| Literature DB >> 32570915 |
Muhammad Diyan1, Bhagya Nathali Silva1, Kijun Han1.
Abstract
Maintaining a fair use of energy consumption in smart homes with many household appliances requires sophisticated algorithms working together in real time. Similarly, choosing a proper schedule for appliances operation can be used to reduce inappropriate energy consumption. However, scheduling appliances always depend on the behavior of a smart home user. Thus, modeling human interaction with appliances is needed to design an efficient scheduling algorithm with real-time support. In this regard, we propose a scheduling algorithm based on human appliances interaction in smart homes using reinforcement learning (RL). The proposed scheduling algorithm divides the entire day into various states. In each state, the agents attached to household appliances perform various actions to obtain the highest reward. To adjust the discomfort which arises due to performing inappropriate action, the household appliances are categorized into three groups i.e., (1) adoptable, (2) un-adoptable, (3) manageable. Finally, the proposed system is tested for the energy consumption and discomfort level of the home user against our previous scheduling algorithm based on least slack time phenomenon. The proposed scheme outperforms the Least Slack Time (LST) based scheduling in context of energy consumption and discomfort level of the home user.Entities:
Keywords: appliance scheduling; home energy management; human-appliance interaction; reinforcement learning; user comfort
Mesh:
Substances:
Year: 2020 PMID: 32570915 PMCID: PMC7349083 DOI: 10.3390/s20123450
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Load profile of various household appliances [43].
| Appliance | Operating Cycles | Operation Load Rang (kW) | Energy Consumption Per Cycle (kWh) | Total Operation Time (min) |
|---|---|---|---|---|
| DW | Three | 0.6~1.2 | 1.44 | 105 |
| Washing Machine (WM) and Dryer | Three | 0.65~0.52 | 2.68 | 45+60 |
| REFG | 24 h | 0~0.37 | 3.43 | 24 h |
| AC | 24 h | 0.25~2.75 | 31.15 | 24 h |
Figure 1Load profile of various household appliances. (a) Energy consumption of dryer; (b) energy consumption of washer; (c) energy consumption of REFG; (d) energy consumption of AC; (e) energy consumption of DW [43].
Figure 2Birdseye overview of the proposed scheme.
Household appliances simulation parameters.
| Device Type | ID |
|
| Load Profile (Kwh) | Operation Time |
|
|---|---|---|---|---|---|---|
| Adoptable | WM | 0.1 | - | 0.52–0.65 | 6 pm–11 pm | 45 |
| DW | 0.1 | - | 0.6–1.2 | 6 am–11 am | 105 | |
| Un-adoptable | REFG | - | - | 0.2 | 24 h | - |
| Manageable | AC | - | 2.3 | 0–1.4 | 24 h | - |
| L1 | - | 2 | 0.2–0.8 | 6 pm–11 pm | - | |
| L2 | - | 2.5 | 0.2–0.8 | 6 pm–11 pm | - |
Figure 3Discomfort changes against energy demand.
Standard TOU plan with price (cents/kWh).
| TOU Plan | Time | Price |
|---|---|---|
| Overnight | 11 p.m.–5 a.m. | 1.34 cents/kWh |
| Off-Peak | 6 a.m.–12 p.m. | 7.04 cents/kWh |
| On-Peak | 1 p.m.–5 p.m. | 19.01 cents/kWh |
| Partial-Peak | 6 p.m.–10 p.m. | 12.50 cents/kWh |
Figure 4Proposed Q-learning simulation setup.
Figure 5Convergence of the Q-value.
Figure 6Household energy consumption comparison with LST-scheduling scheme. (a) REFG results; (b) AC results; (c) L1 results; (d) L2 results.
Figure 7Energy consumption of WM, DW with LST-scheduling.
Figure 8Total energy cost and total energy consumption comparison with LST-scheduling: (a) total energy cost of all appliances and (b) total energy consumption of all appliances.
Figure 9Discomfort level comparison with the LST scheduling scheme.