Department of Electrical and Computer Engineering, COMSATS University Islamabad, Islamabad 44000, Pakistan.
Department of Electrical Engineering, University of Engineering and Technology, Mardan 23200, Pakistan.
Sensors (Basel). 2020 Jun 2;20(11):3155. doi: 10.3390/s20113155.
There will be a dearth of electrical energy in the prospective world due to exponential increase in electrical energy demand of rapidly growing world population. With the development of internet-of-things (IoT), more smart devices will be integrated into residential buildings in smart cities that actively participate in electricity market via demand response (DR) programs to efficiently manage energy in order to meet this increasing energy demand. Thus, with this incitement, an energy management strategy using price-based DR program is developed for IoT-enabled residential buildings. We propose a wind-driven bacterial foraging algorithm (WBFA), which is a hybrid of wind-driven optimization (WDO) and bacterial foraging optimization (BFO) algorithms. Subsequently, we devised a strategy based on our proposed WBFA to systematically manage the power usage of IoT-enabled residential building smart appliances by scheduling to alleviate peak-to-average ratio (PAR), minimize cost of electricity, and maximize user comfort (UC). This increases effective energy utilization, which in turn increases the sustainability of IoT-enabled residential buildings in smart cities. The WBFA-based strategy automatically responds to price-based DR programs to combat the major problem of the DR programs, which is the limitation of consumer's knowledge to respond upon receiving DR signals. To endorse productiveness and effectiveness of the proposed WBFA-based strategy, substantial simulations are carried out. Furthermore, the proposed WBFA-based strategy is compared with benchmark strategies including binary particle swarm optimization (BPSO) algorithm, genetic algorithm (GA), genetic wind driven optimization (GWDO) algorithm, and genetic binary particle swarm optimization (GBPSO) algorithm in terms of energy consumption, cost of electricity, PAR, and UC. Simulation results show that the proposed WBFA-based strategy outperforms the benchmark strategies in terms of performance metrics.
由于世界人口的快速增长导致对电能的需求呈指数级增长,未来世界将出现电力短缺。随着物联网(IoT)的发展,更多的智能设备将被集成到智能城市的住宅建筑中,通过需求响应(DR)计划积极参与电力市场,以有效地管理能源,以满足不断增长的能源需求。因此,在这种激励下,为物联网住宅建筑开发了一种基于价格的 DR 计划的能源管理策略。我们提出了一种基于风驱细菌觅食算法(WBFA)的策略,它是风驱优化(WDO)和细菌觅食优化(BFO)算法的混合体。随后,我们设计了一种基于我们提出的 WBFA 的策略,通过调度系统地管理物联网住宅建筑智能家电的用电,以减轻峰均比(PAR)、降低电费成本和最大化用户舒适度(UC)。这提高了有效能源利用率,从而提高了智能城市中物联网住宅建筑的可持续性。基于 WBFA 的策略自动响应基于价格的 DR 计划,以解决 DR 计划的主要问题,即消费者在收到 DR 信号时响应的知识有限。为了支持基于 WBFA 的策略的生产力和有效性,进行了大量的模拟。此外,基于 WBFA 的策略与基准策略(包括二进制粒子群优化(BPSO)算法、遗传算法(GA)、遗传风驱优化(GWDO)算法和遗传二进制粒子群优化(GBPSO)算法)在能耗、电费、PAR 和 UC 方面进行了比较。仿真结果表明,基于 WBFA 的策略在性能指标方面优于基准策略。