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Forecasting peak load electricity demand using statistics and rule based approach

机译:使用统计和基于规则的方法预测峰值负荷电力需求

摘要

Problem statement: Forecasting of electricity load demand is an essential activity and an important function in power system planning and development. It is a prerequisite to power system expansion planning as the world of electricity is dominated by substantial lead times between decision making and its implementation. The importance of demand forecasting needs to be emphasized at all level as the consequences of under or over forecasting the demand are serious and will affect all stakeholders in the electricity supply industry. Approach: If under estimated, the result is serious since plant installation cannot easily be advanced, this will affect the economy, business, loss of time and image. If over estimated, the financial penalty for excess capacity (i.e., over-estimated and wasting of resources). Therefore this study aimed to develop new forecasting model for forecasting electricity load demand which will minimize the error of forecasting. In this study, we explored the development of rule-based method for forecasting electricity peak load demand. The rule-based system synergized human reasoning style of fuzzy systems through the use of set of rules consisting of IF-THEN approximators with the learning and connectionist structure. Prior to the implementation of rule-based models, SARIMAT model and Regression time series were used. Results: Modification of the basic regression model and modeled it using Box-Jenkins auto regressive error had produced a satisfactory and adequate model with 2.41% forecasting error. With rule-based based forecasting, one can apply forecaster expertise and domain knowledge that is appropriate to the conditions of time series. Conclusion: This study showed a significant improvement in forecast accuracy when compared with the traditional time series model. Good domain knowledge of the experts had contributed to the increase in forecast accuracy. In general, the improvement will depend on the conditions of the data, the knowledge development and validation. The rule-based forecasting procedure offered many promises and we hoped this study can become a starting point for further research in this field.ud
机译:问题陈述:电力负荷需求预测是电力系统规划和开发中的必不可少的活动和重要功能。这是电力系统扩展计划的先决条件,因为电力世界在决策和实施之间需要大量的准备时间。需求预测的重要性必须在各个层面上得到强调,因为预测不足或过度预测的后果是严重的,并将影响供电行业的所有利益相关者。方法:如果估计不足,结果很严重,因为工厂安装不容易进行,这将影响经济,业务,时间和形象的损失。如果高估了容量过剩(即高估和浪费资源)的罚款。因此,本研究旨在开发一种新的预测模型来预测电力负荷需求,从而将预测误差降至最低。在这项研究中,我们探索了基于规则的方法来预测电力高峰负荷需求。基于规则的系统通过使用由IF-THEN逼近器组成的规则集以及学习和连接结构,使模糊系统的人类推理风格协同工作。在实施基于规则的模型之前,先使用SARIMAT模型和回归时间序列。结果:对基本回归模型的修改并使用Box-Jenkins自回归误差进行建模,得出了令人满意的模型,预测误差为2.41%。借助基于规则的预测,可以应用适合时间序列条件的预测器专业知识和领域知识。结论:与传统的时间序列模型相比,该研究表明预测准确性有了显着提高。专家们的专业知识有助于提高预报的准确性。通常,改进将取决于数据条件,知识发展和验证。基于规则的预测程序提供了许多希望,我们希望这项研究可以成为该领域进一步研究的起点。 ud

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