An Experimental and Simulation Study on Optimisation of the Operation of a Distributed Power Generation System with Energy Storage—Meeting Dynamic Household Electricity Demand
Abstract
:1. Introduction
2. System Design and Methodology
2.1. System Configuration
2.2. The Dynamic Electrical Loads
2.3. The Distributed Power Generation with Energy Storage System
2.3.1. The Generator
2.3.2. Battery
2.3.3. Supercapacitor
2.4. Data Acquisition System
2.5. Computer Simulation and Control Strategy of the System
2.6. System Optimisation Process
3. Results and Discussion
3.1. Summer Day Load
3.1.1. Experimental Result
3.1.2. Simulation Result
3.2. Winter Day
3.2.1. Experimental Result
3.2.2. Simulation Results
4. Optimisation Results and Discussion
5. Economic Analysis of the EG System
6. Conclusions
- From the experimental tests and the computational simulation on the DG-ES system, it is proved that the designed DG-ES can meet the selected 24-hours’ dynamic load demands with stable operation during either winter or summer.
- The maximum error of the two sets of simulation are 2.69% and 2.35%, respectively. The simulation of the system has successfully predicted the performance of the system.
- The performance of the DG-ES system can be improved through optimised operation process. The results showed that the energy saved was 3.61% in summer and 1.86% in winter, compared to the original operation arrangement.
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
Nomenclature
Power the primary energy can release | |
Efficiency of engine | |
Power of diesel engine generator | |
Power of energy storage system | |
Power of supercapacitor | |
Power of batteries | |
Energy demand of load | |
Batteries’ state of charge | |
At the end of operation time | |
Batteries’ capacity | |
DG-ES | Distributed power generation with energy storage system |
t1 | Starting time of peak time zone 1 |
t2 | Starting time of peak time zone 1 |
top | Optimised time of engine operation |
Generated Electromotive Force (EMF) in volts | |
Air gap flux per pole in webers | |
Angular velocity in radians per second | |
Developed torque in newton-meters | |
Armature current in amperes | |
constant for the given machine | |
Electrical efficiency of the engine | |
The armature current of the engine | |
dielectric constant | |
the electric field intensity | |
C | Volume of the supercapacitor |
The operation voltage of the supercapacitor | |
t1e | Ending time of peak time zone 1 |
t2e | Ending time of peak time zone 1 |
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Load of the Engine (%) | Engine Efficiency (%) | Error (%) |
---|---|---|
0 | 0 | 0 |
10 | 7.8 | 1.13 |
25 | 16.36 | 0.36 |
50 | 24.3 | 0.41 |
75 | 27.53 | 0.82 |
100 | 28.5 | 1.42 |
Core Parameters about System’s Operation | Summer Load | Winter Load |
---|---|---|
Energy required (kWh) | 9.76 | 7.28 |
Energy supplied (kWh) | 9.81 | 7.36 |
Energy supplied by the engine (kWh) | 7.38 | 4.33 |
Energy supplied by the storage units (kWh) | 2.23 | 3.03 |
Maximum battery power (kW) | 2.113 | 1.96 |
Maximum supercapacitor power (kW) | 1.078 | 1.76 |
Simulation error (%) | 2.69 | 2.35 |
Previous engine working time (h) | 4 | 3.83 |
Improved engine working time (h) | 1.47 | 0.86 |
Energy saved by the optimization process (kWh) | 3.61 | 1.86 |
Equipment Initial Cost | ||
---|---|---|
Diesel engine | 1350 £ | |
Lead acid batteries 6 sets | 115 × 6 = 690 £ | |
Supercapacitor 12 V 300 F | 1450 £ | |
Control system for optimisation | 450 £ (including software and hardware) | |
System construction | Fuel consumption | Cost of energy production |
Centralized power generation plant | \ | 0.15 £/kWh |
Diesel engine generator with CHP | 0.2 L/kWh | 0.262 |
Diesel engine generator with ORC | 0.22 L/kWh | 0.288 |
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Ji, J.; Xia, X.; Ni, W.; Teng, K.; Miao, C.; Wang, Y.; Roskilly, T. An Experimental and Simulation Study on Optimisation of the Operation of a Distributed Power Generation System with Energy Storage—Meeting Dynamic Household Electricity Demand. Energies 2019, 12, 1091. https://doi.org/10.3390/en12061091
Ji J, Xia X, Ni W, Teng K, Miao C, Wang Y, Roskilly T. An Experimental and Simulation Study on Optimisation of the Operation of a Distributed Power Generation System with Energy Storage—Meeting Dynamic Household Electricity Demand. Energies. 2019; 12(6):1091. https://doi.org/10.3390/en12061091
Chicago/Turabian StyleJi, Jie, Xin Xia, Wei Ni, Kailiang Teng, Chunqiong Miao, Yaodong Wang, and Tony Roskilly. 2019. "An Experimental and Simulation Study on Optimisation of the Operation of a Distributed Power Generation System with Energy Storage—Meeting Dynamic Household Electricity Demand" Energies 12, no. 6: 1091. https://doi.org/10.3390/en12061091
APA StyleJi, J., Xia, X., Ni, W., Teng, K., Miao, C., Wang, Y., & Roskilly, T. (2019). An Experimental and Simulation Study on Optimisation of the Operation of a Distributed Power Generation System with Energy Storage—Meeting Dynamic Household Electricity Demand. Energies, 12(6), 1091. https://doi.org/10.3390/en12061091