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An Intelligent Hybrid Heuristic Scheme for Smart Metering based Demand Side Management in Smart Homes

机译:基于智能计量的智能家居需求侧管理的智能混合启发式方案

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Smart grid is an emerging technology which is considered to be an ultimate solution to meet the increasing power demand challenges. Modern communication technologies have enabled the successful implementation of smart grid (SG), which aims at provision of demand side management mechanisms (DSM), such as demand response (DR). In this paper, we propose a hybrid technique named as teacher learning genetic optimization (TLGO) by combining genetic algorithm (GA) with teacher learning based optimization (TLBO) algorithm for residential load scheduling, assuming that electric prices are announced on a day-ahead basis. User discomfort is one of the key aspects which must be addressed along with cost minimization. The major focus of this work is to minimize consumer electricity bill at minimum user discomfort. Load scheduling is formulated as an optimization problem and an optimal schedule is achieved by solving the minimization problem. We also investigated the effect of power-flexible appliances on consumers’ bill. Furthermore, a relationship among power consumption, cost and user discomfort is also demonstrated by feasible region. Simulation results validate that our proposed technique performs better in terms of cost reduction and user discomfort minimization, and is able to obtain the desired trade-off between consumer electricity bill and user discomfort.
机译:智能电网是一种新兴技术,被认为是解决日益增长的电力需求挑战的最终解决方案。现代通信技术已经成功实现了智能电网(SG),该电网旨在提供需求侧管理机制(DSM),例如需求响应(DR)。在本文中,假设电价提前一天宣布,我们将遗传算法(GA)与基于教师学习的优化(TLBO)算法相结合,提出了一种名为教师学习遗传优化(TLGO)的混合技术,用于住宅负荷调度。基础。用户不舒服是必须与成本最小化一起解决的关键方面之一。这项工作的主要重点是在最小的用户不适感的情况下最大程度地减少用电费用。将负荷调度表述为优化问题,并通过解决最小化问题来获得最佳调度。我们还研究了柔性电力设备对消费者账单的影响。此外,可行区域还证明了功耗,成本和用户不适之间的关系。仿真结果证明,我们提出的技术在降低成本和最大程度减少用户不适方面表现更好,并且能够在用户电费和用户不适之间取得所需的折衷。

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