Modeling, Load Profile Validation, and Assessment of Solar-Rooftop Energy Potential for Low-and-Moderate-Income Communities in the Caribbean
Abstract
:1. Introduction
1.1. General Context
1.2. Contributions and Scope
1.3. Paper Organization
2. Test Community
2.1. Knowing the Community
- Hygienic: dirty roads, houses with accumulated garbage, etc.
- Energetic: people mention that the light is expensive, damaged network, etc.
- Educational: lack of knowledge regarding energy.
- Recreational: guide the community about the places available for parents to promote recreation in their children.
- Health: cancer, deterioration in the legs, diabetes, etc.
2.2. Tools for Solar Potential
3. Load Profiles Model and Assessment of the Solar-Rooftop Energy Potential
3.1. Study Case 1: Load Profiles Model
3.1.1. Inputs of Model
3.1.2. Outputs of Model
3.2. Study Case 2: Solar-Rooftop Energy Potential
3.2.1. Design
3.2.2. Solar Energy Potential
4. Development of the Methodology
4.1. Study Case 1: Development of Load Profiles Model Proposed in Simulink
4.1.1. Inputs of Model
4.1.2. Outputs
4.1.3. Collect Energy Demand Data for Households
4.2. Study Case 2: Development of Solar-Rooftop Energy Potential
4.2.1. Analysis and Design
4.2.2. Solar Energy Potential
4.3. Comparison between Consumption and Energy PV Generation
5. Validation Results
5.1. Study Case 1: Load Profiles Model Validation
5.2. Study Case 2: Results of Assessment of the Solar-Rooftop Energy Potential
5.3. Comparison between the Difference Consumption and Energy PV Generation
6. Conclusions and Future Work
6.1. Conclusions
- An analysis of the solar PV potential was carried out, where the community would support system installations between 5 kW and 15 kW, for the 1188 homes. A very important result of this analysis was the finding that approximately 74% of the households have three bedrooms or less; therefore, it is favorable for them to install a 4 kW photovoltaic system.
- In this study, it was found that a PV system with a minimum size of 4 kW can generate cumulative energy that, at the end of the day, supplies the entire cumulative energy demand for a load profile of a three-bedroom house. In practice, this is not enough to maintain the energy balance every moment due to the hours when there is no solar power generation, as the energy consumed cannot be fed and must be supplied by other sources such as batteries or the main power grid.
- A study was carried out to create profiles of houses of between one and five bedrooms to determine energy consumption.
- This study facilitates the steps to find the minimum PV system size for a household using NREL tools.
- This study serves as a basis for determining the minimum PV system size and is a starting point for selecting the capacity of the battery system needed to store excess energy or to supply the energy demanded by a household.
6.2. Future Works
- Use other photovoltaic solar simulation tools, which have greater efficiency in the use of solar irradiation.
- Extend this study to help determine the sizes of battery banks needed, without using mains power.
- Extend this study to help determine the required battery bank sizes for the stand-alone mode.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Population | |
---|---|
Total population (2020) Urban zone Rural zone | 73,336 70,360 2976 |
Population change (2010–2020) | −16,003 persons |
Population density (2020) | 940.8 persons/miles |
Town 1 km from the coast (2020) | 26,998 |
Proportion by sex (2020) | 91.2 men for every 100 women |
Median age (2020) | 42.1 years |
Percentage of people under 18 years of age (2020) | 17.1% |
Percentage of people older than 65 years or more (2020) | 24.1% |
Total Households | 29,542 |
Item | Characteristics |
---|---|
Number of inhabitants | Single Couple Couple with children Family with grandparents |
Lifestyle | Full-time employed Retired Homeworker |
Electrical appliances | Small (type devices) Medium (type devices) High (type devices) |
House size | One to five bedrooms |
Emergency case | Medical devices Basic appliances |
Bedrooms | Estimate | Percent |
---|---|---|
Total housing units | 1188 | |
0 bedroom | 41 | 3.50% |
1 bedroom | 108 | 9.10% |
2 bedrooms | 341 | 28.70% |
3 bedrooms | 537 | 45.20% |
4 bedrooms | 134 | 11.30% |
5 or more bedrooms | 27 | 2.20% |
Size | Device | Power Ranges (W) | Description |
---|---|---|---|
Small | Air conditioner window | 400–1000 | 8000 BTU |
Medium | Air conditioner mini-split A/C | 1001–2500 | 12,000 BTU |
Big | Air conditioner mini-split A/C | 2501–5000 | 24,000 BTU |
House | DC System Size 1 kW | DC System Size 2 kW | DC System Size 4 kW |
---|---|---|---|
One bedroom | −211.74 | 1257.72 | 4173.51 |
Two bedrooms | −2134.12 | −664.65 | 2274.28 |
Three bedrooms | N/A | −1468.27 | 1470.67 |
Four bedrooms | N/A | N/A | −1249.08 |
Five or more bedrooms | N/A | N/A | −1771.35 |
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Campo-Ossa, D.D.; Vega Penagos, C.A.; Garzon, O.D.; Andrade, F. Modeling, Load Profile Validation, and Assessment of Solar-Rooftop Energy Potential for Low-and-Moderate-Income Communities in the Caribbean. Appl. Sci. 2023, 13, 1184. https://doi.org/10.3390/app13021184
Campo-Ossa DD, Vega Penagos CA, Garzon OD, Andrade F. Modeling, Load Profile Validation, and Assessment of Solar-Rooftop Energy Potential for Low-and-Moderate-Income Communities in the Caribbean. Applied Sciences. 2023; 13(2):1184. https://doi.org/10.3390/app13021184
Chicago/Turabian StyleCampo-Ossa, Daniel D., Cesar A. Vega Penagos, Oscar D. Garzon, and Fabio Andrade. 2023. "Modeling, Load Profile Validation, and Assessment of Solar-Rooftop Energy Potential for Low-and-Moderate-Income Communities in the Caribbean" Applied Sciences 13, no. 2: 1184. https://doi.org/10.3390/app13021184
APA StyleCampo-Ossa, D. D., Vega Penagos, C. A., Garzon, O. D., & Andrade, F. (2023). Modeling, Load Profile Validation, and Assessment of Solar-Rooftop Energy Potential for Low-and-Moderate-Income Communities in the Caribbean. Applied Sciences, 13(2), 1184. https://doi.org/10.3390/app13021184