
---|---|---|---|---|---|
1 | Effectiveness | Y | N | Y | Y |
2 | Performance | Y | Y | Y | Y |
3 | Durability and robustness | N | Y | Y | N |
4 | Resilience (local environment) | Y | Y | Y | Y |
5 | Safety | N | N | NA | Y |
6 | Operation | ||||
7 | maintenance | Y | Y | N | N |
8 | Marketability | N | N | N | |
9 | Affordability | N | N | N | N |
10 | Environmentally friendly/recycling | Y | N/P | Y | N |
S/No. | Method | Advantage(s) | Disadvantage(s) |
---|---|---|---|
1 | Conventional Approaches | Simple | Reliability of power supply is not guaranteed Cost of components might not be realistic |
2 | Ampere Hourly Method | Simple | Inability to take weather variations into consideration Component sizing could be undersized or oversized |
3 | Trade-off | Decision-makers and system designers can participate in the final decision | Inability to meet the nonlinearity requirements of the system Time consuming and complex |
4 | Classical | Complexity of the model could be a serious concern | Time consuming |
5 | Biological | Capable of solving complex optimization problems Predictability of future states of the system designed Ability to handle noisy data sets | Reliability Measurable Too much focus on nature Theories are developed according to disorders and eventually apply to everyone |
S/No. | Ref. | Details of the Microgrid, Including Objective Function | Mathematical Model |
---|---|---|---|
1 | [50] | Characteristics of lead-acid battery storage connected to a hybrid microgrid have been modeled | The model considered the cost, fuel, environment, and operational cost of the system. NSGA II was used to minimize battery life loss |
2 | [51] | PV-wind-diesel-battery microgrid optimal system component sizes were determined | Dividing the rectangle with DIRECT algorism was used to minimize the total system cost |
3 | [52] | A PV-wind generator was designed, and system component sizes were obtained considering uncertainties in load and solar radiation at different times. | Modified PSO has been applied to determine the objective function of minimizing cost and determining system reliability |
4 | [53] | A wind-solar-battery microgrid has been developed, and component sizes have been obtained | PSO determined system cost and reliability for a period of 20 years |
5 | [54] | Relationship between operational and environmental costs has been modeled and optimized | Integrated approach combining Simulated annealing, ant colony optimization, PSO, and GA have been used to determine the role of diesel generators in microgrids |
6 | [55] | The objective is to maximize system reliability while minimizing system cost for a PV-wind microgrid | constrained mixed-integer multi objective particle swamp optimization (CMIMOPSO) algorithm |
7 | [56] | Authors were able to model the effect of location on the optimum design of a microgrid for power supply | Time-matching algorithm has been applied |
8 | [57] | Model for the optimum design of microgrid has been developed, and it minimizes system cost while minimizing the cost-to-reliability ratio | Linear programming |
9 | [58] | Total cost and dumped power were considered objective functions; additionally, geographical factors were modeled as system constraints | Grey Wolf Algorithm (GWO) was used to determine the optimum sizes of components. The model has been able to provide better convergence and robustness. |
10 | [59] | Costs of production, emissions, and customer outages were minimized | Multi-objective optimization has been applied |
Ref. | Proposed Energy Source | Major Findings | Location |
---|---|---|---|
Tool(s) | HOMER | ||
Olatomiwa et al. [71] | Hybrid (solar, wind, diesel, and battery) | Among the site analyses, Sokoto and Jos have the highest wind potentials. Also, all the sites are suitable for small solar power. Finally, PV/diesel/battery is ideal for healthcare. | Nigeria |
Ani [72] | Solar energy with battery storage | PV-storage is proposed as the best for primary healthcare. The system could reduce 9371 kg of carbon if implemented and is suitable for the equipment of the center while decreasing the lifecycle and costs by 75% each. | Karshi, Nigeria |
Soto et al. [73] | Solar energy | Explore the opportunities and challenges associated with solar energy for rural health centers. The study is on the operational, environmental, and economic viability of green energy solutions. | - |
Olatomiwa et al. [74] | Hybrid (solar, diesel, and battery) | Techno-economic studies of different health centers have been presented. The results have shown that wind and solar energy availability in Nigeria could improve healthcare accessibility. | Fatika, Nigeria |
Olatomiwa [75] | Hybrid (solar, wind, diesel, and battery) | The optimal design of three grid-unconnected villages has been analyzed [76]. The results have shown that a PV/wind diesel generator storage system is viable and is the best option for Maiduguri and Enugu. However, the Iseyin site is better with the PV/diesel/battery system option. | Maiduguri and Enugu, Nigeria |
Iseyin, Nigeria | |||
Hybrid (solar, diesel, and battery) | |||
Olatomiwa et al. [77] | Hybrid (solar, diesel, and battery) | Demand-side energy management has been developed for rural health centers. The output of various simulations has shown a decrease in cost energy of 25.8% while the net present value decreased by 70%. | Karu, Nigeria |
Oladigbolu et al. [77] | Hybrid (solar, diesel, and battery) | Techno-economic analysis of PV/wind/diesel generator/battery has been carried out, and the results have shown that operating, fuel, and energy costs, as well as fuel consumption are sensitive to system sensitivity parameters of the entire power system. | Kudu, Nigeria |
Nwachuku [78] | Micro hydropower plants | The study has suggested the use of micro hydropower as the best technology that could improve electricity access to the health clinics in the study area. | Orumba, South Nigeria |
Palanichamy and Naveen [79] | Solar, wind, diesel generator, and battery | Wind-PV-DG-battery microgrid was proposed for all India Institute of Medical Sciences (AIIMS) return on investment, payback period, and levelized cost of energy have shown the possibility of the proposed system. | Madurai, India |
Peirow et al. [80] | Solar energy | A rooftop hospital possibility has been investigated in order to improve electricity access in Tehran. | Tehran, Iran |
Twizeyimana and Ndisanga [81] | Solar PV with a backup system interconnected with power grid and diesel generator | HOMER. | Kolandoto Hospital, Tanzania |
Olatomiwa et al. [82] | Hybrid, PV-wind-diesel generator-battery microgrid | HOMER software. | Geo-political zones of Nigeria |
Babatunde et al. [83] | Standalone PV-battery microgrid | A standalone PV system was designed for a health clinic in Northwest Nigeria. The proposed system could avoid 8357–8956 kg/year of CO2 when implemented. | Abadam, Local Govt, Northwest Nigeria |
Kowsar et al. [84] | Solar PV grid-connected microgrid | Analysis of the proposed system has shown that a grid-connected system is the best option in the study area. The cost of electricity is significantly lower than the present electricity price in Bangladesh. | Charbhadrashan Upazila, Faridpur District Bangladesh |
Nourdine and Saad [85] | Utility+PV+battery microgrid | Moroccan health centers have been investigated for solar energy microgrids. The proposed system has been analyzed for efficiency, cost, and environmental effects. | Souss-Massa region in Morocco |
Islam et al. [86] | Utility+PV+battery microgrid | Load analysis of the system has shown that a 32 kW solar grid-connected system is required for the optimum system power supply. | Gangachara Upazila Northwest Bangladesh |
Isa et al. [87] | Utility+PV+battery microgrid | A grid-connected solar PV system for the supply of electricity to the health clinics in Malaysia has been analyzed. Parameters analyzed include total net present value, levelized cost of energy, and total net present post. | Temerloh Pahang, East Peninsular Malaysia |
Alsagri et al. [88] | PV-battery-fuel cell-electrolyzer-DG | Different excess electricity reduction methods have been investigated. Also, it has been shown that a 30% renewable energy fraction supplies electricity to the health clinic at a rate of 0.105 USD/kWh. | Al Hayyaniyah, Saudi Arabia |
Razmjoo et al. [89] | PV/WT/diesel generator/fuel cell/battery | Carbon reduction has been developed. The optimal design has shown a cost of 0.151 $/kWh at a 15.6% rate of return, and also, 2000 kg of carbon emissions have been estimated per household annually. | Iran |
Amin et al. [90] | PV/WT/biodiesel generator/diesel generator/Battery | PV-wind/fuel/battery microgrid has been designed, and the design has shown a salvage effect on the short and long term in the range of 3 to 30%. Also, 12.5 and 21.4% of the renewable energy fraction have achieved 0.130 USD/kWh to 0.167 USD/kWh in electricity costs. | Iran |
Kobayakawa and Kandpal [91] | Standalone PV/biomass generator/battery | Off-gird PV microgrids have been analyzed, considering operation, maintenance, and cost of energy. HOMER. | India |
Singh and Baredar [92] | Standalone, PV/fuel cell/biomass gas | Total power from the system has been found to be 36 kWh/year. Also, the economics of the system have been analyzed, and it is clear that the proposed microgrid is economically and technically viable. HOMER. | India |
HOMER software. | |||
Tool(s) | MATLAB | ||
Assaf and Shabani [93] | PV/fuel cell/solar collector | Solar PV with hydrogen and solar thermal systems have been analyzed. The proposed system has a reliability between 95 and 100%. | Australia |
Hohne et al. [94] | Solar and electrical energy storage device | Solver in the OPTI-Toolbox for MATLAB (SCIP). | Bloemfontein, South Africa |
Renedo et al. [95] | Gas turbine and diesel generator | Trial-and-error method. | Spain |
Miguel et al. [96] | Combined heat, cooling, and power systems | Model development and solving using mixed-integer linear programming. | Zaragoza, Spain |
Najafi et al. [97] | PV/battery | PV-battery power system designed for providing peak power demand, and the economic analysis has shown an improvement in COE and NP by 8.1 and 6.7, respectively. Also, the system is economical when the demand is above 10 kWh/d. | Iran |
Ogedengbe et al. [98] | PV/WT | A renewable energy calculator was developed to enable system designers to determine energy audits and energy savings for hybrid renewable energy power systems. | Nigeria |
Pena-Bello et al. [99] | PV/battery | Open-source software is proposed for the choice of battery storage option in different environments. The proposed method has shown about 66% improvement compared to PV self-consuming systems. | Switzerland, USA |
Ayeng’o et al. [100] | PV/battery | A PV model that considered incident solar radiation, temperature, and the number of cells. The model is tested in Tanzania and is proposed to be used in any part of the globe. | Tanzania |
Guangqian et al. [101] | PV/battery | A hybrid algorithm for sizing of wind-PV-biodiesel-battery storage has been developed and tested in Iran. The objective function is to minimize the life-cycle cost of the system. Simulated annealing and harmony search algorithms were used in hybrid modes. | Iran |
Eteiba et al. [102] | PV/biomass/battery | A techno-economic study of the proposed microgrid has been carried out by minimizing the net present value, loss of power supply probability, and percentage of excess energy. Also, different battery storage options have been analyzed. Among all the algorithms used, the Firefly algorithm has the least execution time and the best performance. | Egypt |
Nadjemi et al. [103] | PV/WT/battery | The sizing of microgrids using the Cuckoo search algorithm has been presented, and it was found to be better compared to the particle swarm optimization technique. The model was tested in Algeria; it was analyzed economically, technically, and environmentally. | Algeria |
Sanajaoba and Fernandez [104] | PV/WT/battery | In this optimization, the Cuckoo search algorithm is found to outperform GA and PSO for optimizing hybrid renewable energy microgrids. Other parameters used in the optimization include the wind turbine generator and the force outage rate. | India |
Lorenzi and Silva [105] | PV/battery | A model has been proposed to reduce electricity costs due to the presence of battery storage. In order to implement the proposed model, linear programming for time-of-use optimization applications for battery storage and demand response has been proposed. | Portugal |
Tool (s) | Other tools and techniques | ||
Vaziri et al. [106] | Objective function and constraints developed and solved using integer programming | A grid-connected microgrid energy management model was designed to minimize energy costs and ensure both surgeons and patients pleasures are maximized. | Iran |
Vaziri et al. [107] | Grid-connected PV-wind microgrid | IBM ILOG CPLEX Optimizer v12.3. | Iran |
Alamoudi et al. [108] | Solar PV grid-connected microgrid | The ANFIS technique was used for the analysis of the PV system at King Abdulaziz University in Saudi Arabia. Using the response surface model, the optimal working condition of the microgrid has been established, while ANFIS was used to determine the performance of the solar panel. | Saudi Arabia |
Yoshida et al. [109] | Grid-connected microgrid | Operational strategies and the system structure of a grid-connected microgrid have been proposed. Eventually, the output of the optimization will show that hybrid microgrids will be suitable for the hospital. | Japan |
Zubi et al. [110] | PV/battery | IHOGA software was used to design and model a microgrid under different operating conditions for a period of 30 years (2020–2040). Eventually, a PV battery system is selected as the best option for the selected cities. | Sample cities, worldwide |
Bingham et al. [111] | PV/WT/biodiesel generator | It has been established that net-zero buildings have a lower life cycle cost compared to standard buildings. Also, thermal insulation could reduce the energy consumption of electrical systems by 30%. NSGA II was used to determine the optimal system configuration. | Bahamas |
O’Shaughnessy et al. [112] | PV/battery | It has been established that solar PV microgrids have the potential to improve end-user economic conditions, considering time of use and demand charges, to mention just a few. | United States of America |
Rodríguez-Gallegos et al. [113] | PV/diesel generator/battery | Non-dominated sorting algorithm III has been proposed to optimize the microgrid with the objectives of reducing the cost of electricity, carbon emissions, and voltage deviations. Considering weather conditions, the results have shown the advantages of a hybrid system in terms of reduced cost, emissions, and power quality improvements. | Indonesia |
Mathematical Model (Technique) | Application Domain | References | Advantages and Disadvantages |
---|---|---|---|
Fuzzy logic model | Wind turbine MPPT control, wind turbine pitch control, wind power prediction, forecasting of wind power, wind turbine parameter determination/prediction, solar energy predictions, design, and analysis. | [119,120,121] | Flexibility Ease of implementation Robustness Interpretability Disadvantages Depends on human expertise, Tuning difficulty Limited accuracy Computational complexity |
ANN | Controller design for grid-connected systems, PID control, forecasting of wind energy, wind power forecasting for online applications, wind power forecast for short-term applications, system sizing, fault detection, and determination of flicker. | [122,123] | It has the ability to improve the sizing process Capability to learn the input and output relationship Future forecast of the system’s behavior |
GA | Pitch angle control, controller tuning, system modeling, siting of wind turbines, system modeling, optimization of power factor, and the energy of the system, etc. | [124,125] | Understandability Disadvantages Not efficient algorithm Does not guarantee the quality of the solution Computational challenges due to fitness value calculations |
Inference-based technique | Power factor prediction | [126,127,128,129,130] | Uncertainty handling capability Ability to model complex systems easily Save time and resources Disadvantages Domain experts are required to develop a model Expensive to compute when a complex system is involved Interpretation difficulty |
Fuzzy-based adaptive technique | Forecasting regional power | [131,132,133,134] | Adaptation capabilities, High generation capability, Flexibility Ability to capture the nonlinearity of the process Disadvantages High computational cost, Location of a membership function Curse of dimensionality Accuracy, interpretability, and trade-off |
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Abdulkarim, A.; Faruk, N.; Alozie, E.; Olagunju, H.; Aliyu, R.Y.; Imoize, A.L.; Adewole, K.S.; Imam-Fulani, Y.O.; Garba, S.; Baba, B.A.; et al. Advances in the Design of Renewable Energy Power Supply for Rural Health Clinics, Case Studies, and Future Directions. Clean Technol. 2024, 6, 921-953. https://doi.org/10.3390/cleantechnol6030047
Abdulkarim A, Faruk N, Alozie E, Olagunju H, Aliyu RY, Imoize AL, Adewole KS, Imam-Fulani YO, Garba S, Baba BA, et al. Advances in the Design of Renewable Energy Power Supply for Rural Health Clinics, Case Studies, and Future Directions. Clean Technologies. 2024; 6(3):921-953. https://doi.org/10.3390/cleantechnol6030047
Chicago/Turabian StyleAbdulkarim, Abubakar, Nasir Faruk, Emmanuel Alozie, Hawau Olagunju, Ruqayyah Yusuf Aliyu, Agbotiname Lucky Imoize, Kayode S. Adewole, Yusuf Olayinka Imam-Fulani, Salisu Garba, Bashir Abdullahi Baba, and et al. 2024. "Advances in the Design of Renewable Energy Power Supply for Rural Health Clinics, Case Studies, and Future Directions" Clean Technologies 6, no. 3: 921-953. https://doi.org/10.3390/cleantechnol6030047
APA StyleAbdulkarim, A., Faruk, N., Alozie, E., Olagunju, H., Aliyu, R. Y., Imoize, A. L., Adewole, K. S., Imam-Fulani, Y. O., Garba, S., Baba, B. A., Hussaini, M., Oloyede, A. A., Abdullahi, A., Kanya, R. A., & Usman, D. J. (2024). Advances in the Design of Renewable Energy Power Supply for Rural Health Clinics, Case Studies, and Future Directions. Clean Technologies, 6(3), 921-953. https://doi.org/10.3390/cleantechnol6030047