Department of Electrical Engineering and Information Technology, "George Emil Palade" University of Medicine, Pharmacy, Science and Technology of Târgu Mureș, 540088 Târgu Mureș, Romania.
Distribuție Energie Electrică România Mureș Branch, 540320 Târgu Mureș, Romania.
Sensors (Basel). 2023 Jan 29;23(3):1490. doi: 10.3390/s23031490.
Smart metering systems development and implementation in power distribution networks can be seen as an important factor that led to a major technological upgrade and one of the first steps in the transition to smart grids. Besides their main function of power consumption metering, as is demonstrated in this work, the extended implementation of smart metering can be used to support many other important functions in the electricity distribution grid. The present paper proposes a new solution that uses a frequency feature-based method of data time-series provided by the smart metering system to estimate the energy contour at distribution level with the aim of improving the quality of the electricity supply service, of reducing the operational costs and improving the quality of electricity measurement and billing services. The main benefit of this approach is determining future energy demand for optimal energy flow in the utility grid, with the main aims of the best long term energy production and acquisition planning, which lead to lowering energy acquisition costs, optimal capacity planning and real-time adaptation to the unpredicted internal or external electricity distribution branch grid demand changes. Additionally, a contribution to better energy production planning, which is a must for future power networks that benefit from an important renewable energy contribution, is intended. The proposed methodology is validated through a case study based on data supplied by a real power grid from a medium sized populated European region that has both economic usage of electricity-industrial or commercial-and household consumption. The analysis performed in the proposed case study reveals the possibility of accurate energy contour forecasting with an acceptable maximum error. Commonly, an error of 1% was obtained and in the case of the exceptional events considered, a maximum 15% error resulted.
智能计量系统在配电网络中的开发和实施可以被视为导致重大技术升级的重要因素,也是向智能电网过渡的第一步。除了作为主要功能的电量计量外,正如本工作所展示的,智能计量的扩展实施可用于支持配电网络中的许多其他重要功能。本文提出了一种新的解决方案,该方案使用智能计量系统提供的数据时间序列的基于频率特征的方法来估计配电级别的能量轮廓,旨在提高供电服务质量,降低运营成本并改善电能测量和计费服务的质量。该方法的主要优点是确定未来的能源需求,以实现公用事业网络中的最佳能源流动,其主要目标是最佳的长期能源生产和获取规划,从而降低能源获取成本,实现最佳的容量规划并实时适应不可预测的内部或外部配电分支电网需求变化。此外,还旨在为未来受益于重要可再生能源贡献的电网提供更好的能源生产规划做出贡献。该方法通过基于来自具有经济用电(工业或商业)和家庭消费的中等规模欧洲地区的实际电网的数据的案例研究进行了验证。所提出案例研究中的分析表明,具有可接受的最大误差的精确能量轮廓预测是可能的。通常,可获得 1%的误差,而在考虑到异常事件的情况下,最大误差为 15%。