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智能配电网短期负荷预测研究

Short-term Load Forecasting Research of Smart Distribution Grid

【作者】 杨占杰

【导师】 王成山; 李晓辉;

【作者基本信息】 天津大学 , 电力系统及其自动化, 2012, 硕士

【摘要】 电力工业是一个国家在能源领域中的基础性行业,如何让电力工业的快速发展的同时能保持健康化是一个非常重要的问题。对于电力负荷预测来讲,预测精度的提高,将会对经济效益最优化的制定电力调配计划、制定发电计划以及制定上网竞价计划等方面都具有重要的意义,能产生直接而重大的经济效益和社会效益。由于短期负荷预测周期短,因此对安排日开停机计划和发电计划具有重要的意义,短期符合预测精度的高低直接影响其所起的作用,短期预测是目前人们所研究的主要方向。国内外对短期负荷的研究均远远多于中长期预测。另一方面,随着配电网的智能化发展,电网中会逐渐引入智能化单元,比如各种分布式电源、电动汽车充电站、充电桩以及智能用电小区等。这些智能单元的引入将会对电网负荷模式和负荷增长模式产生重大影响,使得常规预测方法往往不能满足精度要求。为解决这一情况,本文提出一种拆分建模的方法。即将配电网中的常规部分和智能部分拆分,分别建模并进行负荷预测,最终将各部分的预测结果相结合,就可以得到整个配电网的负荷预测结果。本文使用人工神经网络法和时间序列法进行短期负荷预测研究;智能配电网方面,重点研究了风力发电和太阳能光伏发电,对其功率输出预测进行研究,并对电动汽车充电站的负荷模型提出了展望。

【Abstract】 The power industry is the foundation of the energy industries field. How to get the rapid development and the healthy of power industry at the same time is becoming a important problem. For the power load forecasting theory and technology, it is of great significance for optimizing the power generation plan, making the power deployment plan and making electricity price biding plan when the power load forecasting accuracy improved, it also have direct and significant economic and social benefits. Because the period of short-term power load forecasting is very short, so it is of great significant for arranging the day off on plan and making the power generation plan. The role of short-term load forecasting depends on the level of the forecasting accuracy, so it’s the key point to study and improve the accuracy in the current time. Domestic and foreign researchers study short-term load forecasting more than long-term forecasting.On the other hand, with the development of smart distribution grid, the grid will gradually add the smart units, such as variety of distributed power resource, electric vehicle charging station, charging pile and smart electricity-consumption living area, etc. The adoption of these smart units will bring obviously impact to the load model and the load growth model, making the accuracy of conventional forecasting methods can not meet the requirements. To address the situation this paper presents a new method: splitting and modeling. It means split the normal part and the smart part of the grid first, then modeling and forecasting the separated parts. At last, combine each forecasting results parts together, you can get the entire distribution grid power load forecasting results.This paper adopt the artificial neural network and time series method to study the short-term power forecasting; in the smart distribution grid aspect, the paper focus on the wind power, photovoltaic generation and electric vehicle charging station, reaching the power output of them.

  • 【网络出版投稿人】 天津大学
  • 【网络出版年期】2012年 07期
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