支持物联网的智能能源管理系统采用先进的预测算法和负荷优化策略,以提高可再生能源发电量

Challa Krishna Rao , Sarat Kumar Sahoo , Franco Fernando Yanine
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引用次数: 0

摘要

有效利用可再生能源,同时避免用电限制,这就是需求侧能源管理的问题所在。我们的目标是开发一种智能系统,能够精确估计能源供应情况并提前规划第二天的能源使用,从而克服这一障碍。本作品中描述的智能能源管理系统(ISEMS)旨在控制智能电网环境中的能源使用,在这种环境中,大量可再生能源被引入。所提出的系统评估了各种预测模型,以实现每小时和提前一天规划的精确能源预测。与其他预测模型相比,基于粒子群优化(PSO)的支持向量机(SVM)回归模型似乎具有更好的性能精度。然后,根据预期要求,展示了 ISEMS 的实验设置,并在考虑优先级和与用户舒适度相关的特征的同时,评估了其在各种配置下的性能。此外,还将物联网(IoT)集成应用于用户端的监控。
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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IoT enabled Intelligent Energy Management System employing advanced forecasting algorithms and load optimization strategies to enhance renewable energy generation

Effectively utilizing renewable energy sources while avoiding power consumption restrictions is the problem of demand-side energy management. The goal is to develop an intelligent system that can precisely estimate energy availability and plan ahead for the next day in order to overcome this obstacle. The Intelligent Smart Energy Management System (ISEMS) described in this work is designed to control energy usage in a smart grid environment where a significant quantity of renewable energy is being introduced. The proposed system evaluates various predictive models to achieve accurate energy forecasting with hourly and day-ahead planning. When compared to other predictive models, the Support Vector Machine (SVM) regression model based on Particle Swarm Optimization (PSO) seems to have better performance accuracy. Then, using the anticipated requirements, the experimental setup for ISEMS is shown, and its performance is evaluated in various configurations while considering features that are prioritized and associated with user comfort. Furthermore, Internet of Things (IoT) integration is put into practice for monitoring at the user end.

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