A Novel Approach for Electrical Load Forecasting Using Distributed Sensor Networks

B.P. Challa, S. Challa, R. Chakravorty, S. Deshpande, D. Sharma
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引用次数: 4

Abstract

Electrical market often demands accurate forecasting of electrical load for planning and operation of the power infrastructure. Current models can forecast load from half hour up to 24 hours and are based on aggregate temperature for the entire day. Although these models work very well, they do not consider the intermediate real time information between time intervals to forecast load which introduce many uncertainties pertaining to factors such as climatic conditions, geographic locations etc. Furthermore, such intermediate real time information is costly and difficult to obtain. With the aid of distributed sensor networks, real time information can easily be obtained which can lead to precise planning and operation of power systems. Such information can easily improve electrical load forecasting and reduce uncertainty which can have a direct impact on the customer. We propose new and improved models for electricity load forecasting by incorporating real-time weather (temperature) information arising from the low-cost distributed sensor networks
基于分布式传感器网络的电力负荷预测新方法
电力市场对电力负荷的准确预测是电力基础设施规划和运行的重要要求。目前的模型可以预测从半小时到24小时的负荷,并且是基于全天的总温度。虽然这些模型工作得很好,但它们没有考虑时间间隔之间的中间实时信息来预测负荷,这引入了许多与气候条件、地理位置等因素有关的不确定性。此外,这种中间实时信息成本高,难以获得。分布式传感器网络可以方便地获取实时信息,从而实现电力系统的精确规划和运行。这些信息可以很容易地改善电力负荷预测,减少对客户有直接影响的不确定性。我们提出了新的和改进的模型,通过纳入实时天气(温度)信息产生的低成本分布式传感器网络的电力负荷预测
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