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Time-Constrained Nature-Inspired Optimization Algorithms for an Efficient Energy Management System in Smart Homes and Buildings

机译:受时间约束的自然启发式优化算法,用于智能家居和建筑物中的高效能源管理系统

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This paper proposes two bio-inspired heuristic algorithms, the Moth-Flame Optimization (MFO) algorithm and Genetic Algorithm (GA), for an Energy Management System (EMS) in smart homes and buildings. Their performance in terms of energy cost reduction, minimization of the Peak to Average power Ratio (PAR) and end-user discomfort minimization are analysed and discussed. Then, a hybrid version of GA and MFO, named TG-MFO (Time-constrained Genetic-Moth Flame Optimization), is proposed for achieving the aforementioned objectives. TG-MFO not only hybridizes GA and MFO, but also incorporates time constraints for each appliance to achieve maximum end-user comfort. Different algorithms have been proposed in the literature for energy optimization. However, they have increased end-user frustration in terms of increased waiting time for home appliances to be switched ON. The proposed TG-MFO algorithm is specially designed for nearly-zero end-user discomfort due to scheduling of appliances, keeping in view the timespan of individual appliances. Renewable energy sources and battery storage units are also integrated for achieving maximum end-user benefits. For comparison, five bio-inspired heuristic algorithms, i.e., Genetic Algorithm (GA), Ant Colony Optimization (ACO), Cuckoo Search Algorithm (CSA), Firefly Algorithm (FA) and Moth-Flame Optimization (MFO), are used to achieve the aforementioned objectives in the residential sector in comparison with TG-MFO. The simulations through MATLAB show that our proposed algorithm has reduced the energy cost up to 32.25% for a single user and 49.96% for thirty users in a residential sector compared to unscheduled load.
机译:本文针对智能家居和建筑中的能源管理系统(EMS)提出了两种受生物启发的启发式算法,即飞蛾优化(MFO)算法和遗传算法(GA)。分析并讨论了它们在降低能源成本,最小化峰均功率比(PAR)和最小化最终用户不适感方面的性能。然后,提出了GA和MFO的混合版本,称为TG-MFO(受时间限制的遗传莫特火焰优化),以实现上述目标。 TG-MFO不仅将GA和MFO进行了混合,而且还为每种设备引入了时间限制,以实现最大的最终用户舒适度。在文献中已经提出了用于能量优化的不同算法。但是,就增加了接通家用电器的等待时间而言,它们使最终用户感到沮丧。所提出的TG-MFO算法是专为针对因设备调度而导致的最终用户不适感几乎为零而设计的,同时要考虑各个设备的时间跨度。还集成了可再生能源和电池存储单元,以实现最大的最终用户利益。为了进行比较,使用了五种以生物启发的启发式算法,即遗传算法(GA),蚁群优化(ACO),布谷鸟搜索算法(CSA),萤火虫算法(FA)和蛾-火焰优化(MFO),与TG-MFO相比,住宅领域的上述目标。通过MATLAB进行的仿真表明,与计划外负载相比,我们提出的算法已将住宅区中的单个用户的能源成本降低了32.25%,将三十个用户的能源成本降低了49.96%。

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