首页> 中文期刊> 《应用气象学报 》 >北京市夏季电力负荷逐日变率与气象因子关系

北京市夏季电力负荷逐日变率与气象因子关系

             

摘要

利用2006年1月-2010年9月北京市逐日整点电力负荷和逐日气象资料,采用数理统计方法定量分析了北京市夏季电力负荷逐日变率与主要气象因子的关系.结果表明:与最大电力负荷显著相关的气象因子为温度、风速和空气湿度,其中与日最低气温相关性最高(相关系数为0.65,显著性水平为0.001),当日最低气温高于18℃(或日最高气温高于26℃)时,其对日最大电力负荷的1℃效应量约为39.7×107W.相对于温度单个因子,同时反映温度和相对湿度综合作用的闷热指数与最大电力负荷的关系更为密切.%Power security with stability is essential for normal operations of modern cities which guarantee industrial productions, communication, transportations, daily lives and so on. For the specificities of modern grid (electric power system) , a local accident can spread to the entire electric grid instantaneously, and u-sually results in huge economic losses. The abnormal increase of power load can often cause an accident for the power grid. The power grid of Beijing is a typical receiving end grid, obtaining about two thirds of its demand from North China Power Grid. So an accurate prediction for the electricity load Beijing is very important for power dispatching and safety operation of the entire grid. However, the electricity load may be influenced by a combined effect of many complex factors, such as the industrial and agricultural productions, transportations, daily lives, weather and climate. The different factors may take different effects on the power load variability on various timescales. Major achievements are made through previous research, but it is still a challenge today to predict accurately the power load variability, especially in the daily time scales. A further and quantitative study on the daily power load variability and its main factors would be helpful for the precise prediction.Based on the daily electric power load and meteorological data of Beijing during the period from January 2006 to September 2010, an analysis is implemented with statistical method aiming for better understanding electric power load of Beijing and its main affecting factors in summer. The results indicate that temperature, wind speed and relative humidity are the major factors which are significantly correlated with the maximum electric power load in summer. Among these factors, the daily minimum temperature is the most influencing factor with a correlation coefficient of 0. 65 and significance at 0. 001 level. Considering the 1℃ effect for energy consumption, the daily maximum electric power load would increase 39. 7× 107W with temperature rising l℃ when the daily maximum temperature is higher than 26 ℃ , or when the daily minimum temperature is higher than 18 ℃. Using the statistical regression model can roughly predict the maximum power load fluctuations. It can provide some reference for the power allocation decision in advance. Moreover, the effects of temperature humidity index (Ith) on the variability of electric power load are also checked, where 7Th are expected to quantify the degree of human body comfort. The outcomes suggest that the ITH can improve the explained variance of the daily maximum electric power load than a single temperature factor.

著录项

相似文献

  • 中文文献
  • 外文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号