Accurate Sizing of Residential Stand-Alone Photovoltaic Systems Considering System Reliability
Abstract
:1. Introduction
2. Materials and Methods
2.1. Stand-Alone Photovoltaic Energy System
- The generation section: PV panel array, BC and batteries.
- The load section: inverter and loads.
2.2. Reliability Assessment Methodology
Description of the Reliability Analysis Method
- BEGIN: Initialize counter: n = 1 (number of years). Obtain initial system parameters.
- FOR n = 1 to 400 DO//Consider a possible convergence criterion (*).
- ◦
- Initialize counters: h = 1 (number of simulated hours of the year); i = 0 (counter of interruptions); H = 0 (hours of interruption); LOEE = 0; ENU = 0, SOC = 80% (battery state of charge).
- ◦
- Simulate TTF and TTR consecutively to generate the annual failure sequence.
- ◦
- Obtain randomized hourly PV generation time series data Ps(h) from the historical record.
- ◦
- Generate the hourly chronological curve of annual demand Pd(h) from the historical record.
- ◦
- Combine Ps(h) and the annual failure sequence to get the generating capacity sequence GCS(h) for the simulated year.
- ◦
- FOR h = 1 to 8760 DO:
- ▪
- Using GCS(h) and Pd(h), obtain SOC(h) with Equation (7).
- ▪
- Update the number of interruptions i and evaluate the duration in hours of each interruption Hi
- ▪
- If SOC = SOCmin and GCS(h)<Pd(h), update LOEE: LOEE = LOEE+Pd(h)-GCS(h)
- ▪
- If SOC = SOCmax and GCS(h)>Pd(h), update ENU: ENU = ENU+GCS(h)−Pd(h)
- ◦
- Evaluate FOI index: FOI = i.
- ◦
- Evaluate the loss of load expectation (LOLE) index: LOLE = ∑Hi (h/yr).
- ◦
- Evaluate the loss of load probability (LOLP) index: LOLP = 100·LOLE/8760.
- ◦
- Calculate average values of the indices for the n simulated years//Consider a possible convergence criterion (*).
- Calculate frequency histograms for the reliability indices per year.
3. Results
4. Discussion
- Development and implementation of a reliability evaluation method in an SAPV generation system with energy storage.
- Consideration of the uncertainty associated with the generation, demand and system failures simultaneously.
- Parametric analysis of the influence of TTF and TTR on the operation of the system.
- Use of a local weather model of PV generation and demand for each day of the year, to achieve realistic results.
- Demonstration of the advantages offered by the sequential Monte Carlo simulation versus deterministic methods to achieve a design of an SAPV generation system with energy storage based on required continuity of supply values.
- Although the case study has been carried out for a domestic residence, the method is directly applicable to any other installation if adequate generation and consumption data are available. As an example, it could be applied to small residential communities, agricultural facilities or others.
5. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
Abbreviations
AC | alternating current |
BC | battery controller |
DC | direct current |
DN | distribution network |
Eb | energy contributed by the battery |
Ed | daily energy consumption |
E1 | excess energy produced by the photovoltaic panels |
ENU | energy not used |
FOI | frequency of interruptions |
GCS | generating capacity sequence |
HRES | hybrid renewable energy systems |
LOEE | loss of energy expectation index |
LOLP | loss of load probability index |
LOLE | loss of load expectation index |
LOPE | loss of power expectation index |
MCS | Monte Carlo simulation |
nc | consecutive cloudy days |
Pd(t) | instantaneous power demand |
Pd(peak) | maximum demanded power |
PNU | power not used |
PVpeak | rated power installed in the photovoltaic panels |
PS(t) | power produced by the photovoltaic array |
PV | photovoltaic array generation system |
Qb | battery capacity |
SAPV | stand-alone photovoltaic system |
SOC | state of charge of battery |
SOCmax | maximum admissible value of SOC |
SOCmin | minimum admissible value of SOC |
TTF | time to failure |
TTR | time to repair |
battery failure rate per year | |
photovoltaic panel array and battery controller failure rate per year | |
inverter failure rate per year | |
li-ion battery efficiency | |
ηc | battery charging efficiency |
ηd | battery discharging efficiency |
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Method | Variable | Value | Comments |
---|---|---|---|
DD | Pd(peak) | 3 kW | Maximum demanded power |
DD | ηc, ηd | 0.9 | Efficiency of Li-ion battery (charge and discharge) |
DD | 4 | Consecutive cloudy days | |
DD | 15% | SOC min considered | |
DD | PVpeak | 4 kW | Obtained rated power in PV panels (24 m2) |
DD | Qb | 35 kWh | Obtained battery capacity |
MCS | Failure rate | 2 f/yr | Exponential distribution |
MCS | Repair time | 24 h | Rayleigh distribution |
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Quiles, E.; Roldán-Blay, C.; Escrivá-Escrivá, G.; Roldán-Porta, C. Accurate Sizing of Residential Stand-Alone Photovoltaic Systems Considering System Reliability. Sustainability 2020, 12, 1274. https://doi.org/10.3390/su12031274
Quiles E, Roldán-Blay C, Escrivá-Escrivá G, Roldán-Porta C. Accurate Sizing of Residential Stand-Alone Photovoltaic Systems Considering System Reliability. Sustainability. 2020; 12(3):1274. https://doi.org/10.3390/su12031274
Chicago/Turabian StyleQuiles, Eduardo, Carlos Roldán-Blay, Guillermo Escrivá-Escrivá, and Carlos Roldán-Porta. 2020. "Accurate Sizing of Residential Stand-Alone Photovoltaic Systems Considering System Reliability" Sustainability 12, no. 3: 1274. https://doi.org/10.3390/su12031274