智能电网用户友好型需求侧管理

Zeeshan Irshad, S. M. Haider Aejaz, U. Mustafa, Agha Muhammad Furqan Durrani, Faisal Hafeez
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引用次数: 2

摘要

住宅小区的需求侧管理(DSM)方法多种多样。这些技术通过调度客户负荷有效地降低了电力成本。但是,用户设备的等待时间增加了。本研究提出了一种利用启发式算法克服用户不方便的用户友好技术。采用遗传算法对智能电网中的居民负荷进行调度。通过在实时定价(RTP)环境中使用遗传算法,我们的主要目的是在用户优先级和偏好的意义上最小化峰值平均比(PAR)、电力成本和最大舒适度。为了达到我们的目的,我们根据电器的占空比对它们进行分类。我们使用可再生能源(RES)来满足高峰时段,并更好地调度负荷。仿真结果表明,该算法在负载调度和降低PAR值方面发挥了重要作用。
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User-Friendly Demand Side Management for Smart Grid Network
Diverse methods for demand side management (DSM) have been proposed for residential areas. These techniques are effectual in reducing electricity cost by scheduling the customer loads. However, waiting time of user appliances is increased. In this research work a user-friendly technique is developed by using heuristic algorithm to overcome user inconvenience. Genetic algorithm is used for scheduling a residential load in smart grid (SG) network. By using Genetic algorithm in real time pricing (RTP) environment, our main purpose is to minimize both peak to average ratio (PAR), cost of electricity and maximize comfort level in sense of user priority and preferences. To attain our purpose, we categorize appliances according to their duty cycle. We used renewable energy source (RES) to meet peak hours and better scheduling of loads. Simulation work shows that our user-friendly algorithm plays a vital role in load scheduling and reduction in PAR values.
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