Optimizing Energy Consumption in Smart Grids Using Demand Response Techniques

SwornaKokila M L, Venkatarathinam R, Rose Bindu Joseph P, M. A. Manivasagam, Kakarla Hari Kishore
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Abstract

Smart grids have developed as a potentially game-changing strategy for controlling the demand and supply of energy. Unfortunately, peak demand is a significant source of grid instability and rising energy prices, making it one of the most critical difficulties in smart grids. During times of high energy demand on the grid, demand response (DR) strategies incentivize consumers to change how they use energy. This study’s overarching goal is to learn how DR methods may be used to help smart grids make better use of their energy resources. The primary research is to develop a smart DR system that can predict times of high energy demand and proactively alter usage to reduce such periods. Machine learning strategies are utilized in the proposed system to estimate peak demand via past data, weather predictions, and other variables. The system will then alter energy use based on real-time data from smart meters along with other sensing devices to meet the projected demand. The simulation model will include several scenarios for testing the DR system’s flexibility, including a range of weather conditions, load profiles, and grid topologies. Several indicators, including peak demand reduction (80.04%), energy savings (38.09%), environmental consequences, and reaction time (<0.4 seconds), are used to evaluate the model’s performance. The output of the method excelled all of the other current methods that were taken into account. The system’s rapid response time and its positive environmental impact further highlight its potential in managing smart grid resources effectively.
利用需求响应技术优化智能电网能耗
智能电网已经发展成为一种潜在的改变游戏规则的策略,用于控制能源的需求和供应。不幸的是,高峰需求是电网不稳定和能源价格上涨的重要来源,使其成为智能电网最关键的困难之一。在电网的高能源需求时期,需求响应(DR)策略激励消费者改变他们使用能源的方式。这项研究的首要目标是了解如何使用DR方法来帮助智能电网更好地利用其能源资源。主要研究是开发一种智能DR系统,该系统可以预测高能源需求的时间,并主动改变使用方式以减少这种时间。该系统利用机器学习策略,通过过去的数据、天气预报和其他变量来估计峰值需求。然后,该系统将根据来自智能电表和其他传感设备的实时数据改变能源使用,以满足预计的需求。仿真模型将包括测试DR系统灵活性的几个场景,包括一系列天气条件、负载概况和电网拓扑。几个指标,包括高峰需求减少(80.04%),节能(38.09%),环境后果和反应时间(<0.4秒),被用来评估模型的性能。该方法的输出结果优于目前考虑的所有其他方法。该系统的快速响应时间和积极的环境影响进一步凸显了其在有效管理智能电网资源方面的潜力。
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