Demand Side Management Using Hybrid Bacterial Foraging and Genetic Algorithm Optimization Techniques

Adia Khalid, N. Javaid, Abdul Mateen, B. Khalid, Z. Khan, U. Qasim
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引用次数: 40

Abstract

Today, energy is the most valuable resource, new methods and techniques are being discovered to fulfill the demand of energy. However, energy demand growth causes a serious energy crisis, especially when demand is comparatively high and creates the peak load. This problem can be handled by integrating Demand Side Management (DSM) with traditional Smart Grid (SG) through two way communication between utility and customers. The main objective of DSM is peak load reduction where SG targets cost minimization and user comfort maximization. In this study, our emphasis is on cost minimization and load management by shifting the load from peak hours toward the off peak hours. In this underlying study, we adapt hybridization of two optimization approaches, Bacterial Foraging (BFA) and Genetic Algorithm (GA). Simulation results verify that the adapted approach reduces the total cost and peak average ratio by shifting the load on off peak hours with very little difference between minimum and maximum 95% confidence interval.
基于混合细菌觅食和遗传算法优化技术的需求侧管理
今天,能源是最宝贵的资源,人们不断发现新的方法和技术来满足能源的需求。然而,能源需求的增长导致了严重的能源危机,特别是当需求相对较高并产生峰值负荷时。通过电力公司和用户之间的双向通信,将需求侧管理(DSM)与传统智能电网(SG)相结合,可以解决这一问题。DSM的主要目标是降低峰值负荷,而SG的目标是成本最小化和用户舒适度最大化。在本研究中,我们的重点是通过将负荷从高峰时段转移到非高峰时段来实现成本最小化和负荷管理。在这项基础研究中,我们采用了细菌觅食(BFA)和遗传算法(GA)两种优化方法的杂交。仿真结果表明,该方法通过将负荷转移到非高峰时段,降低了总成本和峰值平均比,且最小和最大95%置信区间相差很小。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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