A Novel Solution for Day-Ahead Scheduling Problems Using the IoT-Based Bald Eagle Search Optimization Algorithm
Abstract
:1. Introduction
- Firstly, the proposal of a new low-cost smart system design that ensures power quality for consumers’ appliances through smart monitoring and control with the help of IoT;
- The implementation of a DSM program for smart microgrids with a variety of electrical loads. This load variation is rare in other articles;
- This paper solves the DSM problem by considering different objective functions, including reducing consumer bills and reducing power losses;
- This research proposes a bald eagle search optimization algorithm (BES)-based real-time optimal schedule controller for EMS;
- Two-layer hierarchical communication architecture is implemented based on the MQTT protocol, leveraging a cloud server named ThingSpeak to enable global and local communication for neighborhood device controllers;
- The utility authority will have control over individual consumers’ electrical loads and peak demand through IoT and smart meters. Finally, consumers will be able to track their real-time energy consumption, and related measures could be taken to reduce demand.
2. Problem Formulation
2.1. Modeling of the Renewable Resources and Energy Storage Devices
2.1.1. Photovoltaic
- is reversed leakage current;
- is the photocurrent (A) of the photovoltaic cell;
- k is the constant of Boltzmann’s ();
- q is the electron charge ();
- is parallel resistance (Ω).
- is the series resistance (Ω);
- T is diode temperature.
2.1.2. Battery
2.2. Shifting of Loads
3. Proposed Methodology
3.1. Suggested Communication Platform
3.1.1. The MQTT Knowledge
3.1.2. Proposed Architecture
4. Results of the Proposed Method
5. Discussion of Results
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Parameters | Value |
---|---|
) | |
) | |
269.5934 Ω | |
0.37152 Ω | |
Diode ideality factor | 0.945 |
(A) | |
PV type | SPR-305E-WHT-D |
|
Categories | Type | Power (kW) | Length of Operational Time (hour) |
---|---|---|---|
Shiftable appliances | Washing machine | 1.4 | 1–3 |
Dish washer | 1.32 | 1–3 | |
Hair straightener | 0.0055 | 1–2 | |
Hair dryer | 1.8 | 1–2 | |
Microwave | 1.2 | 3–5 | |
Computer | 0.15 | 6–12 | |
Oven | 2.4 | 1–3 | |
Iron | 2.4 | 2–4 | |
Toaster | 0.8 | 3–5 | |
Electric kettle | 2 | 1–2 | |
Printer | 0.011 | 1–2 | |
Non-shiftable appliances | TV | 0.095 | 6–14 |
Refrigerator | 1.75 | 0–23 | |
Controllable appliances | Air conditioner | 1.14 | 6–8 |
Lightning | 0.1 | 12–20 |
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Alhasnawi, B.N.; Jasim, B.H.; Siano, P.; Alhelou, H.H.; Al-Hinai, A. A Novel Solution for Day-Ahead Scheduling Problems Using the IoT-Based Bald Eagle Search Optimization Algorithm. Inventions 2022, 7, 48. https://doi.org/10.3390/inventions7030048
Alhasnawi BN, Jasim BH, Siano P, Alhelou HH, Al-Hinai A. A Novel Solution for Day-Ahead Scheduling Problems Using the IoT-Based Bald Eagle Search Optimization Algorithm. Inventions. 2022; 7(3):48. https://doi.org/10.3390/inventions7030048
Chicago/Turabian StyleAlhasnawi, Bilal Naji, Basil H. Jasim, Pierluigi Siano, Hassan Haes Alhelou, and Amer Al-Hinai. 2022. "A Novel Solution for Day-Ahead Scheduling Problems Using the IoT-Based Bald Eagle Search Optimization Algorithm" Inventions 7, no. 3: 48. https://doi.org/10.3390/inventions7030048
APA StyleAlhasnawi, B. N., Jasim, B. H., Siano, P., Alhelou, H. H., & Al-Hinai, A. (2022). A Novel Solution for Day-Ahead Scheduling Problems Using the IoT-Based Bald Eagle Search Optimization Algorithm. Inventions, 7(3), 48. https://doi.org/10.3390/inventions7030048