| Literature DB >> 29702607 |
Abstract
The emergence of smart Internet of Things (IoT) devices has highly favored the realization of smart homes in a down-stream sector of a smart grid. The underlying objective of Demand Response (DR) schemes is to actively engage customers to modify their energy consumption on domestic appliances in response to pricing signals. Domestic appliance scheduling is widely accepted as an effective mechanism to manage domestic energy consumption intelligently. Besides, to residential customers for DR implementation, maintaining a balance between energy consumption cost and users’ comfort satisfaction is a challenge. Hence, in this paper, a constrained Particle Swarm Optimization (PSO)-based residential consumer-centric load-scheduling method is proposed. The method can be further featured with edge computing. In contrast with cloud computing, edge computing—a method of optimizing cloud computing technologies by driving computing capabilities at the IoT edge of the Internet as one of the emerging trends in engineering technology—addresses bandwidth-intensive contents and latency-sensitive applications required among sensors and central data centers through data analytics at or near the source of data. A non-intrusive load-monitoring technique proposed previously is utilized to automatic determination of physical characteristics of power-intensive home appliances from users’ life patterns. The swarm intelligence, constrained PSO, is used to minimize the energy consumption cost while considering users’ comfort satisfaction for DR implementation. The residential consumer-centric load-scheduling method proposed in this paper is evaluated under real-time pricing with inclining block rates and is demonstrated in a case study. The experimentation reported in this paper shows the proposed residential consumer-centric load-scheduling method can re-shape loads by home appliances in response to DR signals. Moreover, a phenomenal reduction in peak power consumption is achieved by 13.97%.Entities:
Keywords: demand response; demand-side management; edge computing; energy disaggregation; swarm intelligence
Year: 2018 PMID: 29702607 PMCID: PMC5982512 DOI: 10.3390/s18051365
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Nomenclature.
| Abbreviation/Acronym | Expanded Form |
|---|---|
| ICT | Information and Communication Technologies |
| IoT | Internet of Things |
| DSM | Demand-Side Management |
| DR | Demand Response |
| RTP | Real-Time Pricing |
| IBR | Inclining Block Rates |
| PAR | Peak-to-Average Ratio |
| PSO | Particle Swarm Optimization |
| [ | a time interval in which the |
|
| a time duration of the presence of the |
|
| the start instance of the |
|
| a marginal parameter that the |
| a term of locally generated renewable energy resources considered |
Figure 1Schematic Diagram of the residential consumer-centric DSM model enabling utilities and consumers to operate their energy management schemes.
Monitored home appliances.
| Home Appliance | Power Rating (kW) |
|---|---|
| electric rice cooker | 1.10 |
| electric water boiler | 0.90 |
| Steamer | 0.80 |
| TV | 0.22 |
| range hood | 0.14 |
| PC | 0.35 |
| hair dryer | 1.20 |
| washing machine | 0.30 |
| air conditioner | drawing variable power draws |
Statistically identified physical characteristics [15] of the enrolled schedulable home appliances.
| Schedulable Home Appliances | [ | [[ |
|
|---|---|---|---|
| electric water boiler | [1035, 1071] | 23 | 180 |
| steamer a2 | [361, 379] | 15 | 60 |
| steamer b | [589, 606] | 15 | 90 |
| steamer c | [672, 721] | 36 | 90 |
| steamer d | [1035, 1084] | 24 | 90 |
1[[·]] rounds the averaged l to the nearest integer. The averaged l is less than δ, and is obtained from the historical data statistically analyzed through the energy disaggregation. 2 steamer a–d represent the steamer is used four times in chronological order in one day.
Figure 2Load profile of electric water boilers.
Figure 3Five-level IBR used in this paper and announced by Taipower , a state-owned electric power industry (Taiwan Power Company, Taipei City, Taiwan) providing electricity to Taiwan and offshore islands of the Republic of China, in Taiwan.
Figure 4Assumed and simulated day-ahead RTP used to test the proposed method in this paper.
Figure 5The optimal fitness value achieved and reported by the PSO was 15.070.
Figure 6DSM/DR implementation with/without the proposed Residential consumer-centric DSM method: (a) the original load profile and (b) the resulting residential consumer-centric DSM solved by the PSO.
Economic benefit and phenomenal reduction of PAR achieved in this paper.
| PSO-Based Residential Consumer-Centric DSM under IBR-Combined RTP | Unscheduled Demand | Scheduled Demand |
|---|---|---|
| Total Electricity Cost ($) | 28.4482 | 28.2073 (−0.2409/improved by 0.85%) |
| PAR | 3.3222 | 2.858 (−0.4642/improved by 13.97%) |