平衡机构电网应力水平自动预测的开源工具

A. Berscheid, Y. Makarov, Z. Hou, R. Diao, Yu Zhang, N. Samaan, Yong Yuan, Huifen Zhou
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引用次数: 1

摘要

由于不断增加的可变发电、需求响应、新的电力市场结构、极端天气条件、突发事件和意外事件的渗透,现代电力系统的行为变得更加随机和动态。预测潜在的系统运行问题至关重要,这样电网规划者和运营商就可以采取预防措施来减轻影响,例如,缺乏运行储备。本文提出了一种创新的软件工具,以帮助电网运营商在平衡机构预测下一个运行日的电网应力水平。它定期从公共领域收集天气预报、电力需求等必要信息,并自动估计每天的压力水平。为了实现这一目标,开发了先进的神经网络和回归树算法作为预测引擎。该工具已经在几个关键的平衡机构上进行了测试,并成功地预测了极端热浪下系统峰值负荷的增长和压力水平的增加。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Open-Source Tool for Automated Power Grid Stress Level Prediction at Balancing Authorities
The behavior of modern power systems is becoming more stochastic and dynamic, due to the increased penetration of variable generation, demand response, new power market structure, extreme weather conditions, contingencies, and unexpected events. It is critically important to predict potential system operational issues so that grid planners and operators can take preventive actions to mitigate the impact, e.g., lack of operational reserves. In this paper, an innovative software tool is presented to assist power grid operators in a balancing authority in predicting the grid stress level over the next operating day. It periodically collects necessary information from public domain such as weather forecasts, electricity demand, and automatically estimates the stress levels on a daily basis. Advanced Neural Network and regression tree algorithms are developed as the prediction engines to achieve this goal. The tool has been tested on a few key balancing authorities and successfully predicted the growing system peak load and increased stress levels under extreme heat waves.
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