| Literature DB >> 35214211 |
Min Wang1, Modawy Adam Ali Abdalla1,2.
Abstract
With the emerging of the smart grid, it has become easier for consumers to control their consumption. The efficient use of the integration of renewable energy sources with electric vehicle (EV) and energy storage systems (ESSs) in the smart home is a popular choice to reduce electricity costs and improve the stability of the grid. Therefore, this study presents optimal energy management based on the Jaya algorithm for controlling energy flow in the smart home that contains photovoltaic generation (PV), integrated with ESS and EV. The objective of the proposed energy management is to reduce electricity cost while meeting the household load demand and energy requirement for the EV trip distance. By using the Jaya algorithm, the modes of home-to-vehicle (H2V) and vehicle-to-home (V2H) are controlled, in addition to controlling the purchase of energy from the grid and sale of the energy to the grid from surplus PV generation and ESS. Before EV participation in the V2H process, the amount of energy stored in the electric vehicle battery will be verified to be more than the energy amount required for the remaining EV trip to ensure that the required energy for the remaining EV trip is satisfied. Simulation results highlight the performance of the optimal energy scheduling to achieve the reduction of the daily electricity cost and meeting of load demand and EV energy required. The simulation results prove that optimal energy management solutions can be found with significant electricity cost savings. In addition, Jaya is compared with the particle swarm optimization (PSO) algorithm in order to evaluate its performance. Jaya outperforms PSO in terms of achieving optimal energy management objectives.Entities:
Keywords: Jaya algorithm; electric vehicle; energy storage system; photovoltaic generation; smart home; vehicle-to-home (V2H)
Year: 2022 PMID: 35214211 PMCID: PMC8963117 DOI: 10.3390/s22041306
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Summary of literature.
| Techniques | Objectives | DER | DSMR | Limitations |
|---|---|---|---|---|
| [ | Minimizing overall | - | - | Computational complexity |
| [ | Peak power limitation | PV | ESS and EV | Computational complexity |
| [ | Achieving of cost | - | ESS | Ignoring of DER |
| [ | Minimize consumer | PV | EV | System complexity |
| [ | Home economy | PV | ESS and EV | System complexity |
| [ | Minimization of electricity | PV | ESS and EV | System complexity |
| [ | Improvement of electricity | PV | ESS and FC | Implementing of V2H |
| [ | Bill reduction and | - | EV as ESS | Ignoring of DER |
| [ | Minimize the cost, balance the | - | ESS | Ignoring of DER and EV |
| [ | Reduce the demand | - | - | Inconsideration of DER and DSMR |
| [ | Reduction of electricity | - | - | Ignoring of |
| [ | Reduces electricity | PV | ESS and EV | Computational complexity |
| [ | Electricity bill minimization | Wind and PV | - | Inconsideration of DSMR |
| [ | Cost reduction | - | - | Ignoring of DER and DSMR |
| [ | Reduction of electricity cost | PV | ESS | Inconsideration |
| [ | Minimization of economic | PV | ESS | Use of EV as electrical |
Figure 1Configuration of smart home.
Figure 2Energy exchange paths between components of the smart home.
Figure 3The flowchart of optimal energy scheduling based on Jaya algorithm.
Figure 4(a) Power output curve of solar in summer and winter; (b) TOU price signal.
Figure 5(a) Hourly home energy consumption; (b) EV connection time.
PV parameters.
| Parameter | Value |
|---|---|
| Lifetime | 25 year |
| PV rated power | 6 kW |
| One-time investment cost | 3780 $/kW |
| Module efficiency | 18% |
Parameters associated with the ESS and EV.
| Parameters | EV | ESS |
|---|---|---|
| Battery capacity | 19 kWh | 19.68 kWh |
| Cost | 324 $/kWh | 250 $/kWh |
|
| 90% | 90% |
|
| 20% | 20% |
| Initial | 50% | 50% |
| Depth of discharge DOD | 80% | 80% |
| Charging efficiency | 0.95 | 0.85 |
| Discharging efficiency | 0.95 | 0.95 |
| Lifetime | 2000 cycles | 10 years |
| Vehicle depart time | 08:00, 02:00 | - |
| Vehicle arrive time | 12:00, 17:00 | - |
| Vehicle efficiency | 14 kWh/100 km | - |
Jaya parameters.
| Parameter | Value |
|---|---|
| Population | 100 |
| Max iteration | 100 |
| Upper bound | 1 |
| Lower bound | 0 |
Figure 6Optimal power scheduling to feed the load demand in summer and winter.
Figure 7Optimal power flows from/to energy storage system during summer and winter.
Figure 8Optimal power flows from/to electric vehicle during summer and winter.
Figure 9Procured power from grid.
Figure 10Sold power to the grid.
Figure 11Energy storage system state of charge.
Figure 12EV state of charge.
PSO parameters.
| Parameter | Value |
|---|---|
| Population | 100 |
| Max iteration | 100 |
| Upper bound | 1 |
| Lower bound | 0 |
|
| 0.9 |
|
| 0.4 |
|
| 2 |
|
| 2 |
Comparison between base case, Jaya, and PSO in summer and winter.
| Seasons | Cases | Total Daily Cost (USD) | Daily Cost Reduction (%) |
|---|---|---|---|
| Without the optimal energy scheduling | 9.27 | Base case | |
| Summer | Optimal energy scheduling based on Jaya | 2.79 | 70 |
| Optimal energy scheduling based on PSO | 3.0 | 68 | |
| Without the optimal energy scheduling | 8.75 | Base case | |
| Winter | Optimal energy scheduling based on Jaya | 4.0 | 54 |
| Optimal energy scheduling based on PSO | 4.3 | 51 |