Outage Survivability Investigation of a PV/Battery/CHP System in a Hospital Building in Texas
Abstract
:1. Introduction
2. Method
2.1. REopt Lite
2.2. Modelling of the System
2.2.1. CHP
2.2.2. Battery
2.2.3. Grid
2.2.4. PV Module
2.2.5. Probabilistic Approach
3. Results and Discussions:
4. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Nomenclature
Abbreviations | |
DA | Days of autonomy. |
DOD | Depth of charge of the battery. |
STC | Standard test condition |
Parameters | |
Surface area of the PV module (m2). | |
Battery capacity (kWh). | |
Battery system size (kW). | |
Maximum storage capacity of the battery (kWh). | |
Minimum state of charge of battery (%). | |
In a time, step h, power delivered to the battery (kW). | |
In a time, step h, power dispatched from the battery (kW). | |
In a time, step h, energy stored in the battery (kW). | |
Demand cost. | |
Energy costs. | |
Cost of operation & maintenance. | |
Capital cost of PV, battery. | |
Capital cost for technology t ($/kW). | |
Electricity cost in time step h ($/kW). | |
Demand cost for month m. | |
O&M cost per unit size of the system for technology t ($/kW). | |
Rated capacity of PV array (kW). | |
Demand cost for ratchet r. | |
Capital cost of battery per kWh ($/kWh). | |
Capital cost of storage inverter per kW ($/kW). | |
Derating factor of solar PV array. | |
Monthly peak demand for month m (kW). | |
Peak demand in ratchet r (kW). | |
Average energy demand (kWh/day). | |
Hourly capacity factor for demand d for energy technology t in time step h at locations s (unitless). | |
Degradation factor for technology t (unitless). | |
Production factor for technology t, serving load l, in timestep h (unitless). | |
Fixed fuel consumption. | |
Varying fuel usage. | |
Consumption rate of the fuel, i.e., natural gas. | |
Solar irradiation on the PV panel’s surface (kW/m2). | |
Solar irradiation under STC. | |
Production size restriction for load l in time step h(kW). | |
Capacity of net metering level v at location s. | |
Electric power generation from the CHP unit. | |
Pg | Grid power. |
Load power demand. | |
, and | Power supplied by the corresponding energy sources. |
Rated production of technology t, serving load l. in timestep h (kW). | |
Heat power generation from the CHP unit. | |
R | Both the fuel burn rate and available usable heat for electric (e) and heat generation (h). |
Temperature under STC. | |
PV cell temperature in the current time step (°C). | |
System size for energy technology. | |
1 if the technology is active, else 0. | |
1 if location s is operated at the Net metering level v; otherwise, 0. | |
Temperature coefficient of power (%/degree C). | |
Efficiency of converter and battery. | |
Efficiency of the PV module under STC (%). | |
Efficacy of the roundtrip inverter. | |
Electric recovery efficiency of the CHP plant. | |
Heat recovery efficiency of the CHP plant. | |
Sets | |
Set of energy technologies (solar PV = PV and G = grid). | |
Set of all ratchets. | |
Set of all months. | |
Set of time steps | |
Set of loads, for site load, for Battery load, for export. | |
Set of net metering levels. | |
u ∈ U | Set of fuel bin. |
Set of all locations. |
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Parameters | Business as Usual (BaU) | Resilience | Financial |
---|---|---|---|
Average Annual PV Energy Production | - | 6,138,498 kWh | 4,288,000 kWh |
Average Annual Energy Supplied from Grid | 8,981,110 kWh | 2,763,060 kWh | 4,096,295 kWh |
CHP Electric Production | - | 1,344,622 kWh | 1,379,199 kWh |
CHP Thermal Production | - | 5279 MMBtu | 5386 MMBtu |
Total CO2 Emissions in Year 1 | 5919 tons | 2587 tons | 3409 tons |
Lifecycle Costs of Climate Emissions | $549,080 | $987,294 | $1,000,613 |
Lifecycle Costs of Health Emissions | $1,453,936 | $553,077 | $785,572 |
Utility Energy Cost | $664,602 | $204,466 | $303,126 |
Total Life Cycle Costs | $7,961,543 | $6,954,339 | $5,465,994 |
Payback Period | N/A | 11.86 years | 3.69 years |
Internal Rate of Return | N/A | 8.7% | 24.6% |
Parameter | Business as Usual (BaU) | Resilience | Financial |
---|---|---|---|
System | None | 3933 kW PV 522 kW Battery with 4441 kWh capacity 208 kW CHP | 2747 kW PV 168 kW CHP |
Survive specific outage | No | Yes | No |
Average | 0 | 7919 h | 2 |
NPV | 0 | $1,007,204 | $2,522,075 |
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Islam, K.S.; Hasan, S.; Chowdhury, T.; Chowdhury, H.; Sait, S.M. Outage Survivability Investigation of a PV/Battery/CHP System in a Hospital Building in Texas. Sustainability 2022, 14, 14965. https://doi.org/10.3390/su142214965
Islam KS, Hasan S, Chowdhury T, Chowdhury H, Sait SM. Outage Survivability Investigation of a PV/Battery/CHP System in a Hospital Building in Texas. Sustainability. 2022; 14(22):14965. https://doi.org/10.3390/su142214965
Chicago/Turabian StyleIslam, Kazi Sifatul, Samiul Hasan, Tamal Chowdhury, Hemal Chowdhury, and Sadiq M. Sait. 2022. "Outage Survivability Investigation of a PV/Battery/CHP System in a Hospital Building in Texas" Sustainability 14, no. 22: 14965. https://doi.org/10.3390/su142214965
APA StyleIslam, K. S., Hasan, S., Chowdhury, T., Chowdhury, H., & Sait, S. M. (2022). Outage Survivability Investigation of a PV/Battery/CHP System in a Hospital Building in Texas. Sustainability, 14(22), 14965. https://doi.org/10.3390/su142214965