A Study of Fuel Cell Scheduling Effect on Local Energy Markets with Heterogeneous Renewable Sources †
Abstract
:1. Introduction
2. Research Background
3. Design and Implementation
3.1. Microgrid Architecture
3.2. Design Assumptions and Limitations
- All losses, including conversion and transmission losses, are neglected;
- Each subsystem has a battery, use for absorbing the network imbalances;
- It is assumed that the data, provided by the power meters and the controllers, can be trusted;
- The DC line capacity, in this case 2.5 kw, is the same for all subsystems;
- Due to the location of the study, Japanese yen is chosen as main currency for the financial transactions;
- The utility grid is not use for charging the battery;
- There is no Feed-in to the utility grid
3.3. Prototype Design
3.3.1. Internal Strategy
Priority-Based Internal Agent
Bidding Agent
3.3.2. External Strategy
3.3.3. Virtual Wallet
4. Simulation Setup and Results
4.1. Input Data and Configuration
- Solar panels: area—20 m; panel yield—19%; performance ratio—75%; price for electricity—0 yen for kWh. The initial investment in installation of the solar panels is ignored when estimating the price.
- Fuel cell: output—700 watts, price for electricity—14 yen for kWh. As in the case of the solar generation, the initial investment in the fuel cell is ignored and the price is solely based on the fuel used, in this case natural gas.
- Utility grid connection: an auxiliary power source with no power limitations; price for electricity—30 yen for kWh.
- Battery: capacity—4.8 kWh, initially charged at 50%; price for electricity—calculated in the beginning of every iteration and it is based on price of the renewable power sources that has charged it in the previous cycle.
- Wallet: initial amount—10,000 Japanese yen.
4.2. Results
- Internal agent, described in the cited paper [1].
- Internal agent, presented in this paper.
- High consumers—daily average more than 700 watts;
- Average consumers—daily average between 350 watts and 700 watts;
- Low consumers—daily average less than 350 watts.
5. Discussion
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Spasova, B.; Kawamoto, D.; Takefuji, Y. A Study of Fuel Cell Scheduling Effect on Local Energy Markets with Heterogeneous Renewable Sources. Energies 2019, 12, 854. https://doi.org/10.3390/en12050854
Spasova B, Kawamoto D, Takefuji Y. A Study of Fuel Cell Scheduling Effect on Local Energy Markets with Heterogeneous Renewable Sources. Energies. 2019; 12(5):854. https://doi.org/10.3390/en12050854
Chicago/Turabian StyleSpasova, Borislava, Daisuke Kawamoto, and Yoshiyasu Takefuji. 2019. "A Study of Fuel Cell Scheduling Effect on Local Energy Markets with Heterogeneous Renewable Sources" Energies 12, no. 5: 854. https://doi.org/10.3390/en12050854
APA StyleSpasova, B., Kawamoto, D., & Takefuji, Y. (2019). A Study of Fuel Cell Scheduling Effect on Local Energy Markets with Heterogeneous Renewable Sources. Energies, 12(5), 854. https://doi.org/10.3390/en12050854